suppressPackageStartupMessages(library(TENxPBMCData))
require(scry)
## Loading required package: scry
We illustrate the application of scry methods to disk-based data from the TENxPBMCData package. Each dataset in this package is stored in an HDF5 file that is accessed through a DelayedArray interface. This avoids the need to load the entire dataset into memory for analysis.
sce<-TENxPBMCData(dataset="pbmc3k")
## see ?TENxPBMCData and browseVignettes('TENxPBMCData') for documentation
## loading from cache
h5counts<-counts(sce)
seed(h5counts) #print information about object
## An object of class "HDF5ArraySeed"
## Slot "filepath":
## [1] "/home/biocbuild/.cache/R/ExperimentHub/1307982130f0c7_1605"
##
## Slot "name":
## [1] "/counts"
##
## Slot "as_sparse":
## [1] TRUE
##
## Slot "type":
## [1] NA
##
## Slot "dim":
## [1] 32738 2700
##
## Slot "chunkdim":
## [1] 631 52
##
## Slot "first_val":
## [1] 0
h5counts<-h5counts[rowSums(h5counts)>0,]
system.time(h5devs<-devianceFeatureSelection(h5counts)) # 26 sec
## user system elapsed
## 28.857 4.404 33.262
We now compare the computation speed when the same data is converted to an ordinary array in-memory. Note this would not be possible with larger HDF5Array objects.
denseCounts<-as.matrix(h5counts)
system.time(denseDevs<-devianceFeatureSelection(denseCounts)) # 5 sec
## user system elapsed
## 5.353 0.928 6.281
max(abs(denseDevs-h5devs)) #should be close to zero
## [1] 0
Finally we compare the speed when the counts data are stored in a sparse in-memory Matrix format
mean(denseCounts>0) #shows that the data are mostly zeros so sparsity useful
## [1] 0.05091945
sparseCounts<-Matrix::Matrix(denseCounts,sparse=TRUE)
system.time(sparseDevs<-devianceFeatureSelection(sparseCounts)) #1.6 sec
## user system elapsed
## 1.026 0.424 1.450
max(abs(sparseDevs-h5devs)) #should be close to zero
## [1] 1.629815e-09
Using disk-based data saves memory but slows computation time. When the data contain mostly zeros, and are not too large, the sparse in-memory Matrix object achieves fastest computation times. The resulting deviance statistics are the same for all of the different data formats.
One can run nullResiduals
on HDF5Matrix
, DelayedArray
matrices, and sparse
matrices from the Matrix
package with the same syntax used for the base
matrix case.
We illustrate this with the same dataset from the TENxPBMCData
package.
sce <- nullResiduals(sce, assay="counts", type="deviance")
str(sce)