Digital Twins in Healthcare: A Survey of Current Methods

Siddharth Ghatti, Livvy Ann Yurish, Haiying Shen, K. Rheuban, Kyle B. Enfield, Nikki Reyer Facteau, Gina Engel, Kim Dowdell
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Abstract

Digital twin technology has been increasingly applied in healthcare and patient well-being in recent years. This paper provides an overview of the current methods and applications of digital twins in the healthcare field. One such application is digital twins in precision healthcare, where digital twins are used to create patient-specific models to assist in diagnosis and treatment planning. Digital twins are also used in hospital/clinic management, where they help to optimize resource allocation and workflow processes. In response to the COVID-19 pandemic, digital twins have been utilized to detect outbreaks and predict disease spread. In addition, digital twins have been applied in bio-manufacturing and pharmaceutical industry to improve manufacturing processes. Another application area is machine learning and modeling, where digital twins are used in machine learning, data generation, and system modeling for applications in healthcare and disease prediction. Security and ethical issues related to digital twins are also discussed in this paper, as privacy concerns and data protection remain important considerations in the application of digital twin technology in healthcare. Finally, the paper concludes by discussing the future challenges and directions of future work in this field. These include the need to develop more accurate and sophisticated digital twin models, addressing interoperability and integration issues, and further exploring the potential of digital twin technology in emerging areas such as telemedicine and personalized medicine.
医疗保健中的数字孪生:当前方法的调查
近年来,数字孪生技术越来越多地应用于医疗保健和患者福祉。本文概述了目前数字孪生在医疗保健领域的方法和应用。其中一个这样的应用是精确医疗保健中的数字双胞胎,其中数字双胞胎用于创建特定于患者的模型,以协助诊断和治疗计划。数字孪生也用于医院/诊所管理,它们有助于优化资源分配和工作流程。为应对COVID-19大流行,数字双胞胎已被用于检测疫情和预测疾病传播。此外,数字双胞胎还被应用于生物制造和制药行业,以改善生产流程。另一个应用领域是机器学习和建模,其中数字双胞胎用于医疗保健和疾病预测应用的机器学习、数据生成和系统建模。本文还讨论了与数字双胞胎相关的安全和伦理问题,因为隐私问题和数据保护仍然是数字双胞胎技术在医疗保健中应用的重要考虑因素。最后,讨论了该领域未来面临的挑战和未来工作的方向。这些挑战包括需要开发更精确和复杂的数字孪生模型,解决互操作性和集成问题,并进一步探索数字孪生技术在远程医疗和个性化医疗等新兴领域的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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