A deep learning approach for prediction of ADHD using brain structure
Abstract
Attention deficit hyperactivity disorder (ADHD) is a complex condition affecting
the brain’s neurodevelopmental processes. Prompt treatment and accurate diagnosis
can alter neural connections and improve symptoms. This article focuses on the
classification of MRI scans of individuals with ADHD and those without the disorder
using deep learning algorithms. Pre-trained models like VGG-16, RegNet-50,
and DenseNet-121 were used, along with non-pretrained models like CNN and convolutional
LSTM. VGG16 is known for its intricate architecture, while CNNs have
undergone significant advancements, resulting in improved classification accuracy.
The convolutional LSTM model, a novel integration of CNNs and LSTM networks,
was used to predict ADHD based on anatomical data from the brain. The results
showed that only the VGG-16, CNN, and convolutional LSTM models exhibited
superior accuracy. Ensemble learning was used to create an ensemble model, with
convolutional LSTM having 93% accuracy, CNN having 95% accuracy, and ensemble
learning having 97% accuracy. Overall, ensemble learning had the highest accuracy,
indicating the need for a model that can detect ADHD with better accuracy.