Stroke Lesion Segmentation in Clinical Workflows: A Modular, Lightweight, and Deployment-Ready Tool
By: Yann Kerverdo , Florent Leray , Youwan Mahé and more
Potential Business Impact:
Makes brain scan tools work on regular computers.
Deep learning frameworks such as nnU-Net achieve state-of-the-art performance in brain lesion segmentation but remain difficult to deploy clinically due to heavy dependencies and monolithic design. We introduce \textit{StrokeSeg}, a modular and lightweight framework that translates research-grade stroke lesion segmentation models into deployable applications. Preprocessing, inference, and postprocessing are decoupled: preprocessing relies on the Anima toolbox with BIDS-compliant outputs, and inference uses ONNX Runtime with \texttt{Float16} quantisation, reducing model size by about 50\%. \textit{StrokeSeg} provides both graphical and command-line interfaces and is distributed as Python scripts and as a standalone Windows executable. On a held-out set of 300 sub-acute and chronic stroke subjects, segmentation performance was equivalent to the original PyTorch pipeline (Dice difference $<10^{-3}$), demonstrating that high-performing research pipelines can be transformed into portable, clinically usable tools.
Similar Papers
Segmentation of Ischemic Stroke Lesions using Transfer Learning on Multi-sequence MRI
CV and Pattern Recognition
Helps doctors find strokes on brain scans faster.
Clinically-Informed Preprocessing Improves Stroke Segmentation in Low-Resource Settings
Image and Video Processing
Helps doctors find strokes faster with cheaper scans.
Federative ischemic stroke segmentation as alternative to overcome domain-shift multi-institution challenges
Image and Video Processing
Helps doctors find strokes faster and more accurately.