Top Banner
Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1
25

Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

Mar 28, 2015

Download

Documents

Makena Foote
Welcome message from author
This document is posted to help you gain knowledge. Please leave a comment to let me know what you think about it! Share it to your friends and learn new things together.
Transcript
Page 1: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

1

Bayesian network for gene regulatory network construction

Jin ChenCSE891-001

2012 Fall

Page 2: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

2

Layout

• Bayesian network learning• Scalability and Precision• Large-scale learning algorithms• Integrative approaches

Page 3: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

3

Bayesian network - concept

• A Bayesian network X is a probabilistic graphical model that represents a set of random variables and their conditional dependencies via a directed acyclic graph– nodes variable; edges conditional dependency– Disconnected nodes variables are conditionally independent

of each other– Each node is associated with a probability function that takes as

input a set of values for the node's parent and gives the probability of the variable represented by the node

adopted from Wikipedia

Page 4: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

4

Bayesian network - example

Bayesian network Structure: there are 2 events which could cause grass to be wet: either the sprinkler is on or it's raining. The rain has a direct effect on the use of the sprinkler. The conditional probability tables (CPT) are learned from historical data.

Then the joint probability is P(G,S,R) = P(G|S,R)P(S|R)P(R)

adopted from Wikipedia

Page 5: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

5

Bayesian network - example

adopted from Wikipedia

What is the probability that it is raining, given the grass is wet?

Page 6: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

6

Bayesian network – structure learning

• In the simplest case, a Bayesian network structure is specified by an expert and is then used to perform inference

• In the cases that the task of defining the network structure is too complex for humans, the network structure and the parameters of the local distributions must be learned from data

• Automatically learning the structure of a Bayesian network is a challenge pursued within machine learning – Methods of structural learning usually uses optimization based search, which

requires a scoring function and a search strategy – The time requirement of an exhaustive search returning back a structure that

maximizes the score is super-exponential in the number of variables

Page 7: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

7

Bayesian network learning for gene regulatory networks

• Bayesian networks are well suited to model relationships between genes because:

1. BN uses an acyclic direct graph to denote the relationship between the variables of interest (genes), thus can naturally model causal relationships between genes

2. BN has a solid theoretical foundation and offers a probabilistic approach to accommodate the variations typically observed in microarray experiments

3. BN can accommodate missing data and incorporate prior knowledge through prior distribution of the parameters

Page 8: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

8

Gene regulatory network construction

• Various GRN structure learning approaches– Pair-wise comparison– Differential equation estimation– Bayesian network learning– Common problem: only a relatively small number of genes were

included into the network

• Recent studies have been targeted at deriving the large-scale or even complete networks

Page 9: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

9

Page 10: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

10

Gene regulatory network construction

• Use a combination of scoring approaches and K2 algorithm to maximize the computational efficiency of network inference

– Step 1. Construct an undirected network based on mutual information (MI). This allows us to search the best DAG in a reduced space

– Step 2. Assign directions to the edges. The undirected network is split into sub-networks. Given the node ordering information, the sub-networks are trained with K2 algorithm sequentially. For each sub-network, the directions of edges can be identified based on the BDe score

Page 11: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

11

Constructing undirected networks

• Construct undirected networks based on mutual information (MI).

• MI between two variables X & Y, denoted by I(X; Y), is defined as the amount of information shared between the two variables. It is used to detect general dependencies in data

where

Page 12: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

12

Constructing undirected networks

• MI measures the dependency between two random variables

• The greater the MI values I(X; Y), the more closely the two variables are related

• If there is a direct edge in GRN between X and Y, there exists a strong dependency between X and Y

• This allows us to search the best DAG only in a reduced space

Page 13: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

13

Graph splitting

• Every node and all its neighbors form a sub-network

• For each sub-network, K2 algorithm is used to find the optimal edge orientations that maximize BDe score (Bayesian Dirichlet equivalence)

• This is reasonable because to maximize the BDe for the whole network, one only need to find all the sub-networks with the best BDe scores

Cooper,G.F. and Herskovits,E. (1992) A Bayesian method for the induction of probabilistic networks from data. Mach. Learn., 9, 309–347.

Page 14: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

14

Decide the order of sub-networks

• In each sub-network, K2 algorithm is run to obtain the best directed sub-network structure

• The K2 result of one sub-network may affect the topology of other sub-networks. Thus we need to decide the order of the sub-networks for K2 algorithm

• Ordering: for each node in the whole undirected network, the number of edges connecting to it is counted; nodes are then sorted in descending order

Page 15: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

15

K2 algorithm

http://web.cs.wpi.edu/~cs539/s05/Projects/k2_algorithm.pdf

Page 16: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

16

Scoring function

Page 17: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

17

http://web.cs.wpi.edu/~cs539/s05/Projects/k2_algorithm.pdf

Page 18: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

18

Performance

Correct Edges Miss Wrong orientation

Wrong connection

Page 19: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

19

Small network

Page 20: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

20

Large network

Page 21: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

21

Further improvement

• Ko et al further developed a new Bayesian network, in which Gaussian mixture models is used to describe continuous gene expression data and learn gene pathways

• Data discretization is often required since many approaches to learn network structures were developed for binary or discrete input data

• The discretization of continuous values can result in loss of information and different discretizations can substantially change the input values and the inferred network

Ko et al. Inference of Gene Pathways Using Gaussian Mixture Models. IEEE International Conference on Bioinformatics and Biomedicine. pp 362-367. 2007

Page 22: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

22

Page 23: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

23

Page 24: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

24

Integrative approaches

Tamada et al. Bioinformatics Vol. 19 Suppl. 2 2003, pages ii227–ii236

Page 25: Bayesian network for gene regulatory network construction Jin Chen CSE891-001 2012 Fall 1.

25

Dynamic approaches

• Reconstruct gene regulatory networks from expression data using dynamic Bayesian network (DBN)

Zou M, Conzen SD: A new dynamic Bayesian network (DBN) approach for identifying gene regulatory networks from time course microarray data. Bioinformatics 2005, 21(1):71-79.