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利用可解释的机器学习来识别与前交叉韧带损伤相关的步态生物力学参数。

Leveraging explainable machine learning to identify gait biomechanical parameters associated with anterior cruciate ligament injury.

机构信息

Institute for Bio-Economy & Agri-Technology, Center for Research and Technology Hellas, 38333, Vólos, Greece.

TEFAA, Department of Physical Education & Sport Science, University of Thessaly, 42100, Trikala, Greece.

出版信息

Sci Rep. 2022 Apr 22;12(1):6647. doi: 10.1038/s41598-022-10666-2.

Abstract

Anterior cruciate ligament (ACL) deficient and reconstructed knees display altered biomechanics during gait. Identifying significant gait changes is important for understanding normal and ACL function and is typically performed by statistical approaches. This paper focuses on the development of an explainable machine learning (ML) empowered methodology to: (i) identify important gait kinematic, kinetic parameters and quantify their contribution in the diagnosis of ACL injury and (ii) investigate the differences in sagittal plane kinematics and kinetics of the gait cycle between ACL deficient, ACL reconstructed and healthy individuals. For this aim, an extensive experimental setup was designed in which three-dimensional ground reaction forces and sagittal plane kinematic as well as kinetic parameters were collected from 151 subjects. The effectiveness of the proposed methodology was evaluated using a comparative analysis with eight well-known classifiers. Support Vector Machines were proved to be the best performing model (accuracy of 94.95%) on a group of 21 selected biomechanical parameters. Neural Networks accomplished the second best performance (92.89%). A state-of-the-art explainability analysis based on SHapley Additive exPlanations (SHAP) and conventional statistical analysis were then employed to quantify the contribution of the input biomechanical parameters in the diagnosis of ACL injury. Features, that would have been neglected by the traditional statistical analysis, were identified as contributing parameters having significant impact on the ML model's output for ACL injury during gait.

摘要

前交叉韧带(ACL)缺失和重建的膝关节在步态中表现出改变的生物力学。识别显著的步态变化对于理解正常和 ACL 的功能很重要,通常通过统计方法来实现。本文专注于开发一种具有解释能力的机器学习(ML)赋能方法,以:(i)识别重要的步态运动学、动力学参数,并量化它们在 ACL 损伤诊断中的贡献;(ii)研究 ACL 缺失、ACL 重建和健康个体在步态周期中的矢状面运动学和动力学的差异。为此,设计了一个广泛的实验装置,从 151 名受试者中收集了三维地面反作用力以及矢状面运动学和动力学参数。使用与八个著名分类器的比较分析评估了所提出方法的有效性。支持向量机被证明是 21 个选定生物力学参数组中表现最佳的模型(准确率为 94.95%)。神经网络完成了第二好的性能(92.89%)。然后,采用基于 SHapley Additive exPlanations(SHAP)和传统统计分析的最新可解释性分析,量化输入生物力学参数在 ACL 损伤诊断中的贡献。一些特征可能会被传统统计分析忽略,但它们被确定为对用于步态中 ACL 损伤的 ML 模型输出有显著影响的贡献参数。

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