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Update PresetDatabase.json

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  1. PresetDatabase.json +18 -18
PresetDatabase.json CHANGED
@@ -32,9 +32,9 @@
32
  "ParameterMap_MRI_HN.txt"
33
  ],
34
  "models": [
35
- "VBoussot/impact-torchscript-models:MIND/R1D2.pt"
36
  ],
37
- "preprocess_function": "Preprocess:standardize_MRI",
38
  "iterations": 1050,
39
  "short_description": "Optimized preset for MR/CT registration on head & neck",
40
  "description": "A four-level recursive B-spline deformable registration optimized for MRI head-and-neck images, driven by the IMPACT metric and combining semantic features extracted from the pretrained MIND model at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm). The optimization follows a multi-resolution scheme with up to 300, 300, 250, and 200 ASGD iterations, using stochastic sampling and a composite metric (IMPACT + mutual information + bending energy) to achieve robust semantic alignment in complex head-and-neck anatomy."
@@ -46,10 +46,10 @@
46
  "ParameterMap_MRI_MRSeg.txt"
47
  ],
48
  "models": [
49
- "VBoussot/impact-torchscript-models:MRSeg/MRSeg_8_Layers.pt",
50
- "VBoussot/impact-torchscript-models:MIND/R1D2.pt"
51
  ],
52
- "preprocess_function": "Preprocess:standardize_MRI",
53
  "iterations": 1100,
54
  "short_description": "Generic MR/CT deformable registration using MIND + MRSegmentator features",
55
  "description": "A four-level recursive B-spline deformable registration optimized for generic MR/CT alignment, driven by the IMPACT metric and combining semantic features from two pretrained models: MIND (L1 distance on a subset of 32 features) and MRSegmentator (Dice overlap on segmentation outputs with 64 features). Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm) with level-dependent weighting between MIND and MRSegmentator (0.2/0.8, 0.3/0.7, 0.6/0.4, 0.7/0.3). The optimization follows a multi-resolution ASGD scheme with up to 400, 300, 200, and 200 iterations using 2000 random spatial samples, and a composite objective (IMPACT + mutual information + bending energy penalty) to ensure robust cross-modality semantic alignment and smooth deformations."
@@ -61,10 +61,10 @@
61
  "ParameterMap_MRI_TS.txt"
62
  ],
63
  "models": [
64
- "VBoussot/impact-torchscript-models:TS/M852_8_Layers.pt",
65
- "VBoussot/impact-torchscript-models:MIND/R1D2.pt"
66
  ],
67
- "preprocess_function": "Preprocess:standardize_MRI",
68
  "iterations": 1100,
69
  "short_description": "Generic MR/CT deformable registration using MIND + Totalsegmentator features",
70
  "description": "A four-level recursive B-spline deformable registration optimized for generic MR/CT alignment, driven by the IMPACT metric and combining semantic features from two pretrained models: MIND (L1 distance on a subset of 32 features) and Totalsegmentator (Dice overlap on segmentation outputs with 64 features). Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm) with level-dependent weighting between MIND and MRSegmentator (0.2/0.8, 0.3/0.7, 0.6/0.4, 0.7/0.3). The optimization follows a multi-resolution ASGD scheme with up to 400, 300, 200, and 200 iterations using 2000 random spatial samples, and a composite objective (IMPACT + mutual information + bending energy penalty) to ensure robust cross-modality semantic alignment and smooth deformations."
@@ -76,10 +76,10 @@
76
  "ParameterMap_CBCT_generic_MRSeg.txt"
77
  ],
78
  "models": [
79
- "VBoussot/impact-torchscript-models:MRSeg/MRSeg_8_Layers.pt",
80
- "VBoussot/impact-torchscript-models:MIND/R1D2.pt"
81
  ],
82
- "preprocess_function": "Preprocess:standardize_MRI",
83
  "iterations": 1050,
84
  "short_description": "Generic CBCT/CT deformable registration using MRSegmentator features",
85
  "description": "A four-level recursive B-spline deformable registration optimized for generic CBCT/CT alignment, driven by the IMPACT metric using semantic features extracted from the pretrained MRSegmentator model. The scheme follows a multi-resolution strategy with up to 300, 300, 250, and 200 ASGD iterations and 2000 stochastic spatial samples per level. Features are extracted at progressively finer voxel scales (3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm), with a level-dependent combination of Dice-based segmentation overlap and L1 feature distances on selected internal layers of MRSegmentator. Early levels rely on pure Dice supervision, while finer stages progressively integrate feature-level alignment with increasing L1 contribution (0.3/0.7, 0.5/0.5) and a final purely feature-based stage. The optimization minimizes a composite objective (IMPACT + mutual information + bending energy penalty), enabling robust cross-modality alignment between CBCT and CT while enforcing smooth, physically plausible deformations."
@@ -91,10 +91,10 @@
91
  "ParameterMap_CBCT_generic_TS.txt"
92
  ],
93
  "models": [
94
- "VBoussot/impact-torchscript-models:TS/M852_8_Layers.pt",
95
- "VBoussot/impact-torchscript-models:TS/M850_8_Layers.pt"
96
  ],
97
- "preprocess_function": "Preprocess:standardize_MRI",
98
  "iterations": 1050,
99
  "short_description": "Generic CBCT/CT deformable registration using TotalSegmentator features",
100
  "description": "A four-level recursive B-spline deformable registration optimized for generic CBCT/CT alignment, driven by the IMPACT metric using semantic features extracted from pretrained TotalSegmentator TorchScript models. The optimization follows a multi-resolution ASGD scheme with up to 300, 300, 250, and 200 iterations using 2000 random spatial samples per level. Features are extracted at progressively finer voxel scales (3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm), starting with Dice-based overlap on segmentation outputs and progressively integrating feature-level alignment via L1 distances on selected internal layers (0.3/0.7 then 0.5/0.5 L1/Dice), ending with a final purely feature-based stage. A composite objective (IMPACT + mutual information + bending energy penalty) ensures robust cross-modality alignment while enforcing smooth, physically plausible deformations."
@@ -106,11 +106,11 @@
106
  "ParameterMap_CBCT_HN.txt"
107
  ],
108
  "models": [
109
- "VBoussot/impact-torchscript-models:TS/M732_2_Layers.pt",
110
- "VBoussot/impact-torchscript-models:TS/M731_2_Layers.pt",
111
- "VBoussot/impact-torchscript-models:TS/M730_2_Layers.pt"
112
  ],
113
- "preprocess_function": "Preprocess:standardize_MRI",
114
  "iterations": 1150,
115
  "short_description": "Optimized preset for CBCT/CT registration on head & neck",
116
  "description": "A five-level recursive B-spline deformable registration optimized for CBCT/CT head-and-neck alignment, driven by the IMPACT metric using semantic features extracted from pretrained TotalSegmentator TorchScript models. The optimization follows a multi-resolution ASGD scheme with up to 300, 300, 200, 200, and 150 iterations and 2000 stochastic spatial samples per level. Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm) using L1 distances on selected internal layers of the network. A composite objective (IMPACT + mutual information + bending energy penalty, with increased MI weight) ensures robust cross-modality alignment in complex head-and-neck anatomy while enforcing smooth, physically plausible deformations."
 
