baySeq (version 2.6.0)

getTPs: Gets the number of true positives in the top n counts selected by ranked posterior likelihoods

Description

If the true positives are known, this function will return a vector, the ith member of which gives the number of true positives identified if the top i counts, based on estimated posterior likelihoods, are chosen.

Usage

getTPs(cD, group, decreasing = TRUE, TPs)

Arguments

cD
countData object, containing posterior likelihoods for each group.
group
Which group should we give the counts for? See Details.
decreasing
Ordering on posterior likelihoods.
TPs
Known true positives.

Value

A vector, the ith member of which gives the number of true positives identified if the top i counts are chosen.

Details

In the rare (or simulated) cases where the true positives are known, this function will calculate the number of true positives selected at any cutoff.

The 'group' can be defined either as the number of the element in 'cD@groups' or as a string which will be partially matched to the names of the 'cD@groups' elements.If group = NULL, then the function looks at the posterior likelihoods that the data have no true differential expression (if calculated).

See Also

countData

Examples

Run this code

# See vignette for more examples.

# We load in a `countData' object containing the estimated posterior
# likelihoods of expression (see `getLikelihoods').

data(CDPost)

# If the first hundred rows in the 'simData' matrix are known to be
# truly differentially expressed (the second hypothesis defined in the
# 'groups' list) then we find the number of true positives for the top n
# genes selected as the nth member of

getTPs(CDPost, group = "DE", decreasing = TRUE, TPs = 1:100)

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