CVAug 6, 2024

Segmenting Small Stroke Lesions with Novel Labeling Strategies

arXiv:2408.02929v13 citationsh-index: 43Has Code
Originality Incremental advance
AI Analysis

This work addresses a critical problem in medical imaging for stroke diagnosis by enhancing segmentation accuracy for small lesions, though it appears incremental as it builds on existing network architectures.

The study tackled the challenge of segmenting small stroke lesions by proposing Multi-Size Labeling (MSL) and Distance-Based Labeling (DBL) strategies, achieving improvements such as up to 3.7% higher recall and 2.4% better F1 scores compared to prior methods on the ATLAS dataset.

Deep neural networks have demonstrated exceptional efficacy in stroke lesion segmentation. However, the delineation of small lesions, critical for stroke diagnosis, remains a challenge. In this study, we propose two straightforward yet powerful approaches that can be seamlessly integrated into a variety of networks: Multi-Size Labeling (MSL) and Distance-Based Labeling (DBL), with the aim of enhancing the segmentation accuracy of small lesions. MSL divides lesion masks into various categories based on lesion volume while DBL emphasizes the lesion boundaries. Experimental evaluations on the Anatomical Tracings of Lesions After Stroke (ATLAS) v2.0 dataset showcase that an ensemble of MSL and DBL achieves consistently better or equal performance on recall (3.6% and 3.7%), F1 (2.4% and 1.5%), and Dice scores (1.3% and 0.0%) compared to the top-1 winner of the 2022 MICCAI ATLAS Challenge on both the subset only containing small lesions and the entire dataset, respectively. Notably, on the mini-lesion subset, a single MSL model surpasses the previous best ensemble strategy, with enhancements of 1.0% and 0.3% on F1 and Dice scores, respectively. Our code is available at: https://github.com/nadluru/StrokeLesSeg.

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