Menezes Junior Antônio da Silva, E Silva Ana Lívia Félix, E Silva Louisiany Raíssa Félix, de Lima Khissya Beatryz Alves, Oliveira Henrique Lima de
Faculty of Medicine, Federal University of Goiás, Goiania 74690-900, Brazil.
Faculty of Medicine, Pontifical Catholic University of Goiás, Goiania 74605-010, Brazil.
J Pers Med. 2024 Oct 24;14(11):1069. doi: 10.3390/jpm14111069.
BACKGROUND/OBJECTIVE: Atrial fibrillation [AF] is the most common arrhythmia encountered in clinical practice and significantly increases the risk of stroke, peripheral embolism, and mortality. With the rapid advancement in artificial intelligence [AI] technologies, there is growing potential to enhance the tools used in AF detection and diagnosis. This scoping review aimed to synthesize the current knowledge on the application of AI, particularly machine learning [ML], in identifying and diagnosing AF in clinical settings.
Following the PRISMA ScR guidelines, a comprehensive search was conducted using the MEDLINE, PubMed, SCOPUS, and EMBASE databases, targeting studies involving AI, cardiology, and diagnostic tools. Precisely 2635 articles were initially identified. After duplicate removal and detailed evaluation of titles, abstracts, and full texts, 30 studies were selected for review. Additional relevant studies were included to enrich the analysis.
AI models, especially ML-based models, are increasingly used to optimize AF diagnosis. Deep learning, a subset of ML, has demonstrated superior performance by automatically extracting features from large datasets without manual intervention. Self-learning algorithms have been trained using diverse data, such as signals from 12-lead and single-lead electrocardiograms, and photoplethysmography, providing accurate AF detection across various modalities.
AI-based models, particularly those utilizing deep learning, offer faster and more accurate diagnostic capabilities than traditional methods with equal or superior reliability. Ongoing research is further enhancing these algorithms using larger datasets to improve AF detection and management in clinical practice. These advancements hold promise for significantly improving the early diagnosis and treatment of AF.
背景/目的:心房颤动(AF)是临床实践中最常见的心律失常,显著增加了中风、外周栓塞和死亡风险。随着人工智能(AI)技术的迅速发展,增强房颤检测和诊断工具的潜力越来越大。本综述旨在综合当前关于人工智能(尤其是机器学习(ML))在临床环境中识别和诊断房颤的应用的知识。
按照PRISMA ScR指南,使用MEDLINE、PubMed、SCOPUS和EMBASE数据库进行全面检索,目标是涉及人工智能、心脏病学和诊断工具的研究。最初共识别出2635篇文章。在去除重复项并对标题、摘要和全文进行详细评估后,选择了30项研究进行综述。纳入了其他相关研究以丰富分析。
人工智能模型,尤其是基于机器学习的模型,越来越多地用于优化房颤诊断。深度学习作为机器学习中的一个子集,通过在无需人工干预的情况下从大型数据集中自动提取特征,展现出卓越的性能。自学习算法已使用多种数据进行训练,如来自12导联和单导联心电图的信号以及光电容积脉搏波描记术,可在各种模式下提供准确的房颤检测。
基于人工智能的模型,特别是那些利用深度学习的模型,比传统方法提供更快、更准确的诊断能力,且可靠性相同或更高。正在进行的研究正在使用更大的数据集进一步优化这些算法,以改善临床实践中的房颤检测和管理。这些进展有望显著改善房颤的早期诊断和治疗。