Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Changcheng Sun is active.

Publication


Featured researches published by Changcheng Sun.


PLOS ONE | 2013

Channel selection based on phase measurement in P300-based brain-computer interface.

Minpeng Xu; Hongzhi Qi; Lan Ma; Changcheng Sun; Lixin Zhang; Baikun Wan; Tao Yin; Dong Ming

Most EEG-based brain-computer interface (BCI) paradigms include specific electrode positions. As the structures and activities of the brain vary with each individual, contributing channels should be chosen based on original records of BCIs. Phase measurement is an important approach in EEG analyses, but seldom used for channel selections. In this paper, the phase locking and concentrating value-based recursive feature elimination approach (PLCV-RFE) is proposed to produce robust-EEG channel selections in a P300 speller. The PLCV-RFE, deriving from the phase resetting mechanism, measures the phase relation between EEGs and ranks channels by the recursive strategy. Data recorded from 32 electrodes on 9 subjects are used to evaluate the proposed method. The results show that the PLCV-RFE substantially reduces channel sets and improves recognition accuracies significantly. Moreover, compared with other state-of-the-art feature selection methods (SSNRSF and SVM-RFE), the PLCV-RFE achieves better performance. Thus the phase measurement is available in the channel selection of BCI and it may be an evidence to indirectly support that phase resetting is at least one reason for ERP generations.


Journal of Affective Disorders | 2015

Neural complexity in patients with poststroke depression: A resting EEG study

Ying Zhang; Chunfang Wang; Changcheng Sun; Xi Zhang; Yongjun Wang; Hongzhi Qi; Feng He; Baikun Wan; Jingang Du; Dong Ming

BACKGROUND Poststroke depression (PSD) is one of the most common emotional disorders affecting post-stroke patients. However, the neurophysiological mechanism remains elusive. This study was aimed to study the relationship between complexity of neural electrical activity and PSD. METHODS Resting state eye-closed electroencephalogram (EEG) signals of 16 electrodes were recorded in 21 ischemic poststroke depression (PSD) patients, 22 ischemic poststroke non-depression (PSND) patients and 15 healthy controls (CONT). Lempel-Ziv Complexity (LZC) was used to evaluate changes in EEG complexity in PSD patients. Statistical analysis was performed to explore difference among different groups and electrodes. Correlation between the severity of depression (HDRS) and EEG complexity was determined with pearson correlation coefficients. Receiver operating characteristic (ROC) and binary logistic regression analysis were conducted to estimate the discriminating ability of LZC for PSD in specificity, sensitivity and accuracy. RESULTS PSD patients showed lower neural complexity compared with PSND and CONT subjects in the whole brain regions. There was no significant difference among different brain regions, and no interactions between group and electrodes. None of the LZC significantly correlated with overall depression severity or differentiated symptom severity of 7 items in PSD patients, but in stroke patients, significant correlation was found between HDRS and LZC in the whole brain regions, especially in frontal and temporal. LZC parameters used for PSD recognition possessed more than 85% in specificity, sensitivity and accuracy, suggesting the feasibility of LZC to serve as screening indicators for PSD. Increased slow wave rhythms were found in PSD patients and clearly correlation was confirmed between neuronal complexity and spectral power of the four EEG rhythms. LIMITATIONS Lesion location of stroke patients in the study distributed in different brain regions, and most of the PSD patients were mild or moderate in depressive severity. CONCLUSIONS Compared with conventional spectral analysis, complexity of neural activity using LZC was more sensitive and stationary in the measurement of abnormal brain activity in PSD patients and may offer a potential approach to facilitate clinical screening of this disease.


international conference on computational intelligence for measurement systems and applications | 2010

ICA-SVM combination algorithm for identification of motor imagery potentials

Dong Ming; Changcheng Sun; Longlong Cheng; Yanru Bai; Xiuyun Liu; Xingwei An; Hongzhi Qi; Baikun Wan; Yong Hu; Kdk Luk

Mental tasks such as motor imagery in synchronization with a cue which result event related desynchronization (ERD) and event related synchronization (ERS) are usually studied in brain-computer interface (BCI) system. In this paper we analyze and classify the ERD/ERS response evoked by the motor imagery of left hand, right hand, foot and tongue. The signals were spatially filtered by Independent Component Analysis (ICA) before calculating the power spectral density (PSD) for related electrodes, and then the Support Vector Machine (SVM) was adopted to recognise the different imagery pattern according to ERD/ERS feature for the signals. The results showed that the combination of ICA-based signal extraction algorithm and SVM-based classification method was an effective tool for the identification of motor imagery potentials, with the highest accuracy rate of 91.4% and 77.6% for the lowest.


International Journal of Geriatric Psychiatry | 2018

Electrophysiological changes in poststroke subjects with depressed mood: A quantitative EEG study

Chunfang Wang; Yuanyuan Chen; Changcheng Sun; Ying Zhang; Dong Ming; Jingang Du

We aimed to explore the electrophysiological changes in poststroke subjects with depressed mood.


Archive | 2010

Method for extracting characteristics of event related potential generated by using audio-visual combined stimulation

Xingwei An; Dong Ming; Hongzhi Qi; Changcheng Sun; Baikun Wan


Archive | 2012

Identifying method based on visual evoked P3 potential

Yanru Bai; Dong Ming; Jing Liu; Changcheng Sun; Hongzhi Qi; Baikun Wan


Archive | 2012

Method for extracting electroencephalogram characteristic based on quantitative electroencephalogram

Jingang Du; Yongjun Wang; Dong Ming; Chunfang Wang; Jing Wang; Changcheng Sun


Archive | 2012

Visual P300-Speller brain-computer interface method

Hongzhi Qi; Changcheng Sun; Long Chen; Yuanyuan Chen; Baikun Wan; Dong Ming


Archive | 2012

Lead optimization method for SVM-RFE (support vector machine-recursive feature elimination) based on ensemble learning thought

Hongzhi Qi; Changcheng Sun; Weibo Yi; Long Chen; Dong Ming; Baikun Wan


Archive | 2011

Lead optimizing method for P300 brain-computer interface

Minpeng Xu; Hongzhi Qi; Dong Ming; Changcheng Sun; Xingwei An; Baikun Wan

Collaboration


Dive into the Changcheng Sun's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge