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本文引用的文献

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Visualizing and Quantifying Irregular Heart Rate Irregularities to Identify Atrial Fibrillation Events.可视化和量化不规则心率异常以识别房颤事件。
Front Physiol. 2021 Feb 18;12:637680. doi: 10.3389/fphys.2021.637680. eCollection 2021.
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A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis.深度学习在医学影像疾病检测方面的性能与医疗保健专业人员的比较:系统评价和荟萃分析。
Lancet Digit Health. 2019 Oct;1(6):e271-e297. doi: 10.1016/S2589-7500(19)30123-2. Epub 2019 Sep 25.
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ECGNET: Learning where to attend for detection of atrial fibrillation with deep visual attention.ECGNET:通过深度视觉注意力学习房颤检测的关注位置。
IEEE EMBS Int Conf Biomed Health Inform. 2019 May;2019. doi: 10.1109/BHI.2019.8834637. Epub 2019 Sep 12.
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Automatic classification of healthy and disease conditions from images or digital standard 12-lead electrocardiograms.从图像或数字标准 12 导联心电图自动分类健康状况和疾病状况。
Sci Rep. 2020 Oct 1;10(1):16331. doi: 10.1038/s41598-020-73060-w.
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Prediction of mortality from 12-lead electrocardiogram voltage data using a deep neural network.利用深度神经网络预测 12 导联心电图电压数据的死亡率。
Nat Med. 2020 Jun;26(6):886-891. doi: 10.1038/s41591-020-0870-z. Epub 2020 May 11.
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International evaluation of an AI system for breast cancer screening.国际乳腺癌筛查人工智能系统评估。
Nature. 2020 Jan;577(7788):89-94. doi: 10.1038/s41586-019-1799-6. Epub 2020 Jan 1.
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The "inconvenient truth" about AI in healthcare.关于医疗保健领域人工智能的“难以忽视的真相”。
NPJ Digit Med. 2019 Aug 16;2:77. doi: 10.1038/s41746-019-0155-4. eCollection 2019.
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Do no harm: a roadmap for responsible machine learning for health care.《医疗保健负责任机器学习的路线图:不造成伤害》。
Nat Med. 2019 Sep;25(9):1337-1340. doi: 10.1038/s41591-019-0548-6. Epub 2019 Aug 19.
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An artificial intelligence-enabled ECG algorithm for the identification of patients with atrial fibrillation during sinus rhythm: a retrospective analysis of outcome prediction.一种基于人工智能的心电图算法,用于在窦性心律期间识别房颤患者:对结局预测的回顾性分析。
Lancet. 2019 Sep 7;394(10201):861-867. doi: 10.1016/S0140-6736(19)31721-0. Epub 2019 Aug 1.
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Deep learning and alternative learning strategies for retrospective real-world clinical data.用于回顾性真实世界临床数据的深度学习及替代学习策略。
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展示了基于深度学习的心电图分析人工智能系统如何满足临床医生的未满足需求。

Meeting the unmet needs of clinicians from AI systems showcased for cardiology with deep-learning-based ECG analysis.

机构信息

Computer Science, Technion - Israel Institute of Technology, Haifa, 3200003, Israel.

Biomedical Engineering, Technion - Israel Institute of Technology, Haifa, 3200003, Israel

出版信息

Proc Natl Acad Sci U S A. 2021 Jun 15;118(24). doi: 10.1073/pnas.2020620118.

DOI:10.1073/pnas.2020620118
PMID:34099565
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8214673/
Abstract

Despite their great promise, artificial intelligence (AI) systems have yet to become ubiquitous in the daily practice of medicine largely due to several crucial unmet needs of healthcare practitioners. These include lack of explanations in clinically meaningful terms, handling the presence of unknown medical conditions, and transparency regarding the system's limitations, both in terms of statistical performance as well as recognizing situations for which the system's predictions are irrelevant. We articulate these unmet clinical needs as machine-learning (ML) problems and systematically address them with cutting-edge ML techniques. We focus on electrocardiogram (ECG) analysis as an example domain in which AI has great potential and tackle two challenging tasks: the detection of a heterogeneous mix of known and unknown arrhythmias from ECG and the identification of underlying cardio-pathology from segments annotated as normal sinus rhythm recorded in patients with an intermittent arrhythmia. We validate our methods by simulating a screening for arrhythmias in a large-scale population while adhering to statistical significance requirements. Specifically, our system 1) visualizes the relative importance of each part of an ECG segment for the final model decision; 2) upholds specified statistical constraints on its out-of-sample performance and provides uncertainty estimation for its predictions; 3) handles inputs containing unknown rhythm types; and 4) handles data from unseen patients while also flagging cases in which the model's outputs are not usable for a specific patient. This work represents a significant step toward overcoming the limitations currently impeding the integration of AI into clinical practice in cardiology and medicine in general.

摘要

尽管人工智能 (AI) 系统具有巨大的潜力,但由于医疗从业者存在一些关键的未满足需求,它们尚未在医学的日常实践中得到广泛应用。这些需求包括缺乏以临床意义上有意义的术语进行解释、处理未知医疗状况的能力,以及缺乏关于系统限制的透明度,包括统计性能以及识别系统预测不相关的情况。我们将这些未满足的临床需求表述为机器学习 (ML) 问题,并使用最先进的 ML 技术系统地解决它们。我们专注于心电图 (ECG) 分析作为 AI 具有巨大潜力的一个示例领域,并解决两个具有挑战性的任务:从 ECG 中检测已知和未知心律失常的混合,以及从标记为正常窦性节律的片段中识别潜在的心脏病理,这些片段是在间歇性心律失常患者中记录的。我们通过模拟大规模人群中的心律失常筛查来验证我们的方法,同时遵守统计意义要求。具体来说,我们的系统 1)可视化 ECG 段的每个部分对最终模型决策的相对重要性;2)对其样本外性能规定了特定的统计约束,并提供预测的不确定性估计;3)处理包含未知节律类型的输入;4)处理来自未见患者的数据,同时标记模型输出对特定患者不可用的情况。这项工作代表着克服当前阻碍 AI 在心脏病学和一般医学临床实践中集成的限制的重要一步。