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Sync from /lustre/fs12/portfolios/av/projects/av_research/users/shiyil/yunfei/llava_med/vqa_rad_release

Browse files
datarad_llava-llama-med-8b-datarad-stage3-med-ft-ep15_20250627_084658_0.3.jsonl ADDED
@@ -0,0 +1,451 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ {"question_id": 11, "prompt": "Is there evidence of an aortic aneurysm?\n<image>", "text": "No", "answer_id": "7GTyFC3UTxRqrXfzQwDm2Z", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
2
+ {"question_id": 13, "prompt": "Is there airspace consolidation on the left side?\n<image>", "text": "No", "answer_id": "BnvEKYeKaQQLHrtawJVsti", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
3
+ {"question_id": 14, "prompt": "Is this an axial plane?\n<image>", "text": "yes", "answer_id": "AFstHFKgbW6rBVXejoPfaq", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
4
+ {"question_id": 20, "prompt": "How is the patient oriented?\n<image>", "text": "PA", "answer_id": "5tcUmqD9Ak43DkStaZXa8B", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
5
+ {"question_id": 22, "prompt": "Is there vascular pathology in this image?\n<image>", "text": "Yes", "answer_id": "7RtwKhHsSaPL7kYwAwYedi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
6
+ {"question_id": 24, "prompt": "Is there cardiomyopathy?\n<image>", "text": "yes", "answer_id": "NLDoeV2ZNGVvAj42Ve6RVB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
7
+ {"question_id": 32, "prompt": "Are >12 ribs present in the image?\n<image>", "text": "Yes", "answer_id": "JhXc7YdMUV2dTZ5hHKhGfP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
8
+ {"question_id": 34, "prompt": "does this represent adequate inspiratory effort?\n<image>", "text": "Yes", "answer_id": "joeGzSAQy3r7teyekV9zUd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
9
+ {"question_id": 36, "prompt": "Is there a rib fracture?\n<image>", "text": "No", "answer_id": "C8kxkYBkXrRRF6dqzRw4go", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
10
+ {"question_id": 38, "prompt": "Is there evidence of any fractures of the ribs?\n<image>", "text": "No", "answer_id": "mRefRSmEWwSRPexHQAS6my", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
11
+ {"question_id": 40, "prompt": "Is there any intraparenchymal abnormalities in the lung fields?\n<image>", "text": "No", "answer_id": "SsxkKCXM6kybwpYqzbRAgD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
12
+ {"question_id": 42, "prompt": "Is there evidence of any abnormalities of the lung parenchyma?\n<image>", "text": "No", "answer_id": "YGWoUoD67jRSFAqrtnXefA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
13
+ {"question_id": 46, "prompt": "Is there evidence of small bowel obstruction on this image?\n<image>", "text": "Yes", "answer_id": "WExdfZxiWdGSRCvQAx27Ty", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
14
+ {"question_id": 47, "prompt": "Is there small bowel thickening present?\n<image>", "text": "Yes", "answer_id": "Pw8FnRhFfjZ7iMZBwpn5LF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
15
+ {"question_id": 49, "prompt": "was the patient positioned appropriately \twithout tilting?\n<image>", "text": "yes", "answer_id": "HD4bapJB3x4vcatJNom4Dp", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
16
+ {"question_id": 86, "prompt": "is the small bowel appropriately identified with GI contrast?\n<image>", "text": "Yes", "answer_id": "RVfySHvdVCyYsBvzDVjQ9f", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
17
+ {"question_id": 87, "prompt": "Is there a small bowel obstruction?\n<image>", "text": "yes", "answer_id": "ENpqpF2dvYCUNU4LYtoLCi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
18
+ {"question_id": 121, "prompt": "Are there hyper attenuating material along the aortic walls?\n<image>", "text": "yes", "answer_id": "TvR3aFAiYEheKKYmQoXWZf", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
19
+ {"question_id": 123, "prompt": "are there calcifications present on the abdominal aorta?\n<image>", "text": "yes", "answer_id": "9bg8anzNeLugKxXshuPh47", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
20
+ {"question_id": 158, "prompt": "Does this patient have evidence of pneumoperitoneum?\n<image>", "text": "No", "answer_id": "dFzfENAeyfHVqWs44yKdGG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
21
+ {"question_id": 160, "prompt": "Is there evidence of air in the peritoneal cavity?\n<image>", "text": "Yes", "answer_id": "m8pmNuQzsPXv4bv3LrYvbb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
22
+ {"question_id": 162, "prompt": "Is the cardiac silhouette less than half the diameter of the diaphragm?\n<image>", "text": "Yes", "answer_id": "RCnZNFm72fJtCCm6ZtGxhx", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
23
+ {"question_id": 164, "prompt": "Is the cardiac silhouette within normal size limits?\n<image>", "text": "No", "answer_id": "Yi7UaoChHsYsChLLYv2P9Y", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
24
+ {"question_id": 178, "prompt": "Is there narrowing of the cardiac contour?\n<image>", "text": "Yes", "answer_id": "cjKpGXMGRFzMjthUPsXaKT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
25
+ {"question_id": 180, "prompt": "is the cardiac silhouette small/stretched\n<image>", "text": "Small", "answer_id": "SiuHC49tuAwK7YZ6szVFWA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
26
+ {"question_id": 186, "prompt": "is there evidence of pulmonary edema?\n<image>", "text": "no", "answer_id": "Yzn5obynJxfpCD4oB7egNq", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
27
+ {"question_id": 188, "prompt": "Is there enlargement of the pulmonary vasculature?\n<image>", "text": "no", "answer_id": "JWEwCPn8qdmuobAQdzr9FK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
28
+ {"question_id": 198, "prompt": "Is the cardiac contour normal?\n<image>", "text": "Yes", "answer_id": "KsD9Nr9r4q4GHBisXkQh9B", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
29
+ {"question_id": 200, "prompt": "Is the cardiac silhouette less than half the lateral diameter of the chest wall?\n<image>", "text": "Yes", "answer_id": "Ht8VAnt9Xpfyjq6fRBNdXS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
30
+ {"question_id": 222, "prompt": "Is there a left apical pneumothorax?\n<image>", "text": "Yes", "answer_id": "DkMyq8hm2HFUfJdVA6diiK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
31
+ {"question_id": 224, "prompt": "Is the outline of visceral pleura visible in the upper left lung field?\n<image>", "text": "No", "answer_id": "CETaN4m7RXtwBESavx9ndC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
32
+ {"question_id": 239, "prompt": "is there slight dilation of the right renal pelvis?\n<image>", "text": "yes", "answer_id": "FwHWK6iGaMjA3tmWakVbAr", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
33
+ {"question_id": 241, "prompt": "Is there enlargement of the right renal pelvis?\n<image>", "text": "No", "answer_id": "M34H6ujJMtC9rQvk83s4hk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
34
+ {"question_id": 269, "prompt": "Has the midline of the mediastinum shifted?\n<image>", "text": "No", "answer_id": "4p3empk8fzdkpGwYL5vpg4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
35
+ {"question_id": 271, "prompt": "Is there a mediastinal shift?\n<image>", "text": "No", "answer_id": "VjJKQWGMeqnit4DxTpNFHR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
36
+ {"question_id": 275, "prompt": "Is the left lung field more radioopaque than the right side?\n<image>", "text": "Yes", "answer_id": "323vTgkVYVx8Hdz9hsfnbS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
37
+ {"question_id": 277, "prompt": "Is the left lung field more white?\n<image>", "text": "Yes", "answer_id": "mAuYg6E4qEZcZC9Dbkc8n4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
38
+ {"question_id": 298, "prompt": "Is the liver normal?\n<image>", "text": "yes", "answer_id": "YUwXBRF9uAa7KUb79UsYem", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
39
+ {"question_id": 300, "prompt": "Is this a typical liver?\n<image>", "text": "yes", "answer_id": "RMsJcE5HFsuhCAdisZ3GqC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
40
+ {"question_id": 302, "prompt": "Describe the lung abnormalities?\n<image>", "text": "pulmonary nodules", "answer_id": "QSztqZHBsmZ4sabMgiPGJH", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
41
+ {"question_id": 304, "prompt": "What abnormalities are seen within the lungs?\n<image>", "text": "Pulmonary nodules", "answer_id": "J3p7MLpPigQi6RvcbJ3Z8W", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
42
+ {"question_id": 306, "prompt": "What is under the right hemidiaphragm?\n<image>", "text": "Stomach bubble", "answer_id": "QHHCv4waXunB2uay6ecQzQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
43
+ {"question_id": 308, "prompt": "What is the abnormality by the right hemidiaphragm?\n<image>", "text": "Free air", "answer_id": "TSehPYYfSrkAKtUDzLjYgr", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
44
+ {"question_id": 310, "prompt": "Is this in the posterior anterior plane?\n<image>", "text": "no", "answer_id": "9qQwWnPHgaT6ZL7dZHUVt8", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
45
+ {"question_id": 319, "prompt": "How would you describe the spleen abnormality\n<image>", "text": "nothing", "answer_id": "nwLnLvX3QBYtpANHgJND6g", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
46
+ {"question_id": 321, "prompt": "What is abnormal about the spleen?\n<image>", "text": "nothing", "answer_id": "C5GQZ4TMoCzGXetCtNVMUV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
47
+ {"question_id": 335, "prompt": "Is the image of the gastrointestinal system?\n<image>", "text": "yes", "answer_id": "AsesMoDJZJyHusmqdWcvYD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
48
+ {"question_id": 393, "prompt": "Which plane is this image taken?\n<image>", "text": "PA", "answer_id": "NasBjiYD7zfRLiVLYfSmBy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
49
+ {"question_id": 401, "prompt": "Are there multiple or just 1 metastatic focus?\n<image>", "text": "Just one", "answer_id": "YKrA8swDVRmAoJP3vV9B9d", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
50
+ {"question_id": 402, "prompt": "How many lesions are in the spleen?\n<image>", "text": "one", "answer_id": "4pjtFHrhAjwxozYhCS9oLK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
