A Survey on Trustworthiness in Foundation Models for Medical Image Analysis
Journal:
arXiv
Published Date:
Jul 3, 2024
Abstract
The rapid advancement of foundation models in medical imaging represents a
significant leap toward enhancing diagnostic accuracy and personalized
treatment. However, the deployment of foundation models in healthcare
necessitates a rigorous examination of their trustworthiness, encompassing
privacy, robustness, reliability, explainability, and fairness. The current
body of survey literature on foundation models in medical imaging reveals
considerable gaps, particularly in the area of trustworthiness. Additionally,
existing surveys on the trustworthiness of foundation models do not adequately
address their specific variations and applications within the medical imaging
domain. This survey aims to fill that gap by presenting a novel taxonomy of
foundation models used in medical imaging and analyzing the key motivations for
ensuring their trustworthiness. We review current research on foundation models
in major medical imaging applications, focusing on segmentation, medical report
generation, medical question and answering (Q\&A), and disease diagnosis. These
areas are highlighted because they have seen a relatively mature and
substantial number of foundation models compared to other applications. We
focus on literature that discusses trustworthiness in medical image analysis
manuscripts. We explore the complex challenges of building trustworthy
foundation models for each application, summarizing current concerns and
strategies for enhancing trustworthiness. Furthermore, we examine the potential
of these models to revolutionize patient care. Our analysis underscores the
imperative for advancing towards trustworthy AI in medical image analysis,
advocating for a balanced approach that fosters innovation while ensuring
ethical and equitable healthcare delivery.