IVCVMar 19, 2025

Comprehensive Review of Reinforcement Learning for Medical Ultrasound Imaging

arXiv:2503.16543v18 citationsh-index: 35Artif Intell Rev
Originality Synthesis-oriented
AI Analysis

This work provides a structured overview for researchers and practitioners in medical imaging and AI, though it is incremental as it synthesizes existing literature rather than presenting new methods or results.

This review paper addresses the lack of comprehensive surveys on reinforcement learning (RL) applications in medical ultrasound imaging by proposing a taxonomy that integrates US process stages with RL development pipelines, highlighting recent advancements and unresolved challenges for achieving fully autonomous systems.

Medical Ultrasound (US) imaging has seen increasing demands over the past years, becoming one of the most preferred imaging modalities in clinical practice due to its affordability, portability, and real-time capabilities. However, it faces several challenges that limit its applicability, such as operator dependency, variability in interpretation, and limited resolution, which are amplified by the low availability of trained experts. This calls for the need of autonomous systems that are capable of reducing the dependency on humans for increased efficiency and throughput. Reinforcement Learning (RL) comes as a rapidly advancing field under Artificial Intelligence (AI) that allows the development of autonomous and intelligent agents that are capable of executing complex tasks through rewarded interactions with their environments. Existing surveys on advancements in the US scanning domain predominantly focus on partially autonomous solutions leveraging AI for scanning guidance, organ identification, plane recognition, and diagnosis. However, none of these surveys explore the intersection between the stages of the US process and the recent advancements in RL solutions. To bridge this gap, this review proposes a comprehensive taxonomy that integrates the stages of the US process with the RL development pipeline. This taxonomy not only highlights recent RL advancements in the US domain but also identifies unresolved challenges crucial for achieving fully autonomous US systems. This work aims to offer a thorough review of current research efforts, highlighting the potential of RL in building autonomous US solutions while identifying limitations and opportunities for further advancements in this field.

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