Using Smoothing Splines to Select Significant Genes in Microarrays
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Abstract
<p>DNA microarray technology has been widely used in many applications such as gene
discovery, disease research and drug investigation. This thesis is based on a project
studying the genetics of Type 1 Diabetes.</p> <p>In this thesis we introduce a method to use smoothing splines to select significant
genes in microarrays. This method is based on significance analysis of microarrays
(SAM). We choose upper and lower significance cut-offs based on when the numerical
derivative of the spline exceeds a threshold. We declare that any genes whose observed
statistics are less than the lower cut-off or greater than the upper cut-off to be significant.
We also explain how to use this method to calculate the number of significant
genes and estimate false discovery rates.</p> <p>We use both Affymetrix and Illumina real data sets in our analysis and the results
are satisfactory. We try to use the simulation study to test our method but we have a
problem that we can not generate simulated data which is similar to the real microarray
data.</p>
Description
Title: Using Smoothing Splines to Select Significant Genes in Microarrays, Author: Ji Li, Location: Thode