Back to Multiple platform build/check report for BioC 3.19:   simplified   long
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This page was generated on 2024-07-09 17:43 -0400 (Tue, 09 Jul 2024).

HostnameOSArch (*)R versionInstalled pkgs
nebbiolo1Linux (Ubuntu 22.04.3 LTS)x86_644.4.1 (2024-06-14) -- "Race for Your Life" 4709
palomino7Windows Server 2022 Datacenterx644.4.1 (2024-06-14 ucrt) -- "Race for Your Life" 4483
merida1macOS 12.7.4 Montereyx86_644.4.1 (2024-06-14) -- "Race for Your Life" 4512
kjohnson1macOS 13.6.6 Venturaarm644.4.1 (2024-06-14) -- "Race for Your Life" 4461
Click on any hostname to see more info about the system (e.g. compilers)      (*) as reported by 'uname -p', except on Windows and Mac OS X

Package 1992/2300HostnameOS / ArchINSTALLBUILDCHECKBUILD BIN
singleCellTK 2.14.0  (landing page)
Joshua David Campbell
Snapshot Date: 2024-07-07 14:00 -0400 (Sun, 07 Jul 2024)
git_url: https://git.bioconductor.org/packages/singleCellTK
git_branch: RELEASE_3_19
git_last_commit: cd29b84
git_last_commit_date: 2024-04-30 11:06:02 -0400 (Tue, 30 Apr 2024)
nebbiolo1Linux (Ubuntu 22.04.3 LTS) / x86_64  OK    OK    OK  UNNEEDED, same version is already published
palomino7Windows Server 2022 Datacenter / x64  OK    OK    OK    OK  UNNEEDED, same version is already published
merida1macOS 12.7.4 Monterey / x86_64  OK    OK    OK    OK  UNNEEDED, same version is already published
kjohnson1macOS 13.6.6 Ventura / arm64  OK    OK    OK    OK  UNNEEDED, same version is already published


CHECK results for singleCellTK on kjohnson1

To the developers/maintainers of the singleCellTK package:
- Allow up to 24 hours (and sometimes 48 hours) for your latest push to git@git.bioconductor.org:packages/singleCellTK.git to reflect on this report. See Troubleshooting Build Report for more information.
- Use the following Renviron settings to reproduce errors and warnings.
- If 'R CMD check' started to fail recently on the Linux builder(s) over a missing dependency, add the missing dependency to 'Suggests:' in your DESCRIPTION file. See Renviron.bioc for more information.

raw results


Summary

Package: singleCellTK
Version: 2.14.0
Command: /Library/Frameworks/R.framework/Resources/bin/R CMD check --install=check:singleCellTK.install-out.txt --library=/Library/Frameworks/R.framework/Resources/library --no-vignettes --timings singleCellTK_2.14.0.tar.gz
StartedAt: 2024-07-09 09:38:08 -0400 (Tue, 09 Jul 2024)
EndedAt: 2024-07-09 09:55:48 -0400 (Tue, 09 Jul 2024)
EllapsedTime: 1059.6 seconds
RetCode: 0
Status:   OK  
CheckDir: singleCellTK.Rcheck
Warnings: 0

Command output

##############################################################################
##############################################################################
###
### Running command:
###
###   /Library/Frameworks/R.framework/Resources/bin/R CMD check --install=check:singleCellTK.install-out.txt --library=/Library/Frameworks/R.framework/Resources/library --no-vignettes --timings singleCellTK_2.14.0.tar.gz
###
##############################################################################
##############################################################################


