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Discovery and scoring of protein interaction subnetworks discriminative of late stage human colon cancer.

Discovery and scoring of protein interaction subnetworks discriminative of late stage human colon cancer.
Discovery and scoring of protein interaction subnetworks discriminative of late stage human colon cancer.
We used a systems biology approach to identify and score protein interaction subnetworks whose activity patterns are discriminative of late stage human colorectal cancer (CRC) versus control in colonic tissue. We conducted two gel-based proteomics experiments to identify significantly changing proteins between normal and late stage tumor tissues obtained from an adequately sized cohort of human patients. A total of 67 proteins identified by these experiments was used to seed a search for protein-protein interaction subnetworks. A scoring scheme based on mutual information, calculated using gene expression data as a proxy for subnetwork activity, was developed to score the targets in the subnetworks. Based on this scoring, the subnetwork was pruned to identify the specific protein combinations that were significantly discriminative of late stage cancer versus control. These combinations could not be discovered using only proteomics data or by merely clustering the gene expression data. We then analyzed the resultant pruned subnetwork for biological relevance to human CRC. A number of the proteins in these smaller subnetworks have been associated with the progression (CSNK2A2, PLK1, and IGFBP3) or metastatic potential (PDGFRB) of CRC. Others have been recently identified as potential markers of CRC (IFITM1), and the role of others is largely unknown in this disease (CCT3, CCT5, CCT7, and GNA12). The functional interactions represented by these signatures provide new experimental hypotheses that merit follow-on validation for biological significance in this disease. Overall the method outlines a quantitative approach for integrating proteomics data, gene expression data, and the wealth of accumulated legacy experimental data to discover significant protein subnetworks specific to disease.
1535-9476
827-845
Nibbe, Rod K.
c1118664-51dc-4bc3-8251-6b3942b4453c
Markowitz, Sanford
359b392b-0c11-40b5-b529-eec96854c7b1
Myeroff, Lois
758c631f-4aff-427a-a5ed-893ceba2923d
Ewing, Rob
022c5b04-da20-4e55-8088-44d0dc9935ae
Chance, Mark R.
855fab90-5057-490a-887f-d7c1db99faf5
Nibbe, Rod K.
c1118664-51dc-4bc3-8251-6b3942b4453c
Markowitz, Sanford
359b392b-0c11-40b5-b529-eec96854c7b1
Myeroff, Lois
758c631f-4aff-427a-a5ed-893ceba2923d
Ewing, Rob
022c5b04-da20-4e55-8088-44d0dc9935ae
Chance, Mark R.
855fab90-5057-490a-887f-d7c1db99faf5

Nibbe, Rod K., Markowitz, Sanford, Myeroff, Lois, Ewing, Rob and Chance, Mark R. (2009) Discovery and scoring of protein interaction subnetworks discriminative of late stage human colon cancer. Molecular & Cellular Proteomics, 8 (4), 827-845. (doi:10.1074/mcp.M800428-MCP200). (PMID:16554294)

Record type: Article

Abstract

We used a systems biology approach to identify and score protein interaction subnetworks whose activity patterns are discriminative of late stage human colorectal cancer (CRC) versus control in colonic tissue. We conducted two gel-based proteomics experiments to identify significantly changing proteins between normal and late stage tumor tissues obtained from an adequately sized cohort of human patients. A total of 67 proteins identified by these experiments was used to seed a search for protein-protein interaction subnetworks. A scoring scheme based on mutual information, calculated using gene expression data as a proxy for subnetwork activity, was developed to score the targets in the subnetworks. Based on this scoring, the subnetwork was pruned to identify the specific protein combinations that were significantly discriminative of late stage cancer versus control. These combinations could not be discovered using only proteomics data or by merely clustering the gene expression data. We then analyzed the resultant pruned subnetwork for biological relevance to human CRC. A number of the proteins in these smaller subnetworks have been associated with the progression (CSNK2A2, PLK1, and IGFBP3) or metastatic potential (PDGFRB) of CRC. Others have been recently identified as potential markers of CRC (IFITM1), and the role of others is largely unknown in this disease (CCT3, CCT5, CCT7, and GNA12). The functional interactions represented by these signatures provide new experimental hypotheses that merit follow-on validation for biological significance in this disease. Overall the method outlines a quantitative approach for integrating proteomics data, gene expression data, and the wealth of accumulated legacy experimental data to discover significant protein subnetworks specific to disease.

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More information

Published date: April 2009
Organisations: Molecular and Cellular

Identifiers

Local EPrints ID: 355410
URI: http://eprints.soton.ac.uk/id/eprint/355410
ISSN: 1535-9476
PURE UUID: 4a38a01c-9035-4170-8fbe-8b32433a0056
ORCID for Rob Ewing: ORCID iD orcid.org/0000-0001-6510-4001

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Date deposited: 27 Aug 2013 13:41
Last modified: 15 Mar 2024 03:44

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Contributors

Author: Rod K. Nibbe
Author: Sanford Markowitz
Author: Lois Myeroff
Author: Rob Ewing ORCID iD
Author: Mark R. Chance

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