由传感器驱动的数字双胞胎驱动的可穿戴步态实验室,用于对中风后的生物力学进行定量分析。

IF 3.4 Q2 ENGINEERING, BIOMEDICAL Wearable technologies Pub Date : 2024-11-14 eCollection Date: 2024-01-01 DOI:10.1017/wtc.2024.14
Donatella Simonetti, Maartje Hendriks, Bart Koopman, Noel Keijsers, Massimo Sartori
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引用次数: 0

摘要

中风后的步态定量分析通常在设备齐全的实验室中进行,这些实验室拥有昂贵的技术,用于对患者的运动能力进行定量评估。将此类技术与肌电图(EMG)驱动的肌肉骨骼模型相结合,可以无创估算肌力特性,让临床医生深入了解运动损伤机制。然而,由于实验室面积有限、传感器设置和数据处理耗时较长,这些技术在常规临床护理中的实用性受到了限制。我们介绍的可穿戴技术具有多通道肌电图传感服装和自动肌肉定位技术。这样就可以在无监督的情况下计算特定肌肉的激活,并结合五个惯性测量单元(IMU)来评估不同步行速度下的关节运动学和动力学。最后,该可穿戴系统与一个由特定人体肌电图驱动的肌肉骨骼模型(称为人体数字孪生)相结合,可对肌肉-肌腱层面的运动能力进行定量评估。这种人体数字双胞胎有助于估算由单个肌肉-肌腱力产生的踝关节背跖屈扭矩。结果证明了可穿戴技术提取关节运动学和动力学的能力。当结合肌电信号来驱动肌肉骨骼模型时,它能合理估计中风后患者在不同步行速度下的踝关节背跖屈力矩(R 2 = 0.65 ± 0.21)。值得注意的是,当输入肌肉骨骼模型时,揭示个人控制策略的肌电信号可以弥补 IMU 导出的动力学和运动学的不准确性。我们提出的可穿戴技术有望在时间有限、空间受限的环境中估算肌肉动力学和由此产生的关节扭矩。这是将人类运动生物力学转化为实验室控制环境以外的有效运动损伤监测的关键一步。
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A wearable gait lab powered by sensor-driven digital twins for quantitative biomechanical analysis post-stroke.

Commonly, quantitative gait analysis post-stroke is performed in fully equipped laboratories housing costly technologies for quantitative evaluation of a patient's movement capacity. Combining such technologies with an electromyography (EMG)-driven musculoskeletal model can estimate muscle force properties non-invasively, offering clinicians insights into motor impairment mechanisms. However, lab-constrained areas and time-demanding sensor setup and data processing limit the practicality of these technologies in routine clinical care. We presented wearable technology featuring a multi-channel EMG-sensorized garment and an automated muscle localization technique. This allows unsupervised computation of muscle-specific activations, combined with five inertial measurement units (IMUs) for assessing joint kinematics and kinetics during various walking speeds. Finally, the wearable system was combined with a person-specific EMG-driven musculoskeletal model (referred to as human digital twins), enabling the quantitative assessment of movement capacity at a muscle-tendon level. This human digital twin facilitates the estimation of ankle dorsi-plantar flexion torque resulting from individual muscle-tendon forces. Results demonstrate the wearable technology's capability to extract joint kinematics and kinetics. When combined with EMG signals to drive a musculoskeletal model, it yields reasonable estimates of ankle dorsi-plantar flexion torques (R 2 = 0.65 ± 0.21) across different walking speeds for post-stroke individuals. Notably, EMG signals revealing an individual's control strategy compensate for inaccuracies in IMU-derived kinetics and kinematics when input into a musculoskeletal model. Our proposed wearable technology holds promise for estimating muscle kinetics and resulting joint torque in time-limited and space-constrained environments. It represents a crucial step toward translating human movement biomechanics outside of controlled lab environments for effective motor impairment monitoring.

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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊最新文献
A muscle synergies-based controller to drive a powered upper-limb exoskeleton in reaching tasks. A wearable gait lab powered by sensor-driven digital twins for quantitative biomechanical analysis post-stroke. Design, modeling, and preliminary evaluation of a 3D-printed wrist-hand grasping orthosis for stroke survivors. Concurrent validity of inertial measurement units in range of motion measurements of upper extremity: A systematic review and meta-analysis. Erratum: Validity of estimating center of pressure during walking and running with plantar load from a three-sensor wireless insole - ERRATUM.
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