14 results on '"Pengfei Ke"'
Search Results
2. Discriminative analysis of schizophrenia patients using graph convolutional networks: A combined multimodal MRI and connectomics analysis
- Author
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Xiaoyi Chen, Pengfei Ke, Yuanyuan Huang, Jing Zhou, Hehua Li, Runlin Peng, Jiayuan Huang, Liqin Liang, Guolin Ma, Xiaobo Li, Yuping Ning, Fengchun Wu, and Kai Wu
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schizophrenia ,graph convolutional network ,discriminative analysis ,human brain connectomics ,multimodal MRI ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Abstract
IntroductionRecent studies in human brain connectomics with multimodal magnetic resonance imaging (MRI) data have widely reported abnormalities in brain structure, function and connectivity associated with schizophrenia (SZ). However, most previous discriminative studies of SZ patients were based on MRI features of brain regions, ignoring the complex relationships within brain networks.MethodsWe applied a graph convolutional network (GCN) to discriminating SZ patients using the features of brain region and connectivity derived from a combined multimodal MRI and connectomics analysis. Structural magnetic resonance imaging (sMRI) and resting-state functional magnetic resonance imaging (rs-fMRI) data were acquired from 140 SZ patients and 205 normal controls. Eighteen types of brain graphs were constructed for each subject using 3 types of node features, 3 types of edge features, and 2 brain atlases. We investigated the performance of 18 brain graphs and used the TopK pooling layers to highlight salient brain regions (nodes in the graph).ResultsThe GCN model, which used functional connectivity as edge features and multimodal features (sMRI + fMRI) of brain regions as node features, obtained the highest average accuracy of 95.8%, and outperformed other existing classification studies in SZ patients. In the explainability analysis, we reported that the top 10 salient brain regions, predominantly distributed in the prefrontal and occipital cortices, were mainly involved in the systems of emotion and visual processing.DiscussionOur findings demonstrated that GCN with a combined multimodal MRI and connectomics analysis can effectively improve the classification of SZ at an individual level, indicating a promising direction for the diagnosis of SZ patients. The code is available at https://github.com/CXY-scut/GCN-SZ.git.
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- 2023
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3. The gut microbiome is associated with brain structure and function in schizophrenia
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Shijia Li, Jie Song, Pengfei Ke, Lingyin Kong, Bingye Lei, Jing Zhou, Yuanyuan Huang, Hehua Li, Guixiang Li, Jun Chen, Xiaobo Li, Zhiming Xiang, Yuping Ning, Fengchun Wu, and Kai Wu
- Subjects
Medicine ,Science - Abstract
Abstract The effect of the gut microbiome on the central nervous system and its possible role in mental disorders have received increasing attention. However, knowledge about the relationship between the gut microbiome and brain structure and function is still very limited. Here, we used 16S rRNA sequencing with structural magnetic resonance imaging (sMRI) and resting-state functional (rs-fMRI) to investigate differences in fecal microbiota between 38 patients with schizophrenia (SZ) and 38 demographically matched normal controls (NCs) and explored whether such differences were associated with brain structure and function. At the genus level, we found that the relative abundance of Ruminococcus and Roseburia was significantly lower, whereas the abundance of Veillonella was significantly higher in SZ patients than in NCs. Additionally, the analysis of MRI data revealed that several brain regions showed significantly lower gray matter volume (GMV) and regional homogeneity (ReHo) but significantly higher amplitude of low-frequency fluctuation in SZ patients than in NCs. Moreover, the alpha diversity of the gut microbiota showed a strong linear relationship with the values of both GMV and ReHo. In SZ patients, the ReHo indexes in the right STC (r = − 0.35, p = 0.031, FDR corrected p = 0.039), the left cuneus (r = − 0.33, p = 0.044, FDR corrected p = 0.053) and the right MTC (r = − 0.34, p = 0.03, FDR corrected p = 0.052) were negatively correlated with the abundance of the genus Roseburia. Our results suggest that the potential role of the gut microbiome in SZ is related to alterations in brain structure and function. This study provides insights into the underlying neuropathology of SZ.
