blacksheepr 1.6.0
Outlier analysis is a well established method for exploring extreme values in
the context of the rest of the population. In biological contexts, exploring the
shift in proportion of these outliers can elucidate differences between
subpopulations, suggesting potential differential characteristics that can be
further explored.
blacksheep is a project that was developed in an effort to refine this analysis
to a functional tool for outlier analysis in the context of biological data.
This data can take many forms: protein, phosphoprotein, RNA, CNA, etc. The input
for blacksheep is count data of some form, and annotation data indicative of the
populations for comparison. The primary function call is deva
(Differential
Extreme Value Analysis).
This vignette will run through a few standard use-cases, illustrating the
functionality of blacksheep and hopefully answering questions and showing its
usefulness in biological exploration.
Installation is similar to all Bioconductor packages. Start R and run the following lines to install:
if (!requireNamespace("BiocManager", quietly = TRUE))
install.packages("BiocManager")
BiocManager::install("blacksheepr")
Loading the library is done by using the library
call
library(blacksheepr)
Count data should be a table of counts with samples along the x-axis, and features along the y-axis, with the labels being rownames and colnames.
data("sample_phosphodata")
sample_phosphodata[1:5,1:5]
## TCGA-AO-A12D TCGA-BH-A18Q TCGA-C8-A130 TCGA-C8-A138
## NP_149131-S462s T469t -2.7612119 NA NA -2.289952
## NP_061893-S25s NA -1.35695974 -0.2667119 NA
## NP_001182345-S413s 0.5208798 0.09949606 -2.1361523 -3.729862
## NP_116026-S179s NA 0.97943811 0.4830637 NA
## NP_002388-S192s NA NA NA NA
## TCGA-E2-A154
## NP_149131-S462s T469t -1.512795
## NP_061893-S25s NA
## NP_001182345-S413s 2.658696
## NP_116026-S179s NA
## NP_002388-S192s NA
The Annotation data should be a table with the same samples included in your count data, listed along the y-axis. Each column will then be a comparison to perform, with the values of the column being some form of binary system indicating the samples belonging to each sub group. NOTE - that these should be strings. It’s more informative if your columns actually contain useful information such as “high”/“low”, “mutant”/“WT”, etc. as oppposed to “1/0” or any other non-descriptive binary.
data("sample_annotationdata")
sample_annotationdata[1:5,]
## PAM50_Her2 PAM50_Basal PAM50_LumA PAM50_LumB ER_Status PR_Status
## TCGA-AO-A12D Her2 not_Basal not_LumA not_LumB Negative Negative
## TCGA-BH-A18Q not_Her2 Basal not_LumA not_LumB Negative Negative
## TCGA-C8-A130 Her2 not_Basal not_LumA not_LumB Positive Positive
## TCGA-C8-A138 Her2 not_Basal not_LumA not_LumB Positive Negative
## TCGA-E2-A154 not_Her2 not_Basal LumA not_LumB Positive Positive
blacksheepr takes in a SummarizedExperiment object into the main deva
function call (more on this below). blacksheepr can therefore start with any
SummarizedExperiment object, as long as the colData of the SummarizedExperiment
contains rownames that are the same as the column names in the data as
described above, and the metadata is made up of BINARY classifications. NOTE
that this may take some additional formatting. The Appendix has a note on
helper functions that can assist with this formatting.
In the following section - we will go through an example of using outlier analysis using Phosphoprotein data. The inputted data is being supplied from Github and is originally sourced using breast cancer data from TCGA and CPTAC. doi:10.1038/nature18003
Read in the Annotation table.
data(sample_annotationdata)
comptable <- sample_annotationdata
comptable[1:5,]
## PAM50_Her2 PAM50_Basal PAM50_LumA PAM50_LumB ER_Status PR_Status
## TCGA-AO-A12D Her2 not_Basal not_LumA not_LumB Negative Negative
## TCGA-BH-A18Q not_Her2 Basal not_LumA not_LumB Negative Negative
## TCGA-C8-A130 Her2 not_Basal not_LumA not_LumB Positive Positive
## TCGA-C8-A138 Her2 not_Basal not_LumA not_LumB Positive Negative
## TCGA-E2-A154 not_Her2 not_Basal LumA not_LumB Positive Positive
dim(comptable)
## [1] 76 6
Next we need to have the actual count data that we are analyzing. Note that
this data is made up of features - proteins - that then have a number of
subfeatures - phosphorylation sites. This aspect of the data will directly
relate to later analysis, as blacksheep will AGGREGATE on this data and
collapse the data onto the primary feature. More on this later. Note also that
this data has been prenormalized. For more on the processing of data to input
into deva
, refer to the appendix.
