adjust_abundance | R Documentation |
adjust_abundance() takes as input A 'tbl' (with at least three columns for sample, feature and transcript abundance) or 'SummarizedExperiment' (more convenient if abstracted to tibble with library(tidySummarizedExperiment)) and returns a consistent object (to the input) with an additional adjusted abundance column. This method uses scaled counts if present.
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
## S4 method for signature 'spec_tbl_df'
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
## S4 method for signature 'tbl_df'
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
## S4 method for signature 'tidybulk'
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
## S4 method for signature 'SummarizedExperiment'
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
## S4 method for signature 'RangedSummarizedExperiment'
adjust_abundance(
.data,
.formula = NULL,
.factor_unwanted = NULL,
.factor_of_interest = NULL,
.sample = NULL,
.transcript = NULL,
.abundance = NULL,
method = "combat_seq",
action = "add",
...,
log_transform = NULL,
transform = NULL,
inverse_transform = NULL
)
.data |
A 'tbl' (with at least three columns for sample, feature and transcript abundance) or 'SummarizedExperiment' (more convenient if abstracted to tibble with library(tidySummarizedExperiment)) |
.formula |
DEPRECATED - A formula with no response variable, representing the desired linear model where the first covariate is the factor of interest and the second covariate is the unwanted variation (of the kind ~ factor_of_interest + batch) |
.factor_unwanted |
A tidy select, e.g. column names without double quotation. c(batch, country) These are the factor that we want to adjust for, including unwanted batcheffect, and unwanted biological effects. |
.factor_of_interest |
A tidy select, e.g. column names without double quotation. c(treatment) These are the factor that we want to preserve. |
.sample |
The name of the sample column |
.transcript |
The name of the transcript/gene column |
.abundance |
The name of the transcript/gene abundance column |
method |
A character string. Methods include combat_seq (default), combat and limma_remove_batch_effect. |
action |
A character string. Whether to join the new information to the input tbl (add), or just get the non-redundant tbl with the new information (get). |
... |
Further parameters passed to the function sva::ComBat |
log_transform |
DEPRECATED - A boolean, whether the value should be log-transformed (e.g., TRUE for RNA sequencing data) |
transform |
DEPRECATED - A function that will tranform the counts, by default it is log1p for RNA sequencing data, but for avoinding tranformation you can use identity |
inverse_transform |
DEPRECATED - A function that is the inverse of transform (e.g. expm1 is inverse of log1p). This is needed to tranform back the counts after analysis. |
'r lifecycle::badge("maturing")'
This function adjusts the abundance for (known) unwanted variation. At the moment just an unwanted covariate is allowed at a time using Combat (DOI: 10.1093/bioinformatics/bts034)
Underlying method: sva::ComBat(data, batch = my_batch, mod = design, prior.plots = FALSE, ...)
A consistent object (to the input) with additional columns for the adjusted counts as '<COUNT COLUMN>_adjusted'
A consistent object (to the input) with additional columns for the adjusted counts as '<COUNT COLUMN>_adjusted'
A consistent object (to the input) with additional columns for the adjusted counts as '<COUNT COLUMN>_adjusted'
A consistent object (to the input) with additional columns for the adjusted counts as '<COUNT COLUMN>_adjusted'
A 'SummarizedExperiment' object
A 'SummarizedExperiment' object
cm = tidybulk::se_mini
cm$batch = 0
cm$batch[colnames(cm) %in% c("SRR1740035", "SRR1740043")] = 1
cm |>
identify_abundant() |>
adjust_abundance( .factor_unwanted = batch, .factor_of_interest = condition, method="combat" )
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