Gonsard Apolline, Genet Martin, Drummond David
Department of Pediatric Pulmonology and Allergology, University Hospital Necker-Enfants Malades, AP-HP, Paris, France.
École Polytechnique/CNRS/Institut Polytechnique de Paris, Palaiseau, France.
Eur Respir Rev. 2024 Dec 18;33(174). doi: 10.1183/16000617.0159-2024. Print 2024 Oct.
Digital twins have recently emerged in healthcare. They combine advances in cyber-physical systems, modelling and computation techniques, and enable a bidirectional flow of information between the physical and virtual entities. In respiratory medicine, progress in connected devices and artificial intelligence make it technically possible to obtain digital twins that allow real-time visualisation of a patient's respiratory health. Advances in respiratory system modelling also enable the development of digital twins that could be used to predict the effectiveness of different therapeutic approaches for a patient. For researchers, digital twins could lead to a better understanding of the gene-environment-time interactions involved in the development of chronic respiratory diseases. For clinicians and patients, they could facilitate personalised and timely medicine, by enabling therapeutic adaptations specific to each patient and early detection of disease progression. The objective of this review is to allow the reader to explore the concept of digital twins, their feasibility in respiratory medicine, their potential benefits and the challenges to their implementation.
数字孪生技术最近在医疗保健领域崭露头角。它们融合了网络物理系统、建模和计算技术的进步,并实现了物理实体与虚拟实体之间的双向信息流。在呼吸医学中,联网设备和人工智能的进展使得在技术上能够获得数字孪生,从而实现对患者呼吸健康的实时可视化。呼吸系统建模的进展还使得能够开发可用于预测不同治疗方法对患者有效性的数字孪生。对于研究人员而言,数字孪生有助于更好地理解慢性呼吸道疾病发展过程中涉及的基因-环境-时间相互作用。对于临床医生和患者来说,它们可以通过实现针对每个患者的治疗调整和疾病进展的早期检测,促进个性化和及时的医疗。本综述的目的是让读者探索数字孪生的概念、它们在呼吸医学中的可行性、潜在益处以及实施过程中面临的挑战。