Literature DB >> 27153759

Quantitative proteomics and integrative network analysis identified novel genes and pathways related to osteoporosis.

Yong Zeng1, Lan Zhang2, Wei Zhu3, Chao Xu2, Hao He2, Yu Zhou2, Yao-Zhong Liu2, Qing Tian2, Ji-Gang Zhang2, Fei-Yan Deng4, Hong-Gang Hu5, Li-Shu Zhang5, Hong-Wen Deng6.   

Abstract

UNLABELLED: Osteoporosis is mainly characterized by low bone mineral density (BMD), and can be attributed to excessive bone resorption by osteoclasts. Migration of circulating monocytes from blood to bone is important for subsequent osteoclast differentiation and bone resorption. Identification of those genes and pathways related to osteoclastogenesis and BMD will contribute to a better understanding of the pathophysiological mechanisms of osteoporosis. In this study, we applied the LC-nano-ESI-MS(E) (Liquid Chromatograph-nano-Electrospray Ionization-Mass Spectrometry) for quantitative proteomic profiling in 33 female Caucasians with discordant BMD levels, with 16 high vs. 17 low BMD subjects. Protein quantitation was accomplished by label-free measurement of total ion currents collected from MS(E) data. Comparison of protein expression in high vs. low BMD subjects showed that ITGA2B (p=0.0063) and GSN (p=0.019) were up-regulated in the high BMD group. Additionally, our protein-RNA integrative analysis showed that RHOA (p=0.00062) differentially expressed between high vs. low BMD groups. Network analysis based on multiple tools revealed two pathways: "regulation of actin cytoskeleton" (p=1.13E-5, FDR=3.34E-4) and "leukocyte transendothelial migration" (p=2.76E-4, FDR=4.71E-3) that are functionally relevant to osteoporosis. Consistently, ITGA2B, GSN and RHOA played crucial roles in these two pathways respectively. All together, our study strongly supported the contribution of the genes ITGA2B, GSN and RHOA and the two pathways to osteoporosis risk. BIOLOGICAL SIGNIFICANCE: Mass spectrometry based quantitative proteomics study integrated with network analysis identified novel genes and pathways related to osteoporosis. The results were further verified in multiple level studies including protein-RNA integrative analysis and genome wide association studies.
Copyright © 2016 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Network analysis; Osteoporosis; Pathways; Peripheral blood monocytes; Quantitative proteomics

Mesh:

Substances:

Year:  2016        PMID: 27153759      PMCID: PMC5362378          DOI: 10.1016/j.jprot.2016.04.044

Source DB:  PubMed          Journal:  J Proteomics        ISSN: 1874-3919            Impact factor:   4.044


  53 in total

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