Empirical Analysis of Nature-Inspired Algorithms for Autism Spectrum Disorder Detection Using 3D Video Dataset
Journal:
arXiv
Published Date:
Jan 2, 2025
Abstract
Autism Spectrum Disorder (ASD) is a chronic neurodevelopmental disorder
symptoms of which includes repetitive behaviour and lack of social and
communication skills. Even though these symptoms can be seen very clearly in
social but a large number of individuals with ASD remain undiagnosed. In this
paper, we worked on a methodology for the detection of ASD from a 3-dimensional
walking video dataset, utilizing supervised machine learning (ML)
classification algorithms and nature-inspired optimization algorithms for
feature extraction from the dataset. The proposed methodology involves the
classification of ASD using a supervised ML classification algorithm and
extracting important and relevant features from the dataset using
nature-inspired optimization algorithms. We also included the ranking
coefficients to find the initial leading particle. This selection of particle
significantly reduces the computation time and hence, improves the total
efficiency and accuracy for ASD detection. To evaluate the efficiency of the
proposed methodology, we deployed various combinationsalgorithms of
classification algorithm and nature-inspired algorithms resulting in an
outstanding classification accuracy of $100\%$ using the random forest
classification algorithm and gravitational search algorithm for feature
selection. The application of the proposed methodology with different datasets
would enhance the robustness and generalizability of the proposed methodology.
Due to high accuracy and less total computation time, the proposed methodology
will offer a significant contribution to the medical and academic fields,
providing a foundation for future research and advancements in ASD diagnosis.