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RESEARCH PRODUCT
Identifying physical activity type in manual wheelchair users with spinal cord injury by means of accelerometers
Pilar Serra-añóJavier Garcia-casadoXavier García-massóGema Prats-boludaLuis-millán GonzálezYiyao Ye-linsubject
medicine.medical_specialtySupport Vector MachinePARTICIPATIONPhysical activityComputerApplications_COMPUTERSINOTHERSYSTEMSACTIVITY RECOGNITIONMotor ActivityAccelerometerFunctional LateralityManual wheelchairTECNOLOGIA ELECTRONICAPhysical medicine and rehabilitationPEOPLEAccelerometryMedicineHumansVALIDITYSpinal cord injurySpinal Cord InjuriesAgedbusiness.industryVALUESENERGY-EXPENDITUREDiscriminant AnalysisReproducibility of ResultsPARAPLEGIAGeneral MedicineWristACTIVITY MONITORequipment and suppliesmedicine.diseasenervous system diseasesActivity monitorCross-Sectional StudiesNeurologyEnergy expenditureWheelchairsComputerSystemsOrganization_MISCELLANEOUSPhysical therapyComputingMilieux_COMPUTERSANDSOCIETYNeurology (clinical)InformationSystems_MISCELLANEOUSbusinessParaplegiahuman activitiesdescription
Objectives: The main objective of this study was to develop and test classification algorithms based on machine learning using accelerometers to identify the activity type performed by manual wheelchair users with spinal cord injury (SCI). Setting: The study was conducted in the Physical Therapy department and the Physical Education and Sports department of the University of Valencia. Methods: A total of 20 volunteers were asked to perform 10 physical activities, lying down, body transfers, moving items, mopping, working on a computer, watching TV, arm-ergometer exercises, passive propulsion, slow propulsion and fast propulsion, while fitted with four accelerometers placed on both wrists, chest and waist. The activities were grouped into five categories: sedentary, locomotion, housework, body transfers and moderate physical activity. Different machine learning algorithms were used to develop individual and group activity classifiers from the acceleration data for different combinations of number and position of the accelerometers. Results: We found that although the accuracy of the classifiers for individual activities was moderate (55-72%), with higher values for a greater number of accelerometers, grouped activities were correctly classified in a high percentage of cases (83.2-93.6%). Conclusions: With only two accelerometers and the quadratic discriminant analysis algorithm we achieved a reasonably accurate group activity recognition system (490%). Such a system with the minimum of intervention would be a valuable tool for studying physical activity in individuals with SCI.
year | journal | country | edition | language |
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2015-10-01 |