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Published in: Journal of Medical Systems 6/2020

01-06-2020 | Dementia | Systems-Level Quality Improvement

Gait-Based Machine Learning for Classifying Patients with Different Types of Mild Cognitive Impairment

Authors: Pei-Hao Chen, Chieh-Wen Lien, Wen-Chun Wu, Lu-Shan Lee, Jin-Siang Shaw

Published in: Journal of Medical Systems | Issue 6/2020

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Abstract

Mild cognitive impairment (MCI) may be caused by Alzheimer’s disease, Parkinson’s disease (PD), cerebrovascular accident, nutritional or metabolic disorders, or mental disorders. It is important to determine the cause and treatment of dementia as early as possible because dementia may appear in remission. Decline in MCI cognitive function may affect a patient’s walking performance. Therefore, all participants in this study participated in an experiment using a portable gait analysis system to perform walk, time up and go, and jump tests. The collected gait parameters are used in a machine learning classification model based on a support vector machine (SVM) and principal component analysis (PCA). The aim of the study is to predict different types of MCI patients based on gait information. It is shown that the machine learning classification model can predict different types of MCI patients. Specifically, the PCA–SVM model demonstrated better classification performance with 91.67% accuracy and 0.9714 area under the receiver operating characteristic curve (ROC AUC) using the polynomial kernel function in classifying PD–MCI and non-PD–MCI patients.
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Metadata
Title
Gait-Based Machine Learning for Classifying Patients with Different Types of Mild Cognitive Impairment
Authors
Pei-Hao Chen
Chieh-Wen Lien
Wen-Chun Wu
Lu-Shan Lee
Jin-Siang Shaw
Publication date
01-06-2020
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 6/2020
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-020-01578-7

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