| Literature DB >> 33173472 |
Lijuan Duan1,2,3, Huifeng Duan1,2,3, Yuanhua Qiao4, Sha Sha5,6, Shunai Qi1,2,3, Xiaolong Zhang5,6, Juan Huang5,6, Xiaohan Huang5,6, Changming Wang6,7,8.
Abstract
Emotional decoding and automatic identification of major depressive disorder (MDD) are helpful for the timely diagnosis of the disease. Electroencephalography (EEG) is sensitive to changes in the functional state of the human brain, showing its potential to help doctors diagnose MDD. In this paper, an approach for identifying MDD by fusing interhemispheric asymmetry and cross-correlation with EEG signals is proposed and tested on 32 subjects [16 patients with MDD and 16 healthy controls (HCs)]. First, the structural features and connectivity features of the θ-, α-, and β-frequency bands are extracted on the preprocessed and segmented EEG signals. Second, the structural feature matrix of the θ-, α-, and β-frequency bands are added to and subtracted from the connectivity feature matrix to obtain mixed features. Finally, the structural features, connectivity features, and the mixed features are fed to three classifiers to select suitable features for the classification, and it is found that our mode achieves the best classification results using the mixed features. The results are also compared with those from some state-of-the-art methods, and we achieved an accuracy of 94.13%, a sensitivity of 95.74%, a specificity of 93.52%, and an F1-score (f1) of 95.62% on the data from Beijing Anding Hospital, Capital Medical University. The study could be generalized to develop a system that may be helpful in clinical purposes.Entities:
Keywords: EEG; cross correlation; feature; interhemispheric asymmetry; major depressive disorder (MDD)
Year: 2020 PMID: 33173472 PMCID: PMC7538713 DOI: 10.3389/fnhum.2020.00284
Source DB: PubMed Journal: Front Hum Neurosci ISSN: 1662-5161 Impact factor: 3.169
Demographic and clinical information.
| Age (years) | 31.0 ± 1.0 | 26.1 ± 5.4 |
| Sex (male/female) | 7/9 | 7/9 |
| Education (years) | 12.5 ± 1.0 | 13.0 ± 2.6 |
| HAMD | 19.3 ± 8.9 | - |
Figure 1The EEG headset used to collect the data.
Figure 2The distribution of the electrodes in the acquisition system.
Figure 3MDD EEG analysis framework. (A) EEG signal preprocessing and segmentation; (B) Feature extraction; (C) Construction of the feature matrix; (D) Classification.
Basic information on the samples.
| Number of samples | 20,143 | 16,708 | 10,068 | 8,349 | 5,031 | 4,172 |
Figure 4Structure of the feature matrix.
Figure 5Structure of the CNN.
Figure 6Statistical analysis results for different features [(A) interhemispheric asymmetry; (B) cross-correlation; (C) MIX1; (D) MIX2]. The black bar indicates the MDD group, and the white bar indicates the HCs. **indicates 0.001 < p < 0.01, *indicates 0.01 < p < 0.05.
Classification results of the EEG signals from all classifiers.
| KNN | F1 | 79.10 | 86.58 | 70.07 | 81.89 | 81.76 | 88.19 | 74.04 | 84.08 | 80.74 | 87.76 | 72.29 | 83.27 |
| F2 | 62.38 | 71.29 | 51.64 | 67.43 | 59.98 | 68.81 | 49.38 | 65.25 | 81.74 | 83.01 | 80.10 | 82.70 | |
| MF | 79.50 | 87.29 | 70.13 | 82.30 | 83.15 | 88.97 | 76.14 | 85.22 | 82.43 | 88.51 | 75.10 | 84.61 | |
| SVM | F1 | 83.78 | 85.88 | 81.52 | 85.36 | 84.13 | 86.24 | 81.60 | 85.59 | 82.83 | 85.53 | 79.62 | 84.46 |
| F2 | 76.31 | 78.55 | 73.62 | 78.36 | 80.91 | 83.15 | 78.26 | 82.62 | 84.27 | 83.49 | 84.97 | 83.21 | |
| MF | 87.95 | 89.24 | 86.38 | 89.00 | 88.22 | 89.69 | 86.44 | 89.26 | 86.15 | 88.28 | 83.60 | 87.43 | |
| CNN | F1 | 91.10 | 91.45 | 89.42 | 91.62 | 92.70 | 93.72 | 91.27 | 93.52 | 92.11 | 93.62 | 92.23 | 91.64 |
| F2 | 93.14 | 92.41 | 94.17 | 93.61 | 93.07 | 93.25 | 92.24 | 94.45 | 93.31 | 94.43 | 93.27 | 92.87 | |
| MF | 94.10 | 93.61 | 91.69 | 93.82 | 93.58 | 94.74 | 93.72 | 94.81 | |||||
F1 indicates asymmetry, F2 indicates cross-correlation and MF indicates mixed features. Acc indicates accuracy; Sen indicates the sensitivity; Spe indicates the specificity; f1 indicates the F1-score. Bold values indicates the best performance.
Summary of previous works on EEG signal analysis for depression.
| Mantri et al. ( | 2015 | 13 MDD and 12 HC | Power spectrum, FFT | ANN | 84% |
| Akdemir ( | 2015 | 53 MDD and 43 HC | EEG band power | DT | 80% |
| Liao et al. ( | 2017 | 12 MDD and 12 HC | Kernel eigen-filter-bank common spatial patterns | SVM | 91.67% |
| Mumtaz et al. ( | 2017 | 34 MDD and 30 HC | Wavelet transform | LR | 87.5% |
| Acharya et al. ( | 2018 | 33 MDD and 30 HC | Left and right hemispheres | CNN | 93.5% and 96% |
| Fan et al. ( | 2019 | 48 HCC and 26 HC | Lep-Ziv complexity BP | ANN | 60-80% |
| Our Study | 16 MDD and 16 HC | Asymmetry, cross-correlation, mixed features | CNN | 94.13% |