Abstract

Autism - also known as Autism Spectrum Disorders or Autism Spectrum Conditions - is a neurodevelopmental condition characterized by repetitive behaviours and differences in communication and social interaction. As a consequence, many autistic individuals may struggle in everyday life, which sometimes manifests in depression, unemployment, or addiction. One crucial problem in patient support and treatment is the long waiting time to diagnosis, which was approximated to thirteen months on average. Yet, the earlier an intervention can take place the better the patient can be supported, which was identified as a crucial factor. We propose a system to support the screening of Autism Spectrum Disorders based on a virtual reality social interaction, namely a shopping experience, with an embodied agent. During this everyday interaction, behavioral responses are tracked and recorded. We analyze this behavior with machine learning approaches to classify participants from an autistic participant sample in comparison to a typically developed individuals control sample with high accuracy, demonstrating the feasibility of the approach. We believe that such tools can strongly impact the way mental disorders are assessed and may help to further find objective criteria and categorization.

Highlights

  • AND RELATED WORK2.1 Virtual Environments and Autism ResearchThe use of virtual reality (VR) technologies in autism research and therapy has grown in recent years, due to the strong level of experimental control

  • We present a system combining an agent-induced social virtual reality (VR) interaction with nonverbal behavior recording and pattern classification

  • In populations with neurodegenerative diseases [53] or attention deficit hyperactivity disorder (ADHD) [2, 3], VR technologies have been used as a tool to aid the evaluation processes to diagnose these conditions

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Summary

Introduction

The use of VR technologies in autism research and therapy has grown in recent years, due to the strong level of experimental control. In the case of autism, this can be even more difficult, as the clinical heterogeneity of this condition is well known [10, 48]. This frequently leads to long evaluation processes including patients having to visit different experts, misdiagnosis and improper treatment [5]. These aspects have an impact on the patient’s mental health [38].

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