data(sample_phosphodata)
phosphotable <- sample_phosphodata
phosphotable[1:5,1:5]
## TCGA-AO-A12D TCGA-BH-A18Q TCGA-C8-A130 TCGA-C8-A138
## NP_149131-S462s T469t -2.7612119 NA NA -2.289952
## NP_061893-S25s NA -1.35695974 -0.2667119 NA
## NP_001182345-S413s 0.5208798 0.09949606 -2.1361523 -3.729862
## NP_116026-S179s NA 0.97943811 0.4830637 NA
## NP_002388-S192s NA NA NA NA
## TCGA-E2-A154
## NP_149131-S462s T469t -1.512795
## NP_061893-S25s NA
## NP_001182345-S413s 2.658696
## NP_116026-S179s NA
## NP_002388-S192s NA
dim(phosphotable)
## [1] 15532 76
blacksheep - as a part of the Bioconductor universe - starts from a single
object that contains the assay of interest, and the underlying metadata. A
SummarizedExperiment
object is easy to create - and helps ensure that there
is no misalignment between the data and the metadata associated with each
sample.
NOTE - as demonstrated below that the count data must be formatted as a MATRIX
and the annotation data must be formatted as a DATAFRAME.
suppressPackageStartupMessages(library(SummarizedExperiment))
blacksheep_SE <- SummarizedExperiment(
assays=list(counts=as.matrix(phosphotable)),
colData=DataFrame(comptable))
blacksheep_SE
## class: SummarizedExperiment
## dim: 15532 76
## metadata(0):
## assays(1): counts
## rownames(15532): NP_149131-S462s T469t NP_061893-S25s ...
## NP_542417-S1276s NP_001136254-S832s
## rowData names(0):
## colnames(76): TCGA-AO-A12D TCGA-BH-A18Q ... TCGA-BH-A0C7 TCGA-A2-A0SX
## colData names(6): PAM50_Her2 PAM50_Basal ... ER_Status PR_Status
The deva
function has a number of steps to it that are individually
described below. Note though that the individual steps only need to be used for
specific query or alteration. In the general case, the deva
function on
its own should be sufficient for the desired analysis.
deva_out <- deva(se = blacksheep_SE,
analyze_negative_outliers = FALSE, aggregate_features = TRUE,
feature_delineator = "-", fraction_samples_cutoff = 0.3,
fdrcutoffvalue = 0.1)
The output from blacksheep are lists with the desired results. There is an
outlier_analysis
and a significant_heatmaps
for the desired analysis. In
this example, we only ran analysis for positive outliers. So the output will
be 2 items long - heatmaps and tables for the positive outlier analysis.
names(deva_out)
## [1] "outlier_analysis_out" "significant_heatmaps" "fraction_table"
## [4] "median_value_table" "outlier_boundary_table"
The outlier_analysis
is a nested list of analyses - with one anaysis per
comparison columns
names(deva_out$pos_outlier_analysis)
## NULL
The significant_heatmaps
section is a nested list of heatmap obejcts, again
with one anaysis per comparison columns
names(deva_out$significant_pos_heatmaps)
## NULL
deva_results()
is a utility function to help explore your data. If you use
deva_results
on the deva_out
object, it will return a list of the performed
analyses that returned significant results.
deva_results(deva_out)
## [1] "outlier_analysis_out" "significant_heatmaps" "fraction_table"
## [4] "median_value_table" "outlier_boundary_table"
The other parameters for deva_out are ID
and type
. ID
is a keyword to
grab the desired analysis. type
is one of the following options: table
or
heatmap
specifies which analysis object you want to grab, followed by the ID
of the specific analysis. fraction_table
is the outputted table that shows
the fraction of outliers per sample per feature (NOTE that this will be the
same as the outlier table if no aggregation was done). median
and boundary
return lists for the median value, and the outlier boundary value for each
feature.
