Is there any incremental benefit to conducting neuroimaging and neurocognitive assessments in the diagnosis of ADHD in young children? A machine learning investigation

Dev Cogn Neurosci. 2021 Jun:49:100966. doi: 10.1016/j.dcn.2021.100966. Epub 2021 May 21.

Abstract

Given the negative trajectories of early behavior problems associated with ADHD, early diagnosis is considered critical to enable intervention and treatment. To this end, the current investigation employed machine learning to evaluate the relative predictive value of parent/teacher ratings, behavioral and neural measures of executive function (EF) in predicting ADHD in a sample consisting of 162 young children (ages 4-7, mean age 5.55, 82.6 % Hispanic/Latino). Among the target measures, teacher ratings of EF were the most predictive of ADHD. While a more extensive evaluation of neural measures, such as diffusion-weighted imaging, may provide more information as they relate to the underlying cognitive deficits associated with ADHD, the current study indicates that measures of cortical anatomy obtained in research studies, as well cognitive measures of EF often obtained in routine assessments, have little incremental value in differentiating typically developing children from those diagnosed with ADHD. It is important to note that the overlap between some of the EF questions in the BRIEF, and the ADHD symptoms could be enhancing this effect. Thus, future research evaluating the importance of such measures in predicting children's functional impairment in academic and social areas would provide additional insight into their contributing role in ADHD.

Keywords: ADHD; Brain imaging; Executive function; Machine learning; Pattern analysis.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Attention Deficit Disorder with Hyperactivity* / diagnosis
  • Child
  • Child, Preschool
  • Cognitive Dysfunction / diagnosis
  • Executive Function
  • Humans
  • Machine Learning
  • Neuroimaging