Padoan Andrea, Plebani Mario
Department of Medicine, University of Padova, Padova, Italy.
Laboratory Medicine Unit, University-Hospital of Padova, Padova, Italy.
Clin Chem Lab Med. 2024 May 13;62(11):2156-2161. doi: 10.1515/cclm-2024-0517. Print 2024 Oct 28.
In recent years, the integration of technological advancements and digitalization into healthcare has brought about a remarkable transformation in care delivery and patient management. Among these advancements, the concept of digital twins (DTs) has recently gained attention as a tool with substantial transformative potential in different clinical contexts. DTs are virtual representations of a physical entity (e.g., a patient or an organ) or systems (e.g., hospital wards, including laboratories), continuously updated with real-time data to mirror its real-world counterpart. DTs can be utilized to monitor and customize health care by simulating an individual's health status based on information from wearables, medical devices, diagnostic tests, and electronic health records. In addition, DTs can be used to define personalized treatment plans. In this study, we focused on some possible applications of DTs in laboratory medicine when used with AI and synthetic data obtained by generative AI. The first point discussed how biological variation (BV) application could be tailored to individuals, considering population-derived BV data on laboratory parameters and circadian or ultradian variations. Another application could be enhancing the interpretation of tumor markers in advanced cancer therapy and treatments. Furthermore, DTs applications might derive personalized reference intervals, also considering BV data or they can be used to improve test results interpretation. DT's widespread adoption in healthcare is not imminent, but it is not far off. This technology will likely offer innovative and definitive solutions for dynamically evaluating treatments and more precise diagnoses for personalized medicine.
近年来,技术进步和数字化融入医疗保健领域,给医疗服务提供和患者管理带来了显著变革。在这些进步中,数字孪生(DTs)的概念最近受到关注,它是一种在不同临床环境中具有巨大变革潜力的工具。DTs是物理实体(如患者或器官)或系统(如医院病房,包括实验室)的虚拟表示,通过实时数据不断更新,以反映其现实世界中的对应物。DTs可用于通过基于可穿戴设备、医疗设备、诊断测试和电子健康记录的信息模拟个人健康状况来监测和定制医疗保健。此外,DTs可用于制定个性化治疗方案。在本研究中,我们重点关注了DTs与人工智能以及生成式人工智能获取的合成数据一起用于检验医学时的一些可能应用。第一点讨论了如何根据实验室参数的人群衍生生物变异(BV)数据以及昼夜或超昼夜变异,将BV应用针对个体进行定制。另一个应用可能是在晚期癌症治疗中加强肿瘤标志物的解读。此外,DTs应用可能会得出个性化参考区间,同样考虑BV数据,或者可用于改善检验结果的解读。DTs在医疗保健领域的广泛应用虽非迫在眉睫,但也为期不远。这项技术可能会为动态评估治疗和更精准的个性化医疗诊断提供创新和确定性的解决方案。