Explaining Machine Learning Models for Clinical Gait Analysis

Author:

Slijepcevic Djordje1,Horst Fabian2,Lapuschkin Sebastian3,Horsak Brian4,Raberger Anna-Maria5,Kranzl Andreas6,Samek Wojciech3,Breiteneder Christian7,Schöllhorn Wolfgang Immanuel8,Zeppelzauer Matthias9

Affiliation:

1. Institute of Creative Media Technologies, Department of Media & DigitalTechnologies, St. Pölten University of Applied Sciences, St. Pölten, Austria

2. Department of Training and Movement Science, Institute of Sport Science, Johannes Gutenberg-University Mainz, Mainz, Germany

3. Department of Artificial Intelligence, Fraunhofer Heinrich Hertz Institute, Berlin, Germany

4. Institute of Health Sciences, Department of Health Sciences, St. Pölten University of Applied Sciences, Austria and Center for Digital Health and Social Innovation, St. Pölten University of Applied Sciences, St. Pölten, Austria

5. Institute of Health Sciences, Department of Health Sciences, St. Pölten University of Applied Sciences, St. Pölten, Austria

6. Laboratory for Gait and Movement Analysis, Orthopaedic Hospital Vienna-Speising, Vienna, Austria

7. Institute of Visual Computing and Human-Centered Technology, TU Wien, Vienna, Austria

8. Department of Training and Movement Science, Institute of Sport Science, Johannes Gutenberg-University Mainz, Germany

9. Institute of Creative Media Technologies, Department of Media & Digital Technologies, St. Pölten University of Applied Sciences, Austria

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.

Funder

Austrian Research Promotion Agency

Austrian Federal Ministry for Digital and Economic Affairs

Lower Austrian Research and Education Company

Provincial Government of Lower Austria

German Ministry for Education and Research as BIFOLD

TraMeExCo

European Union’s Horizon 2020

Publisher

Association for Computing Machinery (ACM)

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