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Food for Thought: Machine Learning in Autism Spectrum Disorder Screening of Infants. | LitMetric

AI Article Synopsis

  • Diagnoses of autism spectrum disorders (ASD) typically occur after toddlerhood, but earlier detection using machine learning can significantly improve intervention outcomes.
  • Recent studies focus on machine learning strategies to assess infants and children under 18 months for ASD, revealing a range of sensitivity (60.7%-95.6%) and specificity (50%-100%) in identifying the disorder.
  • Despite promising results, inconsistencies arise from diverse ASD presentations and study designs, indicating that further research is essential before integrating machine learning techniques into clinical practice for early ASD screening.

Article Abstract

Diagnoses of autism spectrum disorders (ASD) are typically made after toddlerhood by examining behavioural patterns. Earlier identification of ASD enables earlier intervention and better outcomes. Machine learning provides a data-driven approach of diagnosing autism at an earlier age. This review aims to summarize recent studies and technologies utilizing machine learning based strategies to screen infants and children under the age of 18 months for ASD, and identify gaps that can be addressed in the future. We reviewed nine studies based on our search criteria, which includes primary studies and technologies conducted within the last 10 years that examine children with ASD or at high risk of ASD with a mean age of less than 18 months old. The studies must use machine learning analysis of behavioural features of ASD as major methodology. A total of nine studies were reviewed, of which the sensitivity ranges from 60.7% to 95.6%, the specificity ranges from 50% to 100%, and the accuracy ranges from 60.9% to 97.7%. Factors that contribute to the inconsistent findings include the varied presentation of ASD among patients and study design differences. Previous studies have shown moderate accuracy, sensitivity and specificity in the differentiation of ASD and non-ASD individuals under the age of 18 months. The application of machine learning and artificial intelligence in the screening of ASD in infants is still in its infancy, as observed by the granularity of data available for review. As such, much work needs to be done before the aforementioned technologies can be applied into clinical practice to facilitate early screening of ASD.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8584605PMC
http://dx.doi.org/10.7759/cureus.18721DOI Listing

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