揭开隐藏的风险:利用人工智能(AI)从心电图(ECG)中检测亚临床病症。

Q3 Medicine
Emoke Posan, Rod Richie
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引用次数: 0

摘要

人工智能(AI)在心血管医学领域的最新进展为诊断、预测、治疗和预后提供了潜在的提升空间。本文旨在介绍人工智能心电图技术的基本知识。文章将讨论具体病症和研究结果,然后回顾相关术语和方法。附录中将解释 AUC 与准确度的定义。应用深度学习模型可以从正常心电图中检测出疾病,其准确性是以前的技术或人类专家无法达到的。人工智能心电图的结果令人鼓舞,因为它们大大超过了目前针对特定病症(即心房颤动、左心室功能障碍、主动脉瓣狭窄和肥厚型心肌病)的筛查模型。这有可能使心电图在保险领域的应用重新焕发生机。虽然我们对这项快速发展的技术的研究结果表示欢迎,但目前仍有必要保持谨慎乐观的态度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unlocking Hidden Risks: Harnessing Artificial Intelligence (AI) to Detect Subclinical Conditions from an Electrocardiogram (ECG).

Recent artificial intelligence (AI) advancements in cardiovascular medicine offer potential enhancements in diagnosis, prediction, treatment, and outcomes. This article aims to provide a basic understanding of AI enabled ECG technology. Specific conditions and findings will be discussed, followed by reviewing associated terminology and methodology. In the appendix, definitions of AUC versus accuracy are explained. The application of deep learning models enables detecting diseases from normal electrocardiograms at accuracy not previously achieved by technology or human experts. Results with AI enabled ECG are encouraging as they considerably exceeded current screening models for specific conditions (i.e., atrial fibrillation, left ventricular dysfunction, aortic stenosis, and hypertrophic cardiomyopathy). This could potentially lead to a revitalization of the utilization of the ECG in the insurance domain. While we are embracing the findings with this rapidly evolving technology, but cautious optimism is still necessary at this point.

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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
6
期刊介绍: The Journal of Insurance Medicine is a peer reviewed scientific journal sponsored by the American Academy of Insurance Medicine, and is published quarterly. Subscriptions to the Journal of Insurance Medicine are included in your AAIM membership.
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