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ssize.fdr (version 1.3)

ssize.oneSamp: Sample Size Calculations for One-Sample Microarray Experiments

Description

Calculates appropriate sample sizes for one-sample microarray experiments for a desired power. Sample size calculations are performed at controlled false discovery rates and user-specified proportions of non-differentially expressed genes, effect size, and standard deviation. A graph of power versus sample size is created.

Usage

ssize.oneSamp(delta, sigma, fdr = 0.05, power = 0.8, pi0 = 0.95, maxN = 35,
side = "two-sided", cex.title=1.15, cex.legend=1)

Arguments

delta

the common effect size for all genes

sigma

the standard deviation for all genes

fdr

the false discovery rate to be controlled

power

the desired power to be achieved

pi0

a vector (or scalar) of proportions of non-differentially expressed genes

maxN

the maximum sample size used for power calculations

side

options are "two-sided", "upper", or "lower"

cex.title

controls size of chart titles

cex.legend

controls size of chart legend

Value

ssize

sample sizes at which desired power is first reached

power

power calculations with corresponding sample sizes

crit.vals

critical value calculations with corresponding sample sizes

Details

Effect sizes and standard deviations are assumed to be identical for all genes. See the function ssize.oneSampVary for sample size calculations with varying effects sizes and standard deviations among genes.

If a vector is input for pi0, sample size calculations are performed for each proportion.

References

Liu, Peng and J. T. Gene Hwang. 2007. Quick calculation for sample size while controlling false discovery rate with application to microarray analysis. Bioinformatics 23(6): 739-746.

See Also

ssize.twoSampVary, ssize.oneSamp, ssize.oneSampVary, ssize.F, ssize.Fvary

Examples

Run this code
# NOT RUN {
 d<-2		##effect size
 s<-1  		##standard deviation
 a<-0.05	##false discovery rate to be controlled
 pwr<-0.8	##desired power
 p0<-c(0.5,0.9,0.95)	##proportions of non-differentially expressed genes
 N<-20		##maximum sample size for calculations
 os<-ssize.oneSamp(delta=d,sigma=s,fdr=a,power=pwr,pi0=p0,maxN=N,side="two-sided")
 os$ssize	##first sample sizes to reach desired power
 os$power	##calculated power for each sample size
 os$crit.vals	##calculated critical value for each sample size
# }

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