Deep neural network technique for automated detection of ADHD and CD using ECG signal.

Comput Methods Programs Biomed

Developmental Psychiatry, Institute of Mental Health, Singapore; Lee Kong Chian School of Medicine, Nanyang Technological University, DUKE NUS Medical School, Yong Loo Lin School of Medicine, National University of Singapore.

Published: November 2023

AI Article Synopsis

  • ADHD is a common neurodevelopmental disorder in children and adolescents, often linked with Conduct Disorder (CD), making diagnosis challenging; this study aims to develop a deep learning model for ECG-based diagnosis.
  • The study analyzes ECG data from 123 patients (45 ADHD, 62 ADHD+CD, and 16 CD) and uses a 1D convolutional neural network, achieving high classification accuracy of 96.04%.
  • The implementation of the Grad-CAM function highlights key ECG features that aid in diagnosis, with hopes that this research will lead to larger studies and the integration of ECG-based tools in mental health care.

Article Abstract

Background And Objective: Attention Deficit Hyperactivity problem (ADHD) is a common neurodevelopment problem in children and adolescents that can lead to long-term challenges in life outcomes if left untreated. Also, ADHD is frequently associated with Conduct Disorder (CD), and multiple research have found similarities in clinical signs and behavioral symptoms between both diseases, making differentiation between ADHD, ADHD comorbid with CD (ADHD+CD), and CD a subjective diagnosis. Therefore, the goal of this pilot study is to create the first explainable deep learning (DL) model for objective ECG-based ADHD/CD diagnosis as having an objective biomarker may improve diagnostic accuracy.

Methods: The dataset used in this study consist of ECG data collected from 45 ADHD, 62 ADHD+CD, and 16 CD patients at the Child Guidance Clinic in Singapore. The ECG data were segmented into 2 s epochs and directly used to train our 1-dimensional (1D) convolutional neural network (CNN) model.

Results: The proposed model yielded 96.04% classification accuracy, 96.26% precision, 95.99% sensitivity, and 96.11% F1-score. The Gradient-weighted class activation mapping (Grad-CAM) function was also used to highlight the important ECG characteristics at specific time points that most impact the classification score.

Conclusion: In addition to achieving model performance results with our suggested DL method, Grad-CAM's implementation also offers vital temporal data that clinicians and other mental healthcare professionals can use to make wise medical judgments. We hope that by conducting this pilot study, we will be able to encourage larger-scale research with a larger biosignal dataset. Hence allowing biosignal-based computer-aided diagnostic (CAD) tools to be implemented in healthcare and ambulatory settings, as ECG can be easily obtained via wearable devices such as smartwatches.

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Source
http://dx.doi.org/10.1016/j.cmpb.2023.107775DOI Listing

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