Feature Quality and Adaptability of Medical Foundation Models: A Comparative Evaluation for Radiographic Classification and Segmentation
Frank Li, Theo Dapamede, Mohammadreza Chavoshi, Young Seok Jeon, Bardia Khosravi, Abdulhameed Dere, Beatrice Brown-Mulry, Rohan Satya Isaac, Aawez Mansuri, Chiratidzo Sanyika, Janice Newsome, Saptarshi Purkayastha, Imon Banerjee, Hari Trivedi, Judy Gichoya

TL;DR
This study evaluates medical foundation models for radiographic classification and segmentation, highlighting the importance of domain-specific pre-training, architectural choices, and the limitations of current embeddings for subtle pathology localization.
Contribution
It provides a comprehensive comparison of medical and general foundation models, revealing their strengths and weaknesses across different radiology tasks and emphasizing the role of architecture and training domain.
Findings
Medical FMs outperform general models in initial feature quality.
Pre-trained embeddings excel in global classification and segmentation of salient anatomy.
Supervised models remain competitive, especially for complex localization tasks.
Abstract
Foundation models (FMs) promise to generalize medical imaging, but their effectiveness varies. It remains unclear how pre-training domain (medical vs. general), paradigm (e.g., text-guided), and architecture influence embedding quality, hindering the selection of optimal encoders for specific radiology tasks. To address this, we evaluate vision encoders from eight medical and general-domain FMs for chest X-ray analysis. We benchmark classification (pneumothorax, cardiomegaly) and segmentation (pneumothorax, cardiac boundary) using linear probing and fine-tuning. Our results show that domain-specific pre-training provides a significant advantage; medical FMs consistently outperformed general-domain models in linear probing, establishing superior initial feature quality. However, feature utility is highly task-dependent. Pre-trained embeddings were strong for global classification and…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Artificial Intelligence in Healthcare and Education · AI in cancer detection