* using log directory ‘/Users/biocbuild/bbs-3.19-bioc/meat/singleCellTK.Rcheck’
* using R version 4.4.1 (2024-06-14)
* using platform: aarch64-apple-darwin20
* R was compiled by
    Apple clang version 14.0.0 (clang-1400.0.29.202)
    GNU Fortran (GCC) 12.2.0
* running under: macOS Ventura 13.6.6
* using session charset: UTF-8
* using option ‘--no-vignettes’
* checking for file ‘singleCellTK/DESCRIPTION’ ... OK
* checking extension type ... Package
* this is package ‘singleCellTK’ version ‘2.14.0’
* package encoding: UTF-8
* checking package namespace information ... OK
* checking package dependencies ... OK
* checking if this is a source package ... OK
* checking if there is a namespace ... OK
* checking for hidden files and directories ... OK
* checking for portable file names ... OK
* checking for sufficient/correct file permissions ... OK
* checking whether package ‘singleCellTK’ can be installed ... OK
* checking installed package size ... NOTE
  installed size is  6.8Mb
  sub-directories of 1Mb or more:
    extdata   1.5Mb
    shiny     2.9Mb
* checking package directory ... OK
* checking ‘build’ directory ... OK
* checking DESCRIPTION meta-information ... NOTE
License stub is invalid DCF.
* checking top-level files ... OK
* checking for left-over files ... OK
* checking index information ... OK
* checking package subdirectories ... OK
* checking code files for non-ASCII characters ... OK
* checking R files for syntax errors ... OK
* checking whether the package can be loaded ... OK
* checking whether the package can be loaded with stated dependencies ... OK
* checking whether the package can be unloaded cleanly ... OK
* checking whether the namespace can be loaded with stated dependencies ... OK
* checking whether the namespace can be unloaded cleanly ... OK
* checking whether startup messages can be suppressed ... OK
* checking dependencies in R code ... OK
* checking S3 generic/method consistency ... OK
* checking replacement functions ... OK
* checking foreign function calls ... OK
* checking R code for possible problems ... OK
* checking Rd files ... NOTE
checkRd: (-1) dedupRowNames.Rd:10: Lost braces
    10 | \item{x}{A matrix like or /linkS4class{SingleCellExperiment} object, on which
       |                                       ^
checkRd: (-1) dedupRowNames.Rd:14: Lost braces
    14 | /linkS4class{SingleCellExperiment} object. When set to \code{TRUE}, will
       |             ^
checkRd: (-1) dedupRowNames.Rd:22: Lost braces
    22 | By default, a matrix or /linkS4class{SingleCellExperiment} object
       |                                     ^
checkRd: (-1) dedupRowNames.Rd:24: Lost braces
    24 | When \code{x} is a /linkS4class{SingleCellExperiment} and \code{as.rowData}
       |                                ^
checkRd: (-1) plotBubble.Rd:42: Lost braces
    42 | \item{scale}{Option to scale the data. Default: /code{FALSE}. Selected assay will not be scaled.}
       |                                                      ^
checkRd: (-1) runClusterSummaryMetrics.Rd:27: Lost braces
    27 | \item{scale}{Option to scale the data. Default: /code{FALSE}. Selected assay will not be scaled.}
       |                                                      ^
checkRd: (-1) runEmptyDrops.Rd:66: Lost braces
    66 | provided \\linkS4class{SingleCellExperiment} object.
       |                       ^
checkRd: (-1) runSCMerge.Rd:44: Lost braces
    44 | construct pseudo-replicates. The length of code{kmeansK} needs to be the same
       |                                                ^
* checking Rd metadata ... OK
* checking Rd cross-references ... OK
* checking for missing documentation entries ... OK
* checking for code/documentation mismatches ... OK
* checking Rd \usage sections ... OK
* checking Rd contents ... OK
* checking for unstated dependencies in examples ... OK
* checking contents of ‘data’ directory ... OK
* checking data for non-ASCII characters ... OK
* checking data for ASCII and uncompressed saves ... OK
* checking R/sysdata.rda ... OK
* checking files in ‘vignettes’ ... OK
* checking examples ... OK
Examples with CPU (user + system) or elapsed time > 5s
                           user system elapsed
plotDoubletFinderResults 43.520  0.216  43.988
runDoubletFinder         39.628  0.173  40.013
plotScDblFinderResults   36.940  0.695  37.915
runScDblFinder           28.022  0.466  28.730
importExampleData        22.717  1.553  26.560
plotBatchCorrCompare     13.982  0.105  14.172
plotScdsHybridResults    10.534  0.145  10.732
plotBcdsResults           9.827  0.178  10.040
plotDecontXResults        9.823  0.065   9.937
runDecontX                8.640  0.047   8.727
plotUMAP                  8.542  0.056   8.636
runUMAP                   8.485  0.052   8.608
detectCellOutlier         7.886  0.119   8.051
plotCxdsResults           7.859  0.050   7.948
runSeuratSCTransform      6.853  0.091   7.046
plotEmptyDropsResults     6.609  0.030   6.723
runEmptyDrops             6.354  0.023   6.412
plotEmptyDropsScatter     5.811  0.027   5.980
plotTSCANClusterDEG       5.660  0.091   5.772
convertSCEToSeurat        4.922  0.185   5.122
* checking for unstated dependencies in ‘tests’ ... OK
* checking tests ...
  Running ‘spelling.R’
  Running ‘testthat.R’
 OK
* checking for unstated dependencies in vignettes ... OK
* checking package vignettes ... OK
* checking running R code from vignettes ... SKIPPED
* checking re-building of vignette outputs ... SKIPPED
* checking PDF version of manual ... OK
* DONE

