calculateDropout
calculate drop-out events (allele and locus) and
records the surviving peak height.calculateDropout(data, ref, threshold = NULL, method = c("1", "2", "X",
"L"), ignoreCase = TRUE, debug = FALSE)
modelDropout
:
'MethodX', 'Method1', 'Method2', 'MethodL' and 'MethodL.Ph'.checkSubset
to make sure subsetting works as intended.
NB! There are several methods of scoring drop-out events for regression.
Currently the 'MethodX', 'Method1', and 'Method2' are endorsed by the DNA
commission (see Appendix B in ref 1). However, an alternative method is to
consider the whole locus and score drop-out if any allele is missing.
Explanation of the methods:
Dropout - all alleles are scored according to LDT. This is pure observations
and is not used for modelling.
MethodX - a random reference allele is selected and drop-out is scored in
relation to the the partner allele.
Method1 - the low molecular weight allele is selected and drop-out is
scored in relation to the partner allele.
Method2 - the high molecular weight allele is selected and drop-out is
scored in relation to the partner allele.
MethodL - drop-out is scored per locus i.e. drop-out if any allele has
dropped out.
Method X/1/2 records the peak height of the partner allele to be used as
the explanatory variable in the logistic regression. The locus method L also
do this when there has been a drop-out, if not the the mean peak height for
the locus is used. Peak heights for the locus method are stored in a
separate column.data(set4)
data(ref4)
drop <- calculateDropout(data=set4, ref=ref4, ignoreCase=TRUE)
Run the code above in your browser using DataLab