Enhancing autism detection through machine learning models focusing on behavioral analysis
Date
2024-05Publisher
Brac UniversityAuthor
Tamanna, Tania SultanaHassan, Mahmudul
Monsoor, Razin Sumyta
Hoque, Shehrin
Ridwan, Rageeb Mohammad
Metadata
Show full item recordAbstract
Autism Spectrum Disorder (ASD) is a complex and enduring condition characterized
by challenges related to communication and behavior. It is a complex neurological
disorder related to an individual’s psychological difficulties, which eventually impact
their behavior or reactions to the outside world. While it is feasible to detect
autism symptoms at any stage of an individual’s life, there is a greater likelihood of
detection within the first two years after birth, as differences in typical activities,
communication gaps, or a lack of understanding typically become more noticeable
during this early developmental period. The paper suggests a deep learning-based
method that makes use of behavior to identify autism in both adults and children
by analyzing their behavioral characteristics through machine learning approaches
and determining a process that makes autism detection easier and cost-effective.
The recommended approach works by behavioral monitoring of children and adult
datasets that were collected from online platforms and went through successive processing
and finally, those datasets were applied to different models with the help
of binary classification towards the end to determine autism detection correctly.
Behavioral data includes a range of indicators, including patterns of social interaction,
communication abilities, and recurrent actions. For behavior analysis, we
implemented specific models like KNN, Random Forest, CatBoost, SVM, GradientBoost,
and Logistic Regression and also ensembled models by incorporating a
few of our pre-trained models together to give better accuracy rates. We have also
integrated different confusion matrices in our paper. This will help in evaluating
and fine-tuning the performance of our detection model. We have acquired behavioral
datasets from publicly available platforms called UC Irvine Machine Learning
Repository and Kaggle. Our primary goal is to improve the accuracy of autism
detection or contribute to research by developing a comprehensive research paper.
This paper aims to facilitate model comparisons and streamline the autism detection
process using advanced machine learning techniques available today.