Status: 3 NOTEs
See
  ‘/Users/biocbuild/bbs-3.19-bioc/meat/singleCellTK.Rcheck/00check.log’
for details.


Installation output

singleCellTK.Rcheck/00install.out

##############################################################################
##############################################################################
###
### Running command:
###
###   /Library/Frameworks/R.framework/Resources/bin/R CMD INSTALL singleCellTK
###
##############################################################################
##############################################################################


* installing to library ‘/Library/Frameworks/R.framework/Versions/4.4-arm64/Resources/library’
* installing *source* package ‘singleCellTK’ ...
** using staged installation
** R
** data
** exec
** inst
** byte-compile and prepare package for lazy loading
** help
*** installing help indices
** building package indices
** installing vignettes
** testing if installed package can be loaded from temporary location
** testing if installed package can be loaded from final location
** testing if installed package keeps a record of temporary installation path
* DONE (singleCellTK)

Tests output

singleCellTK.Rcheck/tests/spelling.Rout


R version 4.4.1 (2024-06-14) -- "Race for Your Life"
Copyright (C) 2024 The R Foundation for Statistical Computing
Platform: aarch64-apple-darwin20

R is free software and comes with ABSOLUTELY NO WARRANTY.
You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

R is a collaborative project with many contributors.
Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
Type 'q()' to quit R.

> if (requireNamespace('spelling', quietly = TRUE))
+   spelling::spell_check_test(vignettes = TRUE, error = FALSE, skip_on_cran = TRUE)
NULL
> 
> proc.time()
   user  system elapsed 
  0.214   0.058   0.259 

singleCellTK.Rcheck/tests/testthat.Rout


R version 4.4.1 (2024-06-14) -- "Race for Your Life"
Copyright (C) 2024 The R Foundation for Statistical Computing
Platform: aarch64-apple-darwin20

R is free software and comes with ABSOLUTELY NO WARRANTY.
You are welcome to redistribute it under certain conditions.
Type 'license()' or 'licence()' for distribution details.

R is a collaborative project with many contributors.
Type 'contributors()' for more information and
'citation()' on how to cite R or R packages in publications.

Type 'demo()' for some demos, 'help()' for on-line help, or
'help.start()' for an HTML browser interface to help.
Type 'q()' to quit R.

