Predicting autism traits from baby wellness records: A machine learning approach.

Journal: Autism : the international journal of research and practice
Published Date:

Abstract

Timely identification of autism spectrum conditions is a necessity to enable children to receive the most benefit from early interventions. Emerging technological advancements provide avenues for detecting subtle, early indicators of autism from routinely collected health information. This study tested a model that provides a likelihood score for autism diagnosis from baby wellness visit records collected during the first 2 years of life. It included records of 591,989 non-autistic children and 12,846 children with autism. The model identified two-thirds of the autism spectrum condition group (boys 63% and girls 66%). Sex-specific models had several predictive features in common. These included language development, fine motor skills, and social milestones from visits at 12-24 months, mother's age, and lower initial growth but higher last growth measurements. Parental concerns about development or hearing impairment were other predictors. The models differed in other growth measurements and birth parameters. These models can support the detection of early signs of autism in girls and boys by using information routinely recorded during the first 2 years of life.

Authors

  • Ayelet Ben-Sasson
    Department of Occupational Therapy, Faculty of Social Welfare and Health Sciences, University of Haifa, Haifa, Israel.
  • Joshua Guedalia
    The Mina and Everard Goodman Faculty of Life Sciences, Bar-Ilan University, Ramat-Gan, Israel.
  • Keren Ilan
    University of Haifa, Israel.
  • Meirav Shaham
    University of Haifa, Israel.
  • Galit Shefer
    Israel Ministry of Health, Israel.
  • Roe Cohen
    Israel Ministry of Health, Israel.
  • Yuval Tamir
    Ben-Gurion University, Israel.
  • Lidia V Gabis
    Maccabi Healthcare Services, Israel.