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首页> 外文期刊>Journal of Biomechanics >A calibrated EMG-informed neuromusculoskeletal model can appropriately account for muscle co-contraction in the estimation of hip joint contact forces in people with hip osteoarthritis
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A calibrated EMG-informed neuromusculoskeletal model can appropriately account for muscle co-contraction in the estimation of hip joint contact forces in people with hip osteoarthritis

机译:校准的EMG通知的神经肌肉骨骼模型可以适当地占髋关节接触力的肌肉共缩伤,在髋关节骨关节炎的人们中

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Abnormal hip joint contact forces (HJCF) are considered a primary mechanical contributor to the progression of hip osteoarthritis (OA). Compared to healthy controls, people with hip OA often present with altered muscle activation patterns and greater muscle co-contraction, both of which can influence HJCF. Neuromusculoskeletal (NMS) modelling is non-invasive approach to estimating HJCF, whereby different neural control solutions can be used to estimate muscle forces. Static optimisation, available within the popular NMS modelling software OpenSim, is a commonly used neural control solution, but may not account for an individual's unique muscle activation patterns and/or co-contraction that are often evident in pathological population. Alternatively, electromyography (EMG)-assisted neural control solutions, available within CEINMS software, have been shown to account for individual activation patterns in healthy people. Nonetheless, their application in people with hip OA, with conceivably greater levels of co-contraction, is yet to be explored. The aim of this study was to compare HJCF estimations using static optimisation (in OpenSim) and EMG-assisted (in CEINMS) neural control solutions during walking in people with hip OA. EMG-assisted neural control solution was more consistent with both EMG and joint moment data than static optimisation, and also predicted significantly higher HJCF peaks (p 0.001). The EMG-assisted neural control solution also accounted for more muscle co-contraction than static optimisation (p = 0.03), which probably contributed to these higher HJCF peaks. Findings suggest that the EMG-assisted neural control solution may estimate more physiologically plausible HJCF than static optimisation in a population with high levels of co-contraction, such as hip OA. (C) 2018 Elsevier Ltd. All rights reserved.
机译:异常髋关节接触力(HJCF)被认为是髋关节骨关节炎(OA)进展的主要机械原因。与健康对照相比,髋部OA的人通常存在改变的肌肉激活模式和更大的肌肉共收缩,这两者都可以影响HJCF。 Neuroomusculoskeletal(NMS)建模是估计HJCF的非侵入性方法,由此可以使用不同的神经控制溶液来估计肌肉力。在流行的NMS建模软件OpenSim内提供的静态优化是一个常用的神经控制解决方案,但可能无法考虑个人在病理群体中经常明显的独特肌肉激活模式和/或共收缩。或者,已经显示了CIENMS软件中可用的肌电图(EMG)译本神经控制解决方案,以考虑健康人员中的个体激活模式。尽管如此,尚未探索其在髋部oA人的人们中的应用,尚未探索更大水平的共萎缩。本研究的目的是使用静态优化(在OpenSIM)和EMG辅助(在CIENMS)神经控制解决方案中进行比较HJCF估计,在臀部OA的人们中行走。 EMG辅助神经对照溶液与EMG和关节力矩数据更一致,而不是静态优化,并且还预测显着高于HJCF峰(P <0.001)。 EMG辅助神经控制溶液还占比静态优化(P = 0.03)更多的肌肉共收缩,这可能导致这些较高的HJCF峰值。结果表明,EMG辅助神经对照溶液可以估计比具有高水平的共收缩的群体中的静态优化更具生理学上的HJCF,例如髋部oA。 (c)2018年elestvier有限公司保留所有权利。

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