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Featured researches published by Su-Jun Li.


Molecular & Cellular Proteomics | 2004

Accurate Qualitative and Quantitative Proteomic Analysis of Clinical Hepatocellular Carcinoma Using Laser Capture Microdissection Coupled with Isotope-coded Affinity Tag and Two-dimensional Liquid Chromatography Mass Spectrometry

Chen Li; Y Hong; Yexiong Tan; Houjiang Zhou; Jh Ai; Su-Jun Li; Lei Zhang; Qi-Chang Xia; Wu; Hy Wang; Rong Zeng

Laser capture microdissection (LCM) is a powerful tool that enables the isolation of specific cell types from tissue sections, overcoming the problem of tissue heterogeneity and contamination. This study combined the LCM with isotope-coded affinity tag (ICAT) technology and two-dimensional liquid chromatography to investigate the qualitative and quantitative proteomes of hepatocellular carcinoma (HCC). The effects of three different histochemical stains on tissue sections have been compared, and toluidine blue stain was proved as the most suitable stain for LCM followed by proteomic analysis. The solubilized proteins from microdissected HCC and non-HCC hepatocytes were qualitatively and quantitatively analyzed with two-dimensional liquid chromatography tandem mass spectrometry (2D-LC-MS/MS) alone or coupled with cleavable ICAT labeling technology. A total of 644 proteins were qualitative identified, and 261 proteins were unambiguously quantitated. These results show that the clinical proteomic method using LCM coupled with ICAT and 2D-LC-MS/MS can carry out not only large-scale but also accurate qualitative and quantitative analysis.


Nucleic Acids Research | 2009

Sys-BodyFluid: a systematical database for human body fluid proteome research

Su-Jun Li; Mao Peng; Hong Li; Boshu Liu; Chuan Wang; Jiarui Wu; Yixue Li; Rong Zeng

Recently, body fluids have widely become an important target for proteomic research and proteomic study has produced more and more body fluid related protein data. A database is needed to collect and analyze these proteome data. Thus, we developed this web-based body fluid proteome database Sys-BodyFluid. It contains eleven kinds of body fluid proteomes, including plasma/serum, urine, cerebrospinal fluid, saliva, bronchoalveolar lavage fluid, synovial fluid, nipple aspirate fluid, tear fluid, seminal fluid, human milk and amniotic fluid. Over 10 000 proteins are presented in the Sys-BodyFluid. Sys-BodyFluid provides the detailed protein annotations, including protein description, Gene Ontology, domain information, protein sequence and involved pathways. These proteome data can be retrieved by using protein name, protein accession number and sequence similarity. In addition, users can query between these different body fluids to get the different proteins identification information. Sys-BodyFluid database can facilitate the body fluid proteomics and disease proteomics research as a reference database. It is available at http://www.biosino.org/bodyfluid/.


Molecular & Cellular Proteomics | 2004

A High-throughput Approach for Subcellular Proteome Identification of Rat Liver Proteins Using Subcellular Fractionation Coupled with Two-dimensional Liquid Chromatography Tandem Mass Spectrometry and Bioinformatic Analysis

Xs Jiang; Houjiang Zhou; Lei Zhang; Quanhu Sheng; Su-Jun Li; Lingjun Li; P Hao; Yongming Li; Qi-Chang Xia; Wu; Rong Zeng

Four fractions from rat liver (a crude mitochondria (CM) and cytosol (C) fraction obtained with differential centrifugation, a purified mitochondrial (PM) fraction obtained with nycodenz density gradient centrifugation, and a total liver (TL) fraction) were analyzed with two-dimensional liquid chromatography tandem mass spectrometry analysis. A total of 564 rat proteins were identified and were bioinformatically annotated according to their physicochemical characteristics and functions. While most extreme alkaline ribosomal proteins were identified in the TL fraction, the C fraction mainly included neutral enzymes and the PM fraction enriched alkaline proteins and proteins with electron transfer activity or oxygen binding activity. Such characteristics were more apparent in proteins identified only in the TL, C, or PM fraction. The Swiss-Prot annotation and the bioinformatic prediction results proved that the C and PM fractions had enriched cytoplasmic or mitochondrial proteins, respectively. Combination usage of subcellular fractionation with two-dimensional liquid chromatography tandem mass spectrometry was proved to be a high-throughput, sensitive, and effective analytical approach for subcellular proteomics research. Using such a strategy, we have constructed the largest proteome database to date for rat liver (564 rat proteins) and its cytosol (222 rat proteins) and mitochondrial fractions (227 rat proteins). Moreover, the 352 proteins with Swiss-Prot subcellular location annotation in the 564 identified proteins were used as an actual subcellular proteome dataset to evaluate the widely used bioinformatics tools such as PSORT, TargetP, TMHMM, and GRAVY.


