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引用次数: 0
摘要
心房颤动(房颤)是一种与高发病率和高死亡率相关的严重疾病,包括增加中风风险和中风后的不良预后。我们对心房颤动预后的了解仍然不足。机器学习(ML)已被应用于中风背景下心房颤动的诊断、管理和预后,但在临床应用中仍不尽如人意。本文试图全面概述目前将 ML 应用于有中风风险的房颤患者以及无房颤的中风后患者的情况。开发有效 ML 的策略包括在内部和外部数据集上验证各种 ML 算法,以及在假设和现实环境中探索其预测能力。这一快速发展领域的最新文献已显示出很大的前景。然而,在即将推出医疗人工智能之前,还需要对其进行进一步的测试和创新,以确保患者对其完全信任。优先开展这项研究对于优化心房颤动患者的持续护理以及心房颤动中风患者的管理至关重要。
The role of artificial intelligence in optimizing management of atrial fibrillation in acute ischemic stroke
Atrial fibrillation (AF) is a severe condition associated with high morbidity and mortality, including an increased risk of stroke and poor outcomes poststroke. Our understanding of the prognosis in AF remains poor. Machine learning (ML) has been applied to the diagnosis, management, and prognosis of AF in the context of stroke but remains suboptimal for clinical use. This article endeavors to provide a comprehensive overview of current ML applications to AF patients at risk of stroke, as well as poststroke patients without AF. Strategies to develop effective ML involve the validation of a variety of ML algorithms across internal and external datasets as well as exploring their predictive powers in hypothetical and realistic settings. Recent literature of this rapidly evolving field has displayed much promise. However, further testing and innovation of medical artificial intelligence are required before its imminent introduction to ensure complete patient trust within the community. Prioritizing this research is imperative for advancing the optimization of ongoing care for AF patients, as well as the management of stroke patients with AF.
期刊介绍:
Published on behalf of the New York Academy of Sciences, Annals of the New York Academy of Sciences provides multidisciplinary perspectives on research of current scientific interest with far-reaching implications for the wider scientific community and society at large. Each special issue assembles the best thinking of key contributors to a field of investigation at a time when emerging developments offer the promise of new insight. Individually themed, Annals special issues stimulate new ways to think about science by providing a neutral forum for discourse—within and across many institutions and fields.