subanalysis_Her2 <- deva_results(deva_out, ID = "Her2", type = "table")
head(subanalysis_Her2)
## gene pval_more_pos_outliers_in_PAM50_Her2__Her2
## 1 NP_000215 0.000876167768317827
## 2 NP_000393 0.0104700645400028
## 3 NP_001002814 0.312790178663637
## 4 NP_001003408 0.540506340033899
## 5 NP_001005751
## 6 NP_001020262 0.0519534804138539
## pval_more_pos_outliers_in_PAM50_Her2__not_Her2
## 1
## 2
## 3
## 4
## 5 1
## 6
## fdr_more_pos_outliers_in_PAM50_Her2__Her2
## 1 0.0055210906126839
## 2 0.0260165240084919
## 3 0.371721661600264
## 4 0.575604154321814
## 5
## 6 0.0774579162533822
## fdr_more_pos_outliers_in_PAM50_Her2__not_Her2 PAM50_Her2__Her2_nonposoutlier
## 1 32
## 2 12
## 3 47
## 4 65
## 5 1 100
## 6 31
## PAM50_Her2__Her2_posoutlier PAM50_Her2__not_Her2_nonposoutlier
## 1 6 186
## 2 4 67
## 3 4 285
## 4 4 392
## 5 5 562
## 6 5 165
## PAM50_Her2__not_Her2_posoutlier
## 1 3
## 2 2
## 3 14
## 4 18
## 5 33
## 6 8
For each column of your comparison table that you put in (occupies colData
in
a SummarizedExperiment object), deva
will output a table of analysis if there
were any applicable results.
One example of a table is as follows:
subanalysis_Her2 <- deva_results(deva_out, ID = "Her2", type = "table")
head(subanalysis_Her2)
## gene pval_more_pos_outliers_in_PAM50_Her2__Her2
## 1 NP_000215 0.000876167768317827
## 2 NP_000393 0.0104700645400028
## 3 NP_001002814 0.312790178663637
## 4 NP_001003408 0.540506340033899
## 5 NP_001005751
## 6 NP_001020262 0.0519534804138539
## pval_more_pos_outliers_in_PAM50_Her2__not_Her2
## 1
## 2
## 3
## 4
## 5 1
## 6
## fdr_more_pos_outliers_in_PAM50_Her2__Her2
## 1 0.0055210906126839
## 2 0.0260165240084919
## 3 0.371721661600264
## 4 0.575604154321814
## 5
## 6 0.0774579162533822
## fdr_more_pos_outliers_in_PAM50_Her2__not_Her2 PAM50_Her2__Her2_nonposoutlier
## 1 32
## 2 12
## 3 47
## 4 65
## 5 1 100
## 6 31
## PAM50_Her2__Her2_posoutlier PAM50_Her2__not_Her2_nonposoutlier
## 1 6 186
## 2 4 67
## 3 4 285
## 4 4 392
## 5 5 562
## 6 5 165
## PAM50_Her2__not_Her2_posoutlier
## 1 3
## 2 2
## 3 14
## 4 18
## 5 33
## 6 8
The output in order is: * col1 - the list of genes * col2-3 - the pvalue of the gene being significantly different, the column it appears in is indicative of the measure of the gene being higher in group1 or group2. * col4-5 - the FDR value for that pvalue * col6-9 - the raw data behind the statisical test, showing how many outliers and nonoutliers there are for each group.
The heatmaps serve as a snapshot of the significant genes that met the
parameterized fdr cutoff in the deva
function call. They can be accessed
in a similar manner to the analysis tables. NOTE though that there will only be
a heatmap if there were ANY significant genes. If there were no genes that met
the fdr cut off - then there will be no heatmap generated.
subanalysis_Her2_HM <- deva_results(deva_out, ID = "Her2", type = "heatmap")
subanalysis_Her2_HM
The heatmap objects themselves are ComplexHeatmap objects - and will be drawn when called, either in the default Rplot, or can be saved out to an external file.
## NOT RUN
## To output separately to pdf
pdf("outfile.pdf")
draw(subanalysis_Her2_HM)
dev.off()
THIS SECTION ASSUMES THAT THE PREVIOUS STEPS FOR READING IN THE DATA AND ANNOTATIONS HAS BEEN COMPLETED The next section demonstrates the individual steps of deva. NOTE that the user may never need to call the specific steps, but if specific tweaks are needed, or if an intermediate step needs to be extracted, then this workflow can be followed to see how the analysis is generated.
