Expert consensus document on artificial intelligence of the Italian Society of Cardiology.

IF 2.9 3区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
Journal of Cardiovascular Medicine Pub Date : 2025-05-01 Epub Date: 2025-03-28 DOI:10.2459/JCM.0000000000001716
Ciro Indolfi, Piergiuseppe Agostoni, Francesco Barillà, Andrea Barison, Stefano Benenati, Grzegorz Bilo, Giuseppe Boriani, Natale Daniele Brunetti, Paolo Calabrò, Stefano Carugo, Michela Casella, Michele Ciccarelli, Marco Matteo Ciccone, Gaetano Maria De Ferrari, Gianluigi Greco, Giovanni Esposito, Emanuela T Locati, Andrea Mariani, Marco Merlo, Saverio Muscoli, Savina Nodari, Iacopo Olivotto, Stefania Paolillo, Alberto Polimeni, Aldostefano Porcari, Italo Porto, Carmen Spaccarotella, Carmine Dario Vizza, Nicola Leone, Gianfranco Sinagra, Pasquale Perrone Filardi, Antonio Curcio
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引用次数: 0

Abstract

Artificial intelligence (AI), a branch of computer science focused on developing algorithms that replicate intelligent behaviour, has recently been used in patients management by enhancing diagnostic and prognostic capabilities of various resources such as hospital datasets, electrocardiograms and echocardiographic acquisitions. Machine learning (ML) and deep learning (DL) models, both key subsets of AI, have demonstrated robust applications across several cardiovascular diseases, from the most diffuse like hypertension and ischemic heart disease to the rare infiltrative cardiomyopathies, as well as to estimation of LDL cholesterol which can be achieved with better accuracy through AI. Additional emerging applications are encountered when unsupervised ML methodology shows promising results in identifying distinct clusters or phenotypes of patients with atrial fibrillation that may have different risks of stroke and response to therapy. Interestingly, since ML techniques do not analyse the possibility that a specific pathology can occur but rather the trajectory of each subject and the chain of events that lead to the occurrence of various cardiovascular pathologies, it has been considered that DL, by resembling the complexity of human brain and using artificial neural networks, might support clinical management through the processing of large amounts of complex information; however, external validity of algorithms cannot be taken for granted, while interpretability of the results may be an issue, also known as a "black box" problem. Notwithstanding these considerations, facilities and governments are willing to unlock the potential of AI in order to reach the final step of healthcare advancements while ensuring that patient safety and equity are preserved.

意大利心脏病学会人工智能专家共识文件。
人工智能(AI)是计算机科学的一个分支,专注于开发复制智能行为的算法,最近已通过增强各种资源(如医院数据集、心电图和超声心动图采集)的诊断和预后能力,用于患者管理。机器学习(ML)和深度学习(DL)模型都是人工智能的关键子集,已经在几种心血管疾病中展示了强大的应用,从最广泛的高血压和缺血性心脏病到罕见的浸润性心肌病,以及通过人工智能可以实现更高精度的低密度脂蛋白胆固醇估计。当无监督ML方法学在识别可能具有不同卒中风险和治疗反应的房颤患者的不同簇或表型方面显示出有希望的结果时,会遇到其他新兴应用。有趣的是,由于ML技术不分析特定病理发生的可能性,而是分析每个受试者的轨迹和导致各种心血管病理发生的事件链,因此人们认为DL通过类似于人类大脑的复杂性并使用人工神经网络,可以通过处理大量复杂信息来支持临床管理;然而,算法的外部有效性不能被认为是理所当然的,而结果的可解释性可能是一个问题,也被称为“黑匣子”问题。尽管有这些考虑,但医疗机构和政府都愿意释放人工智能的潜力,在确保患者安全和公平的同时,实现医疗保健进步的最后一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Cardiovascular Medicine
Journal of Cardiovascular Medicine 医学-心血管系统
CiteScore
3.90
自引率
26.70%
发文量
189
审稿时长
6-12 weeks
期刊介绍: Journal of Cardiovascular Medicine is a monthly publication of the Italian Federation of Cardiology. It publishes original research articles, epidemiological studies, new methodological clinical approaches, case reports, design and goals of clinical trials, review articles, points of view, editorials and Images in cardiovascular medicine. Submitted articles undergo a preliminary review by the editor. Some articles may be returned to authors without further consideration. Those being considered for publication will undergo further assessment and peer-review by the editors and those invited to do so from a reviewer pool. ​
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