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A novel Mixture Model Method for identification of differentially expressed genes from DNA microarray data
Authors:Email author" target="_blank">Kayvan?NajarianEmail author  Maryam?Zaheri  Ali?A Rad  Siamak?Najarian  Javad?Dargahi
Institution:(1) Computer Science Department, University of North Carolina Charlotte, University City Blvd, Charlotte, NC, USA;(2) Computer Engineering and IT Department, Amirkabir University of Technology, Tehran, Iran;(3) Mechanical and Industrial Engineering Department, Concordia University, CONCAVE Research Centre, CR-200, Concordia University, Quebec, Canada
Abstract:

Background  

The main goal in analyzing microarray data is to determine the genes that are differentially expressed across two types of tissue samples or samples obtained under two experimental conditions. Mixture model method (MMM hereafter) is a nonparametric statistical method often used for microarray processing applications, but is known to over-fit the data if the number of replicates is small. In addition, the results of the MMM may not be repeatable when dealing with a small number of replicates. In this paper, we propose a new version of MMM to ensure the repeatability of the results in different runs, and reduce the sensitivity of the results on the parameters.
Keywords:
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