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MedImg: An Integrated Database for Public Medical Image.

Bitao Zhong,Rui Fan,3 Authors,Chunmei Cui

2025 · DOI: 10.1093/gpbjnl/qzaf068
Genomics, Proteomics & Bioinformatics · 0 Citations

TLDR

An online database, MedImg, is constructed, which incorporates and systematically organizes these medical images to facilitate data accessibility and serves as an intuitive and open-access platform for facilitating research in deep learning-based medical image analysis.

Abstract

The advancements in deep learning algorithms for medical image analysis have garnered significant attention in recent years. While several studies show promising results, with models achieving or even surpassing human performance, translating these advancements into clinical practice is still accompanied by various challenges. A primary obstacle lies in the availability of large-scale, well-characterized datasets for validating the generalization of approaches. To address this challenge, we curated a diverse collection of medical image datasets from multiple public sources, containing 105 datasets and a total of 1,995,671 images. These images span 14 modalities, including X-ray, computed tomography, magnetic resonance imaging, optical coherence tomography, ultrasound, and endoscopy, and originate from 13 organs, such as the lung, brain, eye, and heart. Subsequently, we constructed an online database, MedImg, which incorporates and systematically organizes these medical images to facilitate data accessibility. MedImg serves as an intuitive and open-access platform for facilitating research in deep learning-based medical image analysis, accessible at https://www.cuilab.cn/medimg/.