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--- |
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configs: |
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- config_name: default |
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data_files: |
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- split: demo |
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path: "demo.tsv" |
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- split: classification |
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path: "*classification*" |
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- split: localization |
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path: "*localization*" |
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- split: segmentation |
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path: "*segmentation*" |
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- split: report_generation |
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path: "*report*" |
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--- |
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# Dataset Description |
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Our OmniFM-Dr framework introduces a multi-task chest x-ray dataset, which is used for |
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the joint training of disease classification, localization, segmentation, and report generation. This dataset comprises various |
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publicly available datasets, such as MIMIC-CXR, VinDr-CXR, and ChestX-Det10. For each image, |
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it can potentially contribute to multiple tasks, such as report generation and classification. |
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**NOTE**: Due to requirements related to data compliance and other regulations, the dataset is temporarily unavailable. However, for each task, we will provide a showcase of five samples. |
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## Dataset Details |
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- [**MIMIC:**](https://physionet.org/content/mimic-cxr/2.0.0/) contains more than 377,110 radiograph images from over 227,835 radiographic studies. Each radiograph is paired with lesion classification and associated radiology report. It |
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is used for multi-label classification and report generation tasks. |
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- [**Padchest:**](https://arxiv.org/abs/1901.07441) includes 160,840 images obtained from 67,000 patients, covering six different position views. |
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Different radiographic findings were labeled and used for the classification task in this study. |
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- [**CXR-AL14:**]() is a large-scale dataset for chest X-ray image detection. It has more than 140,000 chest X-ray |
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radiographs containing 253,844 bounding boxes in 14 chest abnormal object categories. |
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- [**VinDr-CXR:**](https://www.nature.com/articles/s41597-022-01498-w) includes chest radiographs with annotations for the classification of 28 common chest |
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diseases. The dataset contains 15,000 CXR scans in the training set. We select eight diseases from the dataset |
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along with their corresponding bounding box for the disease localization task. |
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- [**ChestX-Det:**](https://arxiv.org/abs/2104.10326) consists of 3,578 images from [NIH ChestXray14](https://arxiv.org/abs/1705.02315) for 13 common disease. We select |
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seven diseases from the dataset along with bounding box for the disease localization task. |
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- [**CheXmask:**](https://arxiv.org/abs/2307.03293) contains 676,803 lung and heart segmentation masks of chest images from six publicly |
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available databases: CANDID-PTX, ChestXray14, Chexpert, MIMIC-CXR, Padchest, and VinDr-CXR. We |
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include 224,316 data for training and 10,000 data from ChestXray14 for downstream evaluation. |
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- [**SIIM:**](https://www.kaggle.com/c/siim-acr-pneumothorax-segmentation) comes from the SIIM-ACR Pneumothorax Segmentation competition and contains 12,090 images, |
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among which approximately 3,000 cases are positive for pneumothorax disease with masks. |
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## Dataset Structure |
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- **MIMIC:** |
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- MIMIC_classification_report-generation_xxx.tsv: is used for classification and report generation tasks. For each row, |
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it contains id, report, "label1 && label2", subject_id, study_id, dicom_id. |
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- MIMIC_classification-location_xxx.tsv: is used for location vqa task. For each row, |
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it contains id, "label1,severity && label2, severity", subject_id, study_id, dicom_id. |
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- MIMIC_classification-severity_xxx.tsv: is used for severity vqa task. For each row, |
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it contains id, "label, location1 & location2", subject_id, study_id, dicom_id. |
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- **Padchest:** |
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- Padchest_classification_xxx.tsv: is used for classification task. For each row, |
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it contains id, "label1 && label2", subject_id, study_id, dicom_id. |
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- **CXR-AL14:** |
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- CXR_AL14_localization_xxx.tsv: is used for locatization and classification tasks. For each row, |
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it contains id, label, "x1,y1,x2,y2", image_id. |
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- **VinDr-CXR:** |
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- VinDr_CXR_localization_xxx.tsv: is used for locatization and classification tasks. For each row, |
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it contains id, label, "x1,y1,x2,y2", image_id. |
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- **ChestX-Det:** |
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- ChestX_Det_localization_xxx.tsv: is used for locatization and classification tasks. For each row, |
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it contains id, label, "x1,y1,x2,y2", image_id. |
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- **CheXmask:** |
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- CheXmask_segmentation_xxx.tsv: is used for segmentation task. For each row, |
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it contains id, label, "x1,y1,x2,y2, ..., x30, y30", subject_id, study_id, dicom_id. |
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- **SIIM:** |
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- SIIM_segmentation_xxx.tsv: is used for segmentation task. For each row, |
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it contains id, label, "x1,y1,x2,y2, ..., x30, y30", subject_id, study_id, dicom_id. |
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## Dataset Use |
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- Please run data_prepare.py, which constructs a training batch for all tasks. Each row should contain the following: id, instruction, label, image_id, and task_type. |
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