Ozates Mustafa Erkam, Salami Firooz, Wolf Sebastian Immanuel, Arslan Yunus Ziya
Department of Electrical Electronics Engineering, Faculty of Engineering, Turkish-German University, Istanbul, Turkey.
Clinic for Orthopaedics and Trauma Surgery, Heidelberg University Hospital, Heidelberg, Germany.
Ann Biomed Eng. 2025 Mar;53(3):634-643. doi: 10.1007/s10439-024-03658-y. Epub 2024 Nov 30.
While gait analysis is essential for assessing neuromotor disorders like cerebral palsy (CP), capturing accurate ground reaction force (GRF) measurements during natural walking presents challenges, particularly due to variations in gait patterns. Previous studies have explored GRF prediction using machine learning, but specific focus on patients with CP is lacking. This research aims to address this gap by predicting GRF using joint angles derived from marker data during gait in patients with CP, thereby suggesting a protocol for gait analysis without the need for force plates.
The study employed an extensive dataset comprising both typically developed (TD) subjects (n = 132) and patients with CP (n = 622), captured using motion capture systems and force plates. Kinematic data included lower limb angles in three planes of motion, while GRF data encompassed three axes. A one-dimensional convolutional neural network model was designed to extract features from kinematic time series, followed by densely connected layers for GRF prediction. Evaluation metrics included normalized root mean squared error (nRMSE) and Pearson correlation coefficient (PCC).
GRFs of patients with CP were predicted with nRMSE values consistently below 20.13% and PCC scores surpassing 0.84. In the TD group, all GRFs were predicted with higher accuracy, showing nRMSE values lower than 12.65% and PCC scores exceeding 0.94.
The predictions considerably captured the patterns observed in the experimentally obtained GRFs. Despite limitations, including the absence of upper extremity kinematics data and the need for continuous model evolution, the study demonstrates the potential of machine learning in predicting GRFs in patients with CP, albeit with current prediction errors constraining immediate clinical applicability.
虽然步态分析对于评估脑瘫(CP)等神经运动障碍至关重要,但在自然行走过程中获取准确的地面反作用力(GRF)测量值存在挑战,尤其是由于步态模式的变化。先前的研究已经探索了使用机器学习预测GRF,但缺乏对CP患者的具体关注。本研究旨在通过使用CP患者步态期间从标记数据得出的关节角度预测GRF来填补这一空白,从而提出一种无需测力板的步态分析方案。
该研究使用了一个广泛的数据集,包括典型发育(TD)受试者(n = 132)和CP患者(n = 622),这些数据是使用运动捕捉系统和测力板采集的。运动学数据包括三个运动平面中的下肢角度,而GRF数据包括三个轴。设计了一个一维卷积神经网络模型,从运动学时间序列中提取特征,然后通过密集连接层进行GRF预测。评估指标包括归一化均方根误差(nRMSE)和皮尔逊相关系数(PCC)。
CP患者的GRF预测结果显示,nRMSE值始终低于20.13%,PCC分数超过0.84。在TD组中,所有GRF的预测精度更高,nRMSE值低于12.65%,PCC分数超过0.94。
这些预测相当程度地捕捉到了在实验获得的GRF中观察到的模式。尽管存在局限性,包括缺乏上肢运动学数据以及需要持续的模型改进,但该研究证明了机器学习在预测CP患者GRF方面的潜力,尽管当前的预测误差限制了其立即临床应用。