Learn R Programming

gap (version 1.6)

hwe.cc: A likelihood ratio test of population Hardy-Weinberg equilibrium for case-control studies

Description

A likelihood ratio test of population Hardy-Weinberg equilibrium for case-control studies

Usage

hwe.cc(model, case, ctrl, k0, initial1, initial2)

Value

The returned value is a list with the following components.

  • Cox statistics under a general model.

  • t2par under the null hypothesis.

  • t3par under the alternative hypothesis.

  • lrt.stat the log-likelihood ratio statistic.

  • pval the corresponding p value.

Arguments

model

model specification, dominant, recessive.

case

a vector of genotype counts in cases.

ctrl

a vector of genotype counts in controls.

k0

prevalence of disease in the population.

initial1

initial values for beta, gamma, and q.

initial2

initial values for logit(p) and log(gamma).

Author

Chang Yu, Li Wang, Jing Hua Zhao

Details

A likelihood ratio test of population Hardy-Weinberg equilibrium for case-control studies

This is a collection of utility functions. The null hypothesis declares that the proportions of genotypes are according to Hardy-Weinberg law, while under the alternative hypothesis, the expected genotype counts are according to the probabilities that particular genotypes are obtained conditional on the prevalence of disease in the population. In so doing, Hardy-Weinberg equilibrium is considered using both case and control samples but pending on the disease model such that 2-parameter multiplicative model is built on baseline genotype \(\alpha\), \(\alpha\beta\) and \(\alpha\gamma\).

References

yu09gap

See Also

hwe

Examples

Run this code
if (FALSE) {
### Saba Sile, email of Jan 26, 2007, data always in order of GG AG AA, p=Pr(G),
### q=1-p=Pr(A)
case=c(155,27,4)
ctrl=c(408,55,15)
k0=.2
initial1=c(1.0,0.94,0.0904)
initial2=c(logit(1-0.0904),log(0.94))
hwe.cc("recessive",case,ctrl,k0, initial1, initial2)

### John Phillips III, TGFb1 data codon 10: TT CT CC, CC is abnormal and increasing
### TGFb1 activity
case=c(29,78,13)
ctrl=c(17,28,6)
k0 <- 1e-5
initial1 <- c(2.45,2.45,0.34)
initial2 <- c(logit(1-0.34),log(2.45))
hwe.cc("dominant",case,ctrl,k0,initial1,initial2)
}

Run the code above in your browser using DataLab