人工智能在长 QT 综合征诊断中的应用:现状、挑战和未来展望综述

Negar Raissi Dehkordi MD , Nastaran Raissi Dehkordi MD , Kimia Karimi Toudeshki MD , Mohammad Hadi Farjoo MD, PhD
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引用次数: 0

摘要

长 QT 综合征(LQTS)是一种可能危及生命的心脏复极化障碍,其特点是致命性心律失常的风险增加。准确及时的诊断对于风险分层和适当的管理至关重要。然而,传统的诊断方法存在局限性,因此需要更客观、更高效的工具。人工智能(AI)通过提高心电图(ECG)解读的准确性和效率,提供了前景广阔的解决方案。与人类专家相比,人工智能算法能更快地处理心电图数据,提供实时分析,迅速识别高危人群,并减少观察者之间的差异。通过分析大量心电图数据,人工智能算法可以提取人眼可能无法识别的有意义的特征。使用智能手表等移动心电图设备进行人工智能驱动的校正 QT 间期监测的进步,为识别 LQTS 相关并发症的高危人群提供了一种宝贵而便捷的工具,尤其适用于 COVID-19 等大流行病。将人工智能融入临床实践会带来许多挑战。数据收集的偏差和患者隐私问题是必须解决的重要考虑因素。保护患者隐私和确保数据安全是保持对人工智能驱动系统信任的关键。此外,人工智能算法的可解释性也是一个值得关注的问题,因为了解决策过程对于临床医生信任并放心使用这些工具至关重要。这一领域的未来前景可能涉及将人工智能整合到诊断方案中,根据心电图数据进行基因亚型分类。此外,可解释的人工智能技术旨在发现与 LQTS 诊断相关的心电图特征,为 LQTS 病理生理学提供新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Diagnosis of Long QT Syndrome: A Review of Current State, Challenges, and Future Perspectives

Long QT syndrome (LQTS) is a potentially life-threatening cardiac repolarization disorder characterized by an increased risk of fatal arrhythmias. Accurate and timely diagnosis is essential for risk stratification and appropriate management. However, traditional diagnostic approaches have limitations, necessitating more objective and efficient tools. Artificial intelligence (AI) offers promising solutions by enhancing the accuracy and efficiency of electrocardiography (ECG) interpretation. The AI algorithms can process ECG data more rapidly than human experts, providing real-time analysis and prompt identification of individuals at risk, and reducing interobserver variability. By analyzing large volumes of ECG data, AI algorithms can extract meaningful features that may not be apparent to the human eye. Advancements in AI-driven corrected QT interval monitoring using mobile ECG devices, such as smartwatches, offer a valuable and convenient tool for identifying individuals at risk of LQTS-related complications, which is particularly applicable during pandemic conditions, such as COVID-19. Integration of AI into clinical practice poses a number of challenges. Bias in data gathering and patient privacy concerns are important considerations that must be addressed. Safeguarding patient privacy and ensuring data protection are crucial for maintaining trust in AI-driven systems. In addition, the interpretability of AI algorithms is a concern because understanding the decision-making process is essential for clinicians to trust and confidently use these tools. Future perspectives in this field may involve the integration of AI into diagnostic protocols, through genetic subtype classifications on the basis of ECG data. Moreover, explainable AI techniques aim to uncover ECG features associated with LQTS diagnosis, suggesting new insights into LQTS pathophysiology.

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来源期刊
Mayo Clinic Proceedings. Digital health
Mayo Clinic Proceedings. Digital health Medicine and Dentistry (General), Health Informatics, Public Health and Health Policy
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