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- 2021
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4. Multimodal Magnetic Resonance Imaging Reveals Aberrant Brain Age Trajectory During Youth in Schizophrenia Patients
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Jiayuan Huang, Pengfei Ke, Xiaoyi Chen, Shijia Li, Jing Zhou, Dongsheng Xiong, Yuanyuan Huang, Hehua Li, Yuping Ning, Xujun Duan, Xiaobo Li, Wensheng Zhang, Fengchun Wu, and Kai Wu
- Subjects
schizophrenia ,accelerated brain aging ,brain age gap ,multimodal magnetic resonance imaging ,machine learning ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Abstract
Accelerated brain aging had been widely reported in patients with schizophrenia (SZ). However, brain aging trajectories in SZ patients have not been well-documented using three-modal magnetic resonance imaging (MRI) data. In this study, 138 schizophrenia patients and 205 normal controls aged 20–60 were included and multimodal MRI data were acquired for each individual, including structural MRI, resting state-functional MRI and diffusion tensor imaging. The brain age of each participant was estimated by features extracted from multimodal MRI data using linear multiple regression. The correlation between the brain age gap and chronological age in SZ patients was best fitted by a positive quadratic curve with a peak chronological age of 47.33 years. We used the peak to divide the subjects into a youth group and a middle age group. In the normal controls, brain age matched chronological age well for both the youth and middle age groups, but this was not the case for schizophrenia patients. More importantly, schizophrenia patients exhibited increased brain age in the youth group but not in the middle age group. In this study, we aimed to investigate brain aging trajectories in SZ patients using multimodal MRI data and revealed an aberrant brain age trajectory in young schizophrenia patients, providing new insights into the pathophysiological mechanisms of schizophrenia.
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- 2022
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5. Author Correction: The gut microbiome is associated with brain structure and function in schizophrenia
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Shijia Li, Jie Song, Pengfei Ke, Lingyin Kong, Bingye Lei, Jing Zhou, Yuanyuan Huang, Hehua Li, Guixiang Li, Jun Chen, Xiaobo Li, Zhiming Xiang, Yuping Ning, Fengchun Wu, and Kai Wu
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Medicine ,Science - Published
- 2021
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6. Discriminative Analysis of Schizophrenia Patients Using Topological Properties of Structural and Functional Brain Networks: A Multimodal Magnetic Resonance Imaging Study
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Jing Wang, Pengfei Ke, Jinyu Zang, Fengchun Wu, and Kai Wu
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schizophrenia ,brain networks ,discriminative analysis ,machine learning ,multimodal MRI ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Abstract
Interest in the application of machine learning (ML) techniques to multimodal magnetic resonance imaging (MRI) data for the diagnosis of schizophrenia (SZ) at the individual level is growing. However, a few studies have applied the features of structural and functional brain networks derived from multimodal MRI data to the discriminative analysis of SZ patients at different clinical stages. In this study, 205 normal controls (NCs), 61 first-episode drug-naive SZ (FESZ) patients, and 79 chronic SZ (CSZ) patients were recruited. We acquired their structural MRI, diffusion tensor imaging, and resting-state functional MRI data and constructed brain networks for each participant, including the gray matter network (GMN), white matter network (WMN), and functional brain network (FBN). We then calculated 3 nodal properties for each brain network, including degree centrality, nodal efficiency, and betweenness centrality. Two classifications (SZ vs. NC and FESZ vs. CSZ) were performed using five ML algorithms. We found that the SVM classifier with the input features of the combination of nodal properties of both the GMN and FBN achieved the best performance to discriminate SZ patients from NCs [accuracy, 81.2%; area under the receiver operating characteristic curve (AUC), 85.2%; p < 0.05]. Moreover, the SVM classifier with the input features of the combination of the nodal properties of both the GMN and WMN achieved the best performance to discriminate FESZ from CSZ patients (accuracy, 86.2%; AUC, 92.3%; p < 0.05). Furthermore, the brain areas in the subcortical/cerebellum network and the frontoparietal network showed significant importance in both classifications. Together, our findings provide new insights to understand the neuropathology of SZ and further highlight the potential advantages of multimodal network properties for identifying SZ patients at different clinical stages.
