| Literature DB >> 16401337 |
Giacomo Gamberoni1, Sergio Storari, Stefano Volinia.
Abstract
BACKGROUND: Through the use of DNA microarrays it is now possible to obtain quantitative measurements of the expression of thousands of genes from a biological sample. This technology yields a global view of gene expression that can be used in several ways. Functional insight into expression profiles is routinely obtained by using Gene Ontology terms associated to the cellular genes. In this paper, we deal with functional data mining from expression profiles, proposing a novel approach that studies the correlations between genes and their relations to Gene Ontology (GO). By using this "functional correlations comparison" we explore all possible pairs of genes identifying the affected biological processes by analyzing in a pair-wise manner gene expression patterns and linking correlated pairs with Gene Ontology terms.Entities:
Mesh:
Year: 2006 PMID: 16401337 PMCID: PMC1360676 DOI: 10.1186/1471-2105-7-6
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Correlations in HCC. In this table are listed some terms for which there is a significant number of relations in cancer but not in normal tissues. The table presents: in the first column, the name of the GO term; in the second (Pairs HCC) the number of correlations present in the cancer samples; in the third (Pairs LIV), the number of correlations found in the normal tissues. For each GO term, we report the mean and the standard deviation as computed by bootstrap analysis, as described in "Methods" Section.
| antigen presentation, endogenous antigen | 2 0(0) | 0 0(0) |
| blood coagulation | 12 1.05(1.05) | 2 1.3(1.3) |
| DNA replication | 18 1.45(1.8) | 2 1.45(1.4) |
| regulation of translational initiation | 2 0.05(0.22) | 1 0.25 (0.44) |
| DNA replication initiation | 2 0.05(0.22) | 0 0(0) |
| antigen processing, endogenous antigen via MHC class I | 2 0.05(0.22) | 0 0(0) |
| metabolism | 33 9.45(3.4) | 10 8.95(4.0) |
| cell cycle arrest | 4 0.45(0.51) | 0 1.15(2.0) |
| negative regulation of cell proliferation | 10 1.95(1.3) | 2 2.25(2.3) |
| chromatin remodeling | 2 0.1(0.31) | 0 0.15(0.37) |
| mitosis | 6 0.7(0.86) | 0 1(0.79) |
| heterophilic cell adhesion | 3 0.15(0.49) | 0 0.35(0.67) |
| cytokinesis | 7 1.15(1.1) | 0 1(1.1) |
| positive regulation of cell proliferation | 4 0.7(0.66) | 1 0.95(1.1) |
| cell adhesion | 17 7.8(1.9) | 3 11.4(5.6) |
| cholesterol metabolism | 2 0.2(0.41) | 0 0.25(0.72) |
| lipid transport | 3 0.35(0.67) | 0 0.45(0.69) |
| cell cycle | 10 2.2(2.2) | 5 2.3(2.2) |
| proteolysis and peptidolysis | 14 4.15(2.9) | 4 4.45(3.3) |
| protein complex assembly | 5 0.95(1.3) | 2 1.3(2.1) |
| antimicrobial humoral response (sensu Vertebrata) | 3 0.3(0.92) | 1 0.55(0.83) |
| cell motility | 8 1.8(2.3) | 4 1.65(1.6) |
| fatty acid metabolism | 3 0.65(0.99) | 1 0.55(0.94) |
Correlations in LIV. In this table are listed some terms for which there is a significant number of relations in normal tissues but not in cancer. The table presents: in the first column, the name of the GO term; in the second (Pairs HCC) the number of correlations present in the cancer samples; in the third (Pairs LIV), the number of correlations found in the normal tissues. For each GO term, we report the mean and the standard deviation as computed by bootstrap analysis, as described in "Methods" Section.
| intra-Golgi transport | 0 0.1(0.31) | 2 0.05(0.22) |
| ubiquitin-dependent protein catabolism | 1 0.8(1.0) | 4 0.35(0.49) |
| regulation of translation | 0 0.2(0.70) | 3 0.2(0.41) |
| glycolysis | 1 0.15(0.49) | 2 0.1(0.31) |
| electron transport | 15 7.4(4.3) | 35 9(4.6) |
| ER to Golgi transport | 0 0.3(0.57) | 4 0.35(0.67) |
| inactivation of MAPK | 0 0(0) | 2 0.15(0.37) |
| intracellular protein transport | 23 18.1(7.8) | 57 20.3(8.3) |
| small GTPase mediated signal transduction | 4 1.35(1.5) | 5 1.15(1.3) |
| mRNA processing | 2 0.75(1.1) | 4 0.8(1.1) |
| ubiquitin cycle | 1 2.05(1.5) | 10 2.3(2.7) |
| cell growth | 1 0.3(0.57) | 2 0.35(0.59) |
| N-linked glycosylation | 0 0.45(0.94) | 2 0.45(0.60) |
| regulation of cell cycle | 3 2.35(1.5) | 8 2.65(2.3) |
| DNA repair | 1 0.85(0.88) | 3 0.75(1.0) |
Figure 1Example of relation between two genes. This is the expression profile for the clones 700721 (X axis) and 951142 (Y axis). Blue circles are the HCC samples, green crosses are LIV samples. We can see that the HCC have a good correlation (r = 0.71), while the LIV samples are not related (r = 0.17).