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mets (version 0.1-8)

twinlm: Classic twin model for quantitative traits

Description

Fits a classical twin model for quantitative traits.

Usage

twinlm(formula, data, id, zyg, DZ, OS, weight = NULL,
    type = c("ace"), twinnum = "twinnum", binary = FALSE,
    keep = weight, estimator = "gaussian",
    constrain = TRUE, control = list(), ...)

Arguments

formula
Formula specifying effects of covariates on the response.
data
data.frame with one observation pr row. In addition a column with the zygosity (DZ or MZ given as a factor) of each individual much be specified as well as a twin id variable giving a unique pair of numbers/factors to each twin pair.
id
The name of the column in the dataset containing the twin-id variable.
zyg
The name of the column in the dataset containing the zygosity variable.
DZ
Character defining the level in the zyg variable corresponding to the dyzogitic twins. If this argument is missing, the reference level (i.e. the first level) will be interpreted as the dyzogitic twins.
OS
Optional. Character defining the level in the zyg variable corresponding to the oppposite sex dyzogitic twins.
weight
Weight matrix if needed by the chosen estimator. For use with Inverse Probability Weights
type
Character defining the type of analysis to be performed. Should be a subset of "aced" (additive genetic factors, common environmental factors, unique environmental factors, dominant genetic factors).
twinnum
The name of the column in the dataset numbering the twins (1,2). If it does not exist in data it will automatically be created.
binary
If TRUE a liability model is fitted. Note that if the right-hand-side of the formula is a factor, character vector, og logical variable, then the liability model is automatically chosen (wrapper of the bptwin function).
keep
Vector of variables from data that are not specified in formula, to be added to data.frame of the SEM
estimator
Choice of estimator/model
control
Control argument parsed on to the optimization routine
constrain
Development argument
...
Additional arguments parsed on to lower-level functions

Value

  • Returns an object of class twinlm.

See Also

bptwin, twinsim

Examples

Run this code
## Simulate data
set.seed(1)
d <- twinsim(1000,b1=c(1,-1),b2=c(),acde=c(1,1,0,1))
## E(y|z1,z2) = z1 - z2. var(A) = var(C) = var(E) = 1

## E.g to fit the data to an ACE-model without any confounders we simply write
ace <- twinlm(y1 ~ 1, data=d, DZ="DZ", zyg="zyg", id="id")
ace
## An AE-model could be fitted as
ae <- twinlm(y1 ~ 1, data=d, DZ="DZ", zyg="zyg", id="id", type="ae")
## LRT:
compare(ae,ace)
## AIC
AIC(ae)-AIC(ace)
## To adjust for the covariates we simply alter the formula statement
ace2 <- twinlm(y1 ~ x11+x12, data=d, DZ="DZ", zyg="zyg", id="id", type="ace")
## Summary/GOF
summary(ace2)
## An interaction could be analyzed as:
ace3 <- twinlm(y1 ~ x11+x12 + x11:I(x12<0), data=d, DZ="DZ", zyg="zyg", id="id", type="ace")
## Categorical variables are also supported
d2 <- transform(d,x12cat=cut(x12,3,labels=c("Low","Med","High")))
ace4 <- twinlm(y1 ~ x11+x12cat, data=d2, DZ="DZ", zyg="zyg", id="id", type="ace")
## plot the model structure
plot(ace4)

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