IVCVLGMar 27, 2024

Transformers-based architectures for stroke segmentation: A review

arXiv:2403.18637v113 citationsh-index: 7Artif Intell Rev
Originality Synthesis-oriented
AI Analysis

It synthesizes existing research for medical professionals and researchers, but is incremental as it reviews rather than introduces novel methods.

This review explores Transformer-based architectures for stroke segmentation, analyzing their application in medical imaging to address challenges in accurate diagnosis, but does not present new experimental results or specific performance metrics.

Stroke remains a significant global health concern, necessitating precise and efficient diagnostic tools for timely intervention and improved patient outcomes. The emergence of deep learning methodologies has transformed the landscape of medical image analysis. Recently, Transformers, initially designed for natural language processing, have exhibited remarkable capabilities in various computer vision applications, including medical image analysis. This comprehensive review aims to provide an in-depth exploration of the cutting-edge Transformer-based architectures applied in the context of stroke segmentation. It commences with an exploration of stroke pathology, imaging modalities, and the challenges associated with accurate diagnosis and segmentation. Subsequently, the review delves into the fundamental ideas of Transformers, offering detailed insights into their architectural intricacies and the underlying mechanisms that empower them to effectively capture complex spatial information within medical images. The existing literature is systematically categorized and analyzed, discussing various approaches that leverage Transformers for stroke segmentation. A critical assessment is provided, highlighting the strengths and limitations of these methods, including considerations of performance and computational efficiency. Additionally, this review explores potential avenues for future research and development

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