AI4Meder

AI4Meder 站内搜索

搜索医学 AI 论文与资源

按论文、数据资源、技术竞赛、投稿截止日期和课程资源检索社区内容,快速进入对应详情页。

23 条结果

输入关键词或点击标签,按论文、数据资源、竞赛截止日期、征稿与课程缩小范围。 标签:Benchmark 范围:数据资源

清空筛选
数据资源critical care time-series variables and outcomesICU time-series benchmark datasetPhysioNet Challenge 2012 dataset; version 1.0.0开放访问

PhysioNet/CinC 2012 ICU 时间序列数据集

The PhysioNet/CinC Challenge 2012 dataset contains ICU time-series records used for mortality prediction and patient-specific outcome modeling. It remains a useful benchmark for clinical time-series modeling, missingness-aware learning, and early warning model development.

数据资源abdominal CT and MRI with multi-organ annotationsabdominal multi-organ segmentation benchmarkAMOS 2022 challenge benchmark; see official Grand Challenge page申请访问

AMOS 腹部多器官分割基准

AMOS is an abdominal multi-organ segmentation benchmark with CT and MRI cases for evaluating versatile medical image segmentation models. It supports abdominal organ segmentation, modality-general segmentation, and benchmarking of robust 3D segmentation methods.

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brain MRI with demographic and clinical variablesbrain MRI and neuroimaging dataset collectionOASIS cross-sectional and longitudinal releases; see official site开放访问

OASIS 脑 MRI 与神经影像数据集

OASIS provides open-access neuroimaging datasets for studying normal aging, dementia, and brain structure. It is useful for brain MRI segmentation, age prediction, dementia classification, longitudinal modeling, and neuroimaging method benchmarking.

数据资源dermoscopic and clinical skin lesion imagesdermatology image archiveLarge public ISIC dermatology image archive开放访问

ISIC Archive 皮肤病学图像数据集

The ISIC Archive is a large public dermatology image repository for skin lesion analysis. It is widely used for melanoma classification, lesion segmentation, dermoscopic image retrieval, bias and domain shift analysis, and clinical imaging benchmark development.

数据资源2D and 3D biomedical imagesstandardized biomedical image benchmark12 2D datasets and 6 3D datasets in MedMNIST v2开放访问

MedMNIST v2 生物医学图像基准

MedMNIST v2 is a standardized collection of lightweight biomedical image classification datasets, including 2D and 3D tasks. It is useful for quick benchmarking, AutoML, foundation model sanity checks, and reproducible evaluation across multiple medical imaging domains.

数据资源multimodal brain MRI with tumor annotationsbrain tumor MRI segmentation challenge datasetBraTS 2024 challenge dataset; see Synapse project申请访问

BraTS 2024 脑肿瘤分割挑战数据集

BraTS 2024 provides multimodal brain MRI data and expert annotations for brain tumor segmentation and related tumor subregion analysis. It is a major benchmark for glioma segmentation, radiology AI, and robust multimodal MRI segmentation methods.

数据资源abdominal CT with kidney and tumor annotationskidney tumor CT segmentation datasetTCIA C4KC-KiTS collection; see collection page开放访问

C4KC-KiTS 肾肿瘤分割集合

C4KC-KiTS is a TCIA imaging collection associated with kidney and kidney tumor segmentation benchmarks. It supports kidney segmentation, renal tumor segmentation, surgical planning research, and evaluation of abdominal CT segmentation models.

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EEG and polysomnography biosignalssleep physiology signal datasetExpanded Sleep-EDF PhysioNet dataset; version 1.0.0开放访问

Sleep-EDF Expanded 多导睡眠图数据集

Sleep-EDF Expanded contains polysomnographic sleep recordings with EEG and related physiological signals. It is used for sleep stage classification, biosignal time-series modeling, self-supervised learning on physiological signals, and clinical sleep research benchmarks.

数据资源12-lead ECG waveforms with diagnostic labelsECG waveform benchmarkLarge public ECG dataset; version 1.0.3开放访问

PTB-XL:大型开放 12 导联 ECG 数据集

PTB-XL is a large public 12-lead electrocardiography dataset with diagnostic statements and waveform records. It is a standard benchmark for ECG classification, cardiac abnormality detection, clinical signal representation learning, and robust evaluation of biosignal models.

数据资源deidentified structured EHR tablescritical care EHR datasetLarge-scale hospital and ICU EHR dataset; version 3.1申请访问

MIMIC-IV v3.1 重症监护与住院 EHR 数据集

MIMIC-IV is a large deidentified electronic health record dataset from Beth Israel Deaconess Medical Center, covering hospital and ICU data for critical care research. It is a core benchmark source for clinical prediction, temporal EHR modeling, phenotyping, and healthcare AI method development.

数据资源medical exam question-answer textmedical exam QA benchmarkUSMLE, Mainland China, and Taiwan exam-style QA splits; see repository开放访问

MedQA:含美国、中国大陆与台湾拆分的医学考试问答数据集

MedQA is a medical examination question answering benchmark with English and Chinese medical licensing-style question sets, including mainland China and Taiwan variants. It is widely used for medical QA and medical reasoning evaluation.

数据资源Chinese medical exam and QA textChinese medical LLM evaluation benchmarkMultiple Chinese medical exam and benchmark splits; see Hugging Face card开放访问

CMB:中文医学基准

CMB is a comprehensive Chinese medical benchmark for evaluating medical large language models on medical exams, reasoning, and clinical knowledge questions. It is suited for Chinese medical QA, LLM evaluation, and instruction-following assessment.

数据资源Chinese biomedical and clinical textChinese biomedical NLP benchmark8 biomedical NLU tasks; see official repository开放访问

CBLUE:中文生物医学语言理解评测基准

CBLUE is a Chinese biomedical language understanding benchmark covering real-world biomedical NLP tasks such as named entity recognition, relation extraction, term normalization, clinical trial classification, sentence similarity, and medical question answering. It is useful for evaluating Chinese clinical NLP models and medical language models.