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Biological network :


Biological network :

A biological network is a method of representing systems as complex sets of binary interactions or relations between various biological entities. In general, networks or graphs are used to capture relationships between entities or objects. A typical graphing representation consists of a set of nodes connected by edges.

Different types of data will also produce different general network characteristics in terms of connectivity, complexity and structure, where edges and nodes potentially convey multiple layers of information.

Some of the most common types of biological networks are:

  1. Protein-protein interaction networks
  2. Metabolic networks
  3. Genetic interaction networks
  4. Gene / transcriptional regulatory networks
  5. Cell signalling networks 
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