Deep reinforcement learning to detect brain lesions on MRI: a proof-of-concept application of reinforcement learning to medical images
Joseph Stember, Hrithwik Shalu

TL;DR
This study demonstrates that deep reinforcement learning can accurately detect brain lesions on MRI using a small dataset, outperforming supervised deep learning and potentially overcoming key limitations in radiology AI.
Contribution
First application of reinforcement learning to medical image analysis for lesion detection, showing high accuracy with limited training data.
Findings
Reinforcement learning achieved 85% accuracy in lesion detection.
Supervised deep learning accuracy was around 7%.
Reinforcement learning predictions improved steadily during training.
Abstract
Purpose: AI in radiology is hindered chiefly by: 1) Requiring large annotated data sets. 2) Non-generalizability that limits deployment to new scanners / institutions. And 3) Inadequate explainability and interpretability. We believe that reinforcement learning can address all three shortcomings, with robust and intuitive algorithms trainable on small datasets. To the best of our knowledge, reinforcement learning has not been directly applied to computer vision tasks for radiological images. In this proof-of-principle work, we train a deep reinforcement learning network to predict brain tumor location. Materials and Methods: Using the BraTS brain tumor imaging database, we trained a deep Q network on 70 post-contrast T1-weighted 2D image slices. We did so in concert with image exploration, with rewards and punishments designed to localize lesions. To compare with supervised deep…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Neural Network Applications · Radiomics and Machine Learning in Medical Imaging
