MicroArray Data Analysis Candice Quadros - PowerPoint PPT Presentation

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MicroArray Data Analysis Candice Quadros

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MicroArray Data Analysis Candice Quadros & Amol Kothari Neural Network for classification Harnessing the power of a neural network for classifying samples. – PowerPoint PPT presentation

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Title: MicroArray Data Analysis Candice Quadros


1
MicroArray Data AnalysisCandice
QuadrosAmol Kothari
2
Neural Network for classification
  • Harnessing the power of a neural network for
    classifying samples.

3
Neural Network for classification
  • Reduce the no. of genes
  • We have to reduce the data dimensionality, i.e.
    reduce the no. of genes to consider.
  • PCA can be used to select most informative genes,
    but it is computationally expensive to obtain the
    Eigen vectors for high dimensional data.
  • Use the method suggested by Golub et al. to
    obtain the informative genes.

4
Neural Network for classification
  • Steps in classification
  • Obtain the informative genes using Golubs
    method.
  • Normalize the genes by shifting them to the mean
    dividing by the standard deviation.
  • Train the neural network by using the training
    data targets, and get the weights.
  • Classify the test data using the weights obtained
    above.

5
Neural Network for classification
  • Results obtained

Inform. Genes No. of Hidden Units NN Accuracy Golub Accuracy
100 3 70.55 61.76
200 13 76.74 58.82
6
Hierarchical Merging When to stop?
  • Question When to stop the merging?
  • Suggested Solutions
  • Diameter(C) ? MaxD
  • Avg(sim(Oi,Oj)) ? (Oi,Oj ?C)
  • Difficult to estimate the parameters in high
    dimensions.

7
Hierarchical Merging When to stop?
  • Another solution When m clusters are present,
    stop merging.
  • Problem The m clusters might contain single
    point clusters.
  • Use the concept of MinPts (from DBScan). A set of
    points is a significant cluster only if the set
    has MinPts.
  • When there are m significant clusters, then stop.

8
Hierarchical Merging When to stop?
No. of Significant Clusters
No. of iterations
9
Visualization of data Vizstruct
10
Visualization of data Vizstruct
  • Equation used
  • How do weigh each dimension, i.e. how do we
    select ?? Default value 0.5
  • Use the Eigen Values of each dimension to obtain
    the value of ?.

11
Visualization of data Vizstruct
  • Steps for visualization
  • Project the data into Eigen space.
  • The Eigen values of each dimension i ?i
  • Now use the same formulae for calculating the 2D
    point

Where ?i Eigen value of the ith dimension
12
Visualization of data Vizstruct
  • Results
  • The visualization obtained by this method is more
    representative of the data, compared to
    Vizstruct.
  • Demo

13
  • Thank You
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