32
  "ParameterMap_MRI_HN.txt"
33
  ],
34
  "models": [
35
+ "VBoussot/impact-torchscript-models:MIND/R1D2_3D.pt"
36
  ],
37
+ "preprocess_function": "",
38
  "iterations": 1050,
39
  "short_description": "Optimized preset for MR/CT registration on head & neck",
40
  "description": "A four-level recursive B-spline deformable registration optimized for MRI head-and-neck images, driven by the IMPACT metric and combining semantic features extracted from the pretrained MIND model at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm). The optimization follows a multi-resolution scheme with up to 300, 300, 250, and 200 ASGD iterations, using stochastic sampling and a composite metric (IMPACT + mutual information + bending energy) to achieve robust semantic alignment in complex head-and-neck anatomy."
 
46
  "ParameterMap_MRI_MRSeg.txt"
47
  ],
48
  "models": [
49
+ "VBoussot/impact-torchscript-models:MRSeg/MRSeg.pt",
50
+ "VBoussot/impact-torchscript-models:MIND/R1D2_3D.pt"
51
  ],
52
+ "preprocess_function": "",
53
  "iterations": 1100,
54
  "short_description": "Generic MR/CT deformable registration using MIND + MRSegmentator features",
55
  "description": "A four-level recursive B-spline deformable registration optimized for generic MR/CT alignment, driven by the IMPACT metric and combining semantic features from two pretrained models: MIND (L1 distance on a subset of 32 features) and MRSegmentator (Dice overlap on segmentation outputs with 64 features). Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm) with level-dependent weighting between MIND and MRSegmentator (0.2/0.8, 0.3/0.7, 0.6/0.4, 0.7/0.3). The optimization follows a multi-resolution ASGD scheme with up to 400, 300, 200, and 200 iterations using 2000 random spatial samples, and a composite objective (IMPACT + mutual information + bending energy penalty) to ensure robust cross-modality semantic alignment and smooth deformations."
 
