Litcius/Paper detail

Stroke Lesion Segmentation and Deep Learning: A Comprehensive Review

Mishaim Malik, Benjamin Chong, Justin Fernandez, Vickie Shim, Nikola Kasabov, Alan Wang

2024Bioengineering18 citationsDOIOpen Access PDF

Abstract

Stroke is a medical condition that affects around 15 million people annually. Patients and their families can face severe financial and emotional challenges as it can cause motor, speech, cognitive, and emotional impairments. Stroke lesion segmentation identifies the stroke lesion visually while providing useful anatomical information. Though different computer-aided software are available for manual segmentation, state-of-the-art deep learning makes the job much easier. This review paper explores the different deep-learning-based lesion segmentation models and the impact of different pre-processing techniques on their performance. It aims to provide a comprehensive overview of the state-of-the-art models and aims to guide future research and contribute to the development of more robust and effective stroke lesion segmentation models.

Topics & Concepts

SegmentationLesionDeep learningStroke (engine)Artificial intelligenceComputer scienceCognitionPhysical medicine and rehabilitationMachine learningPsychologyMedicineNeuroscienceEngineeringPathologyMechanical engineeringAcute Ischemic Stroke ManagementRetinal Imaging and AnalysisBrain Tumor Detection and Classification