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数据资源chest radiographs with pneumonia/lung opacity annotationschest X-ray pneumonia detection challenge datasetRSNA 2018 AI image challenge dataset开放访问

RSNA 肺炎检测挑战数据集

The RSNA Pneumonia Detection Challenge dataset is a chest radiograph benchmark for detecting pneumonia-related lung opacities. It supports object detection, chest X-ray classification, localization, and radiology AI evaluation under a competition framework.

数据资源chest radiographs with radiologist annotationschest X-ray detection and classification datasetVinDr-CXR release on PhysioNet; version 1.0.0开放访问

VinDr-CXR:越南胸部 X 光数据集

VinDr-CXR is a chest X-ray dataset with radiologist annotations from Vietnamese hospitals. It supports abnormality classification, lesion localization, radiology object detection, and robustness studies across clinical sites and populations.

数据资源frontal chest radiographs with image-level labelschest X-ray classification datasetNIH public ChestX-ray14 release开放访问

NIH ChestX-ray14 数据集

NIH ChestX-ray14 is a public chest radiograph dataset with image-level labels for thoracic disease findings mined from reports. It is commonly used for chest X-ray classification, weak supervision, thoracic disease detection, and radiology benchmark comparisons.

数据资源chest radiographs with multi-label findingschest X-ray classification datasetLarge-scale Stanford chest X-ray dataset申请访问

CheXpert 胸部 X 光数据集

CheXpert is a large chest radiograph dataset from Stanford with uncertainty-aware labels for common chest X-ray findings. It is widely used for radiology classification, label uncertainty modeling, chest X-ray representation learning, and clinical imaging benchmarks.

数据资源chest radiographs with radiology reportschest X-ray image-report datasetLarge-scale CXR image-report dataset; version 2.1.0申请访问

MIMIC-CXR v2.1.0 胸部 X 光数据集

MIMIC-CXR is a large deidentified chest radiograph dataset with associated free-text radiology reports. It is widely used for chest X-ray classification, report generation, image-text representation learning, radiology retrieval, and medical multimodal foundation model evaluation.