Molecular & Cellular Proteomics | 2005

Quantitative Analysis of Severe Acute Respiratory Syndrome (SARS)-associated Coronavirus-infected Cells Using Proteomic Approaches Implications for Cellular Responses to Virus Infection

Xs Jiang; Ly Tang; Jianwu Dai; Houjiang Zhou; Su-Jun Li; Qi-Chang Xia; Wu; Rong Zeng

We present the first proteomic analysis on the cellular response to severe acute respiratory syndrome-associated coronavirus (SARS-CoV) infection. The differential proteomes of Vero E6 cells with and without infection of the SARS-CoV were resolved and quantitated with two-dimensional differential gel electrophoresis followed by ESI-MS/MS identification. Moreover isotope-coded affinity tag technology coupled with two-dimensional LC-MS/MS were also applied to the differential proteins of infected cells. By combining these two complementary strategies, 355 unique proteins were identified and quantitated with 186 of them differentially expressed (at least 1.5-fold quantitative alteration) between infected and uninfected Vero E6 cells. The implication for cellular responses to virus infection was analyzed in depth according to the proteomic results. Thus, the present work provides large scale protein-related information to investigate the mechanism of SARS-CoV infection and pathogenesis.


PLOS ONE | 2008

Localized-Statistical Quantification of Human Serum Proteome Associated with Type 2 Diabetes

Rongxia Li; Haibing Chen; Kang Tu; Shi-Lin Zhao; Hu Zhou; Su-Jun Li; Jie Dai; Qingrun Li; Song Nie; Yixue Li; Weiping Jia; Rong Zeng; Jiarui Wu

Background Recent advances in proteomics have shed light to discover serum proteins or peptides as biomarkers for tracking the progression of diabetes as well as understanding molecular mechanisms of the disease. Results In this work, human serum of non-diabetic and diabetic cohorts was analyzed by proteomic approach. To analyze total 1377 high-confident serum-proteins, we developed a computing strategy called localized statistics of protein abundance distribution (LSPAD) to calculate a significant bias of a particular protein-abundance between these two cohorts. As a result, 68 proteins were found significantly over-represented in the diabetic serum (p<0.01). In addition, a pathway-associated analysis was developed to obtain the overall pathway bias associated with type 2 diabetes, from which the significant over-representation of complement system associated with type 2 diabetes was uncovered. Moreover, an up-stream activator of complement pathway, ficolin-3, was observed over-represented in the serum of type 2 diabetic patients, which was further validated with statistic significance (p = 0.012) with more clinical samples. Conclusions The developed LSPAD approach is well fit for analyzing proteomic data derived from biological complex systems such as plasma proteome. With LSPAD, we disclosed the comprehensive distribution of the proteins associated with diabetes in different abundance levels and the involvement of ficolin-related complement activation in diabetes.


Molecular & Cellular Proteomics | 2009

Concurrent quantification of proteome and phosphoproteome to reveal system-wide association of protein phosphorylation and gene expression.

Yujian Wu; Jianwu Dai; Xing-Lin Yang; Su-Jun Li; Shi-Lin Zhao; Quanhu Sheng; Jia-shu Tang; Guangyong Zheng; Yongming Li; Wu; Rong Zeng

Reversible phosphorylation of proteins is an important process modulating cellular activities from upstream, which mainly involves sequential phosphorylation of signaling molecules, to downstream where phosphorylation of transcription factors regulates gene expression. In this study, we combined quantitative labeling with multidimensional liquid chromatography-mass spectrometry to monitor the proteome and phosphoproteome changes in the initial period of adipocyte differentiation. The phosphorylation level of a specific protein may be regulated by a kinase or phosphatase without involvement of gene expression or as a phenomenon that accompanies the alteration of its gene expression. Concurrent quantification of phosphopeptides and non-phosphorylated peptides makes it possible to differentiate cellular phosphorylation changes at these two levels. Furthermore, on the system level, certain proteins were predicted as the targeted gene products regulated by identified transcription factors. Among them, several proteins showed significant expression changes along with the phosphorylation alteration of their transcription factors. This is to date the first work to concurrently quantify proteome and phosphoproteome changes during the initial period of adipocyte differentiation, providing an approach to reveal the system-wide association of protein phosphorylation and gene expression.


