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Rmd 10fdcb0 jeremymsimon 2022-09-14 Initial commit

Load packages and gene annotations

library(tidyverse)
── Attaching packages ─────────────────────────────────────── tidyverse 1.3.1 ──
✔ ggplot2 3.3.6     ✔ purrr   0.3.4
✔ tibble  3.1.8     ✔ dplyr   1.0.9
✔ tidyr   1.2.0     ✔ stringr 1.4.0
✔ readr   2.1.2     ✔ forcats 0.5.1
── Conflicts ────────────────────────────────────────── tidyverse_conflicts() ──
✖ dplyr::filter() masks stats::filter()
✖ dplyr::lag()    masks stats::lag()
library(GenomicRanges)
Loading required package: stats4
Loading required package: BiocGenerics

Attaching package: 'BiocGenerics'
The following objects are masked from 'package:dplyr':

    combine, intersect, setdiff, union
The following objects are masked from 'package:stats':

    IQR, mad, sd, var, xtabs
The following objects are masked from 'package:base':

    anyDuplicated, append, as.data.frame, basename, cbind, colnames,
    dirname, do.call, duplicated, eval, evalq, Filter, Find, get, grep,
    grepl, intersect, is.unsorted, lapply, Map, mapply, match, mget,
    order, paste, pmax, pmax.int, pmin, pmin.int, Position, rank,
    rbind, Reduce, rownames, sapply, setdiff, sort, table, tapply,
    union, unique, unsplit, which.max, which.min
Loading required package: S4Vectors

Attaching package: 'S4Vectors'
The following objects are masked from 'package:dplyr':

    first, rename
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    expand
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    expand.grid, I, unname
Loading required package: IRanges

Attaching package: 'IRanges'
The following objects are masked from 'package:dplyr':

    collapse, desc, slice
The following object is masked from 'package:purrr':

    reduce
Loading required package: GenomeInfoDb
library(Seurat)
Attaching SeuratObject
library(Signac)
library(EnsDb.Hsapiens.v86)
Loading required package: ensembldb
Loading required package: GenomicFeatures
Loading required package: AnnotationDbi
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: 'AnnotationDbi'
The following object is masked from 'package:dplyr':

    select
Loading required package: AnnotationFilter

Attaching package: 'ensembldb'
The following object is masked from 'package:dplyr':

    filter
The following object is masked from 'package:stats':

    filter
annotations <- GetGRangesFromEnsDb(ensdb = EnsDb.Hsapiens.v86)
Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)

Warning in .Seqinfo.mergexy(x, y): The 2 combined objects have no sequence levels in common. (Use
  suppressWarnings() to suppress this warning.)
seqlevelsStyle(annotations) <- 'UCSC'

PBMC

Import cellranger counts and metadata

Warning in sparseMatrix(i = indices[] + 1, p = indptr[], x = as.numeric(x =
counts[]), : 'giveCsparse' has been deprecated; setting 'repr = "T"' for you
PBMC_cr_counts <- Read10X_h5(filename = "10x_PBMC_cellranger/outs/filtered_peak_bc_matrix.h5")
PBMC_cr_metadata <- read.csv(
  file = "10x_PBMC_cellranger/outs/singlecell.csv",
  header = TRUE,
  row.names = 1
)

Create chromatin assay and seurat object

Computing hash
PBMC_cr_chrom_assay <- CreateChromatinAssay(
  counts = PBMC_cr_counts,
  sep = c(":", "-"),
  genome = 'hg38',
  fragments = '10x_PBMC_cellranger/outs/fragments.tsv.gz',
  min.cells = 10,
  min.features = 200
)
PBMC_cr_seurat <- CreateSeuratObject(
  counts = PBMC_cr_chrom_assay,
  assay = "peaks",
  meta.data = PBMC_cr_metadata
)
Warning in CreateSeuratObject.Assay(counts = PBMC_cr_chrom_assay, assay =
"peaks", : Some cells in meta.data not present in provided counts matrix.
Warning: Keys should be one or more alphanumeric characters followed by an
underscore, setting key from peaks to peaks_

Add gene annotation information to the object and prepend cell type on cell barcodes

Annotation(PBMC_cr_seurat) <- annotations

PBMC_cr_seurat$Sample <- "PBMC"
PBMC_cr_seurat <- RenameCells(PBMC_cr_seurat, add.cell.id = "PBMC")

