10 results on '"Sun, Shuting"'
Search Results
2. EEG-based mild depression recognition using convolutional neural network
- Author
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Li, Xiaowei, La, Rong, Wang, Ying, Niu, Junhong, Zeng, Shuai, Sun, Shuting, and Zhu, Jing
- Published
- 2019
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3. EEG Topography and Tomography (sLORETA) in Analysis of Abnormal Brain Region for Mild Depression
- Author
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Li, Xiaowei, Cao, Tong, Hu, Bin, Sun, Shuting, Li, Jianxiu, Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Weikum, Gerhard, Series editor, Ascoli, Giorgio A., editor, Hawrylycz, Michael, editor, Ali, Hesham, editor, Khazanchi, Deepak, editor, and Shi, Yong, editor
- Published
- 2016
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4. Personal-Zscore: Eliminating Individual Difference for EEG-Based Cross-Subject Emotion Recognition.
- Author
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Chen, Huayu, Sun, Shuting, Li, Jianxiu, Yu, Ruilan, Li, Nan, Li, Xiaowei, and Hu, Bin
- Abstract
It was observed that accuracy of the Subject-Dependent emotion recognition model was much higher than that of the Subject-Independent model in the field of electroencephalogram (EEG) based affective computing. This phenomenon is mainly caused by the individual difference of EEG, which is the key issue to be solved for the application of emotion recognition. In this work, 14 subjects from the SEED were selected for individual difference analysis. Through individual aggregation features evaluation, sample space visualization, and correlation analysis, we proposed four quantification indicators to analyze individual difference phenomenon. Finally, we presented the Personal-Zscore (PZ) feature processing method, and it was found that the data set processed with PZ method could represent emotion better than the original data set, and the conventional model with the PZ method was more robust. The accuracies of emotion recognition models trained with PZ processing have been improved to some extent, which showed that the PZ method could effectively eliminate the individual aggregation of feature space and improve the emotional representation ability of data sets. Hence, our findings may provide a new insight into the foundation for universal implementation of EEG-based application, and the Personal-Zscore feature processing method is of great significance for the development of effective emotion recognition system. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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5. Abnormal Brain Topological Structure of Mild Depression During Visual Search Processing Based on EEG Signals.
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Sun, Shuting, Liu, Liangliang, Shao, Xuexiao, Yan, Chang, Li, Xiaowei, and Hu, Bin
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VISUAL perception ,BRAIN anatomy ,LARGE-scale brain networks ,ELECTROENCEPHALOGRAPHY ,HIERARCHICAL clustering (Cluster analysis) ,CEREBRAL dominance - Abstract
Studies have shown that attention bias can affect behavioral indicators in patients with depression, but it is still unclear how this bias affects the brain network topology of patients with mild depression (MD). Therefore, a novel functional brain network analysis and hierarchical clustering methods were used to explore the abnormal brain topology of MD patients based on EEG signals during the visual search paradigm. The behavior results showed that the reaction time of MD group was significantly higher than that of normal group. The results of functional brain network indicated significant differences in functional connections between the two groups, the amount of inter-hemispheric long-distance connections are much larger than intra-hemispheric short-distance connections. Patients with MD showed significantly lower local efficiency and clustering coefficient, destroyed community structure of frontal lobe and parietal-occipital lobe, frontal asymmetry, especially in beta band. In addition, the average value of long-distance connections between left frontal and right parietal-occipital lobes presented significant correlation with depressive symptoms. Our results suggested that MD patients achieved long-distance connections between the frontal and parietal-occipital regions by sacrificing the connections within the regions, which might provide new insights into the abnormal cognitive processing mechanism of depression. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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6. An Improved Classification Model for Depression Detection Using EEG and Eye Tracking Data.