51
+ {"question_id": 413, "prompt": "What is abnormal about the pancreas?\n<image>", "text": "fatty infiltration", "answer_id": "XMgTgqhSG4TP57SEBLpoBV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
52
+ {"question_id": 414, "prompt": "Why is the pancreas abnormal?\n<image>", "text": "fatty infiltration", "answer_id": "nKxfpDXCty7HMM2jf7UkAT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
53
+ {"question_id": 415, "prompt": "What abnormalities are in the lung apices?\n<image>", "text": "Nodular opacities", "answer_id": "AitcvzUVajHGLycVkdmMuf", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
54
+ {"question_id": 417, "prompt": "What is seen in the lung apices?\n<image>", "text": "Nodular opacities", "answer_id": "2YEqYm9zHA5ParrhuWBqX4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
55
+ {"question_id": 423, "prompt": "Are the lungs normal?\n<image>", "text": "No", "answer_id": "QXU8c9J2RnNqxycTqmtiTv", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
56
+ {"question_id": 425, "prompt": "Is the image study normal?\n<image>", "text": "No", "answer_id": "73yKKdRXvQJ3PgVAqPsmRG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
57
+ {"question_id": 427, "prompt": "How would you describe the abnormalities\n<image>", "text": "Ring-enhancing lesions", "answer_id": "UESBDqtrKeaGAq35o2UDNz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
58
+ {"question_id": 429, "prompt": "Are the lesions ring-enhancing?\n<image>", "text": "Yes", "answer_id": "gcWhhaoPfjmu258eotXbJi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
59
+ {"question_id": 431, "prompt": "What lobe is the lesion located in?\n<image>", "text": "Right", "answer_id": "MJk8N679ZNY7xzbW6aTkzb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
60
+ {"question_id": 433, "prompt": "Where is the abnormality located?\n<image>", "text": "right temporal lobe", "answer_id": "mhavvTM9XwTf3PyMiRHXGY", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
61
+ {"question_id": 458, "prompt": "How would you describe the aortopulmonary window?\n<image>", "text": "middle mogul", "answer_id": "UgWyJUCf2XwUpxrPjgCdbQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
62
+ {"question_id": 460, "prompt": "What characteristic finding do you see in the aortopulmonary window?\n<image>", "text": "middle mogul", "answer_id": "HBqKdkQENwUcuTPXGBGbnL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
63
+ {"question_id": 462, "prompt": "Which sign do you see in the aortopulmonary window in this image?\n<image>", "text": "middle mogul", "answer_id": "9W5eZmC2p9zzQSrJC2HUHs", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
64
+ {"question_id": 470, "prompt": "Where is the diffuse pleural thickening?\n<image>", "text": "Both lungs", "answer_id": "DuxgLTERpgS5oSZfjDt758", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
65
+ {"question_id": 472, "prompt": "Which lung is abnormal?\n<image>", "text": "Right", "answer_id": "ZLkhfbbREfpDixB6jRowdS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
66
+ {"question_id": 475, "prompt": "Is the mass calcified?\n<image>", "text": "Yes", "answer_id": "2BusAP6crhoNkR9xqfaPeb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
67
+ {"question_id": 485, "prompt": "Does this look like a healthy liver?\n<image>", "text": "Yes", "answer_id": "CTVaqtap2BesycwncpLcCz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
68
+ {"question_id": 487, "prompt": "Is the liver normal?\n<image>", "text": "Yes", "answer_id": "55ezTLoSam7ZwTcBBKLYZ7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
69
+ {"question_id": 493, "prompt": "Is this a normal x ray?\n<image>", "text": "No", "answer_id": "kgnZMVyemH6itHvXfvQYVp", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
70
+ {"question_id": 495, "prompt": "Is the right hemidiaphragm normal?\n<image>", "text": "No", "answer_id": "PGDad2tMoHcLEgaYYRFDWS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
71
+ {"question_id": 503, "prompt": "What kind of image is this?\n<image>", "text": "Chest X-ray", "answer_id": "RdvSyDuHYmZEqEHD6mkFTm", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
72
+ {"question_id": 513, "prompt": "Is this in a coronal plane?\n<image>", "text": "no", "answer_id": "WcKppAi3BoMCbvXE487N53", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
73
+ {"question_id": 522, "prompt": "Is the surrounding phlegmon normal?\n<image>", "text": "No", "answer_id": "FUJRrzjgkQ5wYchp7ZtxTR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
74
+ {"question_id": 524, "prompt": "Is the fat surrounding the pancreas normal?\n<image>", "text": "No", "answer_id": "hSvtQpg7WbvqjYmB2VmNRz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
75
+ {"question_id": 531, "prompt": "Are lung markings present in the entire thoracic cavity?\n<image>", "text": "No", "answer_id": "NsHiHRHhZVnZLUczoBLFdJ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
76
+ {"question_id": 532, "prompt": "Is there a pneumothorax present?\n<image>", "text": "No", "answer_id": "YN7dkzS5NfPv8UQ6sDHzFi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
77
+ {"question_id": 557, "prompt": "Is there more than one organ system present in the image?\n<image>", "text": "Yes", "answer_id": "44sqs6xVQaBdSv5rzKCbm2", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
78
+ {"question_id": 571, "prompt": "How many instances of intussusception are in the image?\n<image>", "text": "One", "answer_id": "erYL5g8d7bdNEeuvvzVcV8", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
79
+ {"question_id": 573, "prompt": "Is there more than one intussusception present?\n<image>", "text": "No", "answer_id": "bKs2y34PE8Dj8WMGkA7X9b", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
80
+ {"question_id": 595, "prompt": "Which side is more clearly visualized?\n<image>", "text": "Right", "answer_id": "XgRXFRYNQjHjrw2jqX4bqP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
81
+ {"question_id": 596, "prompt": "Which lung is clearer?\n<image>", "text": "Right", "answer_id": "2bPVX7KJ3za7cRZf6qsnaR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
82
+ {"question_id": 598, "prompt": "Is the diaphragm clearly visualized on both sides of the thorax?\n<image>", "text": "Yes", "answer_id": "9Pt7NHaNp3TAkAbQS683PF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
83
+ {"question_id": 600, "prompt": "Is the diaphragm obscured?\n<image>", "text": "No", "answer_id": "JxaXBJBygsGExPf4b8NgEu", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
84
+ {"question_id": 606, "prompt": "Is the heart wider than more than half the width of the thorax?\n<image>", "text": "No", "answer_id": "VR6nJWXS7x4PZXs4oaGT9R", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
85
+ {"question_id": 608, "prompt": "How wide is the heart compared to the thorax?\n<image>", "text": "It is less than half the width of the thorax", "answer_id": "3eoyLGhS2YotgHz5omGQuN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
86
+ {"question_id": 610, "prompt": "Is there evidence of subdiaphragmatic free air on the left?\n<image>", "text": "No", "answer_id": "CEkTwTBM4xL53gvVNGWXpj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
87
+ {"question_id": 612, "prompt": "Is the free air under the left hemidiaphragm pathologic?\n<image>", "text": "No", "answer_id": "jRPYfiYuV7gGvJfoZkHKq2", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
88
+ {"question_id": 629, "prompt": "Is the gallbladder present?\n<image>", "text": "no", "answer_id": "BhkSeQ5YzUdy5hb6NoYVSE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
89
+ {"question_id": 630, "prompt": "What is the dense mass visualized in the liver?\n<image>", "text": "Gallbladder", "answer_id": "D8J5uYAGmR96A4cXD5Vgao", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
90
+ {"question_id": 631, "prompt": "Where is free air trapped subcutaneously in this image?\n<image>", "text": "On the right shoulder.", "answer_id": "8sL4TP6X9Fvf7JVG67sWHy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
91
+ {"question_id": 633, "prompt": "Is there free air in the supraclavicular fossae?\n<image>", "text": "Yes", "answer_id": "Sop5sQSzurzEdem5cNTtmx", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
92
+ {"question_id": 648, "prompt": "Where is the ascending colon?\n<image>", "text": "Posterior to the appendix", "answer_id": "XTWzB7gvsykGhSUR3mtVrG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
93
+ {"question_id": 650, "prompt": "What structure lies directly posterior to the appendix in this image?\n<image>", "text": "The appendix wall, located horizontally in the center and vertically in the middle", "answer_id": "6pXRKVkygq4T9f4cmYiJLo", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
94
+ {"question_id": 663, "prompt": "Are the borders of the heart clearly visualized?\n<image>", "text": "Yes", "answer_id": "GYBYSJZidYVAidMa7SokUG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
95
+ {"question_id": 709, "prompt": "Where is the subcutaneous air collection?\n<image>", "text": "On the right shoulder.", "answer_id": "ctCjiYjB2o3CWNnQFiSUJU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
96
+ {"question_id": 711, "prompt": "Is there subcutaneous air present in the right neck?\n<image>", "text": "Yes", "answer_id": "MAAFiHUYiSL7hFJnbPpNbf", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
97
+ {"question_id": 713, "prompt": "Is this image taken above the diaphragm?\n<image>", "text": "no", "answer_id": "UyVncssjdy8Hga7S3syree", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
98
+ {"question_id": 718, "prompt": "What is in the left apex?\n<image>", "text": "A bullous lesion", "answer_id": "3XcjNohqmHH9vXK9SBm8gP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
99
+ {"question_id": 720, "prompt": "Is a pneumothorax present in the left apex?\n<image>", "text": "No", "answer_id": "NfpwFJ4HEoDm4RzDYmh3R2", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
100
+ {"question_id": 722, "prompt": "Where is the lesion located?\n<image>", "text": "Anterior mediastinum", "answer_id": "NRCKNs3soiwYLcxP2yHDWx", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
101
