通过临床试验应用,越来越多的人接受人工智能生成的数字双胞胎。

IF 3.1 3区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Anna A. Vidovszky, Charles K. Fisher, Anton D. Loukianov, Aaron M. Smith, Eric W. Tramel, Jonathan R. Walsh, Jessica L. Ross
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引用次数: 0

摘要

当今的医学方法需要大量的试验和错误,才能为每位患者确定合适的治疗方案。虽然许多领域都受益于计算机科学的技术突破,如人工智能(AI),但开发有效治疗方法的任务实际上越来越慢,成本也越来越高。随着来自以往临床试验和现实世界数据源的丰富历史数据集的可用性不断提高,人们可以利用人工智能模型,以人工智能生成的数字孪生的形式,对个体患者的未来健康结果进行整体预测。这可以支持对干预策略进行快速评估,并最终应用于临床实践,使个性化医疗成为现实。在这项工作中,我们重点关注人工智能生成的临床试验参与者数字双胞胎的用途,并认为该技术在药物开发中的监管前景使其成为在医疗保健领域安全应用人工智能生成的数字双胞胎的理想环境。随着研究的不断深入和监管机构的日益认可,这条道路将有助于提高人们对这项技术的信任,并为人工智能生成的数字双胞胎在临床实践中的广泛应用提供动力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Increasing acceptance of AI-generated digital twins through clinical trial applications

Increasing acceptance of AI-generated digital twins through clinical trial applications

Today's approach to medicine requires extensive trial and error to determine the proper treatment path for each patient. While many fields have benefited from technological breakthroughs in computer science, such as artificial intelligence (AI), the task of developing effective treatments is actually getting slower and more costly. With the increased availability of rich historical datasets from previous clinical trials and real-world data sources, one can leverage AI models to create holistic forecasts of future health outcomes for an individual patient in the form of an AI-generated digital twin. This could support the rapid evaluation of intervention strategies in silico and could eventually be implemented in clinical practice to make personalized medicine a reality. In this work, we focus on uses for AI-generated digital twins of clinical trial participants and contend that the regulatory outlook for this technology within drug development makes it an ideal setting for the safe application of AI-generated digital twins in healthcare. With continued research and growing regulatory acceptance, this path will serve to increase trust in this technology and provide momentum for the widespread adoption of AI-generated digital twins in clinical practice.

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来源期刊
Cts-Clinical and Translational Science
Cts-Clinical and Translational Science 医学-医学:研究与实验
CiteScore
6.70
自引率
2.60%
发文量
234
审稿时长
6-12 weeks
期刊介绍: Clinical and Translational Science (CTS), an official journal of the American Society for Clinical Pharmacology and Therapeutics, highlights original translational medicine research that helps bridge laboratory discoveries with the diagnosis and treatment of human disease. Translational medicine is a multi-faceted discipline with a focus on translational therapeutics. In a broad sense, translational medicine bridges across the discovery, development, regulation, and utilization spectrum. Research may appear as Full Articles, Brief Reports, Commentaries, Phase Forwards (clinical trials), Reviews, or Tutorials. CTS also includes invited didactic content that covers the connections between clinical pharmacology and translational medicine. Best-in-class methodologies and best practices are also welcomed as Tutorials. These additional features provide context for research articles and facilitate understanding for a wide array of individuals interested in clinical and translational science. CTS welcomes high quality, scientifically sound, original manuscripts focused on clinical pharmacology and translational science, including animal, in vitro, in silico, and clinical studies supporting the breadth of drug discovery, development, regulation and clinical use of both traditional drugs and innovative modalities.
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