smbetattest: Performance of multiple beta t-test on simulated data
Description
This function is to peform beta t-test with \(\rho\)
=1 and \(\omega\)=1 on simulated data. The result
lists differentially expressed genes or isoforms and
their \(\rho\) values. The \(\rho\) values are used
to calculate \(\omega\) value for performance of beta
t-tests on the real data.
Usage
smbetattest(X, na, nb, alpha)
Arguments
X
simulated count data with N genes or isoforms.
na
number of replicate libraries in condition A.
nb
number of replicate libraries in condition B.
alpha
statistical probabilistic threshold, default is 0.05.
Value
Return a set of null \(\rho\) values.
Details
Before performing NBBttest on real data, user needs
\(\omega\) value for the threshold of \(\rho\).
To determine \(\omega\) value, user is requred to
generate a set of null data having the same gene or
isoform number and the same numbers of replicate
libraries in two conditions and then performs beta
t-test on the null datasets by setting \(\rho\) =1
and \(\omega\) =1. In current package, NBBttest
can automatically perform the simulation of null data,
multiple beta t-test to estimate \(\omega\).
References
Yuan-De Tan Anita M. Chandler, Arindam Chaudhury, and
Joel R. Neilson(2015) A Powerful Statistical Approach
for Large-scale Differential Transcription Analysis.
Plos One. DOI: 10.1371/journal.pone.0123658.