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Longitudinal Segmentation of MS Lesions via Temporal Difference Weighting

20 September 2024
Maximilian R. Rokuss
Yannick Kirchhoff
Saikat Roy
Balint Kovacs
Constantin Ulrich
Tassilo Wald
M. Zenk
Stefan Denner
Fabian Isensee
Philipp Vollmuth
Jens Kleesiek
Klaus Maier-Hein
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Abstract

Accurate segmentation of Multiple Sclerosis (MS) lesions in longitudinal MRI scans is crucial for monitoring disease progression and treatment efficacy. Although changes across time are taken into account when assessing images in clinical practice, most existing deep learning methods treat scans from different timepoints separately. Among studies utilizing longitudinal images, a simple channel-wise concatenation is the primary albeit suboptimal method employed to integrate timepoints. We introduce a novel approach that explicitly incorporates temporal differences between baseline and follow-up scans through a unique architectural inductive bias called Difference Weighting Block. It merges features from two timepoints, emphasizing changes between scans. We achieve superior scores in lesion segmentation (Dice Score, Hausdorff distance) as well as lesion detection (lesion-level F1F_1F1​ score) as compared to state-of-the-art longitudinal and single timepoint models across two datasets. Our code is made publicly available at www.github.com/MIC-DKFZ/Longitudinal-Difference-Weighting.

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