- Author
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Zhu, Jing, Wang, Zihan, Gong, Tao, Zeng, Shuai, Li, Xiaowei, Hu, Bin, Li, Jianxiu, Sun, Shuting, and Zhang, Lan
- Abstract
At present, depression has become a main health burden in the world. However, there are many problems with the diagnosis of depression, such as low patient cooperation, subjective bias and low accuracy. Therefore, reliable and objective evaluation method is needed to achieve effective depression detection. Electroencephalogram (EEG) and eye movements (EMs) data have been widely used for depression detection due to their advantages of easy recording and non-invasion. This research proposes a content based ensemble method (CBEM) to promote the depression detection accuracy, both static and dynamic CBEM were discussed. In the proposed model, EEG or EMs dataset was divided into subsets by the context of the experiments, and then a majority vote strategy was used to determine the subjects’ label. The validation of the method is testified on two datasets which included free viewing eye tracking and resting-state EEG, and these two datasets have 36,34 subjects respectively. For these two datasets, CBEM achieves accuracies of 82.5% and 92.65% respectively. The results show that CBEM outperforms traditional classification methods. Our findings provide an effective solution for promoting the accuracy of depression identification, and provide an effective method for identificationof depression, which in the future could be used for the auxiliary diagnosis of depression. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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7. Graph Theory Analysis of Functional Connectivity in Major Depression Disorder With High-Density Resting State EEG Data.
- Author
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Sun, Shuting, Li, Xiaowei, Zhu, Jing, Wang, Ying, La, Rong, Zhang, Xuemin, Wei, Liuqing, and Hu, Bin
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GRAPH theory ,ELECTROENCEPHALOGRAPHY ,MENTAL depression ,FUNCTIONAL analysis ,PUBLIC records ,DISEASES - Abstract
Existing studies have shown functional brain networks in patients with major depressive disorder (MDD) have abnormal network topology structure. But the methods to construct brain network still exist some issues to be solved. This paper is to explore reliable and robust construction methods of functional brain network using different coupling methods and binarization approaches, based on high-density 128-channel resting state EEG recordings from 16 MDD patients and 16 normal controls (NC). It was found that the combination of imaginary part of coherence and cluster-span threshold outperformed other methods. Based on this combination, right hemisphere function deficiency, symmetry breaking and randomized network structure were found in MDD, which confirmed that MDD had aberrant cognitive processing. Furthermore, clustering coefficient in left central region in theta band and node betweenness centrality in right temporal region in alpha band were significantly negatively correlated with depressive level. And these network metrics had the ability to discriminate MDD from NC, which indicated that these network metrics might be served as the electrophysiological characteristics for probable MDD identification. Hence, this paper may provide reliable methods to construct functional brain network and offer potential biomarkers in MDD. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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8. Attention Recognition in EEG-Based Affective Learning Research Using CFS+KNN Algorithm.
- Author
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Hu, Bin, Li, Xiaowei, Sun, Shuting, and Ratcliffe, Martyn
- Abstract
The research detailed in this paper focuses on the processing of Electroencephalography (EEG) data to identify attention during the learning process. The identification of affect using our procedures is integrated into a simulated distance learning system that provides feedback to the user with respect to attention and concentration. The authors propose a classification procedure that combines correlation-based feature selection (CFS) and a k-nearest-neighbor (KNN) data mining algorithm. To evaluate the CFS+KNN algorithm, it was test against CFS+C4.5 algorithm and other classification algorithms. The classification performance was measured 10 times with different 3-fold cross validation data. The data was derived from 10 subjects while they were attempting to learn material in a simulated distance learning environment. A self-assessment model of self-report was used with a single valence to evaluate attention on 3 levels (high, neutral, low). It was found that CFS+KNN had a much better performance, giving the highest correct classification rate (CCR) of $80.84 \pm 3.0$
% for the valence dimension divided into three classes. [ABSTRACT FROM PUBLISHER]- Published
- 2018
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9. EEG-based mild depressive detection using feature selection methods and classifiers.
