Deep reinforcement learning classification of brain tumors on MRI Conference Paper


Authors: Stember, J.; Shalu, H.
Title: Deep reinforcement learning classification of brain tumors on MRI
Conference Title: The 10th KES International Conference on Innovation in Medicine and Healthcare (InMed-22)
Abstract: We have recently shown that deep reinforcement learning can achieve high accuracy for lesion localization and segmentation even with minuscule training sets. Here, we introduce reinforcement learning for image classification, specifically binary classification of normal versus tumor-containing 2D MRI brain scans. We employed multi-step image classification via Deep Q learning with TD(0) environmental sampling. We trained on a set of 30 images (15 normal and 15 tumor-containing.) We tested on a separate set of 30 images (15 normal and 15 tumor-containing.) For comparison, we also trained and tested a supervised deep learning classification network on the same set of training and testing images. Whereas the supervised approach quickly overfit the small training set and, as expected, performed poorly on the testing set (50% accuracy, equivalent to random guessing), deep reinforcement learning achieved an accuracy of 100%. The difference was statistically significant, with a p-value of 6.1 × 10 - 5. Class activation maps for the Deep Q networks used in deep reinforcement learning highlight the lesions. In contrast, those of supervised deep learning’s convolutional neural networks show no focus of network attention. Hence, in this proof of principle work, we have shown not only that deep reinforcement learning is able to train effectively on very small data sets, but how it learns to classify, by focusing on the regions of greatest salience. © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
Keywords: magnetic resonance imaging; medical imaging; tumors; sampling; brain tumors; classification (of information); learning systems; deep learning; image classification; convolutional neural networks; localisation; reinforcement learning; binary classification; brain scan; high-accuracy; images classification; multisteps; reinforcement learnings; step images; training sets
Journal Title Smart Innovation, Systems and Technologies
Volume: 308
Conference Dates: 2022 Jun 20-22
Conference Location: Rhodes, Greece
ISBN: 2190-3018
Publisher: Springer  
Date Published: 2022-01-01
Start Page: 119
End Page: 128
Language: English
DOI: 10.1007/978-981-19-3440-7_11
PROVIDER: scopus
DOI/URL:
Notes: Book, Chapter 11 in "Innovation in Medicine and Healthcare: Proceedings of 10th KES-InMed 2022" (ISBN: 978-981-19-3439-1) -- Source: Scopus
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  1. Joseph Nathaniel Stember
    19 Stember