DA_corncob | R Documentation |
Fast run for corncob differential abundance detection method.
DA_corncob(
object,
assay_name = "counts",
pseudo_count = FALSE,
formula,
phi.formula,
formula_null,
phi.formula_null,
test,
boot = FALSE,
coefficient = NULL,
verbose = TRUE
)
object |
a phyloseq or TreeSummarizedExperiment object. |
assay_name |
the name of the assay to extract from the
TreeSummarizedExperiment object (default |
pseudo_count |
add 1 to all counts if TRUE (default
|
formula |
an object of class |
phi.formula |
an object of class |
formula_null |
Formula for mean under null, without response |
phi.formula_null |
Formula for overdispersion under null, without response |
test |
Character. Hypothesis testing procedure to use. One of
|
boot |
Boolean. Defaults to |
coefficient |
The coefficient of interest as a single word formed by the variable name and the non reference level. (e.g.: 'ConditionDisease' if the reference level for the variable 'Condition' is 'control'). |
verbose |
an optional logical value. If |
A list object containing the matrix of p-values 'pValMat', the matrix of summary statistics for each tag 'statInfo', and a suggested 'name' of the final object considering the parameters passed to the function.
bbdml
and
differentialTest
for differential abundance and
differential variance evaluation.
set.seed(1)
# Create a very simple phyloseq object
counts <- matrix(rnbinom(n = 60, size = 3, prob = 0.5), nrow = 10, ncol = 6)
metadata <- data.frame("Sample" = c("S1", "S2", "S3", "S4", "S5", "S6"),
"group" = as.factor(c("A", "A", "A", "B", "B", "B")))
ps <- phyloseq::phyloseq(phyloseq::otu_table(counts, taxa_are_rows = TRUE),
phyloseq::sample_data(metadata))
# Differential abundance
DA_corncob(object = ps, formula = ~ group, phi.formula = ~ group,
formula_null = ~ 1, phi.formula_null = ~ group, coefficient = "groupB",
test = "Wald")
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