| Literature DB >> 27747525 |
Guohun Zhu1, Yan Li2, Peng Paul Wen2, Shuaifang Wang2.
Abstract
This paper proposes a novel horizontal visibility graph entropy (HVGE) approach to evaluate EEG signals from alcoholic subjects and controlled drinkers and compare with a sample entropy (SaE) method. Firstly, HVGEs and SaEs are extracted from 1,200 recordings of biomedical signals, respectively. A statistical analysis method is employed to choose the optimal channels to identify the abnormalities in alcoholics. Five group channels are selected and forwarded to a K-Nearest Neighbour (K-NN) and a support vector machine (SVM) to conduct classification, respectively. The experimental results show that the HVGEs associated with left hemisphere, [Formula: see text]1, [Formula: see text]3 and FC5 electrodes, of alcoholics are significantly abnormal. The accuracy of classification with 10-fold cross-validation is 87.5 [Formula: see text] with about three HVGE features. By using just optimal 13-dimension HVGE features, the accuracy is 95.8 [Formula: see text]. In contrast, SaE features associated cannot identify the left hemisphere disorder for alcoholism and the maximum classification ratio based on SaE is just 95.2 [Formula: see text] even using all channel signals. These results demonstrate that the HVGE method is a promising approach for alcoholism identification by EEG signals.Entities:
Keywords: Alcoholism; Classification; Graph entropy; Multi-channel EEG; Slow waves
Year: 2014 PMID: 27747525 PMCID: PMC4883153 DOI: 10.1007/s40708-014-0003-x
Source DB: PubMed Journal: Brain Inform ISSN: 2198-4026
Fig. 1An alcoholic EEG (a) and the corresponding HVG (b)
Fig. 2X-axis is indices of 13 optimal channels and Y-axis the mean HVGE and SaE (SaE value times two for clear comparison) (A alcoholic, C controlled drinkers)
Statistical HVGE features from five group channels
| Electrodes | Alcoholic | Control | |
|---|---|---|---|
| 1.683 | 1.984 | ||
| 1.935 | 1.928 | ||
| Two EOGs | 1.997 | 2.013 | 0.07 |
| 13 EEGs | 1.964 | 1.959 | |
| 61 EEGs | 1.904 | 1.927 |
Fig. 3Classification for 13 channels. X-axis is electrode indices and Y-axis the accuracies using HVGE and SaE
Classification accuracies of K-NN and SVM based on HVGE and SE features with four group channels
| Electrodes | HVGE | SaE | ||
|---|---|---|---|---|
| K-NN (%) | SVM (%) | K-NN (%) | SVM (%) | |
| 77.2 | 79.1 | 62.7 | 67.8 | |
| 86.5 | 85.5 | 69.5 | 69.5 | |
| 13 channels | 94.5 | 96.2 | 82.7 | 82.0 |
| 63 channels | 97.2 | 96.5 | 92.8 | 85.5 |
Ten-fold cross-validation accuracies of K-NN and SVM based on HVGE and SE features with optimal parameters
| Electrodes | HVGE | SaE | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| K-NN | SVM | K-NN | SVM | |||||||
| k | Acc (%) | C |
| Acc (%) | k | Acc (%) | C |
| Acc (%) | |
| 24 | 79.3 | 8 | 33.47 | 79.4 | 26 | 75.3 | 0.3 | 23.08 | 76.6 | |
| 9 | 87.5 | 8 | 0.93 | 87.6 | 23 | 84.5 | 8 | 0.55 | 83.8 | |
| 9 | 95.6 | 8 | 0.09 | 95.8 | 21 | 89.7 | 4 | 0.07 | 90.2 | |
| 7 | 98.2 | 4 | 0.01 | 98.1 | 7 | 95.2 | 8 | 0.01 | 94.3 | |