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341: Introduction to Bioinformatics Dr. Nataša Pržulj Department of Computing Imperial College London Winter 2011.

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Presentation on theme: "341: Introduction to Bioinformatics Dr. Nataša Pržulj Department of Computing Imperial College London Winter 2011."— Presentation transcript:

1 341: Introduction to Bioinformatics Dr. Nataša Pržulj Department of Computing Imperial College London natasha@imperial.ac.uk Winter 2011

2 2 2 Topics Introduction to biology (cell, DNA, RNA, genes, proteins) Sequencing and genomics (sequencing technology, sequence alignment algorithms) Functional genomics and microarray analysis (array technology, statistics, clustering and classification) Introduction to biological networks Introduction to graph theory Network properties  Global: network/node centralities  Local: network motifs and graphlets Network models Network/node clustering Network comparison/alignment Software tools for network analysis Interplay between topology and biology 2

3 3 3 Topics Introduction to biology (cell, DNA, RNA, genes, proteins) Sequencing and genomics (sequencing technology, sequence alignment algorithms) Functional genomics and microarray analysis (array technology, statistics, clustering and classification) Introduction to biological networks Introduction to graph theory Network properties  Global: network/node centralities  Local: network motifs and graphlets Network models Network/node clustering Network comparison/alignment Software tools for network analysis Interplay between topology and biology 3

4 Network properties: summary of last class Network Comparisons: Large network comparison is computationally hard due to NP- completeness of the underlying subgraph isomorphism problem: Given 2 graphs G and H as input, determine whether G contains a subgraph that is isomorphic to H.subgraph isomorphic Thus, network comparisons rely on easily computable heuristics (approximate solutions), called “network properties” Network properties can roughly & historically be divided in two categories: 1.Global network properties: give an overall view of the network, but might not be detailed enough to capture complex topological characteristics of large networks. 2.Local network properties: more detailed network descriptors which usually encompass larger number of constraints, thus reducing degrees of freedom in which the networks being compared can vary. 4

5 Network properties: summary of last class 1. Global Network Properties Readings: Chapter 3 of “Analysis of biological networks” by Junker and Schreiber. Global Network Properties: 1)Degree distribution 2)Average clustering coefficient 3)Clustering spectrum 4)Average Diameter 5)Spectrum of shortest path lengths 6)Centralities 5

6 6 2. Local Network Properties Readings: Chapter 5 of “Analysis of Biological Networks” by Junker and Schreiber. 1)Network motifs 2)Graphlets Two network comparison measures based on graphlets: 2.1) Relative Graphlet Frequency Distance between two networks 2.2) Graphlet Degree Distribution Agreement between two networks Network properties: summary of last class

7 7 1) Network motifs (Uri Alon’s group, ’02-’04) http://www.weizmann.ac.il/mcb/UriAlon/ Also, see Pajek, MAVisto, and FANMOD

8 N. Przulj, D. G. Corneil, and I. Jurisica, “Modeling Interactome: Scale Free or Geometric?,” Bioinformatics, vol. 20, num. 18, pg. 3508-3515, 2004. 2) Graphlets 2.1) Reltive graphlet frequency distance between two networks

9 2) Graphlets 2.1) Graphlet degree distribution agreement between two networks N. Przulj, “Biological Network Comparison Using Graphlet Degree Distribution,” ECCB, Bioinformatics, vol. 23, pg. e177-e183, 2007.

10 T. Milenkovic and N. Przulj, “Uncovering Biological Network Function via Graphlet Degree Signatures”, Cancer Informatics, vol. 4, pg. 257-273, 2008. Graphlet Degree (GD) vectors, or “node signatures” 2) Graphlets 2.1) Graphlet degree distribution agreement between two networks

11 T. Milenkovic and N. Przulj, “Uncovering Biological Network Function via Graphlet Degree Signatures”, Cancer Informatics, vol. 4, pg. 257-273, 2008. Signature Similarity Measure between nodes u and v 2) Graphlets 2.1) Graphlet degree distribution agreement between two networks

12 Software that implements many of these network properties and compares networks with respect to them: GraphCrunch http://bio-nets.doc.ic.ac.uk/graphcrunch/

13 Software that implements many of these network properties and compares networks with respect to them: GraphCrunch http://bio-nets.doc.ic.ac.uk/graphcrunch2/

14 Software that implements many of these network properties and compares networks with respect to them: GraphCrunch http://bio-nets.doc.ic.ac.uk/graphcrunch2/

15 Another Software: Cytoscape http://www.cytoscape.org/

16 T. Milenković and N. Pržulj, “Uncovering Biological Network Function via Graphlet Degree Signatures,” Cancer Informatics, 2008:6 257-273, 2008 (Highly Visible). Examples of signatures and signature similarities:

17 40% SMD1 PMA1 YBR095C T. Milenković and N. Pržulj, “Uncovering Biological Network Function via Graphlet Degree Signatures,” Cancer Informatics, 2008:6 257-273, 2008 (Highly Visible). Examples of signatures and signature similarities:

18 T. Milenković and N. Pržulj, “Uncovering Biological Network Function via Graphlet Degree Signatures,” Cancer Informatics, 2008:6 257-273, 2008 (Highly Visible). Examples of signatures and signature similarities:

19 90%* SMD1 SMB1 RPO26 T. Milenković and N. Pržulj, “Uncovering Biological Network Function via Graphlet Degree Signatures,” Cancer Informatics, 2008:6 257-273, 2008 (Highly Visible). *Statistically significant threshold at ~85% Examples of signatures and signature similarities:

20 Later we will see how to use this and other techniques to link network structure with biological function

21 N. Przulj, “Biological Network Comparison Using Graphlet Degree Distribution,” Bioinformatics, vol. 23, pg. e177-e183, 2007. Generalize Degree Distribution of a network The degree distribution measures: the number of nodes “touching” k edges for each value of k

22 N. Przulj, “Biological Network Comparison Using Graphlet Degree Distribution,” Bioinformatics, vol. 23, pg. e177-e183, 2007.

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24 / sqrt(2) (  to make it between 0 and 1) This is called Graphlet Degree Distribution (GDD) Agreement between networks G and H.

25 Software that implements many of these network properties and compares networks with respect to them: GraphCrunch http://bio-nets.doc.ic.ac.uk/graphcrunch/

26 Software that implements many of these network properties and compares networks with respect to them: GraphCrunch http://bio-nets.doc.ic.ac.uk/graphcrunch2/

27 27 Topics Introduction to biology (cell, DNA, RNA, genes, proteins) Sequencing and genomics (sequencing technology, sequence alignment algorithms) Functional genomics and microarray analysis (array technology, statistics, clustering and classification) Introduction to biological networks Introduction to graph theory Network properties  Network/node centralities  Network motifs Network models Network/node clustering Network comparison/alignment Software tools for network analysis Interplay between topology and biology 27

28 What is a network (graph) model?

29 Does the model network fit the data? Use network properties: Local Global Why? “Hardness” of graph theoretic problems  E.g. NP-completeness of subgraph isomorphism Cannot exactly compare/align networks Use heuristics (approximate solutions) Exact comparison inappropriate in biology Due to biological variation Noise  revise models as data sets evolve

30 Why model networks? Understand laws  reproduction/predictions Network models have already been used in biological applications:  Network motifs (Shen-Orr et al., Nature Genetics 2002, Milo et al., Science 2002)  De-noising of PPI network data (Kuchaiev et al., PLoS Comp. Biology, 2009)  Guiding biological experiments (Lappe and Holm, Nature Biotechnology, 2004)  Development of computationally easy algorithms for PPI nets that are computationally intensive on graphs in general (Przulj et al., Bioinformatics, 2006)

31 Network models We will cover the following network models: I.Erdos–Renyi random graphs II.Generalized random graphs (with the same degree distribution as the data networks) III.Small-world networks IV.Scale-free networks V.Hierarchical model VI.Geometric random graphs VII.Stickiness index-based network model

32 Erdos–Renyi random graphs (ER) Model a data network G(V,E) with |V|=n and |E|=m An ER graph that models G is constructed as follows:  It has n nodes  Edges are added between pairs of nodes uniformly at random with the same probability p  Two (equivalent) methods for constructing ER graphs: G n,p : pick p so that the resulting model network has m edges G n,m : pick randomly m pairs of nodes and add edges between them with probability 1

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34 Erdos–Renyi random graphs (ER) Number of edges, |E|=m, in G n,p is: Average degree is:

35 Erdos–Renyi random graphs (ER) Many properties of ER can be proven theoretically (See: Bollobas, "Random Graphs," 2002) Example: When m=n/2,suddenly the giant component emerges, i.e.: One connected component of the network has O(n) nodes The next largest connected component has O(log(n)) nodes

36 Erdos–Renyi random graphs (ER) The degree distribution is binomial: For large n, this can be approximated with Poisson distribution: where z is the average degree However, currently available biological networks have power-law degree distribution

37 Erdos–Renyi random graphs (ER) Clustering coefficient, C, of ER is low (for low p) C=p, since probability p of connecting any two nodes in an ER graph is the same, regardless of whether the nodes are neighbors However, biological networks have high clustering coefficients

38 Erdos–Renyi random graphs (ER) Average diameter of ER graphs is small  It is equal to Biological networks also have small average diameters Summary

39 Generalized random graphs (ER-DD) Preserve the degree distribution of data (“ER-DD”) Constructed as follows:  An ER-DD network has n nodes (so does the data)  Edges are added between pairs of nodes using the “stubs method”

40 Generalized random graphs (ER-DD) The “stubs method” for constructing ER-DD graphs:  The number of “stubs” (to be filled by edges) is assigned to each node in the model network according to the degree distribution of the real network to be modeled  Edges are created between pairs of nodes with “available” stubs picked at random  After an edge is created, the number of stubs left available at the corresponding “end nodes” of the edges is decreased by one  Multiple edges between the same pair of nodes are not allowed

41 Generalized random graphs (ER-DD) Summary 2 global network properties are matched by ER-DD How about local network properties ( graphlet frequencies )?  Low-density graphlets are over-represented in ER and ER-DD  However, data have lots of dense graphlets, since they have high clustering coefficients

42 Small-world networks (SW) Watts and Strogatz, 1998 Created from regular ring lattices by random rewiring of a small percentage of their edges E.g.