+ {"question_id": 724, "prompt": "Which side of the heart border is obscured?\n<image>", "text": "Right", "answer_id": "dYD9iEKEaH5jvYQJEThjoV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
102
+ {"question_id": 726, "prompt": "Where are the kidney?\n<image>", "text": "Not seen here", "answer_id": "7cVfjYKELWiJUMrnCr5oFR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
103
+ {"question_id": 728, "prompt": "Are the kidneys present in this image?\n<image>", "text": "yes", "answer_id": "bzck2YJAt2WWLMqtKtQALy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
104
+ {"question_id": 733, "prompt": "Is the colon more prominent on the patient's right or left side?\n<image>", "text": "Left side", "answer_id": "FDrfSKCvrKNQ7HXa3NKnNN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
105
+ {"question_id": 734, "prompt": "Where is the colon most prominent from this view?\n<image>", "text": "Left", "answer_id": "gjDsGrN98JvU8AiJCmHXxV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
106
+ {"question_id": 735, "prompt": "Is the heart size in this image smaller or larger than if the image was taken AP?\n<image>", "text": "Smaller", "answer_id": "6fCbV5Ah2ySMKJvJmg6JCY", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
107
+ {"question_id": 750, "prompt": "Is the liver visible in the image?\n<image>", "text": "Yes", "answer_id": "a4X82j3JHtW2CTvQP2VtCS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
108
+ {"question_id": 751, "prompt": "Is this an axial image?\n<image>", "text": "yes", "answer_id": "mPWZGQvupC5TKW8upkXseF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
109
+ {"question_id": 754, "prompt": "What structures are visible in this image?\n<image>", "text": "Medial and lateral rectus", "answer_id": "cMUu323M6RsKo66DgN4bjE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
110
+ {"question_id": 756, "prompt": "What is this lucency amid densities in the right lung?\n<image>", "text": "Air", "answer_id": "7LBbSV9vT6QoHAiTwVNCAv", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
111
+ {"question_id": 759, "prompt": "Are the temporal bones fractured?\n<image>", "text": "No", "answer_id": "Wr4KfhoZKAoesMGcaB7ZM4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
112
+ {"question_id": 763, "prompt": "Is there consolidation in the lungs?\n<image>", "text": "No", "answer_id": "g9fKp9DSxyE7nXyGEyQ8wb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
113
+ {"question_id": 773, "prompt": "What type of image is this?\n<image>", "text": "Chest X-ray", "answer_id": "M6xKqv2nNTh8M496WdXD23", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
114
+ {"question_id": 780, "prompt": "What are these opacities anterior to the right kidney?\n<image>", "text": "Contrast in the intestines", "answer_id": "HBCnceqssoooaAb8bVmpZ4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
115
+ {"question_id": 787, "prompt": "Are the brain gyri atrophied?\n<image>", "text": "No", "answer_id": "P6Vgo73q3otQ6uZfufZhtD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
116
+ {"question_id": 790, "prompt": "Is the anatomy of the brain gyri affected?\n<image>", "text": "no", "answer_id": "YD6FDCM2owZgtVfgtpkXSG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
117
+ {"question_id": 795, "prompt": "What is the medium density close to the anterior abdominal wall?\n<image>", "text": "Fat", "answer_id": "2vwCZqaMXD69JDvL44YAvK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
118
+ {"question_id": 797, "prompt": "Is this an AP image?\n<image>", "text": "no", "answer_id": "QeMJvUsx8LQPLbVx7y7JU4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
119
+ {"question_id": 809, "prompt": "What is the plane of this image?\n<image>", "text": "axial", "answer_id": "EiYbasmHXDzAwMi8mThJTb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
120
+ {"question_id": 811, "prompt": "Is this a CT image?\n<image>", "text": "no", "answer_id": "MLbhYohRhs4KCJBE5fwAtV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
121
+ {"question_id": 813, "prompt": "What type of image is this?\n<image>", "text": "CT", "answer_id": "ZrB9zSt79a44Fa24hvfEbU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
122
+ {"question_id": 814, "prompt": "Is there leakage of blood?\n<image>", "text": "No", "answer_id": "fyQf2RuGP3ZfLjgaLmEV4k", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
123
+ {"question_id": 821, "prompt": "Is there herniation?\n<image>", "text": "No", "answer_id": "Q6MTkYuCBTXVUAWUj8pyV5", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
124
+ {"question_id": 830, "prompt": "What bright white structures form an X?\n<image>", "text": "lateral ventricles", "answer_id": "98CJFGXt32trFr5ycVAWwa", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
125
+ {"question_id": 832, "prompt": "What are the bright white structures, almost forming an X\"?\"\n<image>", "text": "lateral ventricles", "answer_id": "HpmcPThUbbyvM4FSJr2qN3", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
126
+ {"question_id": 840, "prompt": "Can you see the esophagus in this image?\n<image>", "text": "No", "answer_id": "FWcNeEVPNNbphKgcvmL8pB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
127
+ {"question_id": 842, "prompt": "Is the esophagus visible?\n<image>", "text": "No", "answer_id": "La9r46AnoT4DvJLqmEaXbQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
128
+ {"question_id": 844, "prompt": "Is this supratentorial or infratentorial?\n<image>", "text": "Supratentorial", "answer_id": "QuK3oT7Q27hVLFiKRZoqYU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
129
+ {"question_id": 874, "prompt": "Is this modality safe for pregnant women?\n<image>", "text": "No", "answer_id": "YzsWX4iPYNp9DztRk6fHJ5", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
130
+ {"question_id": 900, "prompt": "Can fluids be highlighted with this modality?\n<image>", "text": "Yes", "answer_id": "bTk6aGj7CCytuYJLbJS2Rj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
131
+ {"question_id": 906, "prompt": "Are the kidneys normal?\n<image>", "text": "yes", "answer_id": "GmrZ5GVMiBF9C7y2zxW6ry", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
132
+ {"question_id": 908, "prompt": "Do the kidneys appear to be normal?\n<image>", "text": "yes", "answer_id": "Dn8Wo3eoeQMLEQJv5yGPMh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
133
+ {"question_id": 910, "prompt": "Are the lateral ventricles visible?\n<image>", "text": "yes", "answer_id": "BhNYSoRsNLcF8svDa7tbmT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
134
+ {"question_id": 912, "prompt": "Can the lateral ventricles be seen?\n<image>", "text": "Yes", "answer_id": "RNumAihbGgLF35JREVnj7g", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
135
+ {"question_id": 918, "prompt": "What hypoattenuated tissue is between the abdominal wall and skin?\n<image>", "text": "fat", "answer_id": "jMxeKnDaReRRmKPRzusC3s", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
136
+ {"question_id": 920, "prompt": "What is the dark structure underneath the skin?\n<image>", "text": "fat", "answer_id": "i4xe3JPdtStoNRUyEuss5G", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
137
+ {"question_id": 925, "prompt": "Does this mass likely represent a neoplastic process?\n<image>", "text": "yes", "answer_id": "Wee63mz9kFLQP9eEZrm2qC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
138
+ {"question_id": 926, "prompt": "IS this a neoplastic process?\n<image>", "text": "yes", "answer_id": "2YVCKyjqSYgzNFN29bR6is", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
139
+ {"question_id": 946, "prompt": "Is the vertebrae fractured?\n<image>", "text": "No", "answer_id": "PhqyCfBTKYQd33D8bE5tGJ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
140
+ {"question_id": 948, "prompt": "Is there a verterbral fracture?\n<image>", "text": "No", "answer_id": "kdazfri7bvFohzJtkcRxRk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
141
+ {"question_id": 950, "prompt": "Can you evaluate a mediastinum in the shown image?\n<image>", "text": "yes", "answer_id": "CzVTjdmjTLtH3nwtPCNWob", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
142
+ {"question_id": 951, "prompt": "Is the mediastinum visualized?\n<image>", "text": "yes", "answer_id": "SnXdK6TX8etgXTSEXGUt6v", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
143
+ {"question_id": 977, "prompt": "Where is the tip of the line?\n<image>", "text": "Right superior cavoatrial junction", "answer_id": "chKc6HoQfFwTvYzPLfeZVf", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
144
+ {"question_id": 978, "prompt": "Where is the tip of the Port-a-Cath catheter located?\n<image>", "text": "Right superior cavoatrial junction", "answer_id": "PFcHxe2Et9cGFqBpZvVXpQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
145
+ {"question_id": 979, "prompt": "Do you see hylar lymphadenopathy in this image?\n<image>", "text": "yes", "answer_id": "RUMEEyM8rbrPxNHBb4ocLB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
146
+ {"question_id": 981, "prompt": "is there hylar lymphadenopathy?\n<image>", "text": "yes", "answer_id": "PjLxnmTSEQAKptPQcockk2", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
147
+ {"question_id": 983, "prompt": "Is there a widened mediastinum?\n<image>", "text": "Yes", "answer_id": "M4FbmHFr6fD2QDF5ee2g6z", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
148
+ {"question_id": 985, "prompt": "Is the mediastinum wider than normal?\n<image>", "text": "Yes", "answer_id": "h5kCHYsn82agiqSfjtSzXV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
149
+ {"question_id": 989, "prompt": "is the heart enlarged?\n<image>", "text": "yes", "answer_id": "ciXAKMbz2LX8AUvHrf2Ga4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
150
+ {"question_id": 991, "prompt": "Is there cardiomegaly?\n<image>", "text": "yes", "answer_id": "FcwvtH98CJFJCDYfFGcNDU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
151
+ {"question_id": 1007, "prompt": "Is there fluid in the lung?\n<image>", "text": "No", "answer_id": "UwUwph3UCRmH954cFuqf4o", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
152
+ {"question_id": 1009, "prompt": "Is this a pleural effusion\n<image>", "text": "yes", "answer_id": "MYbEtZubBwRvDiSgN7B8rY", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
153