Create the subgroups based on your metadata. Note that the
comparison_groupings
function creates groups by going through the comparison
columns, and creating the first subgroup for all of the comparisons, and then
creates the second subgroup for all of the comparisons. The order depends on
the first subcategory encounted moving down the column. This order will matter
later on when you look at comparisons, but this information will be contained
in the ouput table to avoid confusion, more on this later.
groupings <- comparison_groupings(comptable)
## Print out the first 6 samples in each of our first 5 groupings
lapply(groupings, head)[1:5]
## $PAM50_Her2__Her2
## [1] "TCGA-AO-A12D" "TCGA-C8-A130" "TCGA-C8-A138" "TCGA-C8-A12L" "TCGA-C8-A12T"
## [6] "TCGA-A2-A0EQ"
##
## $PAM50_Basal__not_Basal
## [1] "TCGA-AO-A12D" "TCGA-C8-A130" "TCGA-C8-A138" "TCGA-E2-A154" "TCGA-C8-A12L"
## [6] "TCGA-A2-A0EX"
##
## $PAM50_LumA__not_LumA
## [1] "TCGA-AO-A12D" "TCGA-BH-A18Q" "TCGA-C8-A130" "TCGA-C8-A138" "TCGA-C8-A12L"
## [6] "TCGA-BH-A0AV"
##
## $PAM50_LumB__not_LumB
## [1] "TCGA-AO-A12D" "TCGA-BH-A18Q" "TCGA-C8-A130" "TCGA-C8-A138" "TCGA-E2-A154"
## [6] "TCGA-C8-A12L"
##
## $ER_Status__Negative
## [1] "TCGA-AO-A12D" "TCGA-BH-A18Q" "TCGA-C8-A12L" "TCGA-BH-A0AV" "TCGA-A2-A0CM"
## [6] "TCGA-A2-A0EQ"
The next function make_outlier_table
will take in the countdata and output a
table that has been converted to show outliers. A value of 0 means that it was
not an outlier, 1 means it was an outlier in the positive direction, and if the
parameter is set to analyze negative outliers, then -1 means an outlier in the
negative direction.
The output from this function is a list of objects, that depends on the input and the specified parameters. Namely - it will output a $upperboundtab only if the parameter to analyze_negative_outliers is turned OFF, and $lowerboundtab if the analyze_negative_outliers parameter is turned ON
## Perform the function
reftable_function_out <- make_outlier_table(phosphotable,
analyze_negative_outliers = FALSE)
## See the names of the outputted objects
names(reftable_function_out)
## [1] "outliertab" "sampmedtab" "upperboundtab"
## Assign them to individual variables
outliertab <- reftable_function_out$outliertab
upperboundtab <- reftable_function_out$upperboundtab
sampmedtab <- reftable_function_out$sampmedtab
## Note we will only use the outlier table - which looks like this now
outliertab[1:5,1:5]
## TCGA-AO-A12D TCGA-BH-A18Q TCGA-C8-A130 TCGA-C8-A138
## NP_149131-S462s T469t 0 NA NA 0
## NP_061893-S25s NA 0 0 NA
## NP_001182345-S413s 0 0 0 0
## NP_116026-S179s NA 0 0 NA
## NP_002388-S192s NA NA NA NA
## TCGA-E2-A154
## NP_149131-S462s T469t 0
## NP_061893-S25s NA
## NP_001182345-S413s 1
## NP_116026-S179s NA
## NP_002388-S192s NA
For each of our groups, run through the outlier table and count up the total number of outliers and nonoutliers. For phospho (And this example) we are going to use the AGGREGATION FUNCTION to aggregate our counts together on a per protein basis
The output from this function is a list of objects, that depends on the input
and the specified parameters. For Phosphoprotein - you can have data that has
several phospho sites per protein. As a part of this analysis, one option is to
aggregate data on that protein - and collapse the outlier information into a
single feature. Turning aggregate_features = TRUE
will perform this function,
and the feature_delineator
is the character string to collapse on
ex) Feature1-1 and Feature1-2-1 with the delineator of “-” will collapse onto
Feature 1
The output with aggregate_features = TRUE
will contain two additional
objects. It will output the normal outliertable, and boundary tables, and also
the “aggoutlierstab” and “fractiontab”
The “aggoutlierstab” will be the collapsed table, summing up the number of
outliers per feature
The “fractiontab” returns the % outliers per feature per sample, given
available information - this will be IMPORTANT FOR FURTHER FILTERING later on.
