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Title: | Balance Deficits due to Cerebellar Ataxia: A Machine Learning and Cloud-Based Approach. | Authors: | Ngo T.;Pathirana P.N.;Horne M.K.;Power L.;Szmulewicz D.J.;Milne S.C. ;Corben L.A.;Roberts M.;Delatycki M.B. | Monash Health Department(s): | Physiotherapy Allied Health |
Institution: | (Ngo, Delatycki) School of Engineering, Deakin University, Geelong, VIC, Australia (Pathirana) School of Engineering, Deakin University, Australia (Horne) Parkinson's Disease Laboratory, Florey Institute of Neuroscience and Mental Health, United States (Power) Balance Disorders and Ataxia Service, Royal Victorian Eye and Ear Hospital (RVEEH), Australia (Szmulewicz) Cerebellar Ataxia Clinic, Alfred Hospital, Australia (Milne, Corben) Murdoch Children's Research Institute, Australia (Roberts) Physiotherapy Department, Monash Health, Australia |
Issue Date: | 19-May-2021 | Copyright year: | 2021 | Publisher: | IEEE Computer Society | Place of publication: | United States | Publication information: | IEEE Transactions on Biomedical Engineering. 68 (5) (pp 1507-1517), 2021. Article Number: 9220831. Date of Publication: May 2021. | Journal: | IEEE Transactions on Biomedical Engineering | Abstract: | Cerebellar ataxia (CA) refers to the disordered movement that occurs when the cerebellum is injured or affected by disease. It manifests as uncoordinated movement of the limbs, speech, and balance. This study is aimed at the formation of a simple, objective framework for the quantitative assessment of CA based on motion data. We adopted the Recurrence Quantification Analysis concept in identifying features of significance for the diagnosis. Eighty-six subjects were observed undertaking three standard neurological tests (Romberg's, Heel-shin and Truncal ataxia) to capture 213 time series inertial measurements each. The feature selection was based on engaging six different common techniques to distinguish feature subset for diagnosis and severity assessment separately. The Gaussian Naive Bayes classifier performed best in diagnosing CA with an average double cross-validation accuracy, sensitivity, and specificity of 88.24%, 85.89%, and 92.31%, respectively. Regarding severity assessment, the voting regression model exhibited a significant correlation (0.72 Pearson) with the clinical scores in the case of the Romberg's test. The Heel-shin and Truncal tests were considered for diagnosis and assessment of severity concerning subjects who were unable to stand. The underlying approach proposes a reliable, comprehensive framework for the assessment of postural stability due to cerebellar dysfunction using a single inertial measurement unit.Copyright © 1964-2012 IEEE. | DOI: | http://monash.idm.oclc.org/login?url=http://dx.doi.org/10.1109/TBME.2020.3030077 | PubMed URL: | 33044924 [http://www.ncbi.nlm.nih.gov/pubmed/?term=33044924] | URI: | https://repository.monashhealth.org/monashhealthjspui/handle/1/43560 | Type: | Article | Subjects: | Bayesian learning cerebellar ataxia classifier cross validation diagnostic test accuracy study feature selection heel inertial sensor motion nervous system quantitative analysis sensitivity and specificity time series analysis |
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