Faculty of Sports Science, Ningbo University, Ningbo, 315211, China; Faculty of Engineering, University of Pannonia, Veszprém, 8201, Hungary; Savaria Institute of Technology, Eötvös Loránd University, Szombathely, 9700, Hungary.
Faculty of Sports Science, Ningbo University, Ningbo, 315211, China; School of Health and Life Sciences, University of the West of Scotland, Scotland, G72 0LH, United Kingdom.
Comput Methods Programs Biomed. 2023 Nov;241:107761. doi: 10.1016/j.cmpb.2023.107761. Epub 2023 Aug 10.
As a fundamental exercise technique, landing can commonly be associated with anterior cruciate ligament (ACL) injury, especially during after-fatigue single-leg landing (SL). Presently, the inability to accurately detect ACL loading makes it difficult to recognize the risk degree of ACL injury, which reduces the effectiveness of injury prevention and sports monitoring. Increased risk of ACL injury during after-fatigue SL may be related to changes in ankle motion patterns. Therefore, this study aims to develop a highly accurate and easily implemented ACL force prediction model by combining deep learning and the explored relationship between ACL force and ankle motion pattern.
First, 56 subjects' during before and after-fatigue SL data were collected to explore the relationship between the ankle initial contact angle (AIC), ankle range of motion (AROM) and peak ACL force (PAF). Then, the musculoskeletal model was developed to simulate and calculate the ACL force. Finally, the ACL force prediction model was constructed by combining the explored relationship and sparrow search algorithm (SSA) to optimize the extreme learning machine (ELM) and long short-term memory (LSTM).
There was almost a stronger linear relationship between the PAF and AIC (R = -0.70), AROM (R = -0.61). By substituting AIC and AROM as independent variables in the SSA-ELM prediction model, the model shows excellent prediction performance because of very strong correlation (R = 0.9992, MSE = 0.0023, RMSE = 0.0474). Based on the equal scaling by combining results of SSA-ELM and SSA-LSTM, the prediction model achieves excellent performance in ACL force prediction of the overall waveform (R = 0.9947, MSE = 0.0076, RMSE = 0.0873).
By increasing the AIC and AROM during SL, the lower limb joint energy dissipation can be increased and the PAF reduced, thus reducing the impact loads on the lower limb joints and reducing ACL injuries. The proposed ACL dynamic load force prediction model has low input variable demands (sagittal joint angles), excellent generalization capabilities and superior performance in terms of high accuracy. In the future, we plan to use it as an accurate ACL injury risk assessment tool to promote and apply it to a wider range of sports training and injury monitoring.
作为一项基本的运动技术,落地通常与前交叉韧带(ACL)损伤有关,尤其是在疲劳后单腿落地(SL)时。目前,由于无法准确检测 ACL 受力情况,难以识别 ACL 损伤的风险程度,从而降低了损伤预防和运动监测的效果。疲劳后 SL 期间 ACL 损伤风险增加可能与踝关节运动模式的变化有关。因此,本研究旨在通过结合深度学习和探索到的 ACL 力与踝关节运动模式之间的关系,开发一种高度准确且易于实施的 ACL 力预测模型。
首先,收集 56 名受试者疲劳前后 SL 期间的数据,以探索踝关节初始接触角(AIC)、踝关节活动范围(AROM)和峰值 ACL 力(PAF)之间的关系。然后,建立肌肉骨骼模型以模拟和计算 ACL 力。最后,通过结合所探索的关系和麻雀搜索算法(SSA)来优化极端学习机(ELM)和长短时记忆网络(LSTM),构建 ACL 力预测模型。
PAF 与 AIC(R=-0.70)、AROM(R=-0.61)之间几乎存在更强的线性关系。通过将 AIC 和 AROM 作为 SSA-ELM 预测模型的自变量代入,由于具有很强的相关性,该模型显示出出色的预测性能(R=0.9992,MSE=0.0023,RMSE=0.0474)。基于 SSA-ELM 和 SSA-LSTM 结果的等比例组合,预测模型在 ACL 力整体波形的预测中表现出优异的性能(R=0.9947,MSE=0.0076,RMSE=0.0873)。
通过增加 SL 过程中的 AIC 和 AROM,可以增加下肢关节的能量耗散并降低 PAF,从而降低下肢关节的冲击负荷并减少 ACL 损伤。所提出的 ACL 动态负荷力预测模型具有较低的输入变量需求(矢状面关节角度),具有出色的泛化能力和高精度的优越性能。在未来,我们计划将其用作准确的 ACL 损伤风险评估工具,以促进其在更广泛的运动训练和损伤监测中的应用。