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A Chromosome-centric Human Proteome Project (C-HPP) to Characterize the Sets of Proteins Encoded in Chromosome 17

Authors
 Suli Liu  ;  Hogune Im  ;  Amos Bairoch  ;  Massimo Cristofanilli  ;  Rui Chen  ;  Eric W. Deutsch  ;  Stephen Dalton  ;  David Fenyo  ;  Susan Fanayan  ;  Chris Gates  ;  Pascale Gaudet  ;  Marina Hincapie  ;  Samir Hanash  ;  Hoguen Kim  ;  Seul-Ki Jeong  ;  Emma Lundberg  ;  George Mias  ;  Rajasree Menon  ;  Zhaomei Mu  ;  Edouard Nice  ;  Young-Ki Paik  ;  Mathias Uhlen  ;  Lance Wells  ;  Shiaw-Lin Wu  ;  Fangfei Yan  ;  Fan Zhang  ;  Yue Zhang  ;  Michael Snyder  ;  Gilbert S. Omenn  ;  Ronald C. Beavis  ;  William S. Hancock 
Citation
 JOURNAL OF PROTEOME RESEARCH, Vol.12(1) : 45-57, 2013 
Journal Title
JOURNAL OF PROTEOME RESEARCH
ISSN
 1535-3893 
Issue Date
2013
MeSH
Amino Acid Sequence ; Chromosomes, Human, Pair 17*/genetics ; Chromosomes, Human, Pair 17*/metabolism ; Databases, Protein ; Gene Expression ; Genome, Human* ; Human Genome Project ; Humans ; Proteins*/classification ; Proteins*/genetics ; Proteins*/metabolism ; Proteomics*
Keywords
chromosome 17 parts list ; Chromosome-centric Human Proteome Project ; ERBB2 ; Oncogene
Abstract
We report progress assembling the parts list for chromosome 17 and illustrate the various processes that we have developed to integrate available data from diverse genomic and proteomic knowledge bases. As primary resources, we have used GPMDB, neXtProt, PeptideAtlas, Human Protein Atlas (HPA), and GeneCards. All sites share the common resource of Ensembl for the genome modeling information. We have defined the chromosome 17 parts list with the following information: 1169 protein-coding genes, the numbers of proteins confidently identified by various experimental approaches as documented in GPMDB, neXtProt, PeptideAtlas, and HPA, examples of typical data sets obtained by RNASeq and proteomic studies of epithelial derived tumor cell lines (disease proteome) and a normal proteome (peripheral mononuclear cells), reported evidence of post-translational modifications, and examples of alternative splice variants (ASVs). We have constructed a list of the 59 “missing” proteins as well as 201 proteins that have inconclusive mass spectrometric (MS) identifications. In this report we have defined a process to establish a baseline for the incorporation of new evidence on protein identification and characterization as well as related information from transcriptome analyses. This initial list of “missing” proteins that will guide the selection of appropriate samples for discovery studies as well as antibody reagents. Also we have illustrated the significant diversity of protein variants (including post-translational modifications, PTMs) using regions on chromosome 17 that contain important oncogenes. We emphasize the need for mandated deposition of proteomics data in public databases, the further development of improved PTM, ASV, and single nucleotide variant (SNV) databases, and the construction of Web sites that can integrate and regularly update such information. In addition, we describe the distribution of both clustered and scattered sets of protein families on the chromosome. Since chromosome 17 is rich in cancer-associated genes, we have focused the clustering of cancer-associated genes in such genomic regions and have used the ERBB2 amplicon as an example of the value of a proteogenomic approach in which one integrates transcriptomic with proteomic information and captures evidence of coexpression through coordinated regulation.
Full Text
http://pubs.acs.org/doi/abs/10.1021/pr300985j
DOI
10.1021/pr300985j
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Pathology (병리학교실) > 1. Journal Papers
Yonsei Authors
Kim, Hogeun(김호근)
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/86725
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