DGEobj.utils: A toolkit facilitating a limma/voom workflow Differential Gene Expression analysis
This package implements a set of utility functions to enable a limma/voom workflow capturing
the results in the DGEobj data structure. Aside from implementing a well developed and popular
workflow in DGEobj format, the run* functions in the package illustrate how to wrap the
individual processing steps in a workflow in functions that capture important metadata,
processing parameters, and intermediate data items in the DGEobj data structure. This function-
based approach to utilizing the DGEobj data structure insures consistency among a collection of
projects processed by these methods and thus facilitates downstream automated meta-analysis.
Functionality includes:
Analysis
runContrasts: Build contrast matrix and calculate contrast fits
runEdgeRNorm: Run edgeR normalization on DGEobj
runIHW: Apply Independent Hypothesis Weighting (IHW) to a list of topTable dataframes
runPower: Run a power analysis on counts and design matrix
runQvalue: Calculate and add q-value and lFDR to dataframe
runSVA: Test for surrogate variables
runVoom: Run functions in a typical voom/lmFit workflow
Utilities
convertCounts: Convert count matrix to CPM, FPKM, FPK, or TPM
extractCol: Extract a named column from a series of df or matrices
lowIntFilter: Apply low intensity filters to a DGEobj
rsqCalc: Calculate R-squared for each gene fit
summarizeSigCounts: Summarize a contrast list
topTable.merge: Merge specified topTable df cols
tpm.direct: Convert countsMatrix and geneLength to TPM units
tpm.on.subset: Calculate TPM for a subsetted DGEobj
DGEobj.utils: A toolkit facilitating a limma/voom workflow Differential Gene Expression analysis
This package implements a set of utility functions to enable a limma/voom workflow capturing the results in the DGEobj data structure. Aside from implementing a well developed and popular workflow in DGEobj format, the run* functions in the package illustrate how to wrap the individual processing steps in a workflow in functions that capture important metadata, processing parameters, and intermediate data items in the DGEobj data structure. This function- based approach to utilizing the DGEobj data structure insures consistency among a collection of projects processed by these methods and thus facilitates downstream automated meta-analysis.
Functionality includes:
Analysis
Utilities