Efficient Deep Learning-Based Data-Centric Approach for Autism Spectrum Disorder Diagnosis from Facial Images Using Explainable AI
Efficient Deep Learning-Based Data-Centric Approach for Autism Spectrum Disorder Diagnosis from Facial Images Using Explainable AI
Blog Article
The research describes an effective deep learning-based, data-centric approach for diagnosing autism spectrum disorder from facial images.To classify ASD and non-ASD subjects, this method requires training a here convolutional neural network using the facial image dataset.As a part of the data-centric approach, this research applies pre-processing and synthesizing of the training dataset.The trained model is subsequently evaluated on an independent test set in order to assess the performance matrices of various data-centric approaches.
The results reveal that the bostik roll-cote proposed method that simultaneously applies the pre-processing and augmentation approach on the training dataset outperforms the recent works, achieving excellent 98.9% prediction accuracy, sensitivity, and specificity while having 99.9% AUC.This work enhances the clarity and comprehensibility of the algorithm by integrating explainable AI techniques, providing clinicians with valuable and interpretable insights into the decision-making process of the ASD diagnosis model.