Title of article :
Machine-Learning Classifier for Patients with Major Depressive Disorder: Multifeature Approach Based on a High-Order Minimum Spanning Tree Functional Brain Network
Author/Authors :
Guo, Hao Taiyuan University of Technology - Taiyuan, China , Qin, Mengna Taiyuan University of Technology - Taiyuan, China , Chen, Junjie Taiyuan University of Technology - Taiyuan, China , Xu, Yong Department of Psychiatry - The First Hospital of Shanxi Medical University - Taiyuan, China , Xiang, Jie Taiyuan University of Technology - Taiyuan, China
Abstract :
High-order functional connectivity networks are rich in time information that can reflect dynamic changes in functional
connectivity between brain regions. Accordingly, such networks are widely used to classify brain diseases. However, traditional
methods for processing high-order functional connectivity networks generally include the clustering method, which reduces data
dimensionality. As a result, such networks cannot be effectively interpreted in the context of neurology. Additionally, due to the
large scale of high-order functional connectivity networks, it can be computationally very expensive to use complex network or
graph theory to calculate certain topological properties. Here, we propose a novel method of generating a high-order minimum
spanning tree functional connectivity network. This method increases the neurological significance of the high-order functional
connectivity network, reduces network computing consumption, and produces a network scale that is conducive to subsequent
network analysis. To ensure the quality of the topological information in the network structure, we used frequent subgraph mining
technology to capture the discriminative subnetworks as features and combined this with quantifiable local network features. Then
we applied a multikernel learning technique to the corresponding selected features to obtain the final classification results. We
evaluated our proposed method using a data set containing 38 patients with major depressive disorder and 28 healthy controls. The
experimental results showed a classification accuracy of up to 97.54%.
Keywords :
High-Order , Multifeature , Brain
Journal title :
Computational and Mathematical Methods in Medicine