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Development and validation of FootNet; a new kinematic algorithm to improve foot-strike and toe-off detection in treadmill running

机译:脚踏网的开发和验证; 一种新的运动算法,以改善跑步机运行中的脚尖和脚趾检测

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The accurate detection of foot-strike and toe-off is often critical in the assessment of running biomechanics. The gold standard method for step event detection requires force data which are not always available. Although kinematics-based algorithms can also be used, their accuracy and generalisability are limited, often requiring corrections for speed or foot-strike pattern. The purpose of this study was to develop FootNet, a novel kinematics and deep learning-based algorithm for the detection of step events in treadmill running. Five treadmill running datasets were gathered and processed to obtain segment and joint kinematics, and to identify the contact phase within each gait cycle using force data. The proposed algorithm is based on a long short-term memory recurrent neural network and takes the distal tibia anteroposterior velocity, ankle dorsiflexion/plantar flexion angle and the anteroposterior and vertical velocities of the foot centre of mass as input features to predict the contact phase within a given gait cycle. The chosen model architecture underwent 5-fold cross-validation and the final model was tested in a subset of participants from each dataset (30%). Non-parametric Bland-Altman analyses (bias and [95% limits of agreement]) and root mean squared error (RMSE) were used to compare FootNet against the force data step event detection method. The association between detection errors and running speed, foot-strike angle and incline were also investigated. FootNet outperformed previously published algorithms (foot-strike bias = 0 [–10, 7] ms, RMSE = 5 ms; toe-off bias = 0 [–10, 10] ms, RMSE = 6 ms; and contact time bias = 0 [–15, 15] ms, RMSE = 8 ms) and proved robust to different running speeds, foot-strike angles and inclines. We have made FootNet’s source code publicly available for step event detection in treadmill running when force data are not available.
机译:准确地检测足部撞击和脚趾往往在运行生物力学的评估中往往是至关重要的。步骤事件检测的金标准方法需要不始终可用的强制数据。虽然也可以使用基于运动学的算法,但它们的准确性和长度是有限的,通常需要校正速度或脚击模式。本研究的目的是开发足迹,一种新的运动学和基于深度学习的算法,用于检测跑步机运行中的步骤事件。收集和处理五个跑步机运行数据集以获得段和关节运动学,并使用Force Data识别每个步态周期内的联系阶段。所提出的算法基于长期内存复发性神经网络,并采用远端胫骨前后速度,脚踝背屈/跖屈屈曲角度和脚背和垂直速度和垂直速度作为输入特征,以预测内部的接触阶段给定的步态周期。所选择的模型体系结构接受了5倍交叉验证和最终模型在每个数据集(30%)的参与者的子集中进行了测试。非参数间Bland-Altman分析(偏见和[95%的协议限制])和根均方误差(RMSE)用于将脚本网与力数据步骤事件检测方法进行比较。还研究了检测误差和运行速度,脚冲刺角和斜坡之间的关联。 FootNet优于先前发布的算法(脚击偏见= 0 [-10,7] MS,RMSE = 5 ms; TOE-OFF偏差= 0 [-10,10] MS,RMSE = 6 ms;并接触时间偏差= 0 [-15,15] MS,RMSE = 8毫秒)并证明了不同运行速度,脚击角度和斜面的强大。我们在不可用的跑步机运行中公开提供脚本网的源代码,用于跑步机运行的步骤事件检测。

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