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A Machine Learning-Based Framework to Shorten the Questionnaire for Assessing Autism Intervention

Applications 2025-11-03 v1 Machine Learning

Abstract

Caregivers of individuals with autism spectrum disorder (ASD) often find the 77-item Autism Treatment Evaluation Checklist (ATEC) burdensome, limiting its use for routine monitoring. This study introduces a generalizable machine learning framework that seeks to shorten assessments while maintaining evaluative accuracy. Using longitudinal ATEC data from 60 autistic children receiving therapy, we applied feature selection and cross-validation techniques to identify the most predictive items across two assessment goals: longitudinal therapy tracking and point-in-time severity estimation. For progress monitoring, the framework identified 16 items (21% of the original questionnaire) that retained strong correlation with total score change and full subdomain coverage. We also generated smaller subsets (1-7 items) for efficient approximations. For point-in-time severity assessment, our model achieved over 80% classification accuracy using just 13 items (17% of the original set). While demonstrated on ATEC, the methodology-based on subset optimization, model interpretability, and statistical rigor-is broadly applicable to other high-dimensional psychometric tools. The resulting framework could potentially enable more accessible, frequent, and scalable assessments and offer a data-driven approach for AI-supported interventions across neurodevelopmental and psychiatric contexts.

Keywords

Cite

@article{arxiv.2510.26808,
  title  = {A Machine Learning-Based Framework to Shorten the Questionnaire for Assessing Autism Intervention},
  author = {Audrey Dong and Claire Xu and Samuel R. Guo and Kevin Yang and Xue-Jun Kong},
  journal= {arXiv preprint arXiv:2510.26808},
  year   = {2025}
}

Comments

10 pages, 16 figures

R2 v1 2026-07-01T07:14:24.628Z