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Reconstructing Gene Networks

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Title: Reconstructing Gene Networks


1
Reconstructing Gene Networks
  • Presented by Andrew Darling
  • Based on article
  • Research Towards Reconstruction of Gene Networks
    from Expression Data by Supervised Learning
  • - Soinov, Krestyaninova, Brazma

2
Outline
  • Why study another microarray algorithm?
  • Background info
  • Methods
  • Results
  • Discussion
  • Conclusion

3
Why study another microarray algorithm?
  • Study of microarray data continues
  • Still unclear on what the data means
  • Still unclear on how the genome works
  • Confirm existing knowledge about gene networks
    using existing datasets
  • Proof of concept in a new algorithm using
    existing knowledge and datasets
  • This algorithm actually explains its reasoning

4
Background information
  • What is a gene network?
  • What is supervised learning?
  • What are decision trees / classifiers?
  • Why use classifiers?

5
What is a gene network?
  • A model of a genes affecting other genes
  • What other genes affect a given gene
  • How other genes affect a given gene
  • Positive, negative, complicated
  • Several model types graphs, nodes, edges
  • Boolean ( on off )
  • Bayesian network ( conditional probability )
  • Differential equations ( derivatives, integrals )

6
Gene network - example
7
What is supervised learning?
  • The paper was unclear on the subject
  • Perhaps a reference to the type of algorithm used
  • It may have involved human interaction with the
    software
  • Possibly, the software produced the classifiers
    in the form of a decision tree, then users
    interpreted the output into classification rules

8
What are decision trees / classifiers?
  • Acyclic directed graph - tree
  • Each graph explains what other genes affect a
    specific gene
  • Inner nodes are gene products of other genes
  • Edges are thresholds of concentration of the gene
    products of the other genes rules of the tree
  • Leaf nodes are effects on transcription of the
    specific gene
  • Each graph is a classifier for a specific gene

9
Classifiers model of gene networks
  • Expression of gene is function of transcription
  • Transcription of gene is in discrete states
  • Expressed more than average
  • Expressed less than average
  • Transcription state affected by amount of other
    gene products (expression of other genes)
  • Use yeast cell cycle data to test algorithm and
    previous knowledge to judge accuracy

10
Why use classifiers?
  • The products affecting a specific gene are listed
    in the tree
  • Allows for continuous values for concentrations
  • Each additional dataset refines the decision
    information
  • Decision trees are easy to read and interpret

11
Classifier - example
12
Methods
  • Use induction algorithm to generate decision
    trees
  • Program called C4.5
  • Apply program three ways
  • Regulation of target gene as a function of other
    genes at same time (simultaneous)
  • Regulation of target gene as a function of other
    genes at previous times (time delay)
  • Regulation as a function of change of other genes
    (changes)

13
Results - given
  • These genes
  • and yeast datasets
  • Spellman, Cho,
  • Cdc28
  • Alpha-factor

14
Results produced this
15
Results with this accuracy
16
Discussion
  • Some concern about the accuracy between 70 and
    94 on systems with known interactions
  • Does that imply that the microarray data is wrong
    or the algorithm is flawed?

17
Conclusions
  • Decision trees and classifiers seem a better way
    to explain gene expression
  • This paper did not do a good job of explaining
    how to make / use them
  • Reference to the algorithm itself was almost
    specious
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