43 Small-world networks (SW) SW networks have:  High clustering coefficients – introduced by “ring regularity”  Large average diameters of regular lattices – fixed by randomly re-wiring a small percentage of edges Summary

44 Scale-free networks (SF) Power-law degree distributions: P(k) = k −γ  γ > 0; 2 < γ < 3

45 Scale-free networks (SF) Power-law degree distributions: P(k) = k −γ  γ > 0; 2 < γ < 3

46 Scale-free networks (SF) Different models exist, e.g.:  Preferential Attachment Model (SF-BA) (Barabasi-Albert, 1999)  Gene Duplication and Mutation Model (SF-GD) (Vazquez et al., 2003)

47 Scale-free networks (SF) Preferential Attachment Model (SF-BA)  “Growth” model: nodes are added to an existing network  New nodes preferentially attach to existing nodes with probability proportional to the degrees of the existing nodes; e.g.:  This is repeated until the size of SF network matches the size of the data  “Rich getting richer”  The starting network strongly influences the properties of the resulting network ( F. Hormozdiari, et al., PLoS Computational Biology, 3(7):e118, July 2007. )PLoS Computational Biology  SF-BA: particularly effective at describing Internet

48 Scale-free networks (SF) Gene Duplication and Mutation Model (SF-GD)  Biologically motivated  Attempts to mimic gene duplication and mutation processes

49 Scale-free networks (SF) Gene Duplication and Mutation Model (SF-GD)  At each time step, a node is added to the network as follows:

50 Scale-free networks (SF) Summary

51 Hierarchical model Preserves network “modularity” via a fractal- like generation of the network

52 Hierarchical model These graphs do not match any biological data and are highly unlikely to be found in data sets

53 Geometric random graphs “Uniform” geometric random graphs (GEO) N. Przulj lab, 2004-2010 Geometric gene duplication and mutation model (GEO-GD) N. Przulj et al., PSB 2010

54 Geometric random graphs “Uniform” geometric random graphs (GEO)  Take any metric space and, using a uniform random distribution, place nodes within the space  If any nodes are within radius r (calculated via any chosen distance norm for the space), they will be connected  Choose r so that the size of the GEO network matches that of the data  There are many possible metric spaces (e.g., Euclidean space)  There are many possible distance norms (e.g. the Euclidean distance, the Chessboard distance, and the Manhattan/Taxi Driver distance)

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64 Geometric random graphs “Uniform” geometric random graphs (GEO) Summary

65 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

66 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

67 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

68 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

69 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

70 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  Gene duplications and mutations can be used to guide the growth process in geometric graph

71 Geometric random graphs Geometric gene duplication and mutation model (GEO-GD)  This variant also reproduces graphlet properties of the empirical dataset  Also, these networks have power-law degree distributions -GD

72 Stickiness index-based network model ( N. Przulj and D. Higham, Journal of the Royal Society Interface, vol 3, num 10, pp 711 - 716, 2006. ) Based on the stickiness index:  A number based on the a protein’s normalized degree in a PPI network  Used to summarize the abundance and popularity of binding domains of a protein Assumption: a high degree protein has many binding domains  However, remember “date” vs. “party” hubs A pair of proteins is more likely to interact under this model if both proteins have high stickiness indices The probability of an edge between two nodes is the product of their stickiness indices

73 Stickiness index-based network model “Sticky networks” have the expected degree distribution of the data Also, they mimic well the clustering coefficients and the diameters of real-world networks Summary

74 Software that implements many of these network models and evaluates their fit to data networks with respect to a variety of network properties (but there are others): GraphCrunch: http://bio-nets.doc.ic.ac.uk/graphcrunch/http://bio-nets.doc.ic.ac.uk/graphcrunch/

75 Software that implements many of these network models and evaluates their fit to data networks with respect to a variety of network properties (but there are others): GraphCrunch: http://bio-nets.doc.ic.ac.uk/graphcrunch2/http://bio-nets.doc.ic.ac.uk/graphcrunch2/

76 76 Topics Introduction to biology (cell, DNA, RNA, genes, proteins) Sequencing and genomics (sequencing technology, sequence alignment algorithms) Functional genomics and microarray analysis (array technology, statistics, clustering and classification) Introduction to biological networks Introduction to graph theory Network properties  Global: network/node centralities  Local: network motifs and graphlets Network models Network/node clustering Network comparison/alignment Software tools for network analysis Interplay between topology and biology 76


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