> library(testthat)
> library(singleCellTK)
Loading required package: SummarizedExperiment
Loading required package: MatrixGenerics
Loading required package: matrixStats

Attaching package: 'MatrixGenerics'

The following objects are masked from 'package:matrixStats':

    colAlls, colAnyNAs, colAnys, colAvgsPerRowSet, colCollapse,
    colCounts, colCummaxs, colCummins, colCumprods, colCumsums,
    colDiffs, colIQRDiffs, colIQRs, colLogSumExps, colMadDiffs,
    colMads, colMaxs, colMeans2, colMedians, colMins, colOrderStats,
    colProds, colQuantiles, colRanges, colRanks, colSdDiffs, colSds,
    colSums2, colTabulates, colVarDiffs, colVars, colWeightedMads,
    colWeightedMeans, colWeightedMedians, colWeightedSds,
    colWeightedVars, rowAlls, rowAnyNAs, rowAnys, rowAvgsPerColSet,
    rowCollapse, rowCounts, rowCummaxs, rowCummins, rowCumprods,
    rowCumsums, rowDiffs, rowIQRDiffs, rowIQRs, rowLogSumExps,
    rowMadDiffs, rowMads, rowMaxs, rowMeans2, rowMedians, rowMins,
    rowOrderStats, rowProds, rowQuantiles, rowRanges, rowRanks,
    rowSdDiffs, rowSds, rowSums2, rowTabulates, rowVarDiffs, rowVars,
    rowWeightedMads, rowWeightedMeans, rowWeightedMedians,
    rowWeightedSds, rowWeightedVars

Loading required package: GenomicRanges
Loading required package: stats4
Loading required package: BiocGenerics

Attaching package: 'BiocGenerics'

The following objects are masked from 'package:stats':

    IQR, mad, sd, var, xtabs

The following objects are masked from 'package:base':

    Filter, Find, Map, Position, Reduce, anyDuplicated, aperm, append,
    as.data.frame, basename, cbind, colnames, dirname, do.call,
    duplicated, eval, evalq, get, grep, grepl, intersect, is.unsorted,
    lapply, mapply, match, mget, order, paste, pmax, pmax.int, pmin,
    pmin.int, rank, rbind, rownames, sapply, setdiff, table, tapply,
    union, unique, unsplit, which.max, which.min

Loading required package: S4Vectors

Attaching package: 'S4Vectors'

The following object is masked from 'package:utils':

    findMatches

The following objects are masked from 'package:base':

    I, expand.grid, unname

Loading required package: IRanges
Loading required package: GenomeInfoDb
Loading required package: Biobase
Welcome to Bioconductor

    Vignettes contain introductory material; view with
    'browseVignettes()'. To cite Bioconductor, see
    'citation("Biobase")', and for packages 'citation("pkgname")'.


Attaching package: 'Biobase'

The following object is masked from 'package:MatrixGenerics':

    rowMedians

The following objects are masked from 'package:matrixStats':

    anyMissing, rowMedians

Loading required package: SingleCellExperiment
Loading required package: DelayedArray
Loading required package: Matrix

Attaching package: 'Matrix'

The following object is masked from 'package:S4Vectors':

    expand

Loading required package: S4Arrays
Loading required package: abind

Attaching package: 'S4Arrays'

The following object is masked from 'package:abind':

    abind

The following object is masked from 'package:base':

    rowsum

Loading required package: SparseArray

Attaching package: 'DelayedArray'

The following objects are masked from 'package:base':

    apply, scale, sweep


Attaching package: 'singleCellTK'

