1. 基于特征融合方法的轻微认知衰退静息态脑电 数据自动检测技术研究.
- Author
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段子敬, 赵冰蕾, 李春波, and 郭 薇
- Subjects
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CONVOLUTIONAL neural networks , *COGNITION disorders , *LARGE-scale brain networks , *FEATURE extraction , *ARTIFICIAL intelligence , *SIGNAL convolution , *ELECTROENCEPHALOGRAPHY - Abstract
Mild cognitive decline is the early stage of Alzheimer's disease, and the feature extraction and classification of mild cognitive decline using EEG signals is an important method for diagnosing mild cognitive decline. In the automatic detection technology of mild cognitive decline based on electroencephalogram artificial intelligence, the existing research only extracted a certain feature in the electroencephalogram signal or simply concatenates multiple features, which caused these methods to fail to well consider the correlation between different features and it would cause the problem of dimensional disaster. This paper proposed a convolutional neural network based automatic detection algorithm for resting state electroencephalogram data of mild cognitive decline. By extracting the power spectrum and brain network features of the electroencephalogram, it fused the two features by matrix operation, and designed a convolutional neural network to classify the fused features. This method achieves a high accuracy rate on the data set collected by a hospital in Shanghai. In addition, by inputting different subsets of the feature set, this method found the few groups of features that contribute the most to mild cognitive decline, thereby it also had a certain interpretability. Experiments on the dataset of this paper, it p roves the advantages of the power brain network for the automatic diagnosis of mild cognitive decline. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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