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Comparison of Predictions Between an EMG-Assisted Approach and Two Optimization-Driven Approaches for Lumbar Spine Loading During Walking With Backpack Loads

机译:在用背包负载行走期间,EMG辅助方法与两种优化驱动方法的预测和两种优化驱动方法

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ObjectiveThe efficacy of two optimization-driven biomechanical modeling approaches has been compared with an electromyography-assisted optimization (EMGAO) approach to predict lumbar spine loading while walking with backpack loads.BackgroundThe EMGAO approach adopts more variables in the optimization process and is complex in data collection and processing, whereas optimization-driven approaches are simple and include the fewest possible variables. However, few studies have been conducted on the efficacy of using the optimization-driven approach to predict lumbar spine loading while walking with backpack loads.MethodAnthropometric information of 10 healthy male adults as well as their kinematic, kinetic, and electromyographic data acquired while they walked with various backpack loads (no-load, 5%, 10%, 15%, and 20% of body weight) served as inputs into the model for predicting lumbosacral joint compression forces. The efficacy of two optimization-driven models, namely double linear optimization with constraints on muscle intensity and single linear optimization without any constraints, was investigated by comparing the resulting force profile with that provided by a current EMGAO approach.ResultsThe double and single linear optimization approaches predicted mean deviations in peak force of -5.1%, and -19.2% as well as root-mean-square differences in force profile of 16.2%, and 25.4%, respectively.ConclusionThe double linear optimization approach was a relatively comparable estimator to the EMGAO approach in terms of its consistency, slight bias, and efficiency for predicting peak lumbosacral joint compression forces.ApplicationThe double linear optimization approach is a useful biomechanical model for estimating peak lumbar compression forces while walking with backpack loads.
机译:对象的效力是两种优化驱动的生物力学建模方法的疗效与肌电图辅助优化(Emgao)方法进行了比较,以预测腰椎脊柱装载,同时使用背包负载行走。背景EMGAO方法采用更多变量在优化过程中,在数据收集中复杂和处理,而优化驱动的方法很简单,包括最少的可能变量。然而,使用优化驱动方法预测腰椎装载的效果很少进行,同时用背包负载行走。10个健康男性成年人的含量计量信息以及他们走路时获得的运动,动力学和电焦数据具有各种背包载荷(空载,5%,10%,15%和20%的体重)用作预测腰骶关节压力的模型的输入。通过将产生的力曲线与当前EMGAO方法提供的,通过比较所得到的力曲线,研究了两个优化驱动的模型,即对肌肉强度的约束和单线性优化而没有任何约束的肌肉强度和单线性优化的约束的功效。分水和单线性优化方法预测峰值力的平均偏差为-5.1%,以及-19.2%以及力分布的根均方差异,分别为16.2%和25.4%。结论双线性优化方法是Emgao的相对可比的估计器在其一致性,轻微偏置和预测峰值腰骶关节压缩力的效率方面的方法。采用双线性优化方法是一种用于估计腰部压缩力的有用生物力学模型,同时用背包负载行走。

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