The following object is masked from 'package:BiocGenerics':

    plotPCA

> 
> test_check("singleCellTK")
Found 2 batches
Using null model in ComBat-seq.
Adjusting for 0 covariate(s) or covariate level(s)
Estimating dispersions
Fitting the GLM model
Shrinkage off - using GLM estimates for parameters
Adjusting the data
Found 2 batches
Using null model in ComBat-seq.
Adjusting for 1 covariate(s) or covariate level(s)
Estimating dispersions
Fitting the GLM model
Shrinkage off - using GLM estimates for parameters
Adjusting the data
Performing log-normalization
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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  |======================================================================| 100%
Calculating gene variances
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating feature variances of standardized and clipped values
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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Calculating gene variances
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating feature variances of standardized and clipped values
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Uploading data to Enrichr... Done.
  Querying HDSigDB_Human_2021... Done.
Parsing results... Done.
Performing log-normalization
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene variances
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating feature variances of standardized and clipped values
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene means
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene variance to mean ratios
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene means
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene variance to mean ratios
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
No annotation package name available in the input data object.
Attempting to directly match identifiers in data to gene sets.
Estimating GSVA scores for 34 gene sets.
Estimating ECDFs with Gaussian kernels

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No annotation package name available in the input data object.
Attempting to directly match identifiers in data to gene sets.
Estimating GSVA scores for 2 gene sets.
Estimating ECDFs with Gaussian kernels

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Performing log-normalization
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[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating gene variances
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating feature variances of standardized and clipped values
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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  |======================================================================| 100%
Performing log-normalization
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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  |======================================================================| 100%
Calculating gene variances
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Calculating feature variances of standardized and clipped values
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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Modularity Optimizer version 1.3.0 by Ludo Waltman and Nees Jan van Eck

Number of nodes: 390
Number of edges: 9849

Running Louvain algorithm...
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
Maximum modularity in 10 random starts: 0.8351
Number of communities: 7
Elapsed time: 0 seconds
Using method 'umap'
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[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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**************************************************|
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[----|----|----|----|----|----|----|----|----|----|
**************************************************|

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Performing log-normalization
0%   10   20   30   40   50   60   70   80   90   100%
[----|----|----|----|----|----|----|----|----|----|
**************************************************|
[ FAIL 0 | WARN 21 | SKIP 0 | PASS 224 ]

[ FAIL 0 | WARN 21 | SKIP 0 | PASS 224 ]
> 
> proc.time()
   user  system elapsed 
305.288   5.535 318.815 