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- 2022
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7. Effects of Brain Atlases and Machine Learning Methods on the Discrimination of Schizophrenia Patients: A Multimodal MRI Study
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Jinyu Zang, Yuanyuan Huang, Lingyin Kong, Bingye Lei, Pengfei Ke, Hehua Li, Jing Zhou, Dongsheng Xiong, Guixiang Li, Jun Chen, Xiaobo Li, Zhiming Xiang, Yuping Ning, Fengchun Wu, and Kai Wu
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multimodal MRI ,schizophrenia ,brain atlas ,machine learning ,classification ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Abstract
Recently, machine learning techniques have been widely applied in discriminative studies of schizophrenia (SZ) patients with multimodal magnetic resonance imaging (MRI); however, the effects of brain atlases and machine learning methods remain largely unknown. In this study, we collected MRI data for 61 first-episode SZ patients (FESZ), 79 chronic SZ patients (CSZ) and 205 normal controls (NC) and calculated 4 MRI measurements, including regional gray matter volume (GMV), regional homogeneity (ReHo), amplitude of low-frequency fluctuation and degree centrality. We systematically analyzed the performance of two classifications (SZ vs NC; FESZ vs CSZ) based on the combinations of three brain atlases, five classifiers, two cross validation methods and 3 dimensionality reduction algorithms. Our results showed that the groupwise whole-brain atlas with 268 ROIs outperformed the other two brain atlases. In addition, the leave-one-out cross validation was the best cross validation method to select the best hyperparameter set, but the classification performances by different classifiers and dimensionality reduction algorithms were quite similar. Importantly, the contributions of input features to both classifications were higher with the GMV and ReHo features of brain regions in the prefrontal and temporal gyri. Furthermore, an ensemble learning method was performed to establish an integrated model, in which classification performance was improved. Taken together, these findings indicated the effects of these factors in constructing effective classifiers for psychiatric diseases and showed that the integrated model has the potential to improve the clinical diagnosis and treatment evaluation of SZ.
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- 2021
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8. Author Correction: The gut microbiome is associated with brain structure and function in schizophrenia
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Jie Song, Fengchun Wu, Jun Chen, Zhiming Xiang, Pengfei Ke, Yuanyuan Huang, Bingye Lei, Lingyin Kong, G. Y. Li, Jing Zhou, Shijia Li, Kai Wu, Yuping Ning, Hehua Li, and Xiaobo Li
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Multidisciplinary ,business.industry ,Schizophrenia (object-oriented programming) ,Science ,Medicine ,Brain Structure and Function ,business ,Bioinformatics ,Gut microbiome - Published
- 2021
9. Classification of schizophrenia patients using a graph convolutional network: A combined functional MRI and connectomics analysis
- Author
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Xiaoyi Chen, Jing Zhou, Pengfei Ke, Jiayuan Huang, Dongsheng Xiong, Yuanyuan Huang, Guolin Ma, Yuping Ning, Fengchun Wu, and Kai Wu
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Signal Processing ,Biomedical Engineering ,Health Informatics - Published
- 2023
10. The gut microbiome is associated with brain structure and function in schizophrenia
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Jie Song, Xiaobo Li, Bingye Lei, Yuanyuan Huang, Jun Chen, Hehua Li, Lingyin Kong, G. Y. Li, Kai Wu, Yuping Ning, Shijia Li, Jing Zhou, Fengchun Wu, Zhiming Xiang, and Pengfei Ke
- Subjects
Adult ,Male ,0301 basic medicine ,medicine.medical_specialty ,Science ,Central nervous system ,Brain Structure and Function ,Neuropathology ,Gut flora ,Article ,03 medical and health sciences ,0302 clinical medicine ,Internal medicine ,medicine ,Humans ,Author Correction ,Clinical microbiology ,Multidisciplinary ,Bacteria ,biology ,Ruminococcus ,Brain ,Middle Aged ,biology.organism_classification ,medicine.disease ,Magnetic Resonance Imaging ,Gut microbiome ,Gastrointestinal Microbiome ,030104 developmental biology ,Endocrinology ,medicine.anatomical_structure ,Schizophrenia ,Medicine ,Female ,Roseburia ,030217 neurology & neurosurgery ,Neuroscience - Abstract
The effect of the gut microbiome on the central nervous system and its possible role in mental disorders have received increasing attention. However, knowledge about the relationship between the gut microbiome and brain structure and function is still very limited. Here, we used 16S rRNA sequencing with structural magnetic resonance imaging (sMRI) and resting-state functional (rs-fMRI) to investigate differences in fecal microbiota between 38 patients with schizophrenia (SZ) and 38 demographically matched normal controls (NCs) and explored whether such differences were associated with brain structure and function. At the genus level, we found that the relative abundance of Ruminococcus and Roseburia was significantly lower, whereas the abundance of Veillonella was significantly higher in SZ patients than in NCs. Additionally, the analysis of MRI data revealed that several brain regions showed significantly lower gray matter volume (GMV) and regional homogeneity (ReHo) but significantly higher amplitude of low-frequency fluctuation in SZ patients than in NCs. Moreover, the alpha diversity of the gut microbiota showed a strong linear relationship with the values of both GMV and ReHo. In SZ patients, the ReHo indexes in the right STC (r = − 0.35, p = 0.031, FDR corrected p = 0.039), the left cuneus (r = − 0.33, p = 0.044, FDR corrected p = 0.053) and the right MTC (r = − 0.34, p = 0.03, FDR corrected p = 0.052) were negatively correlated with the abundance of the genus Roseburia. Our results suggest that the potential role of the gut microbiome in SZ is related to alterations in brain structure and function. This study provides insights into the underlying neuropathology of SZ.
