Randomized clinical trials, while often viewed as the highest evidentiary bar by which to judge the quality of a medical intervention, are far from perfect. In silico imaging trials are computational studies that seek to ascertain the performance of a medical device by collecting this information entirely via computer simulations. The benefits of in silico trials for evaluating new technology include significant resource and time savings, minimization of subject risk, the ability to study devices that are not achievable in the physical world, allow for the rapid and effective investigation of new technologies and ensure representation from all relevant subgroups. To conduct in silico trials, digital representations of humans are needed. We review the latest developments in methods and tools for obtaining digital humans for in silico imaging studies. First, we introduce terminology and a classification of digital human models. Second, we survey available methodologies for generating digital humans with healthy and diseased status and examine briefly the role of augmentation methods. Finally, we discuss the trade-offs of four approaches for sampling digital cohorts and the associated potential for study bias with selecting specific patient distributions.
翻译:在硅成像试验中,计算研究力求通过完全通过计算机模拟收集这种信息来确定医疗装置的性能。在硅试验中,评估新技术的好处包括:节省大量资源和时间,最大限度地减少试验对象的风险,能够研究在物质世界中无法实现的装置,允许迅速有效地调查新技术,并确保所有相关分组的代表性。在硅试验中,需要人的数字表现。我们审查在硅成像研究中获取数字人类的方法和工具的最新发展情况。首先,我们采用数字人类模型的术语和分类。第二,我们调查产生健康和疾病状态的数字人类的现有方法,并简要研究增强能力方法的作用。最后,我们讨论对数字组进行抽样的四种方法的取舍,以及在选择特定病人分布方面研究偏差的相关可能性。