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Featured researches published by Chenchen Feng.


Scientific Reports | 2013

Identification of breast cancer patients based on human signaling network motifs

Lina Chen; Xiaoli Qu; Mushui Cao; Yanyan Zhou; Wan Li; Binhua Liang; Weiguo Li; Weiming He; Chenchen Feng; Xu Jia; Yuehan He

Identifying breast cancer patients is crucial to the clinical diagnosis and therapy for this disease. Conventional gene-based methods for breast cancer diagnosis ignore gene-gene interactions and thus may lead to loss of power. In this study, we proposed a novel method to select classification features, called “Selection of Significant Expression-Correlation Differential Motifs” (SSECDM). This method applied a network motif-based approach, combining a human signaling network and high-throughput gene expression data to distinguish breast cancer samples from normal samples. Our method has higher classification performance and better classification accuracy stability than the mutual information (MI) method or the individual gene sets method. It may become a useful tool for identifying and treating patients with breast cancer and other cancers, thus contributing to clinical diagnosis and therapy for these diseases.


PLOS ONE | 2013

Prioritizing disease candidate proteins in cardiomyopathy-specific protein-protein interaction networks based on "guilt by association" analysis.

Wan Li; Lina Chen; Weiming He; Weiguo Li; Xiaoli Qu; Binhua Liang; Qianping Gao; Chenchen Feng; Xu Jia; Yana Lv; Siya Zhang; Xia Li

The cardiomyopathies are a group of heart muscle diseases which can be inherited (familial). Identifying potential disease-related proteins is important to understand mechanisms of cardiomyopathies. Experimental identification of cardiomyophthies is costly and labour-intensive. In contrast, bioinformatics approach has a competitive advantage over experimental method. Based on “guilt by association” analysis, we prioritized candidate proteins involving in human cardiomyopathies. We first built weighted human cardiomyopathy-specific protein-protein interaction networks for three subtypes of cardiomyopathies using the known disease proteins from Online Mendelian Inheritance in Man as seeds. We then developed a method in prioritizing disease candidate proteins to rank candidate proteins in the network based on “guilt by association” analysis. It was found that most candidate proteins with high scores shared disease-related pathways with disease seed proteins. These top ranked candidate proteins were related with the corresponding disease subtypes, and were potential disease-related proteins. Cross-validation and comparison with other methods indicated that our approach could be used for the identification of potentially novel disease proteins, which may provide insights into cardiomyopathy-related mechanisms in a more comprehensive and integrated way.


BMC Medical Genomics | 2013

Unraveling the characteristics of microRNA regulation in the developmental and aging process of the human brain

Weiguo Li; Lina Chen; Wan Li; Xiaoli Qu; Weiming He; Yuehan He; Chenchen Feng; Xu Jia; Yanyan Zhou; Junjie Lv; Binhua Liang; Binbin Chen; Jing Jiang

BackgroundStructure and function of the human brain are subjected to dramatic changes during its development and aging. Studies have demonstrated that microRNAs (miRNAs) play an important role in the regulation of brain development and have a significant impact on brain aging and neurodegeneration. However, the underling molecular mechanisms are not well understood. In general, development and aging are conventionally studied separately, which may not completely address the physiological mechanism over the entire lifespan. Thus, we study the regulatory effect between miRNAs and mRNAs in the developmental and aging process of the human brain by integrating miRNA and mRNA expression profiles throughout the lifetime.MethodsIn this study, we integrated miRNA and mRNA expression profiles in the human brain across lifespan from the network perspective. First, we chose the age-related miRNAs by polynomial regression models. Second, we constructed the bipartite miRNA-mRNA regulatory network by pair-wise correlation coefficient analysis between miRNA and mRNA expression profiles. At last, we constructed the miRNA-miRNA synergistic network from the miRNA-mRNA network, considering not only the enrichment of target genes but also GO function enrichment of co-regulated target genes.ResultsWe found that the average degree of age-related miRNAs was significantly higher than that of non age-related miRNAs in the miRNA-mRNA regulatory network. The topological features between age-related and non age-related miRNAs were significantly different, and 34 reliable age-related miRNA synergistic modules were identified using Cfinder in the miRNA-miRNA synergistic network. The synergistic regulations of module genes were verified by reviewing miRNA target databases and previous studies.ConclusionsAge-related miRNAs play a more important role than non age-related mrRNAs in the developmental and aging process of the human brain. The age-related miRNAs have synergism, which tend to work together as small modules. These results may provide a new insight into the regulation of miRNAs in the developmental and aging process of the human brain.