61
  "ParameterMap_MRI_TS.txt"
62
  ],
63
  "models": [
64
+ "VBoussot/impact-torchscript-models:TS/M852.pt",
65
+ "VBoussot/impact-torchscript-models:MIND/R1D2_3D.pt"
66
  ],
67
+ "preprocess_function": "",
68
  "iterations": 1100,
69
  "short_description": "Generic MR/CT deformable registration using MIND + Totalsegmentator features",
70
  "description": "A four-level recursive B-spline deformable registration optimized for generic MR/CT alignment, driven by the IMPACT metric and combining semantic features from two pretrained models: MIND (L1 distance on a subset of 32 features) and Totalsegmentator (Dice overlap on segmentation outputs with 64 features). Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 2 mm, 2 mm) with level-dependent weighting between MIND and MRSegmentator (0.2/0.8, 0.3/0.7, 0.6/0.4, 0.7/0.3). The optimization follows a multi-resolution ASGD scheme with up to 400, 300, 200, and 200 iterations using 2000 random spatial samples, and a composite objective (IMPACT + mutual information + bending energy penalty) to ensure robust cross-modality semantic alignment and smooth deformations."
 
76
  "ParameterMap_CBCT_generic_MRSeg.txt"
77
  ],
78
  "models": [
79
+ "VBoussot/impact-torchscript-models:MRSeg/MRSeg.pt",
80
+ "VBoussot/impact-torchscript-models:MIND/R1D2_3D.pt"
81
  ],
82
+ "preprocess_function": "",
83
  "iterations": 1050,
84
  "short_description": "Generic CBCT/CT deformable registration using MRSegmentator features",
85
  "description": "A four-level recursive B-spline deformable registration optimized for generic CBCT/CT alignment, driven by the IMPACT metric using semantic features extracted from the pretrained MRSegmentator model. The scheme follows a multi-resolution strategy with up to 300, 300, 250, and 200 ASGD iterations and 2000 stochastic spatial samples per level. Features are extracted at progressively finer voxel scales (3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm), with a level-dependent combination of Dice-based segmentation overlap and L1 feature distances on selected internal layers of MRSegmentator. Early levels rely on pure Dice supervision, while finer stages progressively integrate feature-level alignment with increasing L1 contribution (0.3/0.7, 0.5/0.5) and a final purely feature-based stage. The optimization minimizes a composite objective (IMPACT + mutual information + bending energy penalty), enabling robust cross-modality alignment between CBCT and CT while enforcing smooth, physically plausible deformations."
 
91
  "ParameterMap_CBCT_generic_TS.txt"
92
  ],
93
  "models": [
94
+ "VBoussot/impact-torchscript-models:TS/M852.pt",
95
+ "VBoussot/impact-torchscript-models:TS/M850.pt"
96
  ],
97
+ "preprocess_function": "",
98
  "iterations": 1050,
99
  "short_description": "Generic CBCT/CT deformable registration using TotalSegmentator features",
100
  "description": "A four-level recursive B-spline deformable registration optimized for generic CBCT/CT alignment, driven by the IMPACT metric using semantic features extracted from pretrained TotalSegmentator TorchScript models. The optimization follows a multi-resolution ASGD scheme with up to 300, 300, 250, and 200 iterations using 2000 random spatial samples per level. Features are extracted at progressively finer voxel scales (3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm), starting with Dice-based overlap on segmentation outputs and progressively integrating feature-level alignment via L1 distances on selected internal layers (0.3/0.7 then 0.5/0.5 L1/Dice), ending with a final purely feature-based stage. A composite objective (IMPACT + mutual information + bending energy penalty) ensures robust cross-modality alignment while enforcing smooth, physically plausible deformations."
 
106
  "ParameterMap_CBCT_HN.txt"
107
  ],
108
  "models": [
109
+ "VBoussot/impact-torchscript-models:TS/M732.pt",
110
+ "VBoussot/impact-torchscript-models:TS/M731.pt",
111
+ "VBoussot/impact-torchscript-models:TS/M730.pt"
112
  ],
113
+ "preprocess_function": "",
114
  "iterations": 1150,
115
  "short_description": "Optimized preset for CBCT/CT registration on head & neck",
116
  "description": "A five-level recursive B-spline deformable registration optimized for CBCT/CT head-and-neck alignment, driven by the IMPACT metric using semantic features extracted from pretrained TotalSegmentator TorchScript models. The optimization follows a multi-resolution ASGD scheme with up to 300, 300, 200, 200, and 150 iterations and 2000 stochastic spatial samples per level. Features are extracted at progressively finer voxel scales (6 mm, 3 mm, 3 mm, 2×2×3 mm, 2×2×3 mm) using L1 distances on selected internal layers of the network. A composite objective (IMPACT + mutual information + bending energy penalty, with increased MI weight) ensures robust cross-modality alignment in complex head-and-neck anatomy while enforcing smooth, physically plausible deformations."