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Biological networks Tutorial 12

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Tutorial 12. Biological networks. Biological networks. Protein-Protein interactions STRING Protein and genetic interactions BioGRID Network visualization Cytoscape Cool story of the day How to model natural selection. Protein Protein interactions (PPI). http://string-db.org/. - PowerPoint PPT Presentation

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Page 1: Biological networks

Biological networks

Tutorial 12

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• Protein-Protein interactions– STRING

• Protein and genetic interactions– BioGRID

• Network visualization– Cytoscape

• Cool story of the day

How to model natural selection

Biological networks

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Protein Protein interactions (PPI)

http://string-db.org/

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

Will change according to the prediction method you choose.

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein Protein interactions (PPI)

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Protein and genetic interactions

http://thebiogrid.org/

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Protein and genetic interactions

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Protein and genetic interactions

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Protein and genetic interactions

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Signaling pathways

Hearing and vision map

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Network visualization - Cytoscape

http://www.cytoscape.org/

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Network visualization - Cytoscape

The input is a tab delimited file:<Protein 1> <interaction type> <Protein 2>

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Network visualization - Cytoscape

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Network visualization - Cytoscape

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Network visualization - Cytoscape

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Network visualization - Cytoscape

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Network visualization - Cytoscape

Degree: the number of edges that a node has.

The node with the highest degree in the graph

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Network visualization - Cytoscape

Closeness: measure how close a node to all other nodes in the network.

The nodes with the highest closeness

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Network visualization - Cytoscape

The node with the highest betweenness

Betweenness: quantify the number of all shortest paths that pass through a node.

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Network visualization - Cytoscape

Know your network type:Directed – for regulatory networksUndirected – for protein-protein networks

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Network visualization - Cytoscape

(Analysis of another network)

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Network visualization - Cytoscape

Highest degree = bigHighest betweens = red

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Network visualization - Cytoscape

Cytoscape has ~200 plugins http://chianti.ucsd.edu/cyto_web/plugins/

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Cool Story of the day

How to model natural selection

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Natural Selection

• Consider a biological system whose phenotypes are defined by v quantitative traits (such as bird beak length and not DNA sequences).

• Most theories of natural selection maximize a specific fitness function F(v) resulting in an optimal phenotype – a point in morpho-space.

• But, in many cases organisms need to perform multiple tasks that contribute to fitness.

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The case two tasks

The case of a trade-off between two tasks may explain the widespread occurrence of linearrelations between traits.

The Pareto Front

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Pareto front geometry

For three tasks, the Pareto front is the full triangle whose vertices are the three archetypes. In this case, because a triangle defines a plane, even high dimensional data on many traits are expected to collapse onto two dimensions.

The closer a point is to one of the vertices of the triangle, the more important the corresponding task is to fitness inthe organism’s habitat.

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Evidence for triangular suites of variation in classic studies

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Bacteria face a trade-off in partitioning the total amount of proteins they can make at a given moment between the different types of proteins, that ishow much of each gene to express.

Trade-off: rapid growth (ribosomes) vs. survival (stress response proteins)

Beyond animal morphology

Corr. of the top 200 temporally varying genes

E.coli promoter activity

Promoter activity of 3 genes at different time points

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Thank you!Hope you enjoyed the course!!