Publication | Closed Access
High accuracy discrimination of Parkinson's disease participants from healthy controls using smartphones
81
Citations
11
References
2014
Year
Unknown Venue
Gait AnalysisPhysical ActivityEngineeringMobile InteractionBiometricsAccelerometerWearable TechnologyMotor ControlHigh Accuracy DiscriminationMovement AnalysisKinesiologyPattern RecognitionBiostatisticsHealthy ControlsStatisticsHealth SciencesAssistive TechnologyPostural SwayRehabilitationPd ParticipantsMobile SensingParkinson DiseaseHealth MonitoringDisease ParticipantsPathological GaitHuman MovementMobile HealthHealth Informatics
The aim of this study is to accurately distinguish Parkinson's disease (PD) participants from healthy controls using self-administered tests of gait and postural sway. Using consumer-grade smartphones with in-built accelerometers, we objectively measure and quantify key movement severity symptoms of Parkinson's disease. Specifically, we record tri-axial accelerations, and extract a range of different features based on the time and frequency-domain properties of the acceleration time series. The features quantify key characteristics of the acceleration time series, and enhance the underlying differences in the gait and postural sway accelerations between PD participants and controls. Using a random forest classifier, we demonstrate an average sensitivity of 98.5% and average specificity of 97.5% in discriminating PD participants from controls.
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