Preprint
Review

This version is not peer-reviewed.

A Survey of Contrastive Learning in Medical AI: Foundations, Biomedical Modalities, and Future Directions

Submitted:

25 December 2025

Posted:

26 December 2025

You are already at the latest version

Abstract
Medical artificial intelligence (AI) systems depend heavily on high-quality data representations to enable accurate prediction, diagnosis, and clinical decision-making. Yet, the availability of large, well-annotated medical datasets is often limited by cost, privacy concerns, and the need for expert labeling, motivating increased interest in self-supervised representation learning approaches. Among these, contrastive learning has emerged as one of the most influential paradigms, driving significant progress in representation learning across computer vision and natural language processing. This paper presents a comprehensive review of contrastive learning in medical AI, highlighting its theoretical foundations, methodological advances, and practical applications in medical imaging, electronic health records (EHRs), physiological signal analysis, and genomics. Furthermore, the study identifies common challenges such as pair construction, augmentation sensitivity, and evaluation inconsistencies, while discussing emerging trends including multimodal alignment, federated learning, and privacy-preserving frameworks. Through a synthesis of current developments and open research directions, this paper offers insights that advance data-efficient, reliable, and generalizable medical AI systems.
Keywords: 
;  ;  ;  ;  
Copyright: This open access article is published under a Creative Commons CC BY 4.0 license, which permit the free download, distribution, and reuse, provided that the author and preprint are cited in any reuse.
Prerpints.org logo

Preprints.org is a free preprint server supported by MDPI in Basel, Switzerland.

Subscribe

Disclaimer

Terms of Use

Privacy Policy

Privacy Settings

© 2025 MDPI (Basel, Switzerland) unless otherwise stated