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Book ChapterDOI

A Meta-Heuristic Model Based Computational Intelligence in Exploration and Classification of Autism in Children

TLDR
The novelty of the paper lies in the fact of extracting important features for modeling so as to make a prior analysis by any parents at home before approaching clinicians which supports the early intervention of autism.
Abstract
Autism spectrum disorder (ASD) is one of the most notable neurodevelopmental disorders that gained major notification among parents, clinicians and even in researchers in the current era. The early identification of autism is a much needed support for parents and clinicians. The proposed methodology aims in building a computational model for such easy and early diagnosis by analyzing and finding the correlations between features-to-class and feature-to-feature so as to maximize the former and minimize the latter. The correlation between features is analyzed using (i) chi square computation technique in filter method and (ii) information gain. On analyzing the correlations, the resultant attributes of every technique are trained separately under the standard linear SVM classifier and then tested for the models performance and accuracy. There are two major contributions of the proposed work; Method 1: to build a model that takes optimized features extracted from the chi square and information gain analysis from questionnaires on the application of genetic algorithm (GA). The optimized features are then trained and tested to classify autism in support of SVM linear classifier. Method 2: to build a model based on the application of back-propagation feed forward neural network to classify the presence of autism. The paper ensures better and faster convergence of the positive class label of autism with maximized accuracy, specificity, performance and minimized error. The novelty of the paper lies in the fact of extracting important features for modeling so as to make a prior analysis by any parents at home before approaching clinicians which supports the early intervention of autism.

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References
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Proceedings ArticleDOI

Towards feature selection in network

TL;DR: This paper presents a supervised feature selection method based on Laplacian Regularized Least Squares (LapRLS) for networked data which uses linear regression to utilize the content information, and adopt graph regularization to consider the link information.
Journal ArticleDOI

The parenting experiences and needs of Asian primary caregivers of children with autism: A meta-synthesis:

TL;DR: The distinctive influence of religious beliefs, cultural values, and environmental factors on Asian parenting experiences were discussed, and recommendations were proposed to better meet the needs of parents with autistic children.
Journal ArticleDOI

Use of Indian scale for assessment of autism in child guidance clinic: An experience

TL;DR: A post hoc power analysis in their study detected very low power because of smaller sample size and the best option is to calculate sample size a priori, specifically when an estimate of effect size is available from previous studies.
Journal ArticleDOI

Sensitivity of the autism behavior checklist in Indian autistic children.

TL;DR: The ABC cutoff needs to be lowered to increase its sensitivity for diagnosis of autistic disorder, with a sensitivity of 98% and a cutoff of 45.2.
Journal ArticleDOI

Performance of the Modified Checklist for Autism in Toddlers in Spanish-Speaking Patients

TL;DR: Spanish M-CHAT questionnaires are abnormal more often than those in English even after changing to appropriate translation, despite lower prevalence of autism in Latinos, and issues with translation, interpretation, or cultural understanding of behaviors may contribute.
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