Clinically-Informed Preprocessing Improves Stroke Segmentation in Low-Resource Settings
Juampablo E. Heras Rivera, Hitender Oswal, Tianyi Ren, Yutong Pan, William Henry, Caitlin M. Neher, Mehmet Kurt

TL;DR
This paper presents a clinically-informed preprocessing pipeline that significantly enhances stroke lesion segmentation accuracy in low-resource settings by leveraging CT and CTA imaging combined with deep learning.
Contribution
The study introduces a novel preprocessing approach that incorporates clinical insights, improving deep learning-based stroke segmentation from CT images in low-resource environments.
Findings
38% improvement in Dice score with proposed preprocessing
Additional vessel segmentation preprocessing yields 21% further improvement
Models trained on CT can effectively predict follow-up DWI lesion volumes
Abstract
Stroke is among the top three causes of death worldwide, and accurate identification of ischemic stroke lesion boundaries from imaging is critical for diagnosis and treatment. The main imaging modalities used include magnetic resonance imaging (MRI), particularly diffusion weighted imaging (DWI), and computed tomography (CT)-based techniques such as non-contrast CT (NCCT), contrast-enhanced CT angiography (CTA), and CT perfusion (CTP). DWI is the gold standard for the identification of lesions but has limited applicability in low-resource settings due to prohibitive costs. CT-based imaging is currently the most practical imaging method in low-resource settings due to low costs and simplified logistics, but lacks the high specificity of MRI-based methods in monitoring ischemic insults. Supervised deep learning methods are the leading solution for automated ischemic stroke lesion…
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