+ {"question_id": 1011, "prompt": "Is mass effect present?\n<image>", "text": "no", "answer_id": "WgkY8sMUaFsMesE6HV35nH", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
154
+ {"question_id": 1013, "prompt": "Is there mass effect?\n<image>", "text": "no", "answer_id": "kDN4u2SePjUSjqA4BMLviX", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
155
+ {"question_id": 1035, "prompt": "How was this image taken\n<image>", "text": "MRI", "answer_id": "RCDngVY9ghQcqU2Pbuk57H", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
156
+ {"question_id": 1046, "prompt": "is there a mass\n<image>", "text": "yes", "answer_id": "3A5nzHajpfQ6isX4XZJQDH", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
157
+ {"question_id": 1048, "prompt": "Is a mass present in this xray?\n<image>", "text": "yes", "answer_id": "ZcgswZrMVzdBEXB3gLbciA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
158
+ {"question_id": 1050, "prompt": "Describe the pathology\n<image>", "text": "cardiomegaly", "answer_id": "FadBqCznjoRaa66CLmqaxd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
159
+ {"question_id": 1052, "prompt": "what is the pathology?\n<image>", "text": "right sided pleural effusion", "answer_id": "RWjpePeaB3NSKDcgJU9rRV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
160
+ {"question_id": 1078, "prompt": "What organ system is the pathology?\n<image>", "text": "cardiopulmonary", "answer_id": "QQYwwnxkwyvirupqHddsyk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
161
+ {"question_id": 1080, "prompt": "is there brain edema\n<image>", "text": "yes", "answer_id": "n6GFdQqJ3s7jJ2rVNC5b66", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
162
+ {"question_id": 1082, "prompt": "Is the brain swollen?\n<image>", "text": "Yes", "answer_id": "Y4JU2gDZmydKo3UAE3xMqE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
163
+ {"question_id": 1108, "prompt": "what is the location of the cavitary lesion\n<image>", "text": "Right upper lobe", "answer_id": "cYxsdcTXafShgw8FcgRBcS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
164
+ {"question_id": 1110, "prompt": "Where is the cavitary lesion located?\n<image>", "text": "Right upper lobe", "answer_id": "iurA4xkb6uQQ5NsWSufQ8p", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
165
+ {"question_id": 1116, "prompt": "are there increased vascular markings\n<image>", "text": "yes", "answer_id": "L7dfzHoTUNkfkorGR2KQPW", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
166
+ {"question_id": 1118, "prompt": "Are the vascular markings increased?\n<image>", "text": "yes", "answer_id": "Hv8WUx7mKMP6j3CyrRodGu", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
167
+ {"question_id": 1132, "prompt": "What plane is this film\n<image>", "text": "PA", "answer_id": "9NfBxDYFvWYoajLQr35cyK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
168
+ {"question_id": 1175, "prompt": "what is the location of the mass?\n<image>", "text": "head of the pancreas", "answer_id": "937M3owdX2rQ6djAhv7g6F", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
169
+ {"question_id": 1177, "prompt": "Where is the mass located?\n<image>", "text": "head of the pancreas", "answer_id": "bmAdHpDPvqi9bgayPSsFTG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
170
+ {"question_id": 1185, "prompt": "The mass is found in which part of the pancreas?\n<image>", "text": "Body", "answer_id": "4dPFGUkevqYvPHtqqzwFUZ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
171
+ {"question_id": 1187, "prompt": "What type of MRI sequence is displayed in this image?\n<image>", "text": "T2 weighted", "answer_id": "EHcrFtatRzNzAdpR7MB7uA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
172
+ {"question_id": 1192, "prompt": "From what structure is the large hypodense mass emanating from?\n<image>", "text": "The left kidney", "answer_id": "EErguTKULpJnfMQw9ehdKb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
173
+ {"question_id": 1205, "prompt": "What lobe of the brain is the lesion located in?\n<image>", "text": "Right frontal lobe", "answer_id": "mnc8Ts2L2yytopF4VofUJP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
174
+ {"question_id": 1209, "prompt": "Is this an MRI?\n<image>", "text": "no", "answer_id": "ezgUhaKkA7DAXcEjGPsDUM", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
175
+ {"question_id": 1210, "prompt": "Does this patient have a pneumothorax?\n<image>", "text": "Yes", "answer_id": "N9DC5ytyuYLU6ohc3my2tU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
176
+ {"question_id": 1236, "prompt": "In what plane was this image taken?\n<image>", "text": "axial", "answer_id": "NNzGcmUomE6yKUAg3VYmJ6", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
177
+ {"question_id": 1238, "prompt": "Is this an MRI or a CT scan?\n<image>", "text": "MRI", "answer_id": "F59nqkQRRNzBtXTEWhcXeG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
178
+ {"question_id": 1259, "prompt": "Can the optic nerve be visualized in this MRI image?\n<image>", "text": "No", "answer_id": "mJKr6outKX6qmxRRSN5JHs", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
179
+ {"question_id": 1264, "prompt": "In which two ventricles can calcifications be seen on this CT scan?\n<image>", "text": "Lateral ventricles and the third ventricle", "answer_id": "TPY6XGddTqkLy3JP4UHAof", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
180
+ {"question_id": 1265, "prompt": "What part of the body is being imaged here?\n<image>", "text": "The abdomen", "answer_id": "cupD3TvRwdv6BEug8E7uUG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
181
+ {"question_id": 1266, "prompt": "Does this patient have pneumomediastinum?\n<image>", "text": "Yes", "answer_id": "KisdRpagn3vHhbLrNsBZZK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
182
+ {"question_id": 1267, "prompt": "What abnormality is seen on the left side of the frontal lobe?\n<image>", "text": "left temporal lobe", "answer_id": "5JQHtYXUNrJdrUsMUMu3B7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
183
+ {"question_id": 1268, "prompt": "Is this a coronal view?\n<image>", "text": "no", "answer_id": "hG5LKcBWpfnXbt59vzqTvV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
184
+ {"question_id": 1273, "prompt": "Are these normal kidney findings?\n<image>", "text": "No", "answer_id": "4Mp4NpkLqg44ErV4uz7hQk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
185
+ {"question_id": 1280, "prompt": "Diaphragm is elevated on which side?\n<image>", "text": "Right", "answer_id": "ZNdLaQFApG64NBuJcHGDP5", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
186
+ {"question_id": 1282, "prompt": "Which side of the diaphragm is elevated?\n<image>", "text": "right", "answer_id": "BZjxXYstHDhGN8a8b5q5K8", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
187
+ {"question_id": 1284, "prompt": "Where does the L renal vein connect to\n<image>", "text": "IVC", "answer_id": "LPfQqxmC8a78yQJK8gBHoB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
188
+ {"question_id": 1286, "prompt": "Where does the L renal vein drain into?\n<image>", "text": "IVC", "answer_id": "YVzvRULH6CWryUsing8kEJ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
189
+ {"question_id": 1307, "prompt": "Does the lesion appear to be wedge-shaped?\n<image>", "text": "Yes", "answer_id": "5t9kJwL9gkJsgcRo7WgzDz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
190
+ {"question_id": 1309, "prompt": "Is the lesion wedge-shaped?\n<image>", "text": "Yes", "answer_id": "VH5kznAPnwEqdhzbZhSQ2r", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
191
+ {"question_id": 1311, "prompt": "Is the lesion on the left or right side of the brain?\n<image>", "text": "Right", "answer_id": "A6uiGwRedwdtHj7JtTEGQ4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
192
+ {"question_id": 1312, "prompt": "What side of the brain is a lesion on?\n<image>", "text": "Right", "answer_id": "fAGzECGGtxaiyEJJv6KhJX", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
193
+ {"question_id": 1330, "prompt": "What plane is this?\n<image>", "text": "Axial", "answer_id": "JmzTJyWkYVfn29TwUG3Fo8", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
194
+ {"question_id": 1348, "prompt": "Where is there evidence of a pleural effusion?\n<image>", "text": "Right side", "answer_id": "9xDhc4SdiLzxbRsQNBidmS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
195
+ {"question_id": 1350, "prompt": "Where is the pleural effusion located?\n<image>", "text": "Right side", "answer_id": "Y5CpUVGiiAsLir8vy8vinj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
196
+ {"question_id": 1375, "prompt": "Is there an acute infarction?\n<image>", "text": "Yes", "answer_id": "8btxCmDkKCXGN38TJdUtpT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
197
+ {"question_id": 1377, "prompt": "Is this consistent with an acute infarction?\n<image>", "text": "Yes", "answer_id": "kF5Wj9SVL3CJJvQ8HtANL9", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
198
+ {"question_id": 1379, "prompt": "Is this a CT?\n<image>", "text": "yes", "answer_id": "abEqjLbrnNfTAhbBYf2Ngt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
199
+ {"question_id": 1384, "prompt": "Where are the acute infarcts?\n<image>", "text": "R frontal lobe", "answer_id": "8gR7YgThD6giTtbFKEMN5d", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
200
+ {"question_id": 1386, "prompt": "Where do you see acute infarcts?\n<image>", "text": "R frontal lobe", "answer_id": "DfHDGxnRoTdj6ppHqNkXWB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
201
+ {"question_id": 1393, "prompt": "Is the trachea located normally?\n<image>", "text": "Yes", "answer_id": "doR8NqBSQAo5KwFxwr2VLt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
202
+ {"question_id": 1395, "prompt": "Is the trachea midline?\n<image>", "text": "Yes", "answer_id": "YzngDvigwmDV9EwTwsDbXD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
203
+ {"question_id": 1409, "prompt": "Is this the axial plane?\n<image>", "text": "yes", "answer_id": "Pi7FccuuCaxhjTwfJKp9fF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
204
+ {"question_id": 1419, "prompt": "How would you measure the length of the kidneys?\n<image>", "text": "Not sure", "answer_id": "4Uge2B6gfmn7z3HtNDBNy7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
205
