Abstract

PurposeAccurate segmentation of brain resection cavities (RCs) aids in postoperative analysis and determining follow-up treatment. Convolutional neural networks (CNNs) are the state-of-the-art image segmentation technique, but require large annotated datasets for training. Annotation of 3D medical images is time-consuming, requires highly trained raters and may suffer from high inter-rater variability. Self-supervised learning strategies can leverage unlabeled data for training.MethodsWe developed an algorithm to simulate resections from preoperative magnetic resonance images (MRIs). We performed self-supervised training of a 3D CNN for RC segmentation using our simulation method. We curated EPISURG, a dataset comprising 430 postoperative and 268 preoperative MRIs from 430 refractory epilepsy patients who underwent resective neurosurgery. We fine-tuned our model on three small annotated datasets from different institutions and on the annotated images in EPISURG, comprising 20, 33, 19 and 133 subjects.ResultsThe model trained on data with simulated resections obtained median (interquartile range) Dice score coefficients (DSCs) of 81.7 (16.4), 82.4 (36.4), 74.9 (24.2) and 80.5 (18.7) for each of the four datasets. After fine-tuning, DSCs were 89.2 (13.3), 84.1 (19.8), 80.2 (20.1) and 85.2 (10.8). For comparison, inter-rater agreement between human annotators from our previous study was 84.0 (9.9).ConclusionWe present a self-supervised learning strategy for 3D CNNs using simulated RCs to accurately segment real RCs on postoperative MRI. Our method generalizes well to data from different institutions, pathologies and modalities. Source code, segmentation models and the EPISURG dataset are available at https://github.com/fepegar/resseg-ijcars.

Highlights

  • MotivationApproximately one-third of epilepsy patients are drugresistant

  • We present a self-supervised learning approach to train a 3D Convolutional neural networks (CNNs) to segment brain resection cavities (RCs) from T1-weighted (T1w) magnetic resonance images (MRIs) without annotated data, by simulating resections during training

  • We addressed the challenge of segmenting postoperative brain resection cavities from T1w MRI without annotated data

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Summary

Introduction

If the epileptogenic zone (EZ), i.e., “the area of cortex indispensable for the generation of clinical seizures” [26], can be localized, resective surgery to remove the EZ may be curative. 40% to 70% of patients with refractory focal epilepsy are seizure-free after surgery [16]. This is, in part, due to limitations identifying the EZ. Retrospective studies relating presurgical clinical features and resected brain structures to surgical outcome provide useful insight to guide EZ resection [16]. First, the resection cavity (RC) must be segmented on the postoperative magnetic resonance image (MRI). A preoperative image with a corresponding brain parcellation can be registered to the postoperative MRI to identify resected structures

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