This is a class representation of the output of the ternary
network posterior sampling algorithm implemented in the function
tnetpost.
Arguments
Creating Objects
While one can create their own objects using the function
ternaryPost(), this is highly discouraged. Typically this class
is created by running the tnetpost function.
Slots
perturbationObj:
a matrix of perturbation
experiments. Rows are genes and columns are experiments.
steadyStateObj:
a matrix of steady gene expression
observations from a perturbation experiment. Rows are genes and
columns are experiments.
geneNames:
a vector of gene names corresponding to the
rows of the perturbationObj and steadyStateObj.
experimentNames:
a vector of experiment names
corresponding to the columns of the perturbationObj and
steadyStateObj.
scores:
the score of each sample
degreeObjs:
the in-degree vector for each sample
graphObjs:
the graph matrix for each sample
tableObjs:
the table matrix for each sample
inputParams:
the ternaryFitParameters object used
Methods
All named elements can be accessed and set in the standard way
(e.g. scores(object) and scores(object)<-).
See Also
tnetfit, ternaryFitParameters-class, ternaryFit-class.
Almudevar A, McCall MN, McMurray H, Land H (2011). Fitting
Boolean Networks from Steady State Perturbation Data, Statistical
Applications in Genetics and Molecular Biology, 10(1): Article 47.