Coorey Genevieve, Figtree Gemma A, Fletcher David F, Snelson Victoria J, Vernon Stephen Thomas, Winlaw David, Grieve Stuart M, McEwan Alistair, Yang Jean Yee Hwa, Qian Pierre, O'Brien Kieran, Orchard Jessica, Kim Jinman, Patel Sanjay, Redfern Julie
University of Sydney, Faculty of Medicine and Health, Sydney, NSW, Australia.
The George Institute for Global Health, Sydney, NSW, Australia.
NPJ Digit Med. 2022 Aug 26;5(1):126. doi: 10.1038/s41746-022-00640-7.
Potential benefits of precision medicine in cardiovascular disease (CVD) include more accurate phenotyping of individual patients with the same condition or presentation, using multiple clinical, imaging, molecular and other variables to guide diagnosis and treatment. An approach to realising this potential is the digital twin concept, whereby a virtual representation of a patient is constructed and receives real-time updates of a range of data variables in order to predict disease and optimise treatment selection for the real-life patient. We explored the term digital twin, its defining concepts, the challenges as an emerging field, and potentially important applications in CVD. A mapping review was undertaken using a systematic search of peer-reviewed literature. Industry-based participants and patent applications were identified through web-based sources. Searches of Compendex, EMBASE, Medline, ProQuest and Scopus databases yielded 88 papers related to cardiovascular conditions (28%, n = 25), non-cardiovascular conditions (41%, n = 36), and general aspects of the health digital twin (31%, n = 27). Fifteen companies with a commercial interest in health digital twin or simulation modelling had products focused on CVD. The patent search identified 18 applications from 11 applicants, of which 73% were companies and 27% were universities. Three applicants had cardiac-related inventions. For CVD, digital twin research within industry and academia is recent, interdisciplinary, and established globally. Overall, the applications were numerical simulation models, although precursor models exist for the real-time cyber-physical system characteristic of a true digital twin. Implementation challenges include ethical constraints and clinical barriers to the adoption of decision tools derived from artificial intelligence systems.
精准医学在心血管疾病(CVD)中的潜在益处包括,利用多种临床、影像、分子及其他变量,对患有相同病症或临床表现的个体患者进行更准确的表型分析,以指导诊断和治疗。实现这一潜力的一种方法是数字孪生概念,即构建患者的虚拟模型,并接收一系列数据变量的实时更新,以便预测疾病并为现实生活中的患者优化治疗选择。我们探讨了数字孪生这一术语、其定义概念、作为一个新兴领域所面临的挑战,以及在心血管疾病中潜在的重要应用。通过对同行评审文献进行系统检索开展了一项映射综述。通过网络来源确定了行业参与者和专利申请。对Compendex、EMBASE、Medline、ProQuest和Scopus数据库的检索产生了88篇与心血管疾病(28%,n = 25)、非心血管疾病(41%,n = 36)以及健康数字孪生的一般方面(31%,n = 27)相关的论文。15家对健康数字孪生或模拟建模有商业兴趣的公司拥有专注于心血管疾病的产品。专利检索确定了来自11个申请人的18项申请,其中73%是公司,27%是大学。3个申请人拥有与心脏相关的发明。对于心血管疾病,行业和学术界内的数字孪生研究是新近开展的、跨学科的且在全球范围内已确立。总体而言,应用的是数值模拟模型,不过真正数字孪生的实时网络物理系统特征的前驱模型已经存在。实施挑战包括道德约束以及采用源自人工智能系统的决策工具的临床障碍。