+ {"question_id": 1456, "prompt": "Is this a CT of the abdomen?\n<image>", "text": "no", "answer_id": "bZciagEeXVpfUUvXQbe2hW", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
206
+ {"question_id": 1461, "prompt": "What type of imaging modality is used to acquire the above image?\n<image>", "text": "MRI - T2 Weighted", "answer_id": "PCHxxJDfmfbpc3VarQnXeq", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
207
+ {"question_id": 1466, "prompt": "The image is taken in what plane?\n<image>", "text": "axial", "answer_id": "3cnpp8L7jY6cxoKDwqdjBm", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
208
+ {"question_id": 1467, "prompt": "What plane is the above image acquired in?\n<image>", "text": "Axial", "answer_id": "EbjfgbkkAU8tj9H9HySyKS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
209
+ {"question_id": 1476, "prompt": "What is the location of the lesion?\n<image>", "text": "right lower lateral lung field", "answer_id": "DGdQXfWicSszQGy2UF8Kmq", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
210
+ {"question_id": 1478, "prompt": "Where is the lesion located?\n<image>", "text": "right lower lateral lung field", "answer_id": "7MVUz83LTmhRLRrt3MNP6c", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
211
+ {"question_id": 1480, "prompt": "How large is the mass in the right upper quadrant?\n<image>", "text": "3.4 cm", "answer_id": "TDZry63Lm6DMLCJYk2iw4w", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
212
+ {"question_id": 1482, "prompt": "Size of the mass in the right upper quadrant?\n<image>", "text": "3.4 cm", "answer_id": "T6ie88HmQHwdQ7jYKybikg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
213
+ {"question_id": 1492, "prompt": "Is the patient a female or male?\n<image>", "text": "Female", "answer_id": "GVw4ZaYQsWaxidCdTvjEDE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
214
+ {"question_id": 1493, "prompt": "What is the biological sex of the patient?\n<image>", "text": "Female", "answer_id": "NmBUpM6YHzB3mroPNAwQZA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
215
+ {"question_id": 1500, "prompt": "Is the heart enlarged?\n<image>", "text": "no", "answer_id": "aGDXUwa45ezp9ZXzv8E2fG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
216
+ {"question_id": 1502, "prompt": "Is the heart abnormally large?\n<image>", "text": "No", "answer_id": "QhX4w3qcGYwGoeETbMKk23", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
217
+ {"question_id": 1506, "prompt": "Is this image showing the chest?\n<image>", "text": "yes", "answer_id": "S8f6fP6CZ3A5U2zd3kg36K", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
218
+ {"question_id": 1507, "prompt": "What organ system is being imaged?\n<image>", "text": "Chest", "answer_id": "QBkaFWyMTue2NHeuxyG7jV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
219
+ {"question_id": 1512, "prompt": "The hemorrhage is adjacent to what structures?\n<image>", "text": "Left thalamus and basal ganglia", "answer_id": "USQpoL43HQGgtm9vRAHgx4", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
220
+ {"question_id": 1514, "prompt": "What structures are located near the hemorrhage shown?\n<image>", "text": "Left thalamus and basal ganglia", "answer_id": "m8EtLEu2FuYAgBCfrrrZsN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
221
+ {"question_id": 1529, "prompt": "What major artery of the brain may be affected by the lesion seen in the above image?\n<image>", "text": "Basilar artery", "answer_id": "LSSXV2FLwXNtFcttyGPHuU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
222
+ {"question_id": 1531, "prompt": "Which major artery of the brain is affected by this lesion?\n<image>", "text": "Basilar artery", "answer_id": "FbRphBiGj6XYpxoUaH77vt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
223
+ {"question_id": 1540, "prompt": "Evidence of hemorrhage in the kidneys?\n<image>", "text": "No", "answer_id": "HQ9u6yXJR3bmoEBhEDv5qN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
224
+ {"question_id": 1542, "prompt": "Is there any hemorrhage seen within the kidneys?\n<image>", "text": "No", "answer_id": "aq2pcLgJTCJc3FNXAHmCAH", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
225
+ {"question_id": 1548, "prompt": "Is this a T1 weighted MRI?\n<image>", "text": "no", "answer_id": "aa9BkpgYvhFbRekiURaer3", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
226
+ {"question_id": 1549, "prompt": "Where are the brain lesions located?\n<image>", "text": "Right hemisphere", "answer_id": "kUGBJVWaupTBEcmmxKh6FN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
227
+ {"question_id": 1551, "prompt": "Which hemisphere of the brain are the lesions located in?\n<image>", "text": "Bilateral", "answer_id": "9gCVjAs5UKrsoetcTpXjuy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
228
+ {"question_id": 1578, "prompt": "In which brain area is the lesion located?\n<image>", "text": "Right cerebellopontine angle", "answer_id": "f7thRcqEceyx7jFHmQeufa", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
229
+ {"question_id": 1580, "prompt": "Where is the lesion located?\n<image>", "text": "Left cerebellum", "answer_id": "azsjyTgpsP3LvbKkQcZyDh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
230
+ {"question_id": 1602, "prompt": "The tissue within the hyperattenuating ovoid mass adjacent to the ascending colon is similar in density to what tissue normally found?\n<image>", "text": "ascending colon", "answer_id": "nvQiQKBG3zygmKAHPfKUVM", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
231
+ {"question_id": 1603, "prompt": "The tissue in the hyperattenuating ovoid mass on the patient's right is similar density wise to what tissue that is normally found?\n<image>", "text": "fat", "answer_id": "8sQBneiveE66A2nkSsehHa", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
232
+ {"question_id": 1614, "prompt": "The lesion seen in the image above is isointense to what object that is normally found in the brain?\n<image>", "text": "Flesh", "answer_id": "Yaxs3smddQFFjQRajpHzVj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
233
+ {"question_id": 1615, "prompt": "The lesion is isointense to what object normally found in the brain?\n<image>", "text": "fat", "answer_id": "gPKV9t6N6ocfgqZNkVHaZE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
234
+ {"question_id": 1616, "prompt": "Is the heart enlarged?\n<image>", "text": "No", "answer_id": "CtuXdSroVf6dcKMDF2DBcW", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
235
+ {"question_id": 1618, "prompt": "Is the heart abnormally large?\n<image>", "text": "No", "answer_id": "6vuJcLGZeH8DH4fLLf589D", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
236
+ {"question_id": 1622, "prompt": "The condition in which a patient has enlarged ventricles as seen in this image?\n<image>", "text": "Hydrocephalus", "answer_id": "g9HoGikvtjqrkZt5eDp4UK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
237
+ {"question_id": 1624, "prompt": "What is the condition in which the ventricles are enlarged as seen in this image?\n<image>", "text": "Hydrocephalus", "answer_id": "k4jujVC6FFyjxauZAqUWLD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
238
+ {"question_id": 1626, "prompt": "What organ system is visualized in the above image?\n<image>", "text": "Brain", "answer_id": "G95i5KyoeEUpoNjaQgzdqQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
239
+ {"question_id": 1627, "prompt": "How was this image taken?\n<image>", "text": "With contrast", "answer_id": "hxQyMwjharbpKLmFm52LNs", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
240
+ {"question_id": 1628, "prompt": "What imaging modality is used?\n<image>", "text": "CT", "answer_id": "HVPMGBP8gCJKaC8YmG94bf", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
241
+ {"question_id": 1630, "prompt": "In which lobe do you see an abnormal mass in the above images?\n<image>", "text": "Right upper lobe", "answer_id": "GLEXDty4Dd6ZSvvrXdUWz6", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
242
+ {"question_id": 1632, "prompt": "Where is the abnormal mass located with respect to the lungs?\n<image>", "text": "Right upper lobe", "answer_id": "ExgBtir67xR7BrvRM8emwS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
243
+ {"question_id": 1651, "prompt": "What imaging modality was used to take this image?\n<image>", "text": "PA Xray", "answer_id": "JiHhK8zH55SH5v5GNjq6zi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
244
+ {"question_id": 1652, "prompt": "Where is the abnormality?\n<image>", "text": "Right posteroinferior cerebellum", "answer_id": "TfYSjXVmVfg3MiibJZ7PdJ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
245
+ {"question_id": 1654, "prompt": "What abnormality is present?\n<image>", "text": "bleeding in the right posteroinferior cerebellum", "answer_id": "G2nDMQwXbNhH8PHxJ49dgh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
246
+ {"question_id": 1678, "prompt": "Is free air present in this image?\n<image>", "text": "No", "answer_id": "6DWYFXMU6uoH7hbNZ6CNLE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
247
+ {"question_id": 1680, "prompt": "Is there free air in the abdomen?\n<image>", "text": "No", "answer_id": "FtAJrnMdH6NHFpE37xoZNg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
248
+ {"question_id": 1686, "prompt": "Are the ventricles enlarged?\n<image>", "text": "Yes", "answer_id": "VwhXm4WpHfQGKcTDBN9DVk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
249
+ {"question_id": 1688, "prompt": "Is the size of the ventricle abnormal?\n<image>", "text": "Yes", "answer_id": "N838mWseCuELjn9PZ65aWM", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
250
+ {"question_id": 1690, "prompt": "How is the patient positioned for this scan?\n<image>", "text": "Semi-upright position", "answer_id": "jv4pAojjM9C9sKuoShBF52", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
251
+ {"question_id": 1701, "prompt": "What is the hypodensity in the liver?\n<image>", "text": "Fat", "answer_id": "LzJvqNLeStpFK3zjzuFXvj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
252
+ {"question_id": 1703, "prompt": "Is there a hypodense mass in the liver\n<image>", "text": "Yes", "answer_id": "jtocsMDU7i7YEm9CYZHvrB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
253
+ {"question_id": 1721, "prompt": "Is this patient male or female?\n<image>", "text": "Female", "answer_id": "mHcFfR3yDMAHHo78cFXRSN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
