6533b7d6fe1ef96bd126712b
RESEARCH PRODUCT
Fractal analyses reveal independent complexity and predictability of gait
Anne-laure NivardFrédéric DierickOlivier WhiteFabien BuisseretFabien Buisseretsubject
MalePhysiologyEffect of gait parameters on energetic costlcsh:MedicineWalkingMotor Neuron Diseases0302 clinical medicineElderlyMedicine and Health SciencesMastoid Processlcsh:ScienceMusculoskeletal SystemGaitMathematicsMultidisciplinary05 social sciencesNeurodegenerative DiseasesFractalsNeurologyPhysical SciencesFemale[SDV.NEU]Life Sciences [q-bio]/Neurons and Cognition [q-bio.NC]AnatomyGait AnalysisResearch ArticleAdultSTRIDEGeometryFOS: Physical sciencesSurgical and Invasive Medical ProceduresFractal dimension050105 experimental psychology03 medical and health sciencesYoung AdultFractalHumans0501 psychology and cognitive sciencesPredictabilityGalvanic vestibular stimulationSkeletonHurst exponentFunctional Electrical Stimulationbusiness.industryBiological LocomotionAmyotrophic Lateral SclerosisSkulllcsh:RBiology and Life SciencesPattern recognitionPhysics - Medical PhysicsAge GroupsGait analysis[ SDV.NEU ] Life Sciences [q-bio]/Neurons and Cognition [q-bio.NC]People and PlacesPopulation Groupingslcsh:QArtificial intelligenceMedical Physics (physics.med-ph)business030217 neurology & neurosurgeryMathematicsdescription
Locomotion is a natural task that has been assessed since decades and used as a proxy to highlight impairments of various origins. Most studies adopted classical linear analyses of spatio-temporal gait parameters. Here, we use more advanced, yet not less practical, non-linear techniques to analyse gait time series of healthy subjects. We aimed at finding more sensitive indexes related to spatio-temporal gait parameters than those previously used, with the hope to better identify abnormal locomotion. We analysed large-scale stride interval time series and mean step width in 34 participants while altering walking direction (forward vs. backward walking) and with or without galvanic vestibular stimulation. The Hurst exponent $\alpha$ and the Minkowski fractal dimension $D$ were computed and interpreted as indexes expressing predictability and complexity of stride interval time series, respectively. We show that $\alpha$ and $D$ accurately capture stride interval changes in function of the experimental condition. Walking forward exhibited maximal complexity ($D$) and hence, adaptability. In contrast, any perturbation (walking backward and/or stimulation of the vestibular system) decreased it. Furthermore, walking backward increased predictability ($\alpha$) through a more stereotyped pattern of the stride interval and galvanic vestibular stimulation reduced predictability. The present study demonstrates the complementary power of the Hurst exponent and the fractal dimension to improve walking classification. These holistic indexes can easily be interpreted in the framework of optimal movement complexity. Our developments may have immediate applications in rehabilitation, diagnosis, and classification procedures.
year | journal | country | edition | language |
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2017-11-28 |