Automated classification of neurological disorders of gait using spatio-temporal gait parameters

Automated pattern recognition systems have been used for accurate identification of neurological conditions as well as the evaluation of the treatment outcomes. This study aims to determine the accuracy of diagnoses of (oto-)neurological gait disorders using different types of automated pattern reco...

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Published inJournal of electromyography and kinesiology Vol. 25; no. 2; pp. 413 - 422
Main Authors Pradhan, Cauchy, Wuehr, Max, Akrami, Farhoud, Neuhaeusser, Maximilian, Huth, Sabrina, Brandt, Thomas, Jahn, Klaus, Schniepp, Roman
Format Journal Article
LanguageEnglish
Published England Elsevier Ltd 01.04.2015
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ISSN1050-6411
1873-5711
1873-5711
DOI10.1016/j.jelekin.2015.01.004

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Summary:Automated pattern recognition systems have been used for accurate identification of neurological conditions as well as the evaluation of the treatment outcomes. This study aims to determine the accuracy of diagnoses of (oto-)neurological gait disorders using different types of automated pattern recognition techniques. Clinically confirmed cases of phobic postural vertigo (N=30), cerebellar ataxia (N=30), progressive supranuclear palsy (N=30), bilateral vestibulopathy (N=30), as well as healthy subjects (N=30) were recruited for the study. 8 measurements with 136 variables using a GAITRite® sensor carpet were obtained from each subject. Subjects were randomly divided into two groups (training cases and validation cases). Sensitivity and specificity of k-nearest neighbor (KNN), naive-bayes classifier (NB), artificial neural network (ANN), and support vector machine (SVM) in classifying the validation cases were calculated. ANN and SVM had the highest overall sensitivity with 90.6% and 92.0% respectively, followed by NB (76.0%) and KNN (73.3%). SVM and ANN showed high false negative rates for bilateral vestibulopathy cases (20.0% and 26.0%); while KNN and NB had high false negative rates for progressive supranuclear palsy cases (76.7% and 40.0%). Automated pattern recognition systems are able to identify pathological gait patterns and establish clinical diagnosis with good accuracy. SVM and ANN in particular differentiate gait patterns of several distinct oto-neurological disorders of gait with high sensitivity and specificity compared to KNN and NB. Both SVM and ANN appear to be a reliable diagnostic and management tool for disorders of gait.
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ISSN:1050-6411
1873-5711
1873-5711
DOI:10.1016/j.jelekin.2015.01.004