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Machine learning methods in predicting the risk of malignant transformation of oral potentially malignant disorders: A systematic review

机器学习 人工智能 检查表 医学 梅德林 科克伦图书馆 随机森林 计算机科学 荟萃分析 内科学 心理学 政治学 认知心理学 法学
作者
Simran Uppal,Priyanshu Kumar Shrivastava,Atiya Khan,Aditi Sharma,Ayush Kumar Shrivastav
出处
期刊:International Journal of Medical Informatics [Elsevier BV]
卷期号:186: 105421-105421 被引量:3
标识
DOI:10.1016/j.ijmedinf.2024.105421
摘要

Oral Potentially Malignant Disorders (OPMDs) refer to a heterogenous group of clinical presentations with heightened rate of malignant transformation. Identification of risk levels in OPMDs is crucial to determine the need for active intervention in high-risk patients and routine follow-up in low-risk ones. Machine learning models has shown tremendous potential in several areas of dentistry that strongly suggest its application to estimate rate of malignant transformation of precancerous lesions. A comprehensive literature search was performed on Pubmed/MEDLINE, Web of Science, Scopus, Embase, Cochrane Library database to identify articles including machine learning models and algorithms to predict malignant transformation in OPMDs. Relevant bibliographic data, study characteristics, and outcomes were extracted for eligible studies. Quality of the included studies was assessed through the IJMEDI checklist. Fifteen articles were found suitable for the review as per the PECOS criteria. Amongst all studies, highest sensitivity (100%) was recorded for U-net architecture, Peaks Random forest model, and Partial least squares discriminant analysis (PLSDA). Highest specificity (100%) was noted for PLSDA. Range of overall accuracy in risk prediction was between 95.4% and 74%. Machine learning proved to be a viable tool in risk prediction, demonstrating heightened sensitivity, automation, and improved accuracy for predicting transformation of OPMDs. It presents an effective approach for incorporating multiple variables to monitor the progression of OPMDs and predict their malignant potential. However, its sensitivity to dataset characteristics necessitates the optimization of input parameters to maximize the efficiency of the classifiers.

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