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Making the Most of Small Sample High Dimensional Micro-Array Data Allan Tucker, Veronica Vinciotti, Xiaohui Liu; Brunel University Paul Kellam; Windeyer Institute
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MicroArray Data High dimensional Small number of samples Need to identify predictive genes E.g. classification Rate confidence on genes based upon predictive ability / classification
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Identifying Predictive Genes We use Naïve Bayes Classifier Well established Minimises parameters Feature selection using SA Repeated 10 times Apply cross validation
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Identifying Predictive Genes Identify genes robustly Data perturbed during CV Repeats of stochastic SA search Assign confidence based upon the frequencies of genes being selected Limit maximum number of links
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Effect of Model Complexity
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Classification Accuracy Generally RSN performs best SA global search better than local Anomaly with B-Cell? Synthetic data supports global over local
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Confidence Scores Relatively small number of genes Identified with high confidence Consistency between runs
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Identified Genes
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Conclusions When micro-array data only has small samples: Simple models with small parameters best Global search for parameters better Proposed RSN successfully identifes genes of interest paving way for further biological analysis Need to explore different parameters
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