snpStats (version 1.22.0)

snp.rhs.tests: Score tests with SNP genotypes as independent variable

Description

This function fits a generalized linear model with phenotype as dependent variable and, optionally, one or more potential confounders of a phenotype-genotype association as independent variable. A series of SNPs (or small groups of SNPs) are then tested for additional association with phenotype. In order to protect against misspecification of the variance function, "robust" tests may be selected.

Usage

snp.rhs.tests(formula, family = "binomial", link, weights, subset, data = parent.frame(), snp.data, rules=NULL, tests=NULL, robust = FALSE, uncertain=FALSE, control=glm.test.control(), allow.missing=0.01, score=FALSE)

Arguments

formula
The base model formula, with phenotype as dependent variable
family
A string defining the generalized linear model family. This currently should (partially) match one of "binomial", "Poisson", "Gaussian" or "gamma" (case-insensitive)
link
A string defining the link function for the GLM. This currently should (partially) match one of "logit", "log", "identity" or "inverse". The default action is to use the "canonical" link for the family selected
data
The dataframe in which the base model is to be fitted
snp.data
An object of class "SnpMatrix" or "XSnpMatrix" containing the SNP data
rules
An object of class "ImputationRules". If supplied, the rules coded in this object are used, together with snp.data, to calculate tests for imputed SNPs
tests
Either a vector of SNP names (or numbers) for the SNPs to be tested, or a logical vector of length equal to the number of columns in snp.data, or a list of short numeric or character vectors defining groups of SNPs to be tested (see Details)
weights
"Prior" weights in the generalized linear model
subset
Array defining the subset of rows of data to use
robust
If TRUE, robust tests will be carried out
uncertain
If TRUE, uncertain genotypes are used and scored by their posterior expectations. Otherwise they are treated as missing
control
An object giving parameters for the IRLS algorithm fitting of the base model and for the acceptable aliasing amongst new terms to be tested. See glm.test.control
allow.missing
The maximum proportion of SNP genotype that can be missing before it becomes necessary to refit the base model
score
Is extended score information to be returned?

Value

An object of class GlmTests or GlmTestsScore depending on whether score is set to FALSE or TRUE in the call.

Details

The tests used are asymptotic chi-squared tests based on the vector of first and second derivatives of the log-likelihood with respect to the parameters of the additional model. The "robust" form is a generalized score test in the sense discussed by Boos(1992). The "base" model is first fitted, and a score test is performed for addition of one or more SNP genotypes to the model. Homozygous SNP genotypes are coded 0 or 2 and heterozygous genotypes are coded 1. For SNPs on the X chromosome, males are coded as homozygous females. For X SNPs, it will often be appropriate to include sex of subject in the base model (this is not done automatically). If a data argument is supplied, the snp.data and data objects are aligned by rowname. Otherwise all variables in the model formulae are assumed to be stored in the same order as the columns of the snp.data object.

Usually SNPs to be used in tests will be referenced by name. However, they can also be referenced by number, a positive number indicating the appropriate column in the input snp.data, and a negative number indicating (minus) a position in the rules list. They can also be referenced by a logical selection vector of length equal to the number of columns in snp.data. Sets of tests involving more than one SNP are referenced by a list and can use a mixture of observed and imputed SNPs. If the tests argument is missing, single SNP tests are carried out; if a rules is given, all imputed SNP tests are calculated, otherwise all SNPs in the input snp.data matrix are tested. But note that, for single SNP tests, the function single.snp.tests will often achieve the same result much faster.

References

Boos, Dennis D. (1992) On generalized score tests. The American Statistician, 46:327-333.

See Also

GlmTests-class, GlmTestsScore-class, single.snp.tests, snp.lhs.tests, impute.snps, ImputationRules-class, SnpMatrix-class, XSnpMatrix-class

Examples

Run this code
data(testdata)
slt3 <- snp.rhs.tests(cc~strata(region), family="binomial",
   data=subject.data, snp.data= Autosomes, tests=1:10)
print(slt3)

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