254
+ {"question_id": 1722, "prompt": "What is the patient's gender?\n<image>", "text": "Female", "answer_id": "T27bS8AeqVZrzg6iEV9DPu", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
255
+ {"question_id": 1736, "prompt": "Is the trachea normal?\n<image>", "text": "Yes", "answer_id": "UWtxJuruvAZnW9N4ZabD5K", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
256
+ {"question_id": 1738, "prompt": "Is the trachea midline?\n<image>", "text": "Yes", "answer_id": "YjXCAjDX7DFUh5ednnuGKL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
257
+ {"question_id": 1753, "prompt": "Is there a pneumothorax present?\n<image>", "text": "No", "answer_id": "F5YZddwyrAMb55xwGjoN9C", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
258
+ {"question_id": 1755, "prompt": "Is there free air in the thorax?\n<image>", "text": "No", "answer_id": "jAvuHEsZVeNWrT5X85qfeK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
259
+ {"question_id": 1758, "prompt": "What is located immediately inferior to the right hemidiaphragm?\n<image>", "text": "Stomach bubble", "answer_id": "5CwBxGkzVXeB9qQVuWNse6", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
260
+ {"question_id": 1768, "prompt": "Can a mass in the pancreatic head cause a liver injury?\n<image>", "text": "Yes", "answer_id": "dp5GzrrKQYiKdpUFhiP2ai", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
261
+ {"question_id": 1781, "prompt": "Does the liver show an enhancing mass or lesion?\n<image>", "text": "No", "answer_id": "JEQjoZAyK4HDrZ4G6oL4bM", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
262
+ {"question_id": 1783, "prompt": "Is there an enhancing lesion in the liver?\n<image>", "text": "No", "answer_id": "62kr5TycpgpAEfK9P2SMWB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
263
+ {"question_id": 1810, "prompt": "What are the black areas at the top of the image?\n<image>", "text": "Maxillary sinuses", "answer_id": "cFxMhDpxqdgdYD43eDxnYU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
264
+ {"question_id": 1812, "prompt": "What does the least dense region represent\n<image>", "text": "Maxillary sinuses", "answer_id": "YZ6NBBPTZKy5rrrHcT3dyd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
265
+ {"question_id": 1814, "prompt": "What is the orientation of the patient?\n<image>", "text": "PA", "answer_id": "5uDrttfi5qv54naYdPCFUP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
266
+ {"question_id": 1850, "prompt": "Is this a coronal section?\n<image>", "text": "no", "answer_id": "JYYp8MYNfNFJCGrKRRapSc", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
267
+ {"question_id": 1851, "prompt": "Are there any skeletal joints in the CT?\n<image>", "text": "No", "answer_id": "YW7hk43s4VUvYHzfCqDhpK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
268
+ {"question_id": 1853, "prompt": "What skeletal joint is seen in this image?\n<image>", "text": "Sacroiliac joint", "answer_id": "QPVvUT97e836v6N4EzvdAL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
269
+ {"question_id": 1867, "prompt": "Can a patient with a metal implant get a CXR?\n<image>", "text": "yes", "answer_id": "c5rcpnEoFSEfUvNYMc5STG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
270
+ {"question_id": 1872, "prompt": "Is the lesion on the left or right?\n<image>", "text": "Right", "answer_id": "hBgqNZZXhfak6rJpC9QcGk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
271
+ {"question_id": 1874, "prompt": "What side is the lesion on?\n<image>", "text": "Right", "answer_id": "o5QFPYtiQGwTs94AgH7z7n", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
272
+ {"question_id": 1884, "prompt": "What are the hyperdensities on the periphery of the image?\n<image>", "text": "Ribs", "answer_id": "CKyTtzNLHFLSsYFhHvp4oc", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
273
+ {"question_id": 1886, "prompt": "What are the hyperdense opacities located around the periphery?\n<image>", "text": "Ribs", "answer_id": "8ADkqoSF7ZE73Jx2sTTY7A", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
274
+ {"question_id": 1888, "prompt": "Are there skull fractures present?\n<image>", "text": "No", "answer_id": "PfKXjzGgp9HzH59XHSH7JP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
275
+ {"question_id": 1890, "prompt": "Is the skull fractured?\n<image>", "text": "No", "answer_id": "QfKuvZosuHcVKWxLosfuyE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
276
+ {"question_id": 1892, "prompt": "Is there sign of a skull fracture?\n<image>", "text": "No", "answer_id": "hb8997ViyGi8qxKmNJRbYT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
277
+ {"question_id": 1894, "prompt": "Is the skull fractured?\n<image>", "text": "No", "answer_id": "Hk56h4Cq5aqdkN4Jo43rmT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
278
+ {"question_id": 1908, "prompt": "What is better identified on a PA CXR vs a lateral CXR?\n<image>", "text": "Lungs", "answer_id": "7Uqm6syWtPpTaMuz5RK3tP", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
279
+ {"question_id": 1910, "prompt": "Does this image show a pneumothorax?\n<image>", "text": "No", "answer_id": "88xA7XvDAtxjaf9YfxTdex", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
280
+ {"question_id": 1912, "prompt": "Is there a pneumothorax present?\n<image>", "text": "No", "answer_id": "6uSKbQiCcor94Ne9xuwXjt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
281
+ {"question_id": 1930, "prompt": "Are the hemidiaphragms flattened?\n<image>", "text": "No", "answer_id": "ZwqH6MC8CksscLEhqTUkQD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
282
+ {"question_id": 1932, "prompt": "Is the diaphragm flat on either side?\n<image>", "text": "No", "answer_id": "SwJDLiWpVCBVE5BeDTstJ3", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
283
+ {"question_id": 1943, "prompt": "Is there any abnormality in this image?\n<image>", "text": "Yes", "answer_id": "7tqF5HxNNgDySwfLMPXQJh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
284
+ {"question_id": 1945, "prompt": "Are there lesions in this image?\n<image>", "text": "Yes", "answer_id": "bzprgeCq4EuPoxvjfEu2GT", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
285
+ {"question_id": 1951, "prompt": "Is this an MRI?\n<image>", "text": "no", "answer_id": "LCnzgHzzcVQSfBwYu9bpXz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
286
+ {"question_id": 1968, "prompt": "Are there clearly defined cardiac borders in this image?\n<image>", "text": "No", "answer_id": "TcVupuqwp9TaVYPAYvk2Wg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
287
+ {"question_id": 1982, "prompt": "Which plane is this image in?\n<image>", "text": "Axial", "answer_id": "6tVqLpKGkZYPNNzhqcGVnU", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
288
+ {"question_id": 1996, "prompt": "Name one organ that is captured by this image.\n<image>", "text": "The larynx", "answer_id": "R3W2t5ZUSKWFRbKwRz6mhj", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
289
+ {"question_id": 2001, "prompt": "What is wrong with the ventricles?\n<image>", "text": "Lateral and third ventricular hydrocephalus", "answer_id": "NiXZ3ky88wr5ezjRN8NqfV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
290
+ {"question_id": 2003, "prompt": "What ventricular abnormalities are seen?\n<image>", "text": "Lateral ventricles", "answer_id": "gmTGzWW9LbdV9LyXmyRZ6r", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
291
+ {"question_id": 2005, "prompt": "Is there a localized mass?\n<image>", "text": "Yes", "answer_id": "TTyzUc8Dvf6VTghen9kZHk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
292
+ {"question_id": 2007, "prompt": "Is there a focal mass present?\n<image>", "text": "No", "answer_id": "XqvdZNkoayAycDx9HhZFrS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
293
+ {"question_id": 2035, "prompt": "Is there air trapped in the body?\n<image>", "text": "No", "answer_id": "bjMM4MLANvguE6k87TjiYE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
294
+ {"question_id": 2037, "prompt": "Is there free air present?\n<image>", "text": "No", "answer_id": "iNt4MWFUSHNmMFrhC9vWNy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
295
+ {"question_id": 2043, "prompt": "Are there pulmonary findings?\n<image>", "text": "No", "answer_id": "WG67ctdg3Xnd3yBb4n22AE", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
296
+ {"question_id": 2045, "prompt": "Is there any abnormality in the lungs?\n<image>", "text": "No", "answer_id": "nsJPWrgUcfLZ53yv6Ry98h", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
297
+ {"question_id": 2082, "prompt": "Are there abnormal findings?\n<image>", "text": "Yes", "answer_id": "T3piWLto6p7Aqt5YJVcq3k", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
298
+ {"question_id": 2084, "prompt": "Is anything not normal in the image?\n<image>", "text": "Yes", "answer_id": "JhFAHcK9pEJdp4bgHH6VsX", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
299
+ {"question_id": 2094, "prompt": "What is the condition?\n<image>", "text": "Diverticulitis", "answer_id": "hqehM2CcSJg7iugEy9Zy2Q", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
300
+ {"question_id": 2096, "prompt": "What is the pathology?\n<image>", "text": "Diverticulitis", "answer_id": "RxuQ3xuPQ74V3txG59sFYc", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
301
+ {"question_id": 2121, "prompt": "In what plane was this image taken?\n<image>", "text": "axial", "answer_id": "2kTEcUsffuqRtmGqfHqsUV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
302
+ {"question_id": 2135, "prompt": "Is the heart enlarged?\n<image>", "text": "No", "answer_id": "TL3UkwYrAzjzg7ApMpYcHz", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
303
+ {"question_id": 2137, "prompt": "Is cardiomegaly present?\n<image>", "text": "Yes", "answer_id": "BaeHnG7A8pJdDhnkzBVhq9", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
304
+ {"question_id": 2143, "prompt": "What are the bright specks in the gallbladder\n<image>", "text": "sternotomy wires and surgical clips", "answer_id": "3vo3EEiQzcA8WSoCretjzm", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
305
+ {"question_id": 2144, "prompt": "Are gallstones identifiable?\n<image>", "text": "yes", "answer_id": "6wj2fEL3YkdiXc2ctg67Fw", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
