Datasets for "Graph Analysis of Single-Channel Sleep Stage EEG with Different Electrode Placements"

Citation Author(s):
Guohun
Zhu
University of Queensland
Submitted by:
Guohun Zhu
Last updated:
Wed, 10/02/2019 - 05:37
DOI:
10.21227/fh5d-kv21
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Abstract 

Complex networks have been successfully applied to sleep stage analysis and classification. However, whether the electroencephalogram (EEG) montage reference will affect the network properties is still unclear. This study investigates network changes and evaluates the sleep stage classification performance using independent subjects and non-overlap epochs two types of testing sets respectively, while the raw EEG signals were recorded from five individual channels sleep EEG signals using bipolar and monopolar montages, respectively.  Three types of network features: average degree(D), mean clustering coefficient (C), and  shortest path length (L) are extracted.  

Instructions: 

This file is used for reproducing the results in:

"Graph Analysis of Single-Channel Sleep Stage EEG with Different Electrode Placements" by Guohun Zhu

 

Column are listed as following. 

The "OVG_md" is the mean degree.

The "OVG_C"  is the mean local clustering coefficient.

The "OVG_P"  is the average shortest path.

 

The file can be read by R 

 

TestFile="mit-sw-fpzcz_ch1.csv"

a1<- read.delim(file=TestFile, header=T, sep=",")