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通过机器学习和计算机辅助技术检测白癜风:一项系统综述。

Detection of Vitiligo Through Machine Learning and Computer-Aided Techniques: A Systematic Review.

作者信息

Tanvir Sania, Syed Sidra Abid, Hussain Samreen, Zia Razia, Rashid Munaf, Zahid Hira

机构信息

Faculty of Electrical and Computer Engineering, Biomedical Engineering Department, Sir Syed University of Engineering and Technology, Karachi, Pakistan.

Electronic Engineering Department, Faculty of Computer Systems Engineering, Electronic Engineering and Telecommunication Engineering, Dawood University of Engineering and Technology, Karachi, Pakistan.

出版信息

Biomed Res Int. 2024 Dec 19;2024:3277546. doi: 10.1155/bmri/3277546. eCollection 2024.

Abstract

Vitiligo is a chronic skin damage disease, triggered by differential melanocyte death. Vitiligo (0.5%-1% of the population) is one of the most severe skin conditions. In general, the foundation of the condition of vitiligo remains gradual patchy loss of skin pigmentation, overlying blood, and sometimes mucus. This paper provides a systematic review of the relevant publications and conference papers based on the subject of vitiligo diagnosis and confirmation through computer-aided machine learning (ML) techniques. A search was conducted using a predetermined set of keywords across three databases, namely, Science Direct, PubMed, and IEEE Xplore. The selection process involved the application of eligibility criteria, which led to the inclusion of research published in reputable journals and conference proceedings up until June 2024. These selected papers were then subjected to full-text screening for additional analysis. Research publications that involved application of ML techniques with targeted population of vitiligo were selected for further systematic review. Ten selected and screened studies are included in this systematic review after applying eligibility criteria along with inclusion and exclusion criteria applied on initial search result which was 244 studies based on vitiligo. Priority is given to those studies only which use ML techniques to perform detection and diagnosis on vitiligo-targeted population. Data analysis was carried out only from the selected and screened research articles that were published in authentic journals and conference proceedings. The importance of applying ML techniques in the clinical diagnosis of vitiligo can give more accurate results and at the same also eliminate the need of biased human judgement. Based on a comprehensive examination of the research, encompassing the methodologies employed and the metrics utilized to assess outcomes, it was determined that there is a need for further research and investigation regarding the application of ML algorithm for the detection and diagnosis of vitiligo with different datasets and more feature extraction.

摘要

白癜风是一种由黑素细胞差异性死亡引发的慢性皮肤损伤疾病。白癜风(占人口的0.5%-1%)是最严重的皮肤疾病之一。一般来说,白癜风病情的基础是皮肤色素沉着、表层血管,有时还有黏液逐渐出现片状缺失。本文基于通过计算机辅助机器学习(ML)技术进行白癜风诊断和确认的主题,对相关出版物和会议论文进行了系统综述。使用一组预定的关键词在三个数据库(即科学Direct、PubMed和IEEE Xplore)中进行了检索。选择过程涉及应用合格标准,这导致纳入了截至2024年6月在知名期刊和会议论文集中发表的研究。然后对这些选定的论文进行全文筛选以进行进一步分析。选择了涉及将ML技术应用于白癜风目标人群的研究出版物进行进一步的系统综述。在对基于白癜风的244项初始搜索结果应用合格标准以及纳入和排除标准后,本系统综述纳入了10项经过筛选的选定研究。仅优先考虑那些使用ML技术对白癜风目标人群进行检测和诊断的研究。数据分析仅来自在权威期刊和会议论文集中发表的选定和筛选后的研究文章。在白癜风临床诊断中应用ML技术的重要性在于能够给出更准确的结果,同时也消除了有偏差的人为判断的必要性。基于对该研究的全面考察,包括所采用的方法和用于评估结果的指标,确定对于使用不同数据集和更多特征提取来检测和诊断白癜风的ML算法的应用需要进一步的研究和调查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/afb7/11671642/f85635479333/BMRI2024-3277546.001.jpg

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