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- Empirical Bayes Approach to Controlling Familywise Error: An Application to HIV Resistance Data
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- Abstract:
- Statistical challenges arise in identifying meaningful patterns and structures from high
dimensional genomic data sets. Relating HIV genotype (sequence of amino acids) to phenotypic
resistance presents a typical problem. When the HIV virus is under antiretroviral drug
pressure, unfavorable mutations of the target genes often lead to greatly increased resistance
of the virus to drugs, including drugs the virus has not been exposed to. Identification of
mutation combinations and their correlation to drug resistance is critical in guiding
efficient prescription of HIV drugs. The identification of a subset of codons associated with drug
resistance from a set of several hundreds of codons presents a multiple testing problem.
Statistical issues arising from genomic data multiple testing procedures include the choice of
the null test-statistic distribution used to define cut-offs. Controlling familywise error
rate implies controlling the number of false positives among true nulls. Given the large number of
hypotheses to be tested, the number of true nulls is unknown. We apply two multiple testing
procedures (MTPs) controlling familywise error rate: an adhoc augmented-Bonferroni method and
a Empirical Bayes procedure originally proposed in van der Laan, Birkner and Hubbard(2005).
Using simulations, we demonstrate that the proposed MTPs are less conservative than the traditional
methods such as Bonferroni and Holm's procedures. We apply the methods to HIV resistance data
where we wish to identify mutations in the protease gene associated with Amprenavir
resistance.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Rhoderick N. Machekano and Alan E. Hubbard,
"Empirical Bayes Approach to Controlling Familywise Error: An Application to HIV Resistance Data"
(April 2006).
U.C. Berkeley Division of Biostatistics Working Paper Series.
Working Paper 205.
http://www.bepress.com/ucbbiostat/paper205