Example timings

singleCellTK.Rcheck/singleCellTK-Ex.timings

nameusersystemelapsed
MitoGenes0.0030.0030.007
SEG0.0040.0030.007
calcEffectSizes0.2160.0180.235
combineSCE1.4850.0451.534
computeZScore0.3140.0080.323
convertSCEToSeurat4.9220.1855.122
convertSeuratToSCE0.5330.0090.544
dedupRowNames0.0690.0030.073
detectCellOutlier7.8860.1198.051
diffAbundanceFET0.0810.0040.085
discreteColorPalette0.0070.0010.008
distinctColors0.0030.0000.002
downSampleCells0.8090.0720.905
downSampleDepth0.6450.0390.688
expData-ANY-character-method0.3260.0070.336
expData-set-ANY-character-CharacterOrNullOrMissing-logical-method0.3760.0070.385
expData-set0.3610.0070.369
expData0.3540.0250.381
expDataNames-ANY-method0.3560.0230.381
expDataNames0.3170.0070.326
expDeleteDataTag0.0510.0040.055
expSetDataTag0.0380.0030.041
expTaggedData0.0390.0030.043
exportSCE0.0340.0050.039
exportSCEtoAnnData0.1400.0060.146
exportSCEtoFlatFile0.1380.0040.143
featureIndex0.0500.0040.054
generateSimulatedData0.0790.0070.085
getBiomarker0.0790.0060.085
getDEGTopTable0.9500.0441.130
getDiffAbundanceResults0.0660.0030.069
getEnrichRResult0.3630.0364.091
getFindMarkerTopTable3.5400.0573.621
getMSigDBTable0.0050.0030.009
getPathwayResultNames0.0360.0060.042
getSampleSummaryStatsTable0.3560.0070.364
getSoupX0.0010.0000.000
getTSCANResults2.0650.0472.116
getTopHVG1.4050.0231.438
importAnnData0.0020.0000.003
importBUStools0.2620.0060.269
importCellRanger1.2360.0391.283
importCellRangerV2Sample0.2550.0030.259
importCellRangerV3Sample0.4280.0150.445
importDropEst0.3320.0040.337
importExampleData22.717 1.55326.560
importGeneSetsFromCollection0.8460.0740.922
importGeneSetsFromGMT0.0850.0050.091
importGeneSetsFromList0.1400.0080.149
importGeneSetsFromMSigDB3.1820.1113.308
importMitoGeneSet0.0690.0090.077
importOptimus0.0020.0000.002
importSEQC0.3370.0120.351
importSTARsolo0.2800.0050.287
iterateSimulations0.3950.0120.412
listSampleSummaryStatsTables0.5220.0090.533
mergeSCEColData0.5180.0230.546
mouseBrainSubsetSCE0.0520.0060.058
msigdb_table0.0020.0030.004
plotBarcodeRankDropsResults0.9730.0210.996
plotBarcodeRankScatter0.9260.0120.943
plotBatchCorrCompare13.982 0.10514.172
plotBatchVariance0.3640.0250.393
plotBcdsResults 9.827 0.17810.040
plotBubble1.1320.0321.172
plotClusterAbundance0.8540.0080.869
plotCxdsResults7.8590.0507.948
plotDEGHeatmap2.7650.0922.946
plotDEGRegression3.8190.0513.883
plotDEGViolin4.7650.0914.875
plotDEGVolcano1.2350.0191.267
plotDecontXResults9.8230.0659.937
plotDimRed0.3260.0090.337
plotDoubletFinderResults43.520 0.21643.988
plotEmptyDropsResults6.6090.0306.723
plotEmptyDropsScatter5.8110.0275.980
plotFindMarkerHeatmap4.8750.0354.924
plotMASTThresholdGenes1.6800.0371.723
plotPCA0.5400.0130.560
plotPathway0.9450.0150.966
plotRunPerCellQCResults2.2590.0232.292
plotSCEBarAssayData0.2290.0100.243
plotSCEBarColData0.1660.0070.175
plotSCEBatchFeatureMean0.2070.0060.227
plotSCEDensity0.2930.0120.309
plotSCEDensityAssayData0.1890.0090.198
plotSCEDensityColData0.2320.0070.240
plotSCEDimReduceColData0.7590.0150.778
plotSCEDimReduceFeatures0.4750.0130.489
plotSCEHeatmap0.6840.0090.696
plotSCEScatter0.3960.0090.406
plotSCEViolin0.2590.0090.269
plotSCEViolinAssayData0.3220.0100.334
plotSCEViolinColData0.2620.0090.273
plotScDblFinderResults36.940 0.69537.915
plotScanpyDotPlot0.0360.0020.037
plotScanpyEmbedding0.0400.0040.043