- Published
- 2021
11. The Gut Microbiome Was Associated With Brain Structure and Function in Schizophrenia
- Author
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Shijia Li, Jie Song, Pengfei Ke, Lingyin Kong, Bingye Lei, Jing Zhou, Yuanyuan Huang, Hehua Li, Guixiang Li, Jun Chen, Xiaobo Li, Zhiming Xiang, Yuping Ning, Fengchun Wu, and Kai Wu
- Abstract
The effects of the gut microbiome on the central nervous system and its possible role in mental disorders have received increasing attention. However, our knowledge about the relationship between the gut microbiome and brain structure and function is still very limited. Here, we leveraged 16S rRNA sequencing with structural magnetic resonance imaging (sMRI) and resting-state functional (rs-fMRI) to investigate differences in fecal microbiota between 38 patients with schizophrenia (SZs) and 38 demographically matched normal controls (NCs) and explored whether such differences were associated with brain structure and function. At the genus level, we found that the relative abundance of Ruminococcus and Roseburia was significantly lower, whereas the abundance of Veillonella was increased in SZs compared to NCs. Additionally, the MRI results revealed that several brain regions showed lower gray matter volume (GMV) and regional homogeneity (ReHo), but increased amplitude of low-frequency fluctuation (ALFF) in SZs than in NCs. Statistical analyses were performed to explore the associations between microbial shifts and brain structure and function. Alpha diversity of gut microbiota showed a strong linear relationship with GMV and ReHo. Moreover, we found that lower ReHo indexes in the right STC (r = -0.35, p = 0.031, FDR corrected p = 0.039), the left cuneus (r = -0.33, p = 0.044, FDR corrected p = 0.053) and the right MTC (r = -0.34, p = 0.03, FDR corrected p = 0.052) were negatively correlated with a lower abundance of the genus Roseburia. This study suggests that the potential role of the gut microbiome in schizophrenia (SZ) is related to the alteration of brain structure and function, suggesting a new direction for studying the pathology of SZ.
- Published
- 2021
12. Multi-biological Classification for the Diagnosis of Schizophrenia Using Multi-classifier, Multi-feature Selection and Multi-cross Validation: an Integrated Machine Learning Framework Study
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Yu-ping Ning, Jie Song, Jiahui Li, Xiao-bo Li, Dongsheng Xiong, Pengfei Ke, Xiao-yi Chen, Kai Wu, Jun Chen, Shijia Li, Jing Zhou, Feng-chun Wu, and G. Y. Li
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Multi feature ,business.industry ,Computer science ,Biological classification ,Artificial intelligence ,Machine learning ,computer.software_genre ,business ,computer ,Classifier (UML) ,Cross-validation ,Selection (genetic algorithm) ,Diagnosis of schizophrenia - Abstract
Finding effective and objective biomarkers to inform the diagnosis of schizophrenia is of great importance yet remains challenging. However, there is relatively little work on multi-biological data for the diagnosis of schizophrenia. This was a cross-sectional study in which we extracted multiple features from three types of biological data including gut microbiota data, blood data, and electroencephalogram data. Then, an integrated framework of machine learning, consisting of five classifiers, three feature selection algorithms, and four cross-validation methods was used to discriminate patients with schizophrenia from healthy controls. Our results showed that the performance of the classifier using multi-biological data was better than that of the classifiers using single biological data, with 91.7% accuracy and 96.5% AUC. The most discriminative features (top 5%) for the classification include gut microbiota features (Lactobacillus, Haemophilus, and Prevotella), blood features (superoxide dismutase, monocyte-lymphocyte ratio, and neutrophil), and electroencephalogram features (nodal local efficiency, nodal efficiency, and nodal shortest path length in the temporal and frontal-parietal areas).The proposed integrated framework may be help in understanding the pathophysiology of schizophrenia and developing biomarkers for schizophrenia using multi-biological data.
