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RESEARCH PRODUCT
Application of Supervised Machine Learning for Behavioral Biomarkers of Autism Spectrum Disorder Based on Electrodermal Activity and Virtual Reality
Mariano Alcañiz RayaIrene Alice Chicchi GiglioliMarian SireraJavier Marín-moralesJuan Luis Higuera-trujilloMaria Eleonora MinissiElena OlmosLuis AbadGonzalo Teruel Garciasubject
medicine.medical_specialtyVisual perceptionEXPRESION GRAFICA EN LA INGENIERIAgenetic structuresSensory processingmedicine.medical_treatmentassessmentPopulationSensory systemautism spectrum disorderAssessmentAudiologyVirtual reality050105 experimental psychologylcsh:RC321-571Electrodermal activity03 medical and health sciencesBehavioral Neuroscience0302 clinical medicinesensory dysfunctionmedicine0501 psychology and cognitive sciencesAutism spectrum disordereducationlcsh:Neurosciences. Biological psychiatry. NeuropsychiatryBiological PsychiatryOriginal Researcheducation.field_of_study05 social sciencesInformation processingCognitionmedicine.diseaseelectrodermal activityPsychiatry and Mental healthNeuropsychology and Physiological PsychologyNeurologyAutism spectrum disorderTest setORGANIZACION DE EMPRESASvirtual realityPsychology030217 neurology & neurosurgerySensory dysfunctionNeurosciencedescription
[EN] Objective: Sensory processing is the ability to capture, elaborate, and integrate information through the five senses and is impaired in over 90% of children with autism spectrum disorder (ASD). The ASD population shows hyper¿hypo sensitiveness to sensory stimuli that can generate alteration in information processing, affecting cognitive and social responses to daily life situations. Structured and semi-structured interviews are generally used for ASD assessment, and the evaluation relies on the examiner¿s subjectivity and expertise, which can lead to misleading outcomes. Recently, there has been a growing need for more objective, reliable, and valid diagnostic measures, such as biomarkers, to distinguish typical from atypical functioning and to reliably track the progression of the illness, helping to diagnose ASD. Implicit measures and ecological valid settings have been showing high accuracy on predicting outcomes and correctly classifying populations in categories. Methods: Two experiments investigated whether sensory processing can discriminate between ASD and typical development (TD) populations using electrodermal activity (EDA) in two multimodal virtual environments (VE): forest VE and city VE. In the first experiment, 24 children with ASD diagnosis and 30 TDs participated in both virtual experiences, and changes in EDA have been recorded before and during the presentation of visual, auditive, and olfactive stimuli. In the second experiment, 40 children have been added to test the model of experiment 1. Results: The first exploratory results on EDA comparison models showed that the integration of visual, auditive, and olfactive stimuli in the forest environment provided higher accuracy (90.3%) on sensory dysfunction discrimination than specific stimuli. In the second experiment, 92 subjects experienced the forest VE, and results on 72 subjects showed that stimuli integration achieved an accuracy of 83.33%. The final confirmatory test set (n = 20) achieved 85% accuracy, simulating a real application of the models. Further relevant result concerns the visual stimuli condition in the first experiment, which achieved 84.6% of accuracy in recognizing ASD sensory dysfunction. Conclusion: According to our studies¿ results, implicit measures, such as EDA, and ecological valid settings can represent valid quantitative methods, along with traditional assessment measures, to classify ASD population, enhancing knowledge on the development of relevant specific treatments.
year | journal | country | edition | language |
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2020-04-01 | Frontiers in Human Neuroscience |