Tensor Decomposition of Gait Dynamics in Parkinson's Disease

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

48 Scopus Citations
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Original languageEnglish
Pages (from-to)1820-1827
Journal / PublicationIEEE Transactions on Biomedical Engineering
Volume65
Issue number8
Online published4 Dec 2017
Publication statusPublished - Aug 2018

Abstract

Objective: The study of gait in Parkinson's disease is important because it can provide insights into the complex neural system and physiological behaviors of the disease, of which understanding can help improve treatment and lead to effective developments of alternative neural rehabilitation programs. This paper aims to introduce an effective computational method for multi-channel or multi-sensor data analysis of gait dynamics in Parkinson's disease. Method: A model of tensor decomposition, which is a generalization of matrix-based analysis for higher dimensional analysis, is designed for differentiating multi-sensor time series of gait force between Parkinson's disease and healthy control cohorts. Results: Experimental results obtained from the tensor decomposition model using a PhysioNet database show several discriminating characteristics of the two cohorts, and the achievement of 100% sensitivity and 100% specificity under various cross-validations. Conclusion: Tensor decomposition is a useful method for the modeling and analysis of multi-sensor time series in patients with Parkinson's disease. Significance: Tensor-decomposition factors can be potentially used as physiological markers for Parkinson's disease, and effective features for machine learning that can provide early prediction of the disease progression.

Research Area(s)

  • Parkinson's disease, pattern classification, time series, tensor decomposition, gait dynamics, multi-sensors