Deep learning-based brain segmentation model performance validation with clinical radiotherapy CT
Selena Huisman, Matteo Maspero, Marielle Philippens, Joost Verhoeff,, Szabolcs David

TL;DR
This study validates a deep learning model, SynthSeg, for automatic brain segmentation on CT scans, showing moderate accuracy and potential for neuroanatomical research despite lower performance compared to MRI.
Contribution
It demonstrates SynthSeg's applicability to CT images for brain segmentation and introduces automated quality control to improve segmentation reliability.
Findings
Median Dice score of 0.76 indicates moderate overlap.
QC thresholding improves segmentation accuracy.
CT-based neuroanatomical analysis correlates with MRI findings.
Abstract
Manual segmentation of medical images is labor intensive and especially challenging for images with poor contrast or resolution. The presence of disease exacerbates this further, increasing the need for an automated solution. To this extent, SynthSeg is a robust deep learning model designed for automatic brain segmentation across various contrasts and resolutions. This study validates the SynthSeg robust brain segmentation model on computed tomography (CT), using a multi-center dataset. An open access dataset of 260 paired CT and magnetic resonance imaging (MRI) from radiotherapy patients treated in 5 centers was collected. Brain segmentations from CT and MRI were obtained with SynthSeg model, a component of the Freesurfer imaging suite. These segmentations were compared and evaluated using Dice scores and Hausdorff 95 distance (HD95), treating MRI-based segmentations as the ground…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Radiotherapy Techniques · Radiomics and Machine Learning in Medical Imaging
