Enhancing Psychologists' Understanding through Explainable Deep Learning Framework for ADHD Diagnosis
Abdul Rehman, Ilona Heldal, Jerry Chun-Wei Lin

TL;DR
This paper introduces an explainable deep learning framework combining DNN and RNN for accurate ADHD diagnosis and interpretation, aiding psychologists with transparent insights into the diagnostic process.
Contribution
The novel HyExDNN-RNN model integrates explainability techniques like SHAP and PFI to improve ADHD detection and provide interpretable diagnostic insights.
Findings
Achieved 99% F1 score in binary classification
94.2% accuracy in multi-class categorization
Provided interpretable feature importance insights
Abstract
Attention Deficit Hyperactivity Disorder (ADHD) is a neurodevelopmental disorder that is challenging to diagnose and requires advanced approaches for reliable and transparent identification and classification. It is characterized by a pattern of inattention, hyperactivity and impulsivity that is more severe and more frequent than in individuals with a comparable level of development. In this paper, an explainable framework based on a fine-tuned hybrid Deep Neural Network (DNN) and Recurrent Neural Network (RNN) called HyExDNN-RNN model is proposed for ADHD detection, multi-class categorization, and decision interpretation. This framework not only detects ADHD, but also provides interpretable insights into the diagnostic process so that psychologists can better understand and trust the results of the diagnosis. We use the Pearson correlation coefficient for optimal feature selection and…
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Taxonomy
TopicsAttention Deficit Hyperactivity Disorder · EEG and Brain-Computer Interfaces · Autism Spectrum Disorder Research