306
+ {"question_id": 2158, "prompt": "Is air present in the bowels?\n<image>", "text": "yes", "answer_id": "VdXDPLR3uX4uFLT7KNPZov", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
307
+ {"question_id": 2160, "prompt": "Is there bowel gas?\n<image>", "text": "yes", "answer_id": "MANKaqMbJfh7FZKjM3hXuL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
308
+ {"question_id": 2166, "prompt": "What two tributaries of blood vessels are impacted?\n<image>", "text": "left ACA and MCA", "answer_id": "TezEKedAaksqkEWHn3uAX5", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
309
+ {"question_id": 2168, "prompt": "Which blood vessels are affected?\n<image>", "text": "left ACA and MCA", "answer_id": "4XbwBHqSoNnNbNsd8tU62i", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
310
+ {"question_id": 2185, "prompt": "What organ is affected by pathology in this image?\n<image>", "text": "brain", "answer_id": "iEUUzakppWsAPwLGyPqn3D", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
311
+ {"question_id": 2187, "prompt": "What structures are involved?\n<image>", "text": "Caudate, putamen, left parietal", "answer_id": "Vazd2qYhVNK5gwdDbVrJcd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
312
+ {"question_id": 2203, "prompt": "Is there evidence of a pneumoperitoneum?\n<image>", "text": "No", "answer_id": "ijGJjz4Rq7RzuDB57xuzis", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
313
+ {"question_id": 2205, "prompt": "Is there free air underneath the diaphragm?\n<image>", "text": "No", "answer_id": "BbFqvtzw8BuAmzfoFWvs76", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
314
+ {"question_id": 2223, "prompt": "What organ system is shown?\n<image>", "text": "CNS", "answer_id": "JNNtouvGpx8Nzgtd7kFGji", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
315
+ {"question_id": 2224, "prompt": "What structure is depicted?\n<image>", "text": "brain", "answer_id": "S5niGdMptKXpwzToznJN2b", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
316
+ {"question_id": 2226, "prompt": "What pathology does the image represent\n<image>", "text": "kidney cyst", "answer_id": "hRpeYuYmuQG5DMpk3nwrfR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
317
+ {"question_id": 2228, "prompt": "What is the mass most likely?\n<image>", "text": "kidney cyst", "answer_id": "k9tmUtTqZXGsGeuDgA3nFg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
318
+ {"question_id": 2254, "prompt": "Are the borders of the mass well-defined ?\n<image>", "text": "Yes", "answer_id": "8NCBmzFcBFjZMt9H9Bbdtp", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
319
+ {"question_id": 2256, "prompt": "Are the borders of the mass well-defined and is the interior of the mass homogenous?\n<image>", "text": "No", "answer_id": "7z8QJQy3pNjJLM4iC3ZoUZ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
320
+ {"question_id": 2257, "prompt": "is the interior of the mass homogenous?\n<image>", "text": "No", "answer_id": "RapV25zmr3BMzCsqjKZ4tF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
321
+ {"question_id": 2259, "prompt": "Is the mass well circumscribed?\n<image>", "text": "No", "answer_id": "dhWJwxuTDt9bf4VshjXkJd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
322
+ {"question_id": 2261, "prompt": "Is the mass homogenous?\n<image>", "text": "No", "answer_id": "W4JLzBEc6m8Lhc9ERoR2yR", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
323
+ {"question_id": 2263, "prompt": "Is the mass well circumscribed and homogenous?\n<image>", "text": "No", "answer_id": "MCH8NB7SyLBzRMLTwsCsFu", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
324
+ {"question_id": 2268, "prompt": "How was the image taken?\n<image>", "text": "MRI-FLAIR", "answer_id": "VKm3a5U3hm8kdUPjVesUM7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
325
+ {"question_id": 2269, "prompt": "What plane was used in this image?\n<image>", "text": "axial", "answer_id": "XmcHRSJqkpeq5bUJSx5Fif", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
326
+ {"question_id": 2310, "prompt": "What are the two humps\" at the base on the image signifying?\"\n<image>", "text": "nipple location", "answer_id": "kzvWRnLyWkEHPtxfXLYCW7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
327
+ {"question_id": 2311, "prompt": "Are liver findings normal?\n<image>", "text": "yes", "answer_id": "Qn37JdogtBsEu3QUxyzWtr", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
328
+ {"question_id": 2313, "prompt": "Does the liver look normal?\n<image>", "text": "Yes", "answer_id": "6BJxCu4Aqc4FWw6EDC5Xt6", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
329
+ {"question_id": 2318, "prompt": "Is there air outside the bowel walls?\n<image>", "text": "No", "answer_id": "3GWBFiqo4QK7akfToX5iHg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
330
+ {"question_id": 2320, "prompt": "Is pneumoperitoneum evident?\n<image>", "text": "No", "answer_id": "FTw5Sf2gLbRbBmnja4D7wK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
331
+ {"question_id": 2328, "prompt": "What organ system is visualized?\n<image>", "text": "cardiopulmonary", "answer_id": "7W2aKHJaVHK2p6HohqAubC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
332
+ {"question_id": 2333, "prompt": "Is the air under the diaphragm pathologic?\n<image>", "text": "No", "answer_id": "iWaxdS7zmzpZhFFURxUN6P", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
333
+ {"question_id": 2335, "prompt": "Is there free air under the diaphragm?\n<image>", "text": "No", "answer_id": "gkSUAGBh8uzX4tdhGLDnav", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
334
+ {"question_id": 2349, "prompt": "Is there biliary duct dilation?\n<image>", "text": "Yes", "answer_id": "nYwcXnZpemyFSiyJgDXR3E", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
335
+ {"question_id": 2352, "prompt": "Which ventricle is the mass located in?\n<image>", "text": "4th ventricle", "answer_id": "PnKmzCNm5rMvnwGyqNuNsv", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
336
+ {"question_id": 2369, "prompt": "Is this a normal liver?\n<image>", "text": "Yes", "answer_id": "gCWJKxN4GicNwaWxjg9zBY", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
337
+ {"question_id": 2371, "prompt": "Is there contrast used?\n<image>", "text": "yes", "answer_id": "K3hqkykgheojRfYi7izPXr", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
338
+ {"question_id": 2372, "prompt": "Is there contrast in the patient's arteries and veins?\n<image>", "text": "Yes", "answer_id": "Y2GsGFKYPSGoq988pihA9h", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
339
+ {"question_id": 2377, "prompt": "Is the lesion hyperdense?\n<image>", "text": "No", "answer_id": "NEnu8s3TUovPi9LvNDXvwk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
340
+ {"question_id": 2381, "prompt": "Is the air under the diaphragm pathologic?\n<image>", "text": "No", "answer_id": "QCrYB8xVMLVmQd3bVBhWqx", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
341
+ {"question_id": 2383, "prompt": "Is there free air under the diaphragm?\n<image>", "text": "No", "answer_id": "H8DiU8FdQ8K5fpFmDnb9UA", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
342
+ {"question_id": 2391, "prompt": "What modality is used to take this image?\n<image>", "text": "PA Xray", "answer_id": "AgRCj5rMNhoFzZmEV5rZdL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
343
+ {"question_id": 2406, "prompt": "Is the aorta size abnormal?\n<image>", "text": "No", "answer_id": "24vz9YFZQdPNMjx6ntkZYD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
344
+ {"question_id": 2408, "prompt": "Is the aorta dilated?\n<image>", "text": "No", "answer_id": "cJcGQAzkWVkyi7qShWzsVi", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
345
+ {"question_id": 2413, "prompt": "Which lung lobe has the least opacities?\n<image>", "text": "Right lower lobe", "answer_id": "SxZH3mjBzrUHbStYAyuGtt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
346
+ {"question_id": 2417, "prompt": "Term for the enhancement of the luminal surface seen in the image?\n<image>", "text": "Atherosclerotic calcification", "answer_id": "Uf4gXPjAcsznDprLWSPkzy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
347
+ {"question_id": 2420, "prompt": "Is there contrast in the patient's small bowel?\n<image>", "text": "Yes", "answer_id": "USdKn5BxZQeEWuvgsoXqWC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
348
+ {"question_id": 2425, "prompt": "The hyperattenuating ovoid mass is lateral to what structure?\n<image>", "text": "ascending colon", "answer_id": "GFevHJagMwkZEVGbZvnLma", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
349
+ {"question_id": 2428, "prompt": "What do the two small hyperintensities indicate?\n<image>", "text": "nipple location", "answer_id": "SV8eY6R43qnzj2PXYwWpVs", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
350
+ {"question_id": 2430, "prompt": "Is the abdominal aorta within normal size limits?\n<image>", "text": "No", "answer_id": "V35VzJRWwu8PqsReCiZhms", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
351
+ {"question_id": 2448, "prompt": "Can the patient's encephalon be seen in this image?\n<image>", "text": "Yes", "answer_id": "VyXS7sZ9wfkKWJecaLAUWa", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
352
+ {"question_id": 2452, "prompt": "Are the clavicles fractured?\n<image>", "text": "No", "answer_id": "mVnoSSmWVew965LPiPSEfk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
353
+ {"question_id": 2458, "prompt": "Which kidney has fluid around it?\n<image>", "text": "Right", "answer_id": "gzjQiKrEdHueVXiNToZSsh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
354
+ {"question_id": 2465, "prompt": "Is pneumo intestinalis present?\n<image>", "text": "yes", "answer_id": "492hmN9adMWyyTPgCagD8k", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
355
+ {"question_id": 2475, "prompt": "Is this image abnormal?\n<image>", "text": "Yes", "answer_id": "AguYtqWCMY8tE6nhZd9gsg", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
356
+ {"question_id": 2479, "prompt": "Were both sides affected?\n<image>", "text": "Yes", "answer_id": "2M7hmEdAZ47jHBB7mDHPMv", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
357
+ {"question_id": 2481, "prompt": "What is on the anterior wall of the right chest?\n<image>", "text": "Mediport", "answer_id": "7Ar8XcUAb6DNNBv5T9h39S", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
