人工智能
计算机科学
模式识别(心理学)
脑电图
深信不疑网络
连接体
人工神经网络
提取器
精神分裂症(面向对象编程)
特征(语言学)
功能连接
机器学习
神经科学
心理学
工程类
程序设计语言
哲学
语言学
工艺工程
作者
Chun-Ren Phang,Chee-Ming Ting,S. Balqis Samdin,Hernando Ombao
标识
DOI:10.1109/ner.2019.8717087
摘要
Disrupted functional connectivity patterns have been increasingly used as features in pattern recognition algorithms to discriminate neuropsychiatric patients from healthy subjects. Deep neural networks (DNNs) were employed to fMRI functional network classification only very recently and its application to EEG-based connectome is largely unexplored. We propose a DNN with deep belief network (DBN) architecture for automated classification of schizophrenia (SZ) based on EEG effective connectivity. We used vector-autoregression-based directed connectivity (DC), graph-theoretical complex network (CN) measures and combination of both as input features. On a large resting-state EEG dataset, we found a significant decrease in synchronization of neural oscillations measured by partial directed coherence, and a reduced network integration in terms of weighted degrees and transitivity in SZ compared to healthy controls. The proposed DNN-DBN significantly outperforms three other traditional classifiers, due to its inherent capability as feature extractor to learn hierarchical representations from the aberrant brain network structure. Combined DC-CN features gives further improvement over the raw DC and CN features alone, achieving remarkable classification accuracy of 95% for the theta and beta bands.
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