Cardiovascular care with digital twin technology in the era of generative artificial intelligence

IF 37.6 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Phyllis M Thangaraj, Sean H Benson, Evangelos K Oikonomou, Folkert W Asselbergs, Rohan Khera
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引用次数: 0

Abstract

Digital twins, which are in silico replications of an individual and its environment, have advanced clinical decision-making and prognostication in cardiovascular medicine. The technology enables personalized simulations of clinical scenarios, prediction of disease risk, and strategies for clinical trial augmentation. Current applications of cardiovascular digital twins have integrated multi-modal data into mechanistic and statistical models to build physiologically accurate cardiac replicas to enhance disease phenotyping, enrich diagnostic workflows, and optimize procedural planning. Digital twin technology is rapidly evolving in the setting of newly available data modalities and advances in generative artificial intelligence, enabling dynamic and comprehensive simulations unique to an individual. These twins fuse physiologic, environmental, and healthcare data into machine learning and generative models to build real-time patient predictions that can model interactions with the clinical environment to accelerate personalized patient care. This review summarizes digital twins in cardiovascular medicine and their potential future applications by incorporating new personalized data modalities. It examines the technical advances in deep learning and generative artificial intelligence that broaden the scope and predictive power of digital twins. Finally, it highlights the individual and societal challenges as well as ethical considerations that are essential to realizing the future vision of incorporating cardiology digital twins into personalized cardiovascular care.
生成式人工智能时代的数字孪生技术与心血管护理
数字双胞胎是个体及其环境的硅复制,它推动了心血管医学的临床决策和预后。这项技术可实现临床情景的个性化模拟、疾病风险预测和临床试验增强策略。目前心血管数字孪生的应用已将多模态数据整合到机理和统计模型中,以建立生理上精确的心脏复制品,从而增强疾病表型、丰富诊断工作流程并优化程序规划。随着新数据模式的出现和人工智能生成技术的进步,数字孪生技术也在迅速发展,从而实现了个人独有的动态综合模拟。这些孪生子将生理、环境和医疗保健数据融合到机器学习和生成模型中,以建立实时的患者预测,从而为与临床环境的交互建模,加快个性化患者护理的进程。这篇综述总结了数字双胞胎在心血管医学中的应用,以及通过整合新的个性化数据模式在未来的潜在应用。它探讨了深度学习和生成式人工智能的技术进步,这些进步扩大了数字孪生的范围和预测能力。最后,它强调了个人和社会面临的挑战以及伦理方面的考虑,这些对于实现将心内科数字孪生应用于个性化心血管护理的未来愿景至关重要。
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来源期刊
European Heart Journal
European Heart Journal 医学-心血管系统
CiteScore
39.30
自引率
6.90%
发文量
3942
审稿时长
1 months
期刊介绍: The European Heart Journal is a renowned international journal that focuses on cardiovascular medicine. It is published weekly and is the official journal of the European Society of Cardiology. This peer-reviewed journal is committed to publishing high-quality clinical and scientific material pertaining to all aspects of cardiovascular medicine. It covers a diverse range of topics including research findings, technical evaluations, and reviews. Moreover, the journal serves as a platform for the exchange of information and discussions on various aspects of cardiovascular medicine, including educational matters. In addition to original papers on cardiovascular medicine and surgery, the European Heart Journal also presents reviews, clinical perspectives, ESC Guidelines, and editorial articles that highlight recent advancements in cardiology. Additionally, the journal actively encourages readers to share their thoughts and opinions through correspondence.
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