ex) 1,0,0 >> 1/3
ex) 1,0,NA >> 1/2
count_outliers_out <- count_outliers(groupings, outliertab,
aggregate_features = TRUE, feature_delineator = "-")
grouptablist <- count_outliers_out$grouptablist
aggoutliertab <- count_outliers_out$aggoutliertab
fractiontab <- count_outliers_out$fractiontab
names(grouptablist)
## [1] "PAM50_Her2__Her2" "PAM50_Basal__not_Basal" "PAM50_LumA__not_LumA"
## [4] "PAM50_LumB__not_LumB" "ER_Status__Negative" "PR_Status__Negative"
## [7] "PAM50_Her2__not_Her2" "PAM50_Basal__Basal" "PAM50_LumA__LumA"
## [10] "PAM50_LumB__LumB" "ER_Status__Positive" "PR_Status__Positive"
Each tabulated table has the feature counts, and the stored infor the samples that went into the count
names(grouptablist$PAM50_Her2__Her2)
## [1] "feature_counts" "samples"
Example of what the feature counts look like:
head(grouptablist$PAM50_Her2__Her2$feature_counts)
## 0 1
## NP_000011 9 1
## NP_000012 0 0
## NP_000019 1 0
## NP_000034 4 0
## NP_000035 7 1
## NP_000042 0 0
Example of what the samples are that went into the analysis:
grouptablist$PAM50_Her2__Her2$samples
## [1] "TCGA-AO-A12D" "TCGA-C8-A130" "TCGA-C8-A138" "TCGA-C8-A12L" "TCGA-C8-A12T"
## [6] "TCGA-A2-A0EQ" "TCGA-AR-A0TX" "TCGA-A8-A076" "TCGA-C8-A135" "TCGA-C8-A12Z"
## [11] "TCGA-AO-A0JE" "TCGA-A8-A09G"
With the tabulated tables, run the outlier analysis to look for enrichment of
outliers between groups. NOTE that this function has a functionality built in
to write out tables to the external file, we will not use this parameter now,
but it can be set by turning the to parameter write_out_tables = TRUE
In this outlier analysis - we will have an additional filter included. The
fractiontab
outputted in the previous step has a metric that measure the
number of samples in each group that have an outlier in them. In this next step
we will use this information to filter for features that only have at least
0.3
(30%) of samples with an outlier. This filter is important because our
aggregation step collapsed all of the sites down from each sample, and then we
counted the total. If one sample had ALL of its sites as outliers - while
interesting - this does not indicate the our entire ingroup has an
overrepresentation - just that one sample. This filter enables a clearer
analysis by only picking out features that have multiple samples with outliers.
NOTE that this can be omitted by just leaving the fraction_table
parameter
out or as a NULL
outlier_analysis_out <- outlier_analysis(grouptablist = grouptablist,
fraction_table = fractiontab,
fraction_samples_cutoff = 0.3)
names(outlier_analysis_out)
## [1] "outlieranalysis_for_PAM50_Her2__Her2_vs_PAM50_Her2__not_Her2"
## [2] "outlieranalysis_for_PAM50_Basal__not_Basal_vs_PAM50_Basal__Basal"
## [3] "outlieranalysis_for_PAM50_LumA__not_LumA_vs_PAM50_LumA__LumA"
## [4] "outlieranalysis_for_PAM50_LumB__not_LumB_vs_PAM50_LumB__LumB"
## [5] "outlieranalysis_for_ER_Status__Negative_vs_ER_Status__Positive"
## [6] "outlieranalysis_for_PR_Status__Negative_vs_PR_Status__Positive"
head(outlier_analysis_out$
outlieranalysis_for_PAM50_Her2__Her2_vs_PAM50_Her2__not_Her2)
## gene pval_more_pos_outliers_in_PAM50_Her2__Her2
## 1 NP_000215 0.000876167768317827
## 2 NP_000393 0.0104700645400028
## 3 NP_001002814 0.312790178663637
## 4 NP_001003408 0.540506340033899
## 5 NP_001005751
## 6 NP_001020262 0.0519534804138539
## pval_more_pos_outliers_in_PAM50_Her2__not_Her2
## 1
## 2
## 3
## 4
## 5 1
## 6
## fdr_more_pos_outliers_in_PAM50_Her2__Her2
## 1 0.0055210906126839
## 2 0.0260165240084919
## 3 0.371721661600264
## 4 0.575604154321814
## 5
## 6 0.0774579162533822
## fdr_more_pos_outliers_in_PAM50_Her2__not_Her2 PAM50_Her2__Her2_nonposoutlier
## 1 32
## 2 12
## 3 47
## 4 65
## 5 1 100
## 6 31
## PAM50_Her2__Her2_posoutlier PAM50_Her2__not_Her2_nonposoutlier
## 1 6 186
## 2 4 67
## 3 4 285
## 4 4 392
## 5 5 562
## 6 5 165
## PAM50_Her2__not_Her2_posoutlier
## 1 3
## 2 2
## 3 14
## 4 18
## 5 33
## 6 8
After you have your results, its useful to have a snapshot of your results in a
figure. blacksheepr includes a utility function to output a heatmap with custom
annotations and data. Use the plotting function with the original annotation
data, and populate the heatmap with whatever information you want to represent.