plotScanpyHVG0.0360.0040.041
plotScanpyHeatmap0.0340.0040.038
plotScanpyMarkerGenes0.0340.0040.039
plotScanpyMarkerGenesDotPlot0.0350.0040.042
plotScanpyMarkerGenesHeatmap0.0370.0030.041
plotScanpyMarkerGenesMatrixPlot0.0320.0090.041
plotScanpyMarkerGenesViolin0.0320.0020.034
plotScanpyMatrixPlot0.0330.0070.041
plotScanpyPCA0.0340.0050.039
plotScanpyPCAGeneRanking0.0380.0040.049
plotScanpyPCAVariance0.0380.0050.046
plotScanpyViolin0.0380.0030.041
plotScdsHybridResults10.534 0.14510.732
plotScrubletResults0.0370.0030.041
plotSeuratElbow0.0380.0100.047
plotSeuratHVG0.0400.0030.043
plotSeuratJackStraw0.0400.0030.043
plotSeuratReduction0.0390.0110.049
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plotTSCANClusterDEG5.6600.0915.772
plotTSCANClusterPseudo2.4860.0322.545
plotTSCANDimReduceFeatures2.5360.0312.610
plotTSCANPseudotimeGenes2.3790.0322.419
plotTSCANPseudotimeHeatmap2.6040.0382.650
plotTSCANResults2.3310.0342.374
plotTSNE0.5920.0150.611
plotTopHVG0.5790.0180.601
plotUMAP8.5420.0568.636
readSingleCellMatrix0.0060.0010.007
reportCellQC0.1990.0130.213
reportDropletQC0.0370.0060.043
reportQCTool0.2020.0070.208
retrieveSCEIndex0.0440.0050.048
runBBKNN000
runBarcodeRankDrops0.4550.0140.470
runBcds2.0950.1092.215
runCellQC0.2070.0070.215
runClusterSummaryMetrics0.8190.0310.854
runComBatSeq0.5270.0130.541
runCxds0.5370.0140.553
runCxdsBcdsHybrid2.1380.1452.299
runDEAnalysis0.8490.0320.894
runDecontX8.6400.0478.727
runDimReduce0.4870.0080.497
runDoubletFinder39.628 0.17340.013
runDropletQC0.0350.0090.044
runEmptyDrops6.3540.0236.412
runEnrichR0.3480.0254.068
runFastMNN1.6360.0411.687
runFeatureSelection0.2530.0050.258
runFindMarker3.8190.0713.922
runGSVA1.0010.0371.041
runHarmony0.0470.0020.049
runKMeans0.5090.0190.529
runLimmaBC0.0930.0020.095
runMNNCorrect0.6680.0140.685
runModelGeneVar0.4930.0110.505
runNormalization2.9430.0362.996
runPerCellQC0.4210.0140.444
runSCANORAMA0.0000.0010.000
runSCMerge0.0030.0000.003
runScDblFinder28.022 0.46628.730
runScanpyFindClusters0.0390.0020.041
runScanpyFindHVG0.0340.0030.038
runScanpyFindMarkers0.0340.0040.037
runScanpyNormalizeData0.2160.0050.221
runScanpyPCA0.0330.0020.035
runScanpyScaleData0.0330.0040.040
runScanpyTSNE0.0350.0020.037
runScanpyUMAP0.0340.0040.038
runScranSNN0.8430.0160.862
runScrublet0.0420.0030.046
runSeuratFindClusters0.0330.0010.035
runSeuratFindHVG0.8820.0560.942
runSeuratHeatmap0.0350.0070.049
runSeuratICA0.0380.0040.042
runSeuratJackStraw0.0390.0050.055
runSeuratNormalizeData0.0390.0020.042
runSeuratPCA0.0370.0050.043
runSeuratSCTransform6.8530.0917.046
runSeuratScaleData0.0400.0040.044
runSeuratUMAP0.0390.0080.047
runSingleR0.0390.0040.042
runSoupX000
runTSCAN1.6480.0251.681
runTSCANClusterDEAnalysis1.6330.0271.668
runTSCANDEG1.4900.0271.525
runTSNE1.1000.0331.135
runUMAP8.4850.0528.608
runVAM0.5270.0070.534
runZINBWaVE0.0050.0000.006
sampleSummaryStats0.3040.0050.315
scaterCPM0.1910.0050.196
scaterPCA0.6850.0250.709
scaterlogNormCounts0.3110.0090.320
sce0.0370.0100.047
sctkListGeneSetCollections0.0920.0140.107
sctkPythonInstallConda000
sctkPythonInstallVirtualEnv0.0000.0010.000
selectSCTKConda000
selectSCTKVirtualEnvironment000
setRowNames0.1850.0230.208
setSCTKDisplayRow0.4270.0080.436
singleCellTK000
subDiffEx0.5470.0290.577
subsetSCECols0.1920.0110.203
subsetSCERows0.4660.0180.485
summarizeSCE0.0880.0090.098
trimCounts0.2700.0150.285