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Enhancing ASD detection accuracy: a combined approach of machine learning and deep learning models with natural language processing

Published 6 Mar 2024 in cs.CL and cs.LG | (2403.03581v1)

Abstract: Purpose: Our study explored the use of AI to diagnose autism spectrum disorder (ASD). It focused on ML and deep learning (DL) to detect ASD from text inputs on social media, addressing challenges in traditional ASD diagnosis. Methods: We used NLP, ML, and DL models (including decision trees, XGB, KNN, RNN, LSTM, Bi-LSTM, BERT, and BERTweet) to analyze 404,627 tweets, classifying them based on ASD or non-ASD authors. A subset of 90,000 tweets was used for model training and testing. Results: Our AI models showed high accuracy, with an 88% success rate in identifying texts from individuals with ASD. Conclusion: The study demonstrates AI's potential in improving ASD diagnosis, especially in children, highlighting the importance of early detection.

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