| Literature DB >> 24772427 |
Anida Sarajlić1, Nataša Pržulj1.
Abstract
Cardiovascular diseases (CVDs) are the leading health problem worldwide. Investigating causes and mechanisms of CVDs calls for an integrative approach that would take into account its complex etiology. Biological networks generated from available data on biomolecular interactions are an excellent platform for understanding interconnectedness of all processes within a living cell, including processes that underlie diseases. Consequently, topology of biological networks has successfully been used for identifying genes, pathways, and modules that govern molecular actions underlying various complex diseases. Here, we review approaches that explore and use relationships between topological properties of biological networks and mechanisms underlying CVDs.Entities:
Mesh:
Year: 2014 PMID: 24772427 PMCID: PMC3977459 DOI: 10.1155/2014/527029
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Databases of human molecular interaction and disease ontology data.
| Database name | Type of data | URL |
|---|---|---|
| BioGRID | PPI and genetic interactions |
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| HPRD | PPI, disease associations, posttranslational modifications, tissue expression, subcellular localization, and enzyme/substrate relationships |
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| DIP | Experimentally determined PPI |
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| HomoMINT | PPI |
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| OPHID | PPI |
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| KEGG | Pathway maps, human diseases, drugs, orthology groups, genes, relations within genes, metabolites, biochemical reactions, and enzymes |
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| OMIM | Information on genes and genetic disorders |
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Figure 1Using network topology to infer elements involved in disease. Panel (a): green node is associated with disease based on its neighbouring disease nodes (shown in red). Panel (b): nodes bordered in blue are part of the same cluster based on similar topology around them. Green node is associated with disease based on the cluster's enrichment in disease nodes (shown in red). Panel (c): nodes bordered in blue are part of the same graph cluster or community, in the network. Green nodes are associated with disease based on the community's enrichment in disease nodes (shown in red). Panel (d): node shown in green is associated with the disease, as a common node on shortest paths between nodes related to disease (shown in red).
Methods that explored topology of biological networks in research of CVDs.
| Network | Type of data/interactions in the network | Topological analysis performed on the data | Aims of topological analysis | Reference |
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| Heart failure (HF) network | HF relevant genes, genes differentially expressed in HF and dilated cardiomyopathy (DCM), and PPI data | Connectivity of nodes | Relationship between gene connectivity and gene coexpression levels and their biological functions | [ |
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| Network of atherosclerosis | Literature associations and gene expression data | Network modules identified based on closeness centrality | GO enrichment of network modules | [ |
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| Network of ischemic dilated cardiomyopathy (ICM) | Genes differentially expressed in ICM, cardiac myocytes proteins, and PPI data | Number of edges between network clusters | Correlation between number of edges between network clusters and differential gene expression patterns | [ |
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| Cardiovascular disease “functional linkage network” (CFN) | CVD proteins and PPI data | Degree distribution, betweenness centrality, and modularity measure | Associating functional modules (highly connected subgraphs) with diseases | [ |
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| Congenital heart disease (CHD) network | Known CHD genes, genes differentially expressed in CHD, and PPI data | Subnetworks based on shortest paths and current flow (network was modelled as an electrical circuit) | Functional subnetwork analysis in search of key pathways of CHD | [ |
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| Networks for analysis of cardiac development, hypertrophy, and failure | Gene coexpression data | Network modules based on hierarchical clustering and shared network neighbours | Identifying common modules in networks of different types of myocardial tissue | [ |
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| Human PPI network | PPI data | Node degree, neighbourhood enrichment, betweenness centrality, clustering coefficient, and shortest path length | Inferring coronary artery disease genes based on topological information | [ |
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| Human PPI network | PPI data | Clustering nodes based on graphlet degree vector similarity | Inferring new CVD genes based on clusters' enrichment in CVD genes | [ |