AILGDec 3, 2024

Medical Multimodal Foundation Models in Clinical Diagnosis and Treatment: Applications, Challenges, and Future Directions

arXiv:2412.02621v139 citationsh-index: 8Artif. Intell. Medicine
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper summarizing existing developments for researchers and practitioners in healthcare AI.

This review analyzes Medical Multimodal Foundation Models (MMFMs) for clinical diagnosis and treatment, highlighting their use of multi-organ and multimodal datasets to improve diagnostic precision and treatment efficacy, though no concrete results or numbers are provided.

Recent advancements in deep learning have significantly revolutionized the field of clinical diagnosis and treatment, offering novel approaches to improve diagnostic precision and treatment efficacy across diverse clinical domains, thus driving the pursuit of precision medicine. The growing availability of multi-organ and multimodal datasets has accelerated the development of large-scale Medical Multimodal Foundation Models (MMFMs). These models, known for their strong generalization capabilities and rich representational power, are increasingly being adapted to address a wide range of clinical tasks, from early diagnosis to personalized treatment strategies. This review offers a comprehensive analysis of recent developments in MMFMs, focusing on three key aspects: datasets, model architectures, and clinical applications. We also explore the challenges and opportunities in optimizing multimodal representations and discuss how these advancements are shaping the future of healthcare by enabling improved patient outcomes and more efficient clinical workflows.

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