Singpath_CytoText / README.md
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metadata
license: apache-2.0
task_categories:
  - question-answering
tags:
  - medical
size_categories:
  - 10K<n<100K

Dataset for Singpath-VL

Singpath-CytoText

Dataset Description

Singpath-CytoText is a cervical cytology image dataset with structured pathological descriptions and annotations. Each image contains a bounding box highlighting anchor cell and provides a structured description (e.g., nuclear size, chromatin pattern, nuclear membrane status, etc.), a natural language caption, and a final cytological label (e.g., ASC-H). This dataset can be used for multimodal learning, vision-language pre-training, and medical image report generation.

Supported Tasks and Leaderboards

  • Image Classification: Predict the Bethesda category (e.g., ASC-H, NILM) from a cell image.
  • Vision-Language Modeling: Generate structured pathological descriptions or reports from images.
  • Cross-Modal Retrieval: Retrieve similar cell images using natural language queries.

Languages

All text fields (structured description, caption, label) are in Chinese.

Dataset Structure

Data Instances

A typical data point from Singpath-CytoText.json:

{
    "image_name": "dEPhZAhdwBFttBzk_2363_130_280_244.jpg",
    "structured description": {
        "核大小": "增大",
        "核染色质": "不均匀,颗粒粗,聚集明显",
        "核数量": "单核",
        "核质比": "增高",
        "核膜": "不规则",
        "核仁": "未见",
        "胞质状态": "胞浆量少,着色浅,无特殊结构",
        "异常病理指征": "细胞核异型性:存在;角化异常:未见,不存在挖空细胞",
        "细胞空间构型": "未见聚集成团"
    },
    "caption": "框中细胞核增大,核染色质不均匀、深染,颗粒较粗且聚集明显;核膜轮廓不规则,核质比增高,为单核结构,未见明显核仁。胞浆量较少,着色较浅,无空泡化或其他特殊结构。细胞呈分散分布,未见聚集成团。。不存在挖空细胞。",
    "label": "ASC-H"
}

CytoCell-Bench

Dataset Description

CytoCell-Bench is a benchmark dataset for cervical cytology image classification. Each image corresponds to a cell region and provides a classification label according to the Bethesda system (e.g., NILM, ASC-US, LSIL, HSIL). This dataset is intended to serve as a standardized testbed for cytology image classification algorithms.

Supported Tasks and Leaderboards

  • Image Classification: Predict the Bethesda category of a cell image. This task can serve as a benchmark in medical image classification.

Languages

Labels are in English abbreviations (e.g., NILM) following the international Bethesda reporting system.

Dataset Structure

Data Instances

A typical data point from CytoCell-Bench.json:

{
    "image_name": "AIMS-419_19096.0_44486.0_crop_000.jpg",
    "label": "NILM"
}

📖 Citation

If you find the dataset useful in your research, please consider citing:

@article{qiu2026singpath,
  title={Singpath-VL Technical Report},
  author={Qiu, Zhen and Xiao, Kaiwen and Lu, Zhengwei and Liu, Xiangyu and Zhao, Lei and Zhang, Hao},
  journal={arXiv preprint arXiv:2602.09523},
  year={2026}
}