Simulation of Brain Resection for Cavity Segmentation Using Self-Supervised and Semi-Supervised Learning
Fernando P\'erez-Garc\'ia (1, 2), Roman Rodionov (3, 4), Ali, Alim-Marvasti (1, 3, 4), Rachel Sparks (2), John S. Duncan (3, 4), and, S\'ebastien Ourselin (2) ((1) Wellcome EPSRC Centre for Interventional and, Surgical Sciences (WEISS), University College London, (2) School of

TL;DR
This paper introduces a self-supervised and semi-supervised learning approach using simulated resections to train CNNs for segmenting brain resection cavities in postoperative MR images, reducing the need for manual annotations.
Contribution
The study presents a novel simulation-based training method for CNNs that achieves high segmentation accuracy without manual annotations, outperforming models trained with labeled data.
Findings
Best model achieved 81.7% Dice score without manual annotations
Model performance approaches inter-rater agreement levels
Simulation-based training reduces annotation effort significantly
Abstract
Resective surgery may be curative for drug-resistant focal epilepsy, but only 40% to 70% of patients achieve seizure freedom after surgery. Retrospective quantitative analysis could elucidate patterns in resected structures and patient outcomes to improve resective surgery. However, the resection cavity must first be segmented on the postoperative MR image. Convolutional neural networks (CNNs) are the state-of-the-art image segmentation technique, but require large amounts of annotated data for training. Annotation of medical images is a time-consuming process requiring highly-trained raters, and often suffering from high inter-rater variability. Self-supervised learning can be used to generate training instances from unlabeled data. We developed an algorithm to simulate resections on preoperative MR images. We curated a new dataset, EPISURG, comprising 431 postoperative and 269…
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