Reinforcement Learning in Medical Image Analysis: Concepts, Applications, Challenges, and Future Directions
Mingzhe Hu, Jiahan Zhang, Luke Matkovic, Tian Liu, Xiaofeng Yang

TL;DR
This paper reviews the application of reinforcement learning in medical image analysis, highlighting its potential, challenges, and future directions to help researchers understand and implement RL methods in clinical settings.
Contribution
It provides a structured overview of reinforcement learning concepts, categorizes existing applications in medical image analysis, and discusses limitations and future research directions.
Findings
Reinforcement learning is underutilized but promising in medical image analysis.
The paper categorizes RL applications based on image analysis tasks.
Identifies key challenges and potential improvements for RL deployment in clinics.
Abstract
Motivation: Medical image analysis involves tasks to assist physicians in qualitative and quantitative analysis of lesions or anatomical structures, significantly improving the accuracy and reliability of diagnosis and prognosis. Traditionally, these tasks are finished by physicians or medical physicists and lead to two major problems: (i) low efficiency; (ii) biased by personal experience. In the past decade, many machine learning methods have been applied to accelerate and automate the image analysis process. Compared to the enormous deployments of supervised and unsupervised learning models, attempts to use reinforcement learning in medical image analysis are scarce. This review article could serve as the stepping-stone for related research. Significance: From our observation, though reinforcement learning has gradually gained momentum in recent years, many researchers in the medical…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education
