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Domain-Agnostic Stroke Lesion Segmentation Using Physics-Constrained Synthetic Data

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Segmenting stroke lesions in MRI is challenging due to diverse acquisition protocols that limit model generalisability. In this work, we introduce two physics-constrained approaches to generate synthetic quantitative MRI (qMRI) images that improve segmentation robustness across heterogeneous domains. Our first method, $\texttt{qATLAS}$, trains a neural network to estimate qMRI maps from standard MPRAGE images, enabling the simulation of varied MRI sequences with realistic tissue contrasts. The second method, $\texttt{qSynth}$, synthesises qMRI maps directly from tissue labels using label-conditioned Gaussian mixture models, ensuring physical plausibility. Extensive experiments on multiple out-of-domain datasets show that both methods outperform a baseline UNet, with $\texttt{qSynth}$ notably surpassing previous synthetic data approaches. These results highlight the promise of integrating MRI physics into synthetic data generation for robust, generalisable stroke lesion segmentation. Code is available at https://github.com/liamchalcroft/qsynth

Liam Chalcroft, Jenny Crinion, Cathy J. Price, John Ashburner• 2024

Related benchmarks

TaskDatasetResultRank
Stroke Lesion SegmentationISLES 2015
Median Dice40.4
30
Stroke Lesion SegmentationARC
Median Dice0.735
24
Stroke Lesion SegmentationPLORAS
Median Dice0.361
12
Stroke Lesion SegmentationARC T2w
HD95 (mm)39
6
Stroke Lesion SegmentationARC FLAIR
HD95 (mm)44
6
Stroke Lesion SegmentationARC Ensemble
HD95 (mm)16.4
6
Stroke Lesion SegmentationPLORAS T2w
HD95 (mm)59.6
6
Stroke Lesion SegmentationPLORAS FLAIR
HD95 (mm)65.4
6
Stroke Lesion SegmentationISLES15 T1w
HD95 (mm)51.5
6
Stroke Lesion SegmentationISLES15 T2w
HD95 (mm)59.4
6
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