Department of Cardiovascular Sciences, University of Leicester, Leicester, UK.
Cardiology Department, Glenfield Hospital, University Hospitals Leicester, Leicester, UK.
Europace. 2022 Nov 22;24(11):1777-1787. doi: 10.1093/europace/euac135.
Most patients who receive implantable cardioverter defibrillators (ICDs) for primary prevention do not receive therapy during the lifespan of the ICD, whilst up to 50% of sudden cardiac death (SCD) occur in individuals who are considered low risk by conventional criteria. Machine learning offers a novel approach to risk stratification for ICD assignment.
Systematic search was performed in MEDLINE, Embase, Emcare, CINAHL, Cochrane Library, OpenGrey, MedrXiv, arXiv, Scopus, and Web of Science. Studies modelling SCD risk prediction within days to years using machine learning were eligible for inclusion. Transparency and quality of reporting (TRIPOD) and risk of bias (PROBAST) were assessed. A total of 4356 studies were screened with 11 meeting the inclusion criteria with heterogeneous populations, methods, and outcome measures preventing meta-analysis. The study size ranged from 122 to 124 097 participants. Input data sources included demographic, clinical, electrocardiogram, electrophysiological, imaging, and genetic data ranging from 4 to 72 variables per model. The most common outcome metric reported was the area under the receiver operator characteristic (n = 7) ranging between 0.71 and 0.96. In six studies comparing machine learning models and regression, machine learning improved performance in five. No studies adhered to a reporting standard. Five of the papers were at high risk of bias.
Machine learning for SCD prediction has been under-applied and incorrectly implemented but is ripe for future investigation. It may have some incremental utility in predicting SCD over traditional models. The development of reporting standards for machine learning is required to improve the quality of evidence reporting in the field.
大多数因一级预防而接受植入式心脏复律除颤器(ICD)治疗的患者在 ICD 的使用寿命内并未接受治疗,而多达 50%的心脏性猝死(SCD)发生在传统标准认为低危的个体中。机器学习为 ICD 分配的风险分层提供了一种新方法。
在 MEDLINE、Embase、Emcare、CINAHL、Cochrane 图书馆、OpenGrey、MedrXiv、arXiv、Scopus 和 Web of Science 中进行了系统搜索。使用机器学习对 SCD 风险预测进行建模的研究符合纳入标准。评估了透明度和报告质量(TRIPOD)以及偏倚风险(PROBAST)。共筛选了 4356 项研究,其中 11 项符合纳入标准,但存在异质性人群、方法和结局指标,无法进行荟萃分析。研究规模从 122 到 124097 名参与者不等。输入数据来源包括人口统计学、临床、心电图、电生理学、影像学和遗传学数据,每个模型范围从 4 到 72 个变量。报告的最常见的结局指标是接收者操作特征曲线下的面积(n = 7),范围在 0.71 到 0.96 之间。在六项比较机器学习模型和回归的研究中,机器学习在五项研究中提高了性能。没有研究符合报告标准。其中五篇论文存在高偏倚风险。
SCD 预测的机器学习应用不足且实施不当,但未来仍有研究价值。它可能在预测 SCD 方面比传统模型具有一定的增量效用。需要制定机器学习报告标准,以提高该领域证据报告的质量。