Clinical significance, challenges and limitations in using artificial intelligence for electrocardiography-based diagnosis.

International Journal of Arrhythmia Pub Date : 2022-01-01 Epub Date: 2022-10-01 DOI:10.1186/s42444-022-00075-x
Cheuk To Chung, Sharen Lee, Emma King, Tong Liu, Antonis A Armoundas, George Bazoukis, Gary Tse
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Abstract

Cardiovascular diseases are one of the leading global causes of mortality. Currently, clinicians rely on their own analyses or automated analyses of the electrocardiogram (ECG) to obtain a diagnosis. However, both approaches can only include a finite number of predictors and are unable to execute complex analyses. Artificial intelligence (AI) has enabled the introduction of machine and deep learning algorithms to compensate for the existing limitations of current ECG analysis methods, with promising results. However, it should be prudent to recognize that these algorithms also associated with their own unique set of challenges and limitations, such as professional liability, systematic bias, surveillance, cybersecurity, as well as technical and logistical challenges. This review aims to increase familiarity with and awareness of AI algorithms used in ECG diagnosis, and to ultimately inform the interested stakeholders on their potential utility in addressing present clinical challenges.

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使用人工智能进行心电图诊断的临床意义、挑战和局限性。
心血管疾病是导致全球死亡的主要原因之一。目前,临床医生依靠自己的分析或心电图(ECG)自动分析来获得诊断。然而,这两种方法只能包含有限数量的预测因子,无法执行复杂的分析。人工智能(AI)使机器学习和深度学习算法得以引入,以弥补当前心电图分析方法的现有局限性,并取得了可喜的成果。然而,我们应该谨慎地认识到,这些算法也有其独特的挑战和局限性,如职业责任、系统性偏差、监控、网络安全以及技术和后勤挑战。本综述旨在提高人们对用于心电图诊断的人工智能算法的熟悉度和认知度,并最终让感兴趣的利益相关者了解这些算法在应对当前临床挑战方面的潜在效用。
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发文量
27
审稿时长
31 weeks
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