HGMM

Import cellranger counts and metadata

Warning in sparseMatrix(i = indices[] + 1, p = indptr[], x = as.numeric(x =
counts[]), : 'giveCsparse' has been deprecated; setting 'repr = "T"' for you
HGMM_cr_counts <- Read10X_h5(filename = "10x_HGMM_cellranger/outs/filtered_peak_bc_matrix.h5")
HGMM_cr_metadata <- read.csv(
  file = "10x_HGMM_cellranger/outs/singlecell.csv",
  header = TRUE,
  row.names = 1
)

Create chromatin assay and seurat object

Computing hash
HGMM_cr_chrom_assay <- CreateChromatinAssay(
  counts = HGMM_cr_counts,
  sep = c(":", "-"),
  genome = 'hg38',
  fragments = '10x_HGMM_cellranger/outs/fragments.tsv.gz',
  min.cells = 10,
  min.features = 200
)
HGMM_cr_seurat <- CreateSeuratObject(
  counts = HGMM_cr_chrom_assay,
  assay = "peaks",
  meta.data = HGMM_cr_metadata
)
Warning in CreateSeuratObject.Assay(counts = HGMM_cr_chrom_assay, assay =
"peaks", : Some cells in meta.data not present in provided counts matrix.
Warning: Keys should be one or more alphanumeric characters followed by an
underscore, setting key from peaks to peaks_

Add gene annotation information to the object and prepend cell type on cell barcodes

Annotation(HGMM_cr_seurat) <- annotations

HGMM_cr_seurat$Sample <- "HGMM"
HGMM_cr_seurat <- RenameCells(HGMM_cr_seurat, add.cell.id = "HGMM")

Compute QC metrics

HGMM

HGMM_cr_path <- '10x_HGMM_cellranger/outs/fragments.tsv.gz'
HGMM_cr_fragmentInfo <- CountFragments(HGMM_cr_path)
rownames(HGMM_cr_fragmentInfo) <- paste0(HGMM_cr_seurat$Sample,"_",HGMM_cr_fragmentInfo$CB)

# Attach cell metadata to seurat object
HGMM_cr_seurat$fragments <- HGMM_cr_fragmentInfo[colnames(HGMM_cr_seurat), "frequency_count"]
HGMM_cr_seurat$mononucleosomal <- HGMM_cr_fragmentInfo[colnames(HGMM_cr_seurat), "mononucleosomal"]
HGMM_cr_seurat$nucleosome_free <- HGMM_cr_fragmentInfo[colnames(HGMM_cr_seurat), "nucleosome_free"]
HGMM_cr_seurat$reads_count <- HGMM_cr_fragmentInfo[colnames(HGMM_cr_seurat), "reads_count"]

# Calculate FRiP
HGMM_cr_seurat <- FRiP(
  object = HGMM_cr_seurat,
  assay = 'peaks',
  total.fragments = "fragments"
)
Calculating fraction of reads in peaks per cell
# Calculate signal over excluded regions
HGMM_cr_seurat$blacklist_fraction <- FractionCountsInRegion(
  object = HGMM_cr_seurat, 
  assay = 'peaks',
  regions = blacklist_hg38
)

# Compute nucleosome signal score per cell
HGMM_cr_seurat <- NucleosomeSignal(HGMM_cr_seurat)

# Compute TSS enrichment
HGMM_cr_seurat <- TSSEnrichment(HGMM_cr_seurat, fast=FALSE)
Extracting TSS positions
Finding + strand cut sites
Finding - strand cut sites
Computing mean insertion frequency in flanking regions
Normalizing TSS score

Plot TSS enrichment

HGMM_cr_seurat$high.tss <- ifelse(HGMM_cr_seurat$TSS.enrichment > 2, 'High', 'Low')
TSSPlot(HGMM_cr_seurat, group.by = 'high.tss') + NoLegend()

Plot nucleosome fragment length periodicity for all cells

HGMM_cr_seurat$nucleosome_group <- ifelse(HGMM_cr_seurat$nucleosome_signal > 4, 'NS > 4', 'NS < 4')
FragmentHistogram(object = HGMM_cr_seurat, group.by = 'nucleosome_group')
Warning: Removed 72 rows containing non-finite values (stat_bin).
Warning: Removed 4 rows containing missing values (geom_bar).

PBMC

PBMC_cr_path <- '10x_PBMC_cellranger/outs/fragments.tsv.gz'
PBMC_cr_fragmentInfo <- CountFragments(PBMC_cr_path)
rownames(PBMC_cr_fragmentInfo) <- paste0(PBMC_cr_seurat$Sample,"_",PBMC_