利用转移测试和耦合模拟深入了解老龄人口的运动策略和运动学习情况

IF 0.8 4区 医学 Q4 BIOPHYSICS
KATHARINE NOWAKOWSKI, PHILIPPE CARVALHO, KARIM EL KIRAT, TIEN-TUAN DAO
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引用次数: 0

摘要

阐明人体运动策略在预防肌肉疏松症和减少跌倒方面具有潜在的应用价值。由于神经-肌肉-骨骼系统中存在多种与年龄有关的生化、机械和功能变化,运动功能的衰退很难通过实验进行研究。在本研究中,我们在深度强化学习环境中使用转移测试和耦合模拟策略,以更好地理解运动控制适应年龄相关变化这一复杂问题。通过转移测试,我们分别用年轻成人模型(Y)的参数来训练三维肌肉骨骼模型,使其在向前迈出两步后向前或向后摔倒,并用所有参数(M_all)的年龄相关性降低 30% 来进行测试。这种策略可以使向前训练的模拟产生向后跌倒,显示出这些参数对给定跌倒方向的潜在敏感性。其次,通过考虑相对于支撑基座的质量中心位置,使用耦合模拟解决方案来模拟跌倒后的恢复。M_all 训练模型的结果显示,模拟时间更长,骨盆垂直速度更大,最大值为 4.26 米/秒。特别是,耦合模拟的结果清楚地表明,年轻和 M_all 状态下的模型都会做出后退一步的反应,并且腿部伸展肌会更有力地激活,以推动模型向前,从模拟的跌倒中恢复过来。我们在转移测试和耦合模拟策略之间开发了一种新颖的耦合方法,以改进肌肉模型,从而描述肌肉功能,并开始测试不同的假设,如在不同极限下避免跌倒所需的策略和力量。这为针对特定患者的肌肉驱动恢复练习的精准康复开辟了新途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INSIGHTS INTO HUMAN LOCOMOTION STRATEGIES AND MOTOR LEARNING FOR AN AGEING POPULATION USING TRANSFER TESTING AND COUPLED SIMULATIONS

The elucidation of human locomotion strategies has potential applications in the prevention of sarcopenia and in the reduction of falls. Given the diverse biochemical, mechanical and functional age-related changes seen in the neuro-musculoskeletal system, the decline in motor function is difficult to study experimentally. In this study, we use transfer testing and coupled simulation strategies within a deep reinforcement learning environment to better understand the complex problem of motor control adaptation to age-related changes. Using transfer testing, a 3D musculoskeletal model is separately trained on parameters of the young adult model (Y) for either forward or backward falls after completing two steps forward, and tested using a 30% age-related reduction for all parameters (M_all). This strategy produces a backward fall for a forwardly trained simulation, showing potential sensitivity of these parameters to a given fall direction. Second, a coupled simulation solution is used to simulate recovery from falls by considering the center-of-mass position relative to the base of support. Results for the M_all trained model showed a longer simulation time and a greater vertical pelvis velocity with a maximal value of 4.26m/s. In particular, the results of the coupled simulations clearly show that both the young and M_all condition models respond with a step back and stronger leg extensor activations to propel the model forward to recover from the simulated fall. We developed a novel coupling between transfer testing and coupled simulation strategies to improve upon muscle models for characterizing muscle function, and also to begin testing different hypotheses, such as the strategy and force required to avoid a fall at different limits. This opens new avenues for precision rehabilitation with patient-specific muscle-driven recovery exercises.

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来源期刊
Journal of Mechanics in Medicine and Biology
Journal of Mechanics in Medicine and Biology 工程技术-工程:生物医学
CiteScore
1.20
自引率
12.50%
发文量
144
审稿时长
2.3 months
期刊介绍: This journal has as its objective the publication and dissemination of original research (even for "revolutionary concepts that contrast with existing theories" & "hypothesis") in all fields of engineering-mechanics that includes mechanisms, processes, bio-sensors and bio-devices in medicine, biology and healthcare. The journal publishes original papers in English which contribute to an understanding of biomedical engineering and science at a nano- to macro-scale or an improvement of the methods and techniques of medical, biological and clinical treatment by the application of advanced high technology. Journal''s Research Scopes/Topics Covered (but not limited to): Artificial Organs, Biomechanics of Organs. Biofluid Mechanics, Biorheology, Blood Flow Measurement Techniques, Microcirculation, Hemodynamics. Bioheat Transfer and Mass Transport, Nano Heat Transfer. Biomaterials. Biomechanics & Modeling of Cell and Molecular. Biomedical Instrumentation and BioSensors that implicate ''human mechanics'' in details. Biomedical Signal Processing Techniques that implicate ''human mechanics'' in details. Bio-Microelectromechanical Systems, Microfluidics. Bio-Nanotechnology and Clinical Application. Bird and Insect Aerodynamics. Cardiovascular/Cardiac mechanics. Cardiovascular Systems Physiology/Engineering. Cellular and Tissue Mechanics/Engineering. Computational Biomechanics/Physiological Modelling, Systems Physiology. Clinical Biomechanics. Hearing Mechanics. Human Movement and Animal Locomotion. Implant Design and Mechanics. Mathematical modeling. Mechanobiology of Diseases. Mechanics of Medical Robotics. Muscle/Neuromuscular/Musculoskeletal Mechanics and Engineering. Neural- & Neuro-Behavioral Engineering. Orthopedic Biomechanics. Reproductive and Urogynecological Mechanics. Respiratory System Engineering...
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