Early Autism Diagnosis: Machine Learning Models and Their Effectiveness

Year : 2024 | Volume : | : | Page : –
By

Poonam Chaudhary,

Anmol Bhatia,

Vanshika Sangwan,

Riya Saxena,

Rahul,

Sanyam Virmani,

  1. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India
  2. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India
  3. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India
  4. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India
  5. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India
  6. Student Department of Computer Science and Engineering, The NorthCap University, Gurugram Haryana India

Abstract

Diagnosis is of utmost importance for timely intervention and support. However, traditional diagnosis methods, which are based on subjective assessment, are delayed. This project explores the role that machine learning techniques might play in enhancing the accuracy and effectiveness of ASD detection. Several state-of-the-art classification algorithms were benchmarked using a dataset from Kaggle. Logistic Regression, XG Boost, Random Forest, Decision Tree, and Gradient Boosting were taken into consideration. Other performance measures, in terms of accuracy, F1-score, and precision, were considered. The results showed that XG Boost was the best model, because this one had the most precision and reliability of ASD prediction. The research signifies the potential of AI and ML technologies for the betterment of the diagnostic process and provides a robust and timely tool for early detection of ASD. Conclusions and recommendations of the study strongly emphasize the necessity of approaches that integrate multidisciplinary and ethical considerations for responsible translation into clinical practice.

Keywords: Autism spectrum disorder (ASD), Machine learning, Modalities, ADOS, XG Boost, Precision, Accuracy, Confusion Matrix, F1 Score.

How to cite this article: Poonam Chaudhary, Anmol Bhatia, Vanshika Sangwan, Riya Saxena, Rahul, Sanyam Virmani. Early Autism Diagnosis: Machine Learning Models and Their Effectiveness. Journal of Instrumentation Technology & Innovations. 2024; ():-.
How to cite this URL: Poonam Chaudhary, Anmol Bhatia, Vanshika Sangwan, Riya Saxena, Rahul, Sanyam Virmani. Early Autism Diagnosis: Machine Learning Models and Their Effectiveness. Journal of Instrumentation Technology & Innovations. 2024; ():-. Available from: https://journals.stmjournals.com/joiti/article=2024/view=168161



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Ahead of Print Subscription Original Research
Volume
Received June 9, 2024
Accepted June 28, 2024
Published August 14, 2024

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