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- 2021
13. NEURO-LEARN: a Solution for Collaborative Pattern Analysis of Neuroimaging Data
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Wang Kaixi, Kai Wu, Jun Chen, Lingyin Kong, Jing Zhou, Dongsheng Xiong, Bingye Lei, Xiaobo Li, Yuping Ning, Zhiming Xiang, Pengfei Ke, and Fengchun Wu
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Computer science ,Pooling ,Neuroimaging ,Online Systems ,050105 experimental psychology ,Bottleneck ,Field (computer science) ,Workflow ,Machine Learning ,03 medical and health sciences ,0302 clinical medicine ,Data acquisition ,Image Processing, Computer-Assisted ,Web application ,Animals ,Humans ,0501 psychology and cognitive sciences ,Instrumentation (computer programming) ,business.industry ,Information Dissemination ,General Neuroscience ,05 social sciences ,Data science ,business ,030217 neurology & neurosurgery ,Software ,Information Systems ,Curse of dimensionality - Abstract
The development of neuroimaging instrumentation has boosted neuroscience researches. Consequently, both the fineness and the cost of data acquisition have profoundly increased, leading to the main bottleneck of this field: limited sample size and high dimensionality of neuroimaging data. Therefore, the emphasis of ideas of data pooling and research collaboration has increased over the past decade. Collaborative analysis techniques emerge as the idea developed. In this paper, we present NEURO-LEARN, a solution for collaborative pattern analysis of neuroimaging data. Its collaboration scheme consists of four parts: projects, data, analysis, and reports. While data preparation workflows defined in projects reduce the high dimensionality of neuroimaging data by collaborative computation, pooling of derived data and sharing of pattern analysis workflows along with generated reports on the Web enlarge the sample size and ensure the reliability and reproducibility of pattern analysis. Incorporating this scheme, NEURO-LEARN provides an easy-to-use Web application that allows users from different sites to share projects and processed data, perform pattern analysis, and obtain result reports. We anticipate that this solution will help neuroscientists to enlarge sample size, conquer the curse of dimensionality and conduct reproducible studies on neuroimaging data with efficiency and validity.
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- 2020
14. A novel face recognition algorithm based on the combination of LBP and CNN
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Maoguo Cai, Jialong Chen, Pengfei Ke, and Hanmo Wang
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Normalization (statistics) ,Computer science ,Local binary patterns ,Feature extraction ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Normalization (image processing) ,020207 software engineering ,02 engineering and technology ,Facial recognition system ,Convolutional neural network ,Robustness (computer science) ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Algorithm - Abstract
In order to overcome the effects of posture, illumination, expression and other factors on face recognition, this paper proposes an algorithm which is based on local binary pattern (LBP) and convolutional neural network (CNN). LBP is a texture description method which describes the local texture features of an image. It has good robustness of illumination and posture. CNN can effectively extract the spatial features of images and reduce the dimensions of features. This paper combines the advantages of LBP and CNN to improve the accuracy of face recognition. The CNN in this algorithm has four convolution layers, two max-pooling layers, one activation layer, one fully connected layer, and one output layer. In order to optimize the network structure, batch normalization layer is added after the convolution layer. We get the local binary pattern coded images and put the images as the input of the CNN and train the network. Hence, we can use the well-trained CNN for classification and identification. The Experiments on the CMU-PIE face database show that our algorithm can effectively improve the rate of face recognition.
- Published
- 2018
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