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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Machine learning approach to predict center of pressure trajectories in a complete gait cycle: a feedforward neural network vs. LSTM network
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Machine learning approach to predict center of pressure trajectories in a complete gait cycle: a feedforward neural network vs. LSTM network

机译:完整步态周期中压力轨迹中心的机器学习方法:一种前馈神经网络与LSTM网络

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摘要

Center of pressure (COP) trajectories of human can maintain regulation of forward progression and stability of lateral sway during walking. The insole pressure system can only detect COP trajectories of each foot during single stance. In this study, we developed artificial neural network models that could present COP trajectories in an integrated coordinate system during a complete gait cycle using pressure information of the insole system. A feed forward artificial neural network (FFANN) and a long short-term memory (LSTM) model were developed. For FFANN, among 198 pressure sensors from Pedar-X insoles, proper input variables were selected using sequential forward selection to reduce input dimension. The LSTM model used all 198 signals as inputs because of its self-learning characteristic. As results of cross-validation, the FFANN model showed correlation coefficients of 0.98-0.99 and 0.93-0.95 in anterior/posterior and medial/lateral directions, respectively. For the LSTM model, correlation coefficients were similar to those of FFANN. However, the relative root mean square error (12.5%) of the FFANN model was higher than that (9.8%) of the LSTM model in medial/lateral direction (p = 0.03). This study can be used for quantitative evaluation of clinical diagnosis and rehabilitation status for patient with various diseases through further training using varied databases.
机译:人体压力中心(COP)轨迹可以维持行走期间横向摇摆的前向进展和稳定性的调节。鞋垫压力系统只能在单个立场期间检测每只脚的警察轨迹。在这项研究中,我们开发了人工神经网络模型,其可以在使用鞋垫系统的压力信息期间在完整的步态周期期间在集成坐标系中呈现COP轨迹。开发了一种前进人工神经网络(FFANN)和长短期存储器(LSTM)模型。对于FFANN,在来自PEDAR-X鞋垫的198个压力传感器中,使用顺序前进选择选择适当的输入变量,以减少输入尺寸。由于其自学习特征,LSTM模型将所有198个信号用作输入。随着交叉验证的结果,FFANN模型分别显示出前/后和侧向方向上的0.98-0.99和0.93-0.95的相关系数。对于LSTM模型,相关系数类似于FFANN的系数。然而,FFANN模型的相对根均方误差(12.5%)高于内侧/横向方向(P = 0.03)的LSTM模型的(9.8%)。该研究可用于通过使用各种数据库进一步培训进行各种疾病的患者临床诊断和康复状态的定量评估。

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