用于肌肉骨骼应用的数字孪生系统:当前概念回顾。

IF 3.3 2区 医学 Q1 ORTHOPEDICS
Pedro Diniz, Bernd Grimm, Frederic Garcia, Jennifer Fayad, Christophe Ley, Caroline Mouton, Jacob F. Oeding, Michael T. Hirschmann, Kristian Samuelsson, Romain Seil
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引用次数: 0

摘要

数字孪生(DT)系统涉及创建物理对象或系统的虚拟副本,通过提供个性化和预测模型,可以更深入地了解患者的病情,有可能改变医疗保健。这篇综述探讨了肌骨骼(MSK)应用的DT系统的当前概念,通过概述关键组件、技术、临床应用、挑战和未来方向来定义这个快速增长的领域。DT系统利用多体动力学和有限元分析等计算模型来模拟MSK结构的力学行为,而与可穿戴技术的集成可以实现实时监控和反馈,促进预防措施和自适应护理策略。DT系统在MSK中的早期应用包括优化运动和康复监测,分析个性化手术技术的关节力学,以及预测术后结果。虽然仍在开发中,但这些进步有望通过改进手术计划、减少并发症和个性化患者康复策略来彻底改变MSK护理。集成先进的机器学习算法可以增强dt的预测能力,并通过可解释的人工智能(AI)更好地了解疾病过程。尽管DT系统具有很大的潜力,但也面临着巨大的挑战。这些措施包括整合多模态数据、模拟老化和损伤、有效利用计算资源以及开发临床准确和有影响力的模型。应对这些挑战需要多学科合作。此外,保证患者隐私和防止偏见是极其重要的,正如指导临床采用的监管要求一样。DT系统为改善患者护理提供了一个重要的机会,最近在几个领域的技术进步使其成为可能,包括可穿戴传感器、生物结构的计算建模和人工智能。随着这些技术的不断成熟和整合的简化,DT系统可能会加速医疗创新,迎来一个快速改善治疗效果和扩大预防医学范围的新时代。证据等级:V级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital twin systems for musculoskeletal applications: A current concepts review

Digital twin (DT) systems, which involve creating virtual replicas of physical objects or systems, have the potential to transform healthcare by offering personalised and predictive models that grant deeper insight into a patient's condition. This review explores current concepts in DT systems for musculoskeletal (MSK) applications through an overview of the key components, technologies, clinical uses, challenges, and future directions that define this rapidly growing field. DT systems leverage computational models such as multibody dynamics and finite element analysis to simulate the mechanical behaviour of MSK structures, while integration with wearable technologies allows real-time monitoring and feedback, facilitating preventive measures, and adaptive care strategies. Early applications of DT systems to MSK include optimising the monitoring of exercise and rehabilitation, analysing joint mechanics for personalised surgical techniques, and predicting post-operative outcomes. While still under development, these advancements promise to revolutionise MSK care by improving surgical planning, reducing complications, and personalising patient rehabilitation strategies. Integrating advanced machine learning algorithms can enhance the predictive abilities of DTs and provide a better understanding of disease processes through explainable artificial intelligence (AI). Despite their potential, DT systems face significant challenges. These include integrating multi-modal data, modelling ageing and damage, efficiently using computational resources and developing clinically accurate and impactful models. Addressing these challenges will require multidisciplinary collaboration. Furthermore, guaranteeing patient privacy and protection against bias is extremely important, as is navigating regulatory requirements for clinical adoption. DT systems present a significant opportunity to improve patient care, made possible by recent technological advancements in several fields, including wearable sensors, computational modelling of biological structures, and AI. As these technologies continue to mature and their integration is streamlined, DT systems may fast-track medical innovation, ushering in a new era of rapid improvement of treatment outcomes and broadening the scope of preventive medicine.

Level of Evidence: Level V.

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来源期刊
CiteScore
8.10
自引率
18.40%
发文量
418
审稿时长
2 months
期刊介绍: Few other areas of orthopedic surgery and traumatology have undergone such a dramatic evolution in the last 10 years as knee surgery, arthroscopy and sports traumatology. Ranked among the top 33% of journals in both Orthopedics and Sports Sciences, the goal of this European journal is to publish papers about innovative knee surgery, sports trauma surgery and arthroscopy. Each issue features a series of peer-reviewed articles that deal with diagnosis and management and with basic research. Each issue also contains at least one review article about an important clinical problem. Case presentations or short notes about technical innovations are also accepted for publication. The articles cover all aspects of knee surgery and all types of sports trauma; in addition, epidemiology, diagnosis, treatment and prevention, and all types of arthroscopy (not only the knee but also the shoulder, elbow, wrist, hip, ankle, etc.) are addressed. Articles on new diagnostic techniques such as MRI and ultrasound and high-quality articles about the biomechanics of joints, muscles and tendons are included. Although this is largely a clinical journal, it is also open to basic research with clinical relevance. Because the journal is supported by a distinguished European Editorial Board, assisted by an international Advisory Board, you can be assured that the journal maintains the highest standards. Official Clinical Journal of the European Society of Sports Traumatology, Knee Surgery and Arthroscopy (ESSKA).
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