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Use of Artificial Intelligence to Shorten the Behavioral Diagnosis of Autism

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  • Dennis P Wall
  • Rebecca Dally
  • Rhiannon Luyster
  • Jae-Yoon Jung
  • Todd F DeLuca

Abstract

The Autism Diagnostic Interview-Revised (ADI-R) is one of the most commonly used instruments for assisting in the behavioral diagnosis of autism. The exam consists of 93 questions that must be answered by a care provider within a focused session that often spans 2.5 hours. We used machine learning techniques to study the complete sets of answers to the ADI-R available at the Autism Genetic Research Exchange (AGRE) for 891 individuals diagnosed with autism and 75 individuals who did not meet the criteria for an autism diagnosis. Our analysis showed that 7 of the 93 items contained in the ADI-R were sufficient to classify autism with 99.9% statistical accuracy. We further tested the accuracy of this 7-question classifier against complete sets of answers from two independent sources, a collection of 1654 individuals with autism from the Simons Foundation and a collection of 322 individuals with autism from the Boston Autism Consortium. In both cases, our classifier performed with nearly 100% statistical accuracy, properly categorizing all but one of the individuals from these two resources who previously had been diagnosed with autism through the standard ADI-R. Our ability to measure specificity was limited by the small numbers of non-spectrum cases in the research data used, however, both real and simulated data demonstrated a range in specificity from 99% to 93.8%. With incidence rates rising, the capacity to diagnose autism quickly and effectively requires careful design of behavioral assessment methods. Ours is an initial attempt to retrospectively analyze large data repositories to derive an accurate, but significantly abbreviated approach that may be used for rapid detection and clinical prioritization of individuals likely to have an autism spectrum disorder. Such a tool could assist in streamlining the clinical diagnostic process overall, leading to faster screening and earlier treatment of individuals with autism.

Suggested Citation

  • Dennis P Wall & Rebecca Dally & Rhiannon Luyster & Jae-Yoon Jung & Todd F DeLuca, 2012. "Use of Artificial Intelligence to Shorten the Behavioral Diagnosis of Autism," PLOS ONE, Public Library of Science, vol. 7(8), pages 1-8, August.
  • Handle: RePEc:plo:pone00:0043855
    DOI: 10.1371/journal.pone.0043855
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    Cited by:

    1. Anestis Fotoglou & Ioanna Moraiti & Katerina Dona & Alexandra Katsimperi & Konstantinos Tsionakas & Zoi Karabatzaki & Athanasios Drigas, 2022. "IoT Applications help people with Autism," Technium Social Sciences Journal, Technium Science, vol. 31(1), pages 115-130, May.
    2. Ghazala Kausar & Sajid Saleem & Fazli Subhan & Mazliham Mohd Suud & Mansoor Alam & M. Irfan Uddin, 2023. "Prediction of Gender-Biased Perceptions of Learners and Teachers Using Machine Learning," Sustainability, MDPI, vol. 15(7), pages 1-18, April.
    3. Ioanna Moraiti & Anestis Fotoglou & Katerina Dona & Alexandra Katsimperi & Konstantinos Tsionakas & Zoi Karampatzaki & Athanasios Drigas, 2022. "Assistive Technology and Internet of Things for people with ADHD," Technium Social Sciences Journal, Technium Science, vol. 32(1), pages 204-222, June.
    4. Fadi Thabtah & David Peebles, 2019. "Early Autism Screening: A Comprehensive Review," IJERPH, MDPI, vol. 16(18), pages 1-28, September.

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