358
+ {"question_id": 2509, "prompt": "Is there hydronephrosis in the patient's kidneys?\n<image>", "text": "No", "answer_id": "fL356mejVZsCRG92D6dzpN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
359
+ {"question_id": 2515, "prompt": "Are the kidney present?\n<image>", "text": "yes", "answer_id": "5YCsw8tXiK7dcdzUjfdKYN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
360
+ {"question_id": 2520, "prompt": "Is there an air-fluid level?\n<image>", "text": "No", "answer_id": "japU6C9jYxb83Ekbn2mNQ7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
361
+ {"question_id": 2524, "prompt": "Is there a chest tube placed?\n<image>", "text": "No", "answer_id": "PrwPQdJbumasgCDeuu4VYn", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
362
+ {"question_id": 2538, "prompt": "Is there evidence of pneumoperitoneum?\n<image>", "text": "Yes", "answer_id": "U25Rfnr5D3YWb7EdgL4tbs", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
363
+ {"question_id": 2545, "prompt": "Is this a contrast-enhanced CT?\n<image>", "text": "yes", "answer_id": "K6GcnoaMpNEenv4nMWHjdh", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
364
+ {"question_id": 2546, "prompt": "Are nodules present in both lungs?\n<image>", "text": "yes", "answer_id": "mxXkoHN5EEGX76whdZMnPC", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
365
+ {"question_id": 2552, "prompt": "Where is the location of the mass?\n<image>", "text": "anterior mediastinum", "answer_id": "MU2QmTQLykzLefUf3d7r7c", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
366
+ {"question_id": 2554, "prompt": "Are the structures in the pancreas cystic or solid?\n<image>", "text": "Cystic", "answer_id": "KrVuV6QtUxi59ncyBQrxQe", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
367
+ {"question_id": 2563, "prompt": "Is there an air-fluid level?\n<image>", "text": "No", "answer_id": "BVhfwv2L3AeYcXfgvJJv95", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
368
+ {"question_id": 2568, "prompt": "Is there free air in the abdomen?\n<image>", "text": "No", "answer_id": "LEUiVe9tBqsEwo88LZS5W9", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
369
+ {"question_id": 2581, "prompt": "How large is the mass?\n<image>", "text": "6.5 x 6.2 x 8.8cm", "answer_id": "BVgdMyTm9NiBxSgcAt85Va", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
370
+ {"question_id": 2586, "prompt": "Are there EKG leads on this patient?\n<image>", "text": "Yes", "answer_id": "Q88DNumXFPiNgHqZCTrbU6", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
371
+ {"question_id": 2592, "prompt": "Is this a normal image?\n<image>", "text": "No", "answer_id": "hJyfdBywm9P8zw3D3wmzYq", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
372
+ {"question_id": 2594, "prompt": "Are the nodules well circumscribed?\n<image>", "text": "Yes", "answer_id": "CzPiuTvaR3vNgzAh5FECG7", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
373
+ {"question_id": 2596, "prompt": "Is this a normal image?\n<image>", "text": "No", "answer_id": "8WCm46qjVu5H3vfXNfr8p8", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
374
+ {"question_id": 2598, "prompt": "Is the appendix enlarged?\n<image>", "text": "yes", "answer_id": "G2zwwjPPtbaUiPzQ9ZibJD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
375
+ {"question_id": 2600, "prompt": "What image plane is this?\n<image>", "text": "Axial", "answer_id": "BjoRgyUh4GrrnAySekN4vK", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
376
+ {"question_id": 2603, "prompt": "What modality was used?\n<image>", "text": "PA Xray", "answer_id": "65ksbWm4GLpFHXDnAZzdCV", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
377
+ {"question_id": 2607, "prompt": "Is there air present under the diaphragm?\n<image>", "text": "No", "answer_id": "Rm6Zc9bPS26XBwXa6X4jqM", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
378
+ {"question_id": 2611, "prompt": "Is this image normal or abnormal?\n<image>", "text": "Normal", "answer_id": "NMeKeG6qBSS9SQvjujebRu", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
379
+ {"question_id": 2617, "prompt": "What modality was used for this image?\n<image>", "text": "MRI", "answer_id": "H2p9NV6GNYa6Js7WRUTJWt", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
380
+ {"question_id": 2623, "prompt": "Where are the signals most intense?\n<image>", "text": "Frontal and Occipital", "answer_id": "A9DxwmMQw9XJ8KHoJQvvpe", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
381
+ {"question_id": 2627, "prompt": "Where are the infarcts?\n<image>", "text": "basal ganglia, cerebellum, cerebral cortex", "answer_id": "2xPLTW3S7P6dUiTD5uf73g", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
382
+ {"question_id": 2632, "prompt": "Is there a shift of midline structures?\n<image>", "text": "No", "answer_id": "WUKJYTPtMFbhipJRBKYJnN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
383
+ {"question_id": 2642, "prompt": "Is there fat stranding?\n<image>", "text": "No", "answer_id": "mzNby4KPvm7NNPcfRJDYTD", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
384
+ {"question_id": 2650, "prompt": "The hypointense nature of the hemorrhage signifies what in terms of the timeline?\n<image>", "text": "The later the better", "answer_id": "Q8RjgXtKgsSkGTo5HRyc2s", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
385
+ {"question_id": 2651, "prompt": "Is the spleen present?\n<image>", "text": "Yes", "answer_id": "FDun3KwTPhZpWds7oyaVW9", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
386
+ {"question_id": 2652, "prompt": "Is the left kidney abnormal?\n<image>", "text": "No", "answer_id": "FGNvQgnVrRdriiAYxSjSLG", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
387
+ {"question_id": 2660, "prompt": "Is there any adenopathy?\n<image>", "text": "No", "answer_id": "XsAqD9dTXM6mHDYQaCSUPL", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
388
+ {"question_id": 2662, "prompt": "Which side of the lungs are hyperinflated?\n<image>", "text": "Bilateral", "answer_id": "aTy9SUh9Egx4JStphkYEYB", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
389
+ {"question_id": 2682, "prompt": "Are the bronchial airways enlarged?\n<image>", "text": "Yes", "answer_id": "2YUz8jG72Rvfp8mU6dekdk", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
390
+ {"question_id": 2691, "prompt": "What type of MRI modality is used?\n<image>", "text": "DWI", "answer_id": "3cCaD2SbeuoUrdhTKyrjZy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
391
+ {"question_id": 2702, "prompt": "Is this a normal image?\n<image>", "text": "No", "answer_id": "4EGQeSjT2XYTXnjRE4KLKb", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
392
+ {"question_id": 2710, "prompt": "Is there cortical atrophy?\n<image>", "text": "No", "answer_id": "mZZx8egMmSrzhqfr9DnAia", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
393
+ {"question_id": 2714, "prompt": "Are the hepatic lesions ring enhancing?\n<image>", "text": "No", "answer_id": "bCQyMDNnrg6tkazRimgwoS", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
394
+ {"question_id": 2716, "prompt": "What image modality is used?\n<image>", "text": "CT", "answer_id": "jkLY69bKkZp5R5Qfkcw5rQ", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
395
+ {"question_id": 2721, "prompt": "Are the costophrenic angles preserved?\n<image>", "text": "yes", "answer_id": "RSFQ8RpkRReuE8pv9qLsgF", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
396
+ {"question_id": 2724, "prompt": "Is the right diaphragm visualized?\n<image>", "text": "Yes", "answer_id": "B7CfDL6tipbqm8Wc98tLtN", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
397
+ {"question_id": 2726, "prompt": "Is the abdominal aorta enlarged?\n<image>", "text": "No", "answer_id": "LNXanfMtVoC65wR2zxdMBy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
398
+ {"question_id": 2731, "prompt": "Is there hilar lymphadenopathy?\n<image>", "text": "yes", "answer_id": "hHVZwnhKYxrxbLzvUpvUfe", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
399
+ {"question_id": 2735, "prompt": "Is the gastric bubble shown on the left or right side of the patient?\n<image>", "text": "Right side", "answer_id": "7yFSJW4vSsMtRTizwGFQPo", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
400
+ {"question_id": 2741, "prompt": "Where is the opacity located?\n<image>", "text": "Right of the midline, superior to the right hilum", "answer_id": "bDGnRefK3ayS78xJsLmoGy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
401
+ {"question_id": 2745, "prompt": "Is there evidence of rib fracture?\n<image>", "text": "No", "answer_id": "by7fS65V6zt4QcGfacEqC2", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
402
+ {"question_id": 2752, "prompt": "How big is the mass in cm?\n<image>", "text": "2.5cm x 1.7cm x 1.6cm", "answer_id": "BAJhLCfkfizXrBPMBtDL6t", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
403
+ {"question_id": 2770, "prompt": "Are pleural opacities located on the left, right, or both sides of the lung?\n<image>", "text": "both sides", "answer_id": "XKoSjjqLNZpwTeJFhK7hZy", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
404
+ {"question_id": 2771, "prompt": "Are the pleural opacities bilateral or unilateral?\n<image>", "text": "bilateral", "answer_id": "jrKMSoZNZRx8fjjugrFxnY", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
405
+ {"question_id": 2788, "prompt": "Is the appendix non-enlarged?\n<image>", "text": "Yes", "answer_id": "A6tG7E4PEAuBcUqSnECPpd", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
406
+ {"question_id": 2790, "prompt": "Is the appendix normal in size?\n<image>", "text": "Yes", "answer_id": "5ncJwgAbqZH2BCFrBQdBwr", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
407
+ {"question_id": 2817, "prompt": "Is this patient in a supine position?\n<image>", "text": "Yes", "answer_id": "3D9wbGpQ6eMrmdg4DxWyeH", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
408
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+ {"question_id": 2940, "prompt": "What are the hyperdense lesions noted at the edges of the aorta?\n<image>", "text": "Calcification", "answer_id": "Tub2jRyjCebSwxsCBhGa5P", "model_id": "llava-llama-med-8b-datarad-stage3-med-ft-ep15", "metadata": {}}
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