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Proteomic Analysis of Liver Proteins in a Rat Model of Chronic Restraint Stress-Induced Depression.


ABSTRACT: Depression is a global mental disorder disease and greatly threatened human health and stress is considered to be one of the important factors that lead to depression. In this study, we used newly developed iTRAQ labeling and high performance liquid chromatography (HPLC) and mass spectrum united analysis technology obtained the 2176 accurate proteins. Successively, we used the GO analysis and IPA software to analyze the 98 differentially expressed proteins of liver in depression rats due to chronic restraint stress, showing a map of proteomics analysis of liver proteins from the aspects of related functions, disease and function analysis, canonical pathway analysis, and associated network. This study provide important information for comprehensively understanding the mechanisms of dysfunction or injury in the liver in depression.

SUBMITTER: Li C 

PROVIDER: S-EPMC5331273 | biostudies-literature | 2017

REPOSITORIES: biostudies-literature

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Proteomic Analysis of Liver Proteins in a Rat Model of Chronic Restraint Stress-Induced Depression.

Li Cong C   Guo Zhengguang Z   Zhao Ronghua R   Sun Wei W   Xie Ming M  

BioMed research international 20170215


Depression is a global mental disorder disease and greatly threatened human health and stress is considered to be one of the important factors that lead to depression. In this study, we used newly developed iTRAQ labeling and high performance liquid chromatography (HPLC) and mass spectrum united analysis technology obtained the 2176 accurate proteins. Successively, we used the GO analysis and IPA software to analyze the 98 differentially expressed proteins of liver in depression rats due to chro  ...[more]

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