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用于Brugada综合征诊断和基因变异解读的人工智能

Artificial intelligence for Brugada syndrome diagnosis and gene variants interpretation.

作者信息

Sahebnasagh Mobina, Farjoo Mohammad Hadi

机构信息

Department of Pharmacology, School of Medicine, Shahid Beheshti University of Medical Sciences Tehran, Iran.

出版信息

Am J Cardiovasc Dis. 2025 Feb 15;15(1):1-12. doi: 10.62347/YQHQ1079. eCollection 2025.

Abstract

Brugada Syndrome (BrS) is a hereditary cardiac condition associated with an elevated risk of lethal arrhythmias, making precise and prompt diagnosis vital to prevent life-threatening outcomes. The diagnosis of BrS is challenging due to the requirement of invasive drug challenge tests, limited human visual capacity to detect subtle electrocardiogram (ECG) patterns, and the transient nature of the disease. Artificial intelligence (AI) can detect almost all patterns of BrS in ECG, some of which are even beyond the capability of expert eyes. AI is subcategorized into several models, with deep learning being considered the most beneficial, boasting its highest accuracy among the other models. With the capability to discriminate subtle data and analyze extensive datasets, AI has achieved higher accuracy, sensitivity, and specificity compared to trained cardiologists. Meanwhile, AI proficiency in managing complex data enables us to discover unclassified genetic variants. AI can also analyze data extracted from induced pluripotent stem cell-derived cardiomyocytes to distinguish BrS from other inherited cardiac arrhythmias. The aim of this study is to present a synopsis of the evolution of various algorithms of artificial intelligence utilized in the diagnosis of BrS and compare their diagnostic abilities to trained cardiologists. In addition, the application of AI for classification of BrS gene variants is also briefly discussed.

摘要

布加综合征(BrS)是一种遗传性心脏疾病,与致死性心律失常风险升高相关,因此准确及时的诊断对于预防危及生命的后果至关重要。由于需要进行侵入性药物激发试验、人类检测细微心电图(ECG)模式的能力有限以及该疾病的短暂性,BrS的诊断具有挑战性。人工智能(AI)可以检测出ECG中几乎所有的BrS模式,其中一些模式甚至超出了专家的识别能力。AI可细分为几种模型,深度学习被认为是最有益的,在其他模型中其准确性最高。凭借区分细微数据和分析大量数据集的能力,与训练有素的心脏病专家相比,AI具有更高的准确性、敏感性和特异性。同时,AI处理复杂数据的能力使我们能够发现未分类的基因变异。AI还可以分析从诱导多能干细胞衍生的心肌细胞中提取的数据,以区分BrS与其他遗传性心律失常。本研究的目的是概述用于BrS诊断的各种人工智能算法的发展,并将它们的诊断能力与训练有素的心脏病专家进行比较。此外,还简要讨论了AI在BrS基因变异分类中的应用。

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Deep learning unmasks the ECG signature of Brugada syndrome.深度学习揭示了Brugada综合征的心电图特征。
PNAS Nexus. 2023 Oct 13;2(11):pgad327. doi: 10.1093/pnasnexus/pgad327. eCollection 2023 Nov.

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Deep learning unmasks the ECG signature of Brugada syndrome.深度学习揭示了Brugada综合征的心电图特征。
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