Division of Cardiology, Peter Munk Cardiac Center, Toronto General Hospital, University Health Network, Toronto, Ontario, Canada.
Townsville Hospital and Health Service and James Cook University, Townsville, Australia.
Can J Cardiol. 2022 Feb;38(2):246-258. doi: 10.1016/j.cjca.2021.07.016. Epub 2021 Jul 29.
In recent years, numerous applications for artificial intelligence (AI) in cardiology have been found, due in part to large digitized data sets and the evolution of high-performance computing. In the discipline of cardiac electrophysiology (EP), a number of clinical, imaging, and electrical waveform data are considered in the diagnosis, prognostication, and management of arrhythmias, which lend themselves well to automation through AI. But equally relevant, AI offers a unique opportunity to discover novel EP concepts and improve clinical care through its inherent, hierarchical tenets of self-learning. In this review we focus on the application of AI in clinical EP and summarize state-of-the art, large, clinical studies in the following key domains: (1) electrocardiogram-based arrhythmia and disease classification; (2) atrial fibrillation source detection; (3) substrate and risk assessment for atrial fibrillation and ventricular tachyarrhythmias; and (4) predicting outcomes after cardiac resynchronization therapy. Many are small, single-centre, proof-of-concept investigations, but they still show ground-breaking performance of deep learning, a subdomain of AI, which surpasses traditional statistical analysis. Larger studies, for instance classifying arrhythmias from electrocardiogram recordings, have further provided external validation of their high accuracy. Ultimately, the performance of AI is dependent on the quality of the input data and the rigour of algorithm development. The field is still nascent and several barriers will need to be overcome, including prospective validation in large, well labelled data sets and more seamless information technology-based data collection/integration, before AI can be adopted into broader clinical EP practice. This review concludes with a discussion of these challenges and future work.
近年来,由于大型数字化数据集和高性能计算的发展,人工智能 (AI) 在心脏病学中的应用越来越多。在心脏电生理学 (EP) 领域,在心律失常的诊断、预后和管理中考虑了许多临床、影像和电波形数据,这些数据非常适合通过 AI 实现自动化。但同样重要的是,AI 通过其内在的、分层的自我学习原则,为发现新的 EP 概念和改善临床护理提供了独特的机会。在这篇综述中,我们专注于 AI 在临床 EP 中的应用,并总结了以下关键领域的最新、大型临床研究:(1)基于心电图的心律失常和疾病分类;(2)房颤源检测;(3)房颤和室性心律失常的基质和风险评估;以及 (4)心脏再同步治疗后的预测结果。其中许多都是小型、单中心的概念验证研究,但它们仍然展示了深度学习(AI 的一个子领域)的突破性性能,超越了传统的统计分析。更大规模的研究,例如对心电图记录进行心律失常分类,进一步验证了其高精度的外部有效性。最终,AI 的性能取决于输入数据的质量和算法开发的严谨性。该领域仍处于起步阶段,需要克服几个障碍,包括在大型、标记良好的数据集和更无缝的基于信息技术的数据收集/集成中进行前瞻性验证,然后才能将 AI 广泛应用于临床 EP 实践。这篇综述最后讨论了这些挑战和未来的工作。