Posted: Oct 28, 2025
This research investigates the efficacy of machine learning algorithms, specifically Support Vector Machines (SVMs), in detecting autism spectrum disorder (ASD) through vocal pattern analysis in young children. We collected and analyzed vocal samples from 250 children aged 2-5 years, including 125 diagnosed with ASD and 125 neurotypical controls. The study employed feature extraction techniques focusing on prosodic elements, spectral characteristics, and temporal patterns. Our SVM model achieved 87.2% accuracy in distinguishing between ASD and neurotypical vocal patterns, demonstrating the potential of vocal analysis as a non-invasive tool for early autism screening.
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