Chatterjee Neal A
Division of Cardiology, University of Washington, Electrophysiology Section, Seattle, WA, USA.
Curr Cardiol Rep. 2023 Jun;25(6):525-534. doi: 10.1007/s11886-023-01871-0. Epub 2023 Apr 10.
Sudden cardiac death (SCD) is a major public health burden accounting for 15-20% of global mortality. Contemporary guidelines for SCD prevention are centered around the presence of low left ventricular ejection fraction, although the majority of SCD accrues in those not meeting contemporary criteria for SCD prevention. The goal of this review is to elaborate on the contemporary landscape of SCD prediction tools and further highlight gaps and opportunities in SCD prediction and prevention.
There have been considerable advancements in both non-invasive and invasive measures for SCD risk prediction including clinical morbidities, electrocardiographic measures, cardiac imaging (nuclear, magnetic resonance, computed tomography), serum biomarkers, genetics, and invasively assessed electrophysiological characteristics. Novel methodological approaches including application of machine learning, incorporation of competing risk, and use of computational modeling have underscored a future of personalized risk prediction. SCD remains a vital public health challenge. Emerging methods highlight opportunities to improve SCD prediction in the majority of those at risk who do not meet contemporary criteria for SCD prevention therapies. Future efforts will need to focus on easily deployed, multi-parametric risk models that enrich for SCD risk and not for competing mortality.
心源性猝死(SCD)是一项重大的公共卫生负担,占全球死亡率的15%-20%。当代SCD预防指南主要围绕左心室射血分数降低展开,尽管大多数SCD发生在不符合当代SCD预防标准的人群中。本综述的目的是阐述SCD预测工具的当代现状,并进一步突出SCD预测和预防方面的差距与机遇。
在SCD风险预测的非侵入性和侵入性措施方面均取得了显著进展,包括临床发病率、心电图测量、心脏成像(核素、磁共振、计算机断层扫描)、血清生物标志物、遗传学以及侵入性评估的电生理特征。包括机器学习应用、竞争风险纳入和计算模型使用在内的新方法强调了个性化风险预测的未来。SCD仍然是一项重大的公共卫生挑战。新兴方法凸显了在大多数不符合当代SCD预防治疗标准的高危人群中改善SCD预测的机遇。未来的努力需要集中在易于应用的多参数风险模型上,这些模型应能增加SCD风险,而非竞争死亡率风险。