Leveraging Machine Learning for Early Autism Detection via INDT-ASD Indian Database
Trapti Shrivastava, Harshal Chaudhari, Vrijendra Singh

TL;DR
This study develops a machine learning-based, cost-effective, and quick screening tool for early autism detection in India, utilizing a minimal set of questions and a web platform, with SVM achieving near-perfect accuracy.
Contribution
It introduces a novel ML model using feature engineering and a reduced question set for ASD prediction in the Indian context, outperforming existing methods.
Findings
SVM achieved 100% accuracy in ASD prediction.
The model used only 20 questions instead of 28.
A bilingual web-based platform was developed for practical use.
Abstract
Machine learning (ML) has advanced quickly, particularly throughout the area of health care. The diagnosis of neurodevelopment problems using ML is a very important area of healthcare. Autism spectrum disorder (ASD) is one of the developmental disorders that is growing the fastest globally. The clinical screening tests used to identify autistic symptoms are expensive and time-consuming. But now that ML has been advanced, it's feasible to identify autism early on. Previously, many different techniques have been used in investigations. Still, none of them have produced the anticipated outcomes when it comes to the capacity to predict autistic features utilizing a clinically validated Indian ASD database. Therefore, this study aimed to develop a simple, quick, and inexpensive technique for identifying ASD by using ML. Various machine learning classifiers, including Adaboost (AB), Gradient…
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Taxonomy
TopicsAutism Spectrum Disorder Research
MethodsSparse Evolutionary Training · Logistic Regression · Support Vector Machine
