An exploration of machine learning approaches for early Autism Spectrum Disorder detection

Autism Spectrum Disorder is a neurodevelopmental condition impacting an individual’s repetitive behaviours, social skills, verbal and nonverbal communication abilities, and capacity for acquiring new knowledge. Manifesting typically in early childhood, specifically between 6 months and 5 years, the...

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Main Authors: Nawshin Haque, Tania Islam, Md Erfan
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Healthcare Analytics
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2772442524000819
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author Nawshin Haque
Tania Islam
Md Erfan
author_facet Nawshin Haque
Tania Islam
Md Erfan
author_sort Nawshin Haque
collection DOAJ
description Autism Spectrum Disorder is a neurodevelopmental condition impacting an individual’s repetitive behaviours, social skills, verbal and nonverbal communication abilities, and capacity for acquiring new knowledge. Manifesting typically in early childhood, specifically between 6 months and 5 years, the symptoms of autism exhibit a progressive nature over time. This study explores the application of Logistic Regression, Support Vector Classifier, K-Nearest Neighbour, Decision Tree, and Random Forest for predicting Autism in children and toddlers by leveraging advancements in machine learning. The efficacy of these techniques is evaluated using publicly accessible datasets specific to both age groups. The findings indicate remarkable performance, with the toddler dataset achieving a mean Intersection over Union (mIoU) of 100% for Support Vector Classifier and 99.80% for Logistic Regression. Similarly, the children dataset demonstrates outstanding results, achieving an mIoU of 100% for Support Vector Classifier and 99.96% for Logistic Regression. Furthermore, all algorithms achieved 100% accuracy on the children (age 4–11) dataset collected from real-world sources. Logistic Regression, Random Forest, Support Vector Classifier, and Decision Tree attained 100% accuracy and mIoU with the real-world dataset. These results underscore the potential of machine learning in aiding the early detection of ASD in children and toddlers, offering promising avenues for future research and clinical applications.
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spelling doaj-art-871ab13bdffc47159229c6b08a7023832025-01-12T05:26:17ZengElsevierHealthcare Analytics2772-44252025-06-017100379An exploration of machine learning approaches for early Autism Spectrum Disorder detectionNawshin Haque0Tania Islam1Md Erfan2Department Of CSE, University of Barishal, Karnakathi, Barishal, 8200, BangladeshDepartment Of CSE, University of Barishal, Karnakathi, Barishal, 8200, BangladeshCorresponding author.; Department Of CSE, University of Barishal, Karnakathi, Barishal, 8200, BangladeshAutism Spectrum Disorder is a neurodevelopmental condition impacting an individual’s repetitive behaviours, social skills, verbal and nonverbal communication abilities, and capacity for acquiring new knowledge. Manifesting typically in early childhood, specifically between 6 months and 5 years, the symptoms of autism exhibit a progressive nature over time. This study explores the application of Logistic Regression, Support Vector Classifier, K-Nearest Neighbour, Decision Tree, and Random Forest for predicting Autism in children and toddlers by leveraging advancements in machine learning. The efficacy of these techniques is evaluated using publicly accessible datasets specific to both age groups. The findings indicate remarkable performance, with the toddler dataset achieving a mean Intersection over Union (mIoU) of 100% for Support Vector Classifier and 99.80% for Logistic Regression. Similarly, the children dataset demonstrates outstanding results, achieving an mIoU of 100% for Support Vector Classifier and 99.96% for Logistic Regression. Furthermore, all algorithms achieved 100% accuracy on the children (age 4–11) dataset collected from real-world sources. Logistic Regression, Random Forest, Support Vector Classifier, and Decision Tree attained 100% accuracy and mIoU with the real-world dataset. These results underscore the potential of machine learning in aiding the early detection of ASD in children and toddlers, offering promising avenues for future research and clinical applications.http://www.sciencedirect.com/science/article/pii/S2772442524000819Autism Spectrum DisorderLogistic RegressionSupport Vector ClassifierK-Nearest NeighbourDecision TreeRandom Forest
spellingShingle Nawshin Haque
Tania Islam
Md Erfan
An exploration of machine learning approaches for early Autism Spectrum Disorder detection
Healthcare Analytics
Autism Spectrum Disorder
Logistic Regression
Support Vector Classifier
K-Nearest Neighbour
Decision Tree
Random Forest
title An exploration of machine learning approaches for early Autism Spectrum Disorder detection
title_full An exploration of machine learning approaches for early Autism Spectrum Disorder detection
title_fullStr An exploration of machine learning approaches for early Autism Spectrum Disorder detection
title_full_unstemmed An exploration of machine learning approaches for early Autism Spectrum Disorder detection
title_short An exploration of machine learning approaches for early Autism Spectrum Disorder detection
title_sort exploration of machine learning approaches for early autism spectrum disorder detection
topic Autism Spectrum Disorder
Logistic Regression
Support Vector Classifier
K-Nearest Neighbour
Decision Tree
Random Forest
url http://www.sciencedirect.com/science/article/pii/S2772442524000819
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