Abstract
This article presents an unsupervised method for segmenting brain computed tomography scans. The proposed methodology involves image feature extraction and application of similarity and continuity constraints to generate segmentation maps of the anatomical head structures. Specifically designed for real-world datasets, this approach applies a spatial continuity scoring function tailored to the desired number of structures. The primary objective is to assist medical experts in diagnosis by identifying regions with specific abnormalities. Results indicate a simplified and accessible solution, reducing computational effort, training time, and financial costs. Moreover, the method presents potential for expediting the interpretation of abnormal scans, thereby impacting clinical practice. This proposed approach might serve as a practical tool for segmenting brain computed tomography scans, and make a significant contribution to the analysis of medical images in both research and clinical settings.
Funder
Institutional Development Support Program of the Brazilian Unified Health System
Hospital Israelita Albert Einstein
Council for Scientific and Technological Development
Publisher
Public Library of Science (PLoS)
Reference116 articles.
1. The burden of neurological disease in the United States: A summary report and call to action;CL Gooch;Annals of neurology,2017
2. Artificial intelligence as an emerging technology in the current care of neurological disorders;UK Patel;Journal of neurology,2021
3. Organization WH. Neurological disorders: public health challenges. World Health Organization; 2006.
4. A Comprehensive Survey on the Detection, Classification, and Challenges of Neurological Disorders;AA Lima;Biology,2022
5. Biological databases and tools for neurological disorders;MB Usman;Journal of Integrative Neuroscience,2022
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