Eric P. McMullen, Rajan Grewal, Kyle Storm, Lawrence Mbuagbaw, Maxine Maretzki, Maggie J Larché
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引用次数: 0
Abstract
This scoping review aims to summarize the existing literature on how machine learning can be used to impact systemic sclerosis diagnosis, management, and treatment. Following Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews (PRISMA-ScR) reporting guidelines, Embase, Web of Science, Medline (PubMed), IEEE Xplore, and ACM Digital Library were searched from inception to 3 March 2024, for primary literature reporting on machine learning models in any capacity regarding scleroderma. Following robust triaging, 11 retrospective studies were included in this scoping review. Three studies focused on the diagnosis of scleroderma to influence preferred management and nine studies on treatment and predicting treatment response to scleroderma. Nine studies used supervision in their machine learning model training; two used supervised and unsupervised training and one used solely unsupervised training. A total of 817 patients were included in the data sets. Seven of the included articles used patients from the United States, one from Belgium, two from Japan, and two from China. Although currently limited to retrospective studies, the results indicate that machine learning modeling may have a role in early diagnosis, management, therapeutic decision-making, and in the development of future therapies for systemic sclerosis. Prospective studies examining the use of machine learning in clinical practice are recommended to confirm the utility of machine learning in patients with systemic sclerosis.
本范围综述旨在总结有关如何利用机器学习影响系统性硬化症诊断、管理和治疗的现有文献。根据《系统综述和荟萃分析的首选报告项目》(Preferred Reporting Items for Systematic Review and Meta-Analyses extension for Scoping Reviews,PRISMA-ScR)报告指南,我们检索了Embase、Web of Science、Medline (PubMed)、IEEE Xplore和ACM数字图书馆从开始到2024年3月3日期间有关硬皮病的任何机器学习模型的主要文献。经过严格筛选,11 项回顾性研究被纳入本次范围界定综述。其中三项研究侧重于硬皮病的诊断,以影响首选治疗方法;九项研究侧重于硬皮病的治疗和治疗反应预测。九项研究在机器学习模型训练中使用了监督;两项研究使用了监督和无监督训练,一项研究仅使用了无监督训练。共有 817 名患者被纳入数据集。其中七篇文章使用的患者来自美国,一篇来自比利时,两篇来自日本,两篇来自中国。尽管目前仅限于回顾性研究,但研究结果表明,机器学习建模可能在系统性硬化症的早期诊断、管理、治疗决策以及未来疗法的开发中发挥作用。建议对机器学习在临床实践中的应用进行前瞻性研究,以确认机器学习在系统性硬化症患者中的实用性。