心电图解读的深度学习:从实验室到床边

IF 4.4 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Bas B. S. Schots, Camila S. Pizarro, Bauke K. O. Arends, Marish I. F. J. Oerlemans, Dino Ahmetagić, Pim van der Harst, René van Es
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引用次数: 0

摘要

深度学习(DL)是人工智能的一个子集,它的最新进展显示了通过分析各种医疗数据来源,自动化和改进疾病识别、表型和疾病发病和结果预测的潜力。心电图(ECG)是诊断和监测心血管疾病的重要工具。方法将DL应用于心电分析中,用于发现和预测心律异常、传导异常、缺血性和结构性心脏病,其性能可媲美内科医生。然而,尽管DL算法在自动心电分析方面有很大的发展前景,但将基于DL的心电分析和将这些算法整合到常规临床实践中的医疗设备的部署仍然有限。结果本文综述了DL在12导联心电图分析中的应用。此外,我们回顾了评估这些DL工具临床有效性的随机对照试验。最后,它解决了在临床实践中广泛实施的不同关键障碍,包括监管障碍、算法透明度和数据隐私问题。通过概述该领域的进展和障碍,本文旨在深入了解DL如何影响心电图分析的未来,并在日常临床实践中加强心血管护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning for electrocardiogram interpretation: Bench to bedside

Deep learning for electrocardiogram interpretation: Bench to bedside

Background

Recent advancements in deep learning (DL), a subset of artificial intelligence, have shown the potential to automate and improve disease recognition, phenotyping and prediction of disease onset and outcomes by analysing various sources of medical data. The electrocardiogram (ECG) is a valuable tool for diagnosing and monitoring cardiovascular conditions.

Methods

The implementation of DL in ECG analysis has been used to detect and predict rhythm abnormalities and conduction abnormalities, ischemic and structural heart diseases, with performance comparable to physicians. However, despite promising development of DL algorithms for automatic ECG analysis, the integration of DL-based ECG analysis and deployment of medical devices incorporating these algorithms into routine clinical practice remains limited.

Results

This narrative review highlights the applications of DL in 12-lead ECG analysis. Furthermore, we review randomized controlled trials that assess the clinical effectiveness of these DL tools. Finally, it addresses different key barriers to widespread implementation in clinical practice, including regulatory hurdles, algorithm transparency and data privacy concerns.

Conclusions

By outlining both the progress and the obstacles in this field, this review aims to provide insights into how DL could shape the future of ECG analysis and enhance cardiovascular care in daily clinical practice.

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来源期刊
CiteScore
9.50
自引率
3.60%
发文量
192
审稿时长
1 months
期刊介绍: EJCI considers any original contribution from the most sophisticated basic molecular sciences to applied clinical and translational research and evidence-based medicine across a broad range of subspecialties. The EJCI publishes reports of high-quality research that pertain to the genetic, molecular, cellular, or physiological basis of human biology and disease, as well as research that addresses prevalence, diagnosis, course, treatment, and prevention of disease. We are primarily interested in studies directly pertinent to humans, but submission of robust in vitro and animal work is also encouraged. Interdisciplinary work and research using innovative methods and combinations of laboratory, clinical, and epidemiological methodologies and techniques is of great interest to the journal. Several categories of manuscripts (for detailed description see below) are considered: editorials, original articles (also including randomized clinical trials, systematic reviews and meta-analyses), reviews (narrative reviews), opinion articles (including debates, perspectives and commentaries); and letters to the Editor.
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