Sehrawat Ojasav, Kashou Anthony H, Noseworthy Peter A
Department of Cardiovascular Medicine, Mayo Clinic, Rochester, Minnesota, USA.
J Cardiovasc Electrophysiol. 2022 Aug;33(8):1932-1943. doi: 10.1111/jce.15440. Epub 2022 Mar 15.
In the context of atrial fibrillation (AF), traditional clinical practices have thus fallen short in several domains, such as identifying patients at risk of incident AF or patients with concomitant undetected paroxysmal AF. Novel approaches leveraging artificial intelligence have the potential to provide new tools to deal with some of these old problems.
To discuss the roles of artificial intelligence (AI)-enabled electrocardiogram (ECG) pertaining to AF, potential roles of deep learning (DL) models in the context of current knowledge gaps, as well as limitations of these models.
MATERIALS & METHODS: An extensive search and review of the currently available literature on the topics.
One key area where DL models can translate to better patient outcomes is through automated ECG interpretation. Challenges with regards to the benefits and harms of AF screening remain. In this context, a unique model was developed to detect underlying hidden AF from sinus rhythm.
Knowledge gaps remain regarding the best ways to monitor patients with embolic stroke of undetermined source (ESUS) and identifying those who would benefit most from oral anticoagulation. The AI-enabled AF model is one potential way to tackle this complex problem as it could be used to identify a subset of high-risk ESUS patients likely to benefit from empirical oral anticoagulation. The role of DL models assessing AF burden from long-duration ECG data is also discussed as a way of guiding management. There is a trend towards the use of consumer-grade wristbands and watches to detect AF from photoplethysmography data. However, ECG currently remains the gold standard to detect arrythmias including AF. Lastly, the role of adequate external validation of the models and clinical trials to study true performance is discussed.
Algorithms using AI to interpret ECGs in various new ways have been developed. While still, much work needs to be done, these technologies have shown enormous potential in a short span of time. With further advancements and continuous research, these novel ways of interpretation may well become part of everyday clinical workflow.
在心房颤动(AF)的背景下,传统临床实践在多个领域存在不足,例如识别有发生房颤风险的患者或伴有未被检测出的阵发性房颤的患者。利用人工智能的新方法有可能提供新工具来解决其中一些老问题。
讨论人工智能(AI)辅助心电图(ECG)在房颤方面的作用、深度学习(DL)模型在当前知识空白背景下的潜在作用以及这些模型的局限性。
广泛检索和综述当前关于这些主题的可用文献。
DL模型能够转化为更好的患者预后的一个关键领域是通过自动心电图解读。房颤筛查的益处和危害方面仍存在挑战。在此背景下,开发了一种独特的模型来从窦性心律中检测潜在的隐匿性房颤。
关于监测不明来源栓塞性卒中(ESUS)患者的最佳方法以及确定哪些患者将从口服抗凝治疗中获益最大,仍存在知识空白。人工智能辅助房颤模型是解决这一复杂问题的一种潜在方法,因为它可用于识别可能从经验性口服抗凝治疗中获益的高危ESUS患者亚组。还讨论了DL模型从长时间心电图数据评估房颤负荷的作用,以此作为指导管理的一种方式。有一种趋势是使用消费级腕带和手表从光电容积脉搏波描记术数据中检测房颤。然而,心电图目前仍然是检测包括房颤在内的心律失常的金标准。最后,讨论了对模型进行充分外部验证和开展临床试验以研究真实性能的作用。
已经开发出以各种新方式使用人工智能解读心电图的算法。虽然仍有许多工作要做,但这些技术在短时间内已显示出巨大潜力。随着进一步发展和持续研究,这些新颖的解读方式很可能会成为日常临床工作流程的一部分。