Explainable AI and Machine Learning Towards Human Gait Deterioration
Analysis
- URL: http://arxiv.org/abs/2306.07165v1
- Date: Mon, 12 Jun 2023 14:53:00 GMT
- Title: Explainable AI and Machine Learning Towards Human Gait Deterioration
Analysis
- Authors: Abdullah Alharthi
- Abstract summary: We objectively analyze gait data and associate findings with clinically relevant biomarkers.
We achieve classification accuracies of 98% F1 sc ores for each PhysioNet.org dataset and 95.5% F1 scores for the combined PhysioNet dataset.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Gait analysis, an expanding research area, employs non invasive sensors and
machine learning techniques for a range of applicatio ns. In this study, we
concentrate on gait analysis for detecting cognitive decline in Parkinson's
disease (PD) and under dual task conditions. Using convolutional neural
networks (CNNs) and explainable machine learning, we objectively analyze gait
data and associate findings with clinically relevant biomarkers. This is
accomplished by connecting machine learning outputs to decisions based on human
visual observations or derived quantitative gait parameters, which are tested
and routinely implemented in curr ent healthcare practice. Our analysis of gait
deterioration due to cognitive decline in PD enables robust results using the
proposed methods for assessing PD severity from ground reaction force (GRF)
data. We achieved classification accuracies of 98% F1 sc ores for each
PhysioNet.org dataset and 95.5% F1 scores for the combined PhysioNet dataset.
By linking clinically observable features to the model outputs, we demonstrate
the impact of PD severity on gait. Furthermore, we explore the significance of
cognit ive load in healthy gait analysis, resulting in robust classification
accuracies of 100% F1 scores for subject identity verification. We also
identify weaker features crucial for model predictions using Layer Wise
Relevance Propagation. A notable finding o f this study reveals that cognitive
deterioration's effect on gait influences body balance and foot landing/lifting
dynamics in both classification cases: cognitive load in healthy gait and
cognitive decline in PD gait.
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