Explaining Machine Learning Models for Clinical Gait Analysis

D. Slijepcevic, Fabian Horst, S. Lapuschkin, B. Horsak, Anna-Maria Raberger, A. Kranzl, W. Samek, C. Breiteneder, W. Schöllhorn, M. Zeppelzauer
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引用次数: 26

Abstract

Machine Learning (ML) is increasingly used to support decision-making in the healthcare sector. While ML approaches provide promising results with regard to their classification performance, most share a central limitation, their black-box character. This article investigates the usefulness of Explainable Artificial Intelligence (XAI) methods to increase transparency in automated clinical gait classification based on time series. For this purpose, predictions of state-of-the-art classification methods are explained with a XAI method called Layer-wise Relevance Propagation (LRP). Our main contribution is an approach that explains class-specific characteristics learned by ML models that are trained for gait classification. We investigate several gait classification tasks and employ different classification methods, i.e., Convolutional Neural Network, Support Vector Machine, and Multi-layer Perceptron. We propose to evaluate the obtained explanations with two complementary approaches: a statistical analysis of the underlying data using Statistical Parametric Mapping and a qualitative evaluation by two clinical experts. A gait dataset comprising ground reaction force measurements from 132 patients with different lower-body gait disorders and 62 healthy controls is utilized. Our experiments show that explanations obtained by LRP exhibit promising statistical properties concerning inter-class discriminativity and are also in line with clinically relevant biomechanical gait characteristics.
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解释临床步态分析的机器学习模型
机器学习(ML)越来越多地用于支持医疗保健行业的决策。虽然机器学习方法在分类性能方面提供了有希望的结果,但大多数方法都有一个中心限制,即它们的黑箱特征。本文研究了可解释人工智能(XAI)方法在基于时间序列的自动临床步态分类中增加透明度的有用性。为此,使用称为分层相关传播(LRP)的XAI方法来解释最新分类方法的预测。我们的主要贡献是一种解释通过训练步态分类的ML模型学习到的特定类别特征的方法。我们研究了几种步态分类任务,并采用了不同的分类方法,即卷积神经网络、支持向量机和多层感知器。我们建议用两种互补的方法来评估获得的解释:使用统计参数映射对基础数据进行统计分析和由两位临床专家进行定性评估。步态数据集包括来自132名不同下半身步态障碍患者和62名健康对照的地面反作用力测量数据。我们的实验表明,LRP获得的解释在类间判别性方面表现出有希望的统计特性,并且也符合临床相关的生物力学步态特征。
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