pre-icm int. convention , 2008
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Pre-ICM Int. Convention, 2008
ByNaveen K. Bansal
Marquette UniversityMilwaukee, Wisconsin(USA)
Email: naveen.bansal@mu.eduhttp://www.mscs.mu.edu/~naveen/
WithDr. Klaus Miescke
University of Illinois-ChicagoIllinois (USA)
A Bayesian decision theoretic solution to the problem related to microarray data with consideration of intra-correlation among the affected genes
When the genes are altered under adverse condition, such as cancer, the affected genes show under or over expression in a microarray.
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The objective is to find the genes with under expressions and genes with over expressions.
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Sarkar and Zhou (2008, JSPI)Finner ( 1999, AS)Shaffer (2002, Psychological Methods)Lehmann (1952, AMS; 1957, AMS)
Main points of these work is that if the objective is to find the true Direction of the alternative after rejecting the null, then a Type III error must be controlled instead of Type I error.
Type III error is defined as P( false directional error if the null is rejected). The traditional method does not control the directional error. For example,
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
An Application:
An experiment was conducted to see the effect of a sequence knockdown from non-coding genes. Hypothesis was that this knockdown will cause the overexpression of the mRNAs of the coding genes. The implication of this is that this will shows how the non-coding genes interact with coding genes. In other words, non-coding genes also play a part in protein synthesis.
Here it can be assumed that that the effect of knockdown on the coding genes (if there is any) would be mostly overexpression of mRNAs than underexpression of mRNAs. The objective would be to detect as many of overexpressed genes as possible.
Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
This theorem and our previous discussion on the Bayes decision rule implies that under the independent hypotheses testing setting, the Bayes rule obtained from a single test problem
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Pre-ICM Int. Convention, 2008
Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
Pre-ICM Int. Convention, 2008
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Pre-ICM Int. Convention, 2008
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