- Author
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Li, Xiaowei, Hu, Bin, Sun, Shuting, and Cai, Hanshu
- Subjects
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DIAGNOSIS of mental depression , *ELECTROENCEPHALOGRAPHY , *FACIAL expression & emotions (Psychology) , *FEATURE selection , *CLASSIFICATION algorithms , *MEDICAL economics - Abstract
Background and objective Depression has become a major health burden worldwide, and effectively detection of such disorder is a great challenge which requires latest technological tool, such as Electroencephalography (EEG). This EEG-based research seeks to find prominent frequency band and brain regions that are most related to mild depression, as well as an optimal combination of classification algorithms and feature selection methods which can be used in future mild depression detection. Methods An experiment based on facial expression viewing task (Emo_block and Neu_block) was conducted, and EEG data of 37 university students were collected using a 128 channel HydroCel Geodesic Sensor Net (HCGSN). For discriminating mild depressive patients and normal controls, BayesNet (BN), Support Vector Machine (SVM), Logistic Regression (LR), k-nearest neighbor (KNN) and RandomForest (RF) classifiers were used. And BestFirst (BF), GreedyStepwise (GSW), GeneticSearch (GS), LinearForwordSelection (LFS) and RankSearch (RS) based on Correlation Features Selection (CFS) were applied for linear and non-linear EEG features selection. Independent Samples T-test with Bonferroni correction was used to find the significantly discriminant electrodes and features. Results Data mining results indicate that optimal performance is achieved using a combination of feature selection method GSW based on CFS and classifier KNN for beta frequency band. Accuracies achieved 92.00% and 98.00%, and AUC achieved 0.957 and 0.997, for Emo_block and Neu_block beta band data respectively. T-test results validate the effectiveness of selected features by search method GSW. Simplified EEG system with only FP1, FP2, F3, O2, T3 electrodes was also explored with linear features, which yielded accuracies of 91.70% and 96.00%, AUC of 0.952 and 0.972, for Emo_block and Neu_block respectively. Conclusions Classification results obtained by GSW + KNN are encouraging and better than previously published results. In the spatial distribution of features, we find that left parietotemporal lobe in beta EEG frequency band has greater effect on mild depression detection. And fewer EEG channels (FP1, FP2, F3, O2 and T3) combined with linear features may be good candidates for usage in portable systems for mild depression detection. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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10. Depression recognition using machine learning methods with different feature generation strategies.
- Author
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Li, Xiaowei, Zhang, Xin, Zhu, Jing, Mao, Wandeng, Sun, Shuting, Wang, Zihan, Xia, Chen, and Hu, Bin
- Subjects
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BRAIN-computer interfaces , *ELECTROENCEPHALOGRAPHY , *MACHINE learning , *DEEP learning , *SUPPORT vector machines , *SIGNAL processing , *SPECTRAL energy distribution , *POWER density - Abstract
The diagnosis of depression almost exclusively depends on doctor-patient communication and scale analysis, which have the obvious disadvantages such as patient denial, poor sensitivity, subjective biases and inaccuracy. An objective, automated method that predicts clinical outcomes in depression is essential for increasing the accuracy of depression recognition and treatments. This paper aims at better recognizing depression using the transformation of EEG features and machine learning methods. An experiment based on emotional face stimuli task was conducted, and twenty-eight subjects' EEG data were recorded from 128-channel HydroCel Geodesic Sensor Net (HCGSN) by Net Station software. The Mini International Neuropsychiatric Interview (MINI) was used by psychiatrists as the criterion for diagnosis of depression patients. The power spectral density and activity were respectively extracted as original features using Auto-regress model and Hjorth algorithm with different time windows. Two separate approaches processed the features: ensemble learning and deep learning. For the ensemble learning, a deep forest transformed the original features to new features that potentially improve feature engineering and a support vector machine (SVM) that was applied as classifier. For deep learning method, we added spatial information of EEG caps to both features by image conversion and adopted convolutional neural network (CNN) to recognize them. The performance of both methods was evaluated for separated and total frequency bands. As a result, the best accuracy obtained was 89.02% when we used the ensemble model and power spectral density. The best accuracy of deep learning method was 84.75% using the activity. These experimental results prove the efficiency of the proposed methods and show that EEG could be used as a reliable indicator for depression recognition, which makes it possible for EEG-based portable system design and application in auxiliary depression recognition in the future. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
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