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An accessible and efficient autism screening method for behavioural data and predictive analyses.

Fadi Thabtah1

  • 1Digital Technology, Manukau Institute of Technology, Auckland, New Zealand.

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|September 20, 2018
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Summary
This summary is machine-generated.

A new mobile app, ASDTests, offers a time-efficient autism spectrum disorder screening tool for all ages. This accessible screening method aims to reduce diagnosis waiting times and healthcare costs.

Keywords:
accessibilityautism spectrum disorderautism spectrum disorder screening methodsbehavioural scienceclassificationmachine learningmobile application

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Area of Science:

  • Neurodevelopmental disorders
  • Digital health technologies
  • Public health screening

Background:

  • Autism spectrum disorder (ASD) diagnosis is costly and time-consuming, leading to delays.
  • Increasing global prevalence of ASD necessitates efficient and accessible screening methods.
  • Current diagnostic procedures are not cost-effective, impacting healthcare systems.

Purpose of the Study:

  • To introduce ASDTests, a novel mobile application for autism spectrum disorder screening.
  • To provide a user-friendly, time-efficient, and accessible screening tool for diverse age groups.
  • To facilitate early identification and inform decisions regarding formal clinical diagnosis.

Main Methods:

  • Development of a mobile application, ASDTests, featuring four distinct screening tests for toddlers, children, adolescents, and adults.
  • Inclusion of 11 language options to broaden accessibility.
  • Collection of over 1400 case and control instances for data analysis.
  • Application of feature analysis, predictive analysis, and machine learning algorithms.

Main Results:

  • ASDTests covers a wider audience compared to existing screening apps.
  • Machine learning classifiers demonstrate promising sensitivity, specificity, and accuracy rates.
  • Feature and predictive analyses indicate improved screening efficiency and accuracy through identification of autistic traits.

Conclusions:

  • ASDTests presents a viable, accessible, and efficient mobile-based screening tool for autism spectrum disorder.
  • The app has the potential to significantly reduce diagnostic waiting times and associated healthcare costs.
  • ASDTests serves as a valuable platform for ongoing data collection and research in autism spectrum disorder.