CVNov 10, 2025

Segmentation of Ischemic Stroke Lesions using Transfer Learning on Multi-sequence MRI

arXiv:2511.07281v1h-index: 1
Originality Synthesis-oriented
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This addresses the problem of time-consuming and inconsistent manual segmentation for stroke patients, but it is incremental as it builds on existing Res-Unet and transfer learning techniques.

The study tackled automatic segmentation of ischemic stroke lesions from multi-sequence MRI to replace manual methods, achieving a Dice score of 80.5% and accuracy of 74.03% on the ISLES 2015 dataset.

The accurate understanding of ischemic stroke lesions is critical for efficient therapy and prognosis of stroke patients. Magnetic resonance imaging (MRI) is sensitive to acute ischemic stroke and is a common diagnostic method for stroke. However, manual lesion segmentation performed by experts is tedious, time-consuming, and prone to observer inconsistency. Automatic medical image analysis methods have been proposed to overcome this challenge. However, previous approaches have relied on hand-crafted features that may not capture the irregular and physiologically complex shapes of ischemic stroke lesions. In this study, we present a novel framework for quickly and automatically segmenting ischemic stroke lesions on various MRI sequences, including T1-weighted, T2-weighted, DWI, and FLAIR. The proposed methodology is validated on the ISLES 2015 Brain Stroke sequence dataset, where we trained our model using the Res-Unet architecture twice: first, with pre-existing weights, and then without, to explore the benefits of transfer learning. Evaluation metrics, including the Dice score and sensitivity, were computed across 3D volumes. Finally, a Majority Voting Classifier was integrated to amalgamate the outcomes from each axis, resulting in a comprehensive segmentation method. Our efforts culminated in achieving a Dice score of 80.5\% and an accuracy of 74.03\%, showcasing the efficacy of our segmentation approach.

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