Reinforcement Learning for Ultrasound Image Analysis A Comprehensive Review of Advances and Applications
Maha Ezzelarab, Midhila Madhusoodanan, Shrimanti Ghosh, Geetika, Vadali, Jacob Jaremko, Abhilash Hareendranathan

TL;DR
This review explores how deep reinforcement learning can optimize ultrasound image analysis pipelines, highlighting recent advances, applications, and future potential in medical diagnostics.
Contribution
It provides a comprehensive overview of RL applications in ultrasound image analysis, categorizing existing work and discussing future opportunities and challenges.
Findings
14 relevant papers identified and categorized
RL applied to classification, segmentation, enhancement, and navigation
DRL shows promise for sequential decision-making in US analysis
Abstract
Over the last decade, the use of machine learning (ML) approaches in medicinal applications has increased manifold. Most of these approaches are based on deep learning, which aims to learn representations from grid data (like medical images). However, reinforcement learning (RL) applications in medicine are relatively less explored. Medical applications often involve a sequence of subtasks that form a diagnostic pipeline, and RL is uniquely suited to optimize over such sequential decision-making tasks. Ultrasound (US) image analysis is a quintessential example of such a sequential decision-making task, where the raw signal captured by the US transducer undergoes a series of signal processing and image post-processing steps, generally leading to a diagnostic suggestion. The application of RL in US remains limited. Deep Reinforcement Learning (DRL), that combines deep learning and RL,…
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