正在开发用于临床的患者数字双胞胎的定义和特征:范围审查。

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Journal of Medical Internet Research Pub Date : 2024-11-13 DOI:10.2196/58504
David Drummond, Apolline Gonsard
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引用次数: 0

摘要

背景:数字孪生(digital twins)的概念在工业领域被广泛采用,目前正进入医疗保健领域。然而,对于什么是病人的数字孪生,目前还缺乏共识:本范围综述旨在分析科学文献中报道的、正在开发用于临床的患者数字孪生的定义和特征:我们检索了 PubMed、Scopus、Embase、IEEE 和 Google Scholar 中截至 2023 年 8 月声称进行数字孪生开发或评估的研究。我们提取了有关定义、特征和开发阶段的数据。对声称的数字孪生进行了无监督分类:我们发现了 86 篇论文,代表了 80 个独特的数字孪生项目,其中 98% (78/80)处于临床前阶段。在55篇定义了 "数字孪生 "的论文中,76%(42/55)描述了数字复制品,42%(23/55)提到了实时更新,24%(13/55)强调了患者特异性,15%(8/55)包括了双向交流。在声称的数字孪生中,60%(48/80)代表了特定器官(主要是心脏:15/48,31%;骨骼或关节:10/48,21%;肺部:10/48,21%):10/48,占 21%;肺:6/48,占 12%;动脉:5/48,占 10%);14/48,占 21%;5/48,占 10%:5/48,10%);14%(11/80)体现了免疫系统等生物系统;26%(21/80)对应其他产品(预测模型等)。用于开发和运行所声称的数字双胞胎的患者数据包括医学影像检查(35/80,占出版物的 44%)、临床笔记(15/80,占出版物的 19%)、实验室检测结果(13/80,占出版物的 16%)、可穿戴设备数据(12/80,占出版物的 15%)以及其他模式(32/80,占出版物的 40%)。关于患者与其虚拟对应物之间的数据流,16%(13/80)的研究称数字孪生不涉及从患者到数字孪生的数据流,73%(58/80)的研究使用了从患者到数字孪生的单向数据流,11%(9/80)的研究启用了患者与数字孪生之间的双向数据流。根据这些特征,无监督分类显示出三个群组:54%(43/80)的出版物使用模拟患者数字孪生,28%(22/80)的出版物使用监测患者数字孪生,19%(15/80)的出版物使用与特定患者无关的研究导向型模型。模拟患者数字孪生利用计算建模进行个性化预测和治疗评估,主要用于一次性评估;监测患者数字孪生则利用汇总的患者数据进行持续的风险或结果预测和护理优化:我们建议将患者数字孪生定义为 "患者、器官或生物系统的可视化数字复制品,其中包含多维度的患者特定信息并为决策提供依据",并区分模拟数字孪生和监测数字孪生。这些拟议的定义和子类提供了一个指导研究的框架,以实现这些个性化综合技术在推进临床护理方面的潜力。
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Definitions and Characteristics of Patient Digital Twins Being Developed for Clinical Use: Scoping Review.

Background: The concept of digital twins, widely adopted in industry, is entering health care. However, there is a lack of consensus on what constitutes the digital twin of a patient.

Objective: The objective of this scoping review was to analyze definitions and characteristics of patient digital twins being developed for clinical use, as reported in the scientific literature.

Methods: We searched PubMed, Scopus, Embase, IEEE, and Google Scholar for studies claiming digital twin development or evaluation until August 2023. Data on definitions, characteristics, and development phase were extracted. Unsupervised classification of claimed digital twins was performed.

Results: We identified 86 papers representing 80 unique claimed digital twins, with 98% (78/80) in preclinical phases. Among the 55 papers defining "digital twin," 76% (42/55) described a digital replica, 42% (23/55) mentioned real-time updates, 24% (13/55) emphasized patient specificity, and 15% (8/55) included 2-way communication. Among claimed digital twins, 60% (48/80) represented specific organs (primarily heart: 15/48, 31%; bones or joints: 10/48, 21%; lung: 6/48, 12%; and arteries: 5/48, 10%); 14% (11/80) embodied biological systems such as the immune system; and 26% (21/80) corresponded to other products (prediction models, etc). The patient data used to develop and run the claimed digital twins encompassed medical imaging examinations (35/80, 44% of publications), clinical notes (15/80, 19% of publications), laboratory test results (13/80, 16% of publications), wearable device data (12/80, 15% of publications), and other modalities (32/80, 40% of publications). Regarding data flow between patients and their virtual counterparts, 16% (13/80) claimed that digital twins involved no flow from patient to digital twin, 73% (58/80) used 1-way flow from patient to digital twin, and 11% (9/80) enabled 2-way data flow between patient and digital twin. Based on these characteristics, unsupervised classification revealed 3 clusters: simulation patient digital twins in 54% (43/80) of publications, monitoring patient digital twins in 28% (22/80) of publications, and research-oriented models unlinked to specific patients in 19% (15/80) of publications. Simulation patient digital twins used computational modeling for personalized predictions and therapy evaluations, mostly for one-time assessments, and monitoring digital twins harnessed aggregated patient data for continuous risk or outcome forecasting and care optimization.

Conclusions: We propose defining a patient digital twin as "a viewable digital replica of a patient, organ, or biological system that contains multidimensional, patient-specific information and informs decisions" and to distinguish simulation and monitoring digital twins. These proposed definitions and subtypes offer a framework to guide research into realizing the potential of these personalized, integrative technologies to advance clinical care.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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