Cell Research | 2009

Temporal and spatial profiling of nuclei-associated proteins upon TNF-α/NF-κB signaling

Dan-jun Ma; Su-Jun Li; Lian-Shui Wang; Jie Dai; Shi-Lin Zhao; Rong Zeng

The tumor necrosis factor (TNF)-α/NF-κB-signaling pathway plays a pivotal role in various processes including apoptosis, cellular differentiation, host defense, inflammation, autoimmunity and organogenesis. The complexity of the TNF-α/NF-κB signaling is in part due to the dynamic protein behaviors of key players in this pathway. In this present work, a dynamic and global view of the signaling components in the nucleus at the early stages of TNF-α/NF-κB signaling was obtained in HEK293 cells, by a combination of subcellular fractionation and stable isotope labeling by amino acids in cell culture (SILAC). The dynamic profile patterns of 547 TNF-α-induced nuclei-associated proteins were quantified in our studies. The functional characters of all the profiles were further analyzed using that Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway annotation. Additionally, many previously unknown effectors of TNF-α/NF-κB signaling were identified, quantified and clustered into differential activation profiles. Interestingly, levels of Fanconi anemia group D2 protein (FANCD2), one of the Fanconi anemia family proteins, was found to be increased in the nucleus by SILAC quantitation upon TNF-α stimulation, which was further verified by western blotting and immunofluorescence analysis. This indicates that FANCD2 might be involved in TNF-α/NF-κB signaling through its accumulation in the nucleus. In summary, the combination of subcellular proteomics with quantitative analysis not only allowed for a dissection of the nuclear TNF-α/NF-κB-signaling pathway, but also provided a systematic strategy for monitoring temporal and spatial changes in cell signaling.


Methods of Molecular Biology | 2008

Analysis of microdissected cells by two-dimensional LC-MS approaches.

Chen Li; Yi-Hong; Yexiong Tan; Jianhua Ai; Hu Zhou; Su-Jun Li; Lei Zhang; Qi-Chang Xia; Jiarui Wu; Wang H; Rong Zeng

Laser capture microdissection (LCM) is a powerful tool that enables the isolation of specific cell types from tissue sections, overcoming the problem of tissue heterogeneity and contamination. We combined the LCM with isotope-coded affinity tag (ICAT) technology and two-dimensional liquid chromatography to investigate the qualitative and quantitative proteomes of hepatocellular carcinoma (HCC). The effects of three different histochemical stains on tissue sections have been compared, and toluidine blue stain was proved as the most suitable stain for LCM followed by proteomic analysis. The solubilized proteins from microdissected HCC and non-HCC hepatocytes were qualitatively and quantitatively analyzed with two-dimensional liquid chromatography tandem mass spectrometry (2D-LC-MS/MS) alone or coupled with cleavable isotope-coded affinity tag (cICAT) labeling technology. A total of 644 proteins were qualitatively identified and 261 proteins were unambiguously quantified. These results showed that the clinical proteomic method using LCM coupled with ICAT and 2D-LC-MS/MS can carry out not only large-scale but also accurate qualitative and quantitative analysis.


Proteomics | 2005

Proteomic analysis of hepatitis B virus‐associated hepatocellular carcinoma: Identification of potential tumor markers

Chen Li; Yexiong Tan; Hu Zhou; Shi-Jian Ding; Su-Jun Li; Dan-jun Ma; Xiao-bo Man; Yi Hong; Lei Zhang; Long Li; Qi-Chang Xia; Jiarui Wu; Wang H; Rong Zeng


Journal of Proteome Research | 2005

Human plasma proteome analysis by multidimensional chromatography prefractionation and linear ion trap mass spectrometry identification.

Wenhai Jin; Jie Dai; Su-Jun Li; Qi-Chang Xia; Hanfa Zou; Rong Zeng

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Rong Zeng

Chinese Academy of Sciences

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Qi-Chang Xia

Chinese Academy of Sciences

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Hu Zhou

Chinese Academy of Sciences

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Gao Mg

Chinese Academy of Sciences

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Jiarui Wu

Chinese Academy of Sciences

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Jie Dai

Chinese Academy of Sciences

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Jin L

Chinese Academy of Sciences

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Lei Zhang

Chinese Academy of Sciences

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Li-Wen Xu

Hangzhou Normal University

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