Abstract An increased surge of -omics data for the diseases such as cancer allows for deriving insights into the affiliated protein interactions. We used bipartite network principles to build protein functional associations of the differentially regulated genes in 18 cancer types. This approach allowed us to combine expression data to functional associations in many cancers simultaneously. Further, graph centrality measures suggested the importance of upregulated genes such as BIRC5, UBE2C, BUB1B, KIF20A and PTH1R in cancer. Pathway analysis of the high centrality network nodes suggested the importance of the upregulation of cell cycle and replication associated proteins in cancer. Some of the downregulated high centrality proteins include ...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background. The molecular profiles exhibited in different cancer types are very different; hence, di...
New insights to understand the dynamics of enormous modifications during cancer in comparison to hea...
BACKGROUND: The most common application of microarray technology in disease research is to identify ...
Breast cancer is a complex phenotype (or better yet, several complex phenotypes) characterized by th...
Malignant transformation is known to involve substantial rearrangement of the molecular genetic land...
<div><p>Gene co-expression network analysis is an effective method for predicting gene functions and...
<div><p>Malignant transformation is known to involve substantial rearrangement of the molecular gene...
Abstract Background Cellular processes and pathways, whose deregulation may contribute to the develo...
Protein-protein interactions (PPIs) have been widely studied to understand the biological processes ...
Cancer has been increasingly recognized as a systems biology disease since many investigators have d...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Many human diseases including cancer are the result of perturbations to transcriptional regulatory n...
Copyright © 2015 Ru Shen et al.This is an open access article distributed under the Creative Commons...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background. The molecular profiles exhibited in different cancer types are very different; hence, di...
New insights to understand the dynamics of enormous modifications during cancer in comparison to hea...
BACKGROUND: The most common application of microarray technology in disease research is to identify ...
Breast cancer is a complex phenotype (or better yet, several complex phenotypes) characterized by th...
Malignant transformation is known to involve substantial rearrangement of the molecular genetic land...
<div><p>Gene co-expression network analysis is an effective method for predicting gene functions and...
<div><p>Malignant transformation is known to involve substantial rearrangement of the molecular gene...
Abstract Background Cellular processes and pathways, whose deregulation may contribute to the develo...
Protein-protein interactions (PPIs) have been widely studied to understand the biological processes ...
Cancer has been increasingly recognized as a systems biology disease since many investigators have d...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Many human diseases including cancer are the result of perturbations to transcriptional regulatory n...
Copyright © 2015 Ru Shen et al.This is an open access article distributed under the Creative Commons...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background: Genomic, proteomic and high-throughput gene expression data, when integrated, can be use...
Background. The molecular profiles exhibited in different cancer types are very different; hence, di...