Literature DB >> 33606730

An artificial neural network approach to detect presence and severity of Parkinson's disease via gait parameters.

Tiwana Varrecchia1, Stefano Filippo Castiglia2, Alberto Ranavolo1, Carmela Conte3, Antonella Tatarelli1,4, Gianluca Coppola2, Cherubino Di Lorenzo2, Francesco Draicchio1, Francesco Pierelli2, Mariano Serrao2.   

Abstract

INTRODUCTION: Gait deficits are debilitating in people with Parkinson's disease (PwPD), which inevitably deteriorate over time. Gait analysis is a valuable method to assess disease-specific gait patterns and their relationship with the clinical features and progression of the disease.
OBJECTIVES: Our study aimed to i) develop an automated diagnostic algorithm based on machine-learning techniques (artificial neural networks [ANNs]) to classify the gait deficits of PwPD according to disease progression in the Hoehn and Yahr (H-Y) staging system, and ii) identify a minimum set of gait classifiers.
METHODS: We evaluated 76 PwPD (H-Y stage 1-4) and 67 healthy controls (HCs) by computerized gait analysis. We computed the time-distance parameters and the ranges of angular motion (RoMs) of the hip, knee, ankle, trunk, and pelvis. Principal component analysis was used to define a subset of features including all gait variables. An ANN approach was used to identify gait deficits according to the H-Y stage.
RESULTS: We identified a combination of a small number of features that distinguished PwPDs from HCs (one combination of two features: knee and trunk rotation RoMs) and identified the gait patterns between different H-Y stages (two combinations of four features: walking speed and hip, knee, and ankle RoMs; walking speed and hip, knee, and trunk rotation RoMs).
CONCLUSION: The ANN approach enabled automated diagnosis of gait deficits in several symptomatic stages of Parkinson's disease. These results will inspire future studies to test the utility of gait classifiers for the evaluation of treatments that could modify disease progression.

Entities:  

Year:  2021        PMID: 33606730      PMCID: PMC7894951          DOI: 10.1371/journal.pone.0244396

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  80 in total

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3.  Machine Learning Approach to Support the Detection of Parkinson's Disease in IMU-Based Gait Analysis.

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