In this case, we are going to populate the table with the fractions of outliers
per feature.
The outlier_analysis object is used to select the differential genes.
NOTE that you can write out the plot directly in the function using the given
parameter write_out_plot
or the saved object from the function is a heatmap,
so you can open your own pdf and print out using the commented out code below.
NOTE that the metatable must be in the ORDER desired, and that this function
will NOT order it for you.
plottable <- comptable[do.call(order, c(decreasing = TRUE,
data.frame(comptable[,1:ncol(comptable)]))),]
hm1 <- outlier_heatmap(outlier_analysis_out = outlier_analysis_out,
counttab = fractiontab, metatable = plottable,
fdrcutoffvalue = 0.1)
## To output heatmap to pdf outside of the function
#pdf(paste0(outfilepath, "test_hm1.pdf"))
#hm1
#junk<-dev.off()
hm1$print_outlieranalysis_for_PAM50_Her2__Her2_vs_PAM50_Her2__not_Her2
Formatting your annotation table is a crucial step to making sure blacksheepr runs smoothly. The key points are that that the rownames of your annotations EXACTLY match the column names of the assay data, and that the annotation columns are BINARY and therefore have only 2 subcategories per column.
There is a built in utility function make_comparison_columns
to help turn a
multifactor column into several binary columns. The user can input as many
columns as they want, and the function will output a table with each
multifactorial column turned into a number of binary columns
dummyannotations <- data.frame(comp1 = c(1,1,2,2,3,3),
comp2 = c("red", "blue", "red", "blue", "green", "green"),
row.names = paste0("sample", seq_len(6)))
dummyannotations
## comp1 comp2
## sample1 1 red
## sample2 1 blue
## sample3 2 red
## sample4 2 blue
## sample5 3 green
## sample6 3 green
## Use the make_comparison_columns function to create binary columns
expanded_dummyannotations <- make_comparison_columns(dummyannotations)
expanded_dummyannotations
## comp1_1 comp1_2 comp1_3 comp2_red comp2_blue comp2_green
## sample1 "1" "not_2" "not_3" "red" "not_blue" "not_green"
## sample2 "1" "not_2" "not_3" "not_red" "blue" "not_green"
## sample3 "not_1" "2" "not_3" "red" "not_blue" "not_green"
## sample4 "not_1" "2" "not_3" "not_red" "blue" "not_green"
## sample5 "not_1" "not_2" "3" "not_red" "not_blue" "green"
## sample6 "not_1" "not_2" "3" "not_red" "not_blue" "green"
blacksheepr is built as a generalized suite of tools with algorithms for use with any type of -omics data in the format of the previously described assay and annotations. Along those lines there are a couple common practices for other -omics data types.
The principles are the same, the only main difference is that you will not
aggregate on to a primary feature, so the aggregate_features
parameter should
be left to the default FALSE
. Also Note that if you want to output all genes
regardless of significance, this can be accomplished by setting the FDRcutoff
to 1, and the fraction_value_cutoff
to 0.
deva
at its core explores for outliers based on the difference from the
median. Heavily skewed data needs to be to insure accurate analyses.
Blacksheepr includes a normalization function that will perform both a Median
of Ratios normalization in addition to a log2 transform. See below for an
example using the pasilla
data set:
library(pasilla)
pasCts <- system.file("extdata", "pasilla_gene_counts.tsv", package="pasilla")
cts <- as.matrix(read.csv(pasCts,sep="\t",row.names="gene_id"))
norm_cts <- deva_normalization(cts, method = "MoR-log")