PLOS ONE | 2014

Cancer-risk module identification and module-based disease risk evaluation: a case study on lung cancer.

Xu Jia; Zhengqiang Miao; Wan Li; Liangcai Zhang; Chenchen Feng; Yuehan He; Xiaoman Bi; Liqiang Wang; Youwen Du; Min Hou; Dapeng Hao; Yun Xiao; Lina Chen; Kongning Li

Gene expression profiles have drawn broad attention in deciphering the pathogenesis of human cancers. Cancer-related gene modules could be identified in co-expression networks and be applied to facilitate cancer research and clinical diagnosis. In this paper, a new method was proposed to identify lung cancer-risk modules and evaluate the module-based disease risks of samples. The results showed that thirty one cancer-risk modules were closely related to the lung cancer genes at the functional level and interactional level, indicating that these modules and genes might synergistically lead to the occurrence of lung cancer. Our method was proved to have good robustness by evaluating the disease risk of samples in eight cancer expression profiles (four for lung cancer and four for other cancers), and had better performance than the WGCNA method. This method could provide assistance to the diagnosis and treatment of cancers and a new clue for explaining cancer mechanisms.


Genomics | 2014

Identifying colon cancer risk modules with better classification performance based on human signaling network.

Xiaoli Qu; Ruiqiang Xie; Lina Chen; Chenchen Feng; Yanyan Zhou; Wan Li; Hao Huang; Xu Jia; Junjie Lv; Yuehan He; Youwen Du; Weiguo Li; Yuchen Shi; Weiming He

Identifying differences between normal and tumor samples from a modular perspective may help to improve our understanding of the mechanisms responsible for colon cancer. Many cancer studies have shown that signaling transduction and biological pathways are disturbed in disease states, and expression profiles can distinguish variations in diseases. In this study, we integrated a weighted human signaling network and gene expression profiles to select risk modules associated with tumor conditions. Risk modules as classification features by our method had a better classification performance than other methods, and one risk module for colon cancer had a good classification performance for distinguishing between normal/tumor samples and between tumor stages. All genes in the module were annotated to the biological process of positive regulation of cell proliferation, and were highly associated with colon cancer. These results suggested that these genes might be the potential risk genes for colon cancer.


BioMed Research International | 2014

Identification of Modules Related to Programmed Cell Death in CHD Based on EHEN

Xu Jia; Wan Li; Zhengqiang Miao; Chenchen Feng; Zhe Liu; Yuehan He; Junjie Lv; Youwen Du; Min Hou; Weiming He; Danbin Li; Lina Chen

The formation and death of macrophages and foam cells are one of the major factors that cause coronary heart disease (CHD). In our study, based on the Edinburgh Human Metabolic Network (EHMN) metabolic network, we built an enzyme network which was constructed by enzymes (nodes) and reactions (edges) called the Edinburgh Human Enzyme Network (EHEN). By integrating the subcellular location information for the reactions and refining the protein-reaction relationships based on the location information, we proposed a computational approach to select modules related to programmed cell death. The identified module was in the EHEN-mitochondria (EHEN-M) and was confirmed to be related to programmed cell death, CHD pathogenesis, and lipid metabolism in the literature. We expected this method could analyze CHD better and more comprehensively from the point of programmed cell death in subnetworks.


Asian Pacific Journal of Cancer Prevention | 2014

Analysis of Different Activation Statuses of Human Mammary Epithelial Cells from Young and Old Groups

Chenchen Feng; Lina Chen; Mei-Jun Chen; Wan Li; Xu Jia; Yanyan Zhou; Weiming He

Human mammary epithelial cells have different proliferative statuses and demonstrate a close relationship with age and cell proliferation. Research on this topic could help understand the occurrence, progression and prognosis of breast cancer. In this article, using significance analysis of a microarray algorithm, we analyzed gene expression profiles of human mammary epithelial cells of different proliferative statuses and different age groups. The results showed there were significant differences in gene expression in the same proliferation status between elderly and young groups. Three common differentially expressed genes were found to dynamically change with the proliferation status and to be closely related to tumorigenesis. We also found elderly group had less status-related differential genes from actively proliferating status to intermediate status and more status- related differential genes from intermediate status than the young group. Finally, functional enrichment analyses allowed evaluation of the detailed roles of these differentially-expressed genes in tumor progression.


Omics A Journal of Integrative Biology | 2012

Identifying Grade/Stage-Related Active Modules in Human Co-regulatory Networks: A Case Study for Breast Cancer

Chenchen Feng; Lina Chen; Wan Li; Hong Wang; Liangcai Zhang; Xu Jia; Zhengqiang Miao; Xiaoli Qu; Weiguo Li; Weiming He

The histological grade/stage of tumor is widely acknowledged as an important clinical prognostic factor for cancer progression. Recent experimental studies have explored the following two topics at the molecular level: (1) whether or not gene expression levels vary by different degrees among different tumor grades/stages, and (2) whether some well-defined modules could distinguish one grade/stage from another. In this article, using breast cancer as an example, we investigated this topic and identified grade/stage-related active modules under the framework of a weighted network integrated from a human protein interaction network and a transcriptional regulatory network. Our results enabled us to draw the conclusion that the gene expression profile could provide more clues about tumor grade, but reveals less evidence about tumor stage. In addition, we found that our modular biomarker method had additional advantages in identifying some tumor grade/stage-related genes with slightly altered expression. According to our case study, the framework we introduced could be used for other cancers to identify their modules during grading or staging.


fuzzy systems and knowledge discovery | 2014

The analysis of functional modules in primary cardiomyopathies.

Wan Li; Lina Chen; Xu Jia; Chenchen Feng; Yuehan He; Youwen Du; Min Hou; Xiaoqing Li

Cardiomyopathies are a group of genetically heterogeneous myocardial diseases. In primary cardiomyopathies, hypertrophic cardiomyopathy (HCM) and dilated cardiomyopathy (DCM) are usually autosomal dominant inherited. Network modules are often used to analyze biological insights of some diseases. In this article, we firstly collected pathogenic proteins of HCM and DCM from the PubMed database using the Chi-square test. Secondly, we searched protein interactions of these pathogenic proteins with experimental evidence using the STRING database. Then, we constructed a weighted protein interaction network calculated by two measure sets. Functional modules were mined from the network using Markov clustering. Modules obtained using weights from the second measure set were more related with these diseases after comparison and functional enrichment analysis. It was found that gM11 and gM124 were related with both diseases, gM37 was a HCM-specific module, and six modules were DCM-specific. Finally, we used text-mining to verify the relationships between genes in these modules and diseases. Disease mechanisms of HCM and DCM could be explored by these functional modules and their genes.


Molecular BioSystems | 2013

Cancer-related marketing centrality motifs acting as pivot units in the human signaling network and mediating cross-talk between biological pathways

Wan Li; Lina Chen; Xia Li; Xu Jia; Chenchen Feng; Liangcai Zhang; Weiming He; Junjie Lv; Yuehan He; Weiguo Li; Xiaoli Qu; Yanyan Zhou; Yuchen Shi

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Lina Chen

Harbin Medical University

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Wan Li

Harbin Medical University

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Xu Jia

Harbin Medical University

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Weiming He

Harbin Institute of Technology

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Yuehan He

Harbin Medical University

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Weiguo Li

Harbin Medical University

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Xiaoli Qu

Harbin Medical University

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Yanyan Zhou

Harbin Medical University

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Junjie Lv

Harbin Medical University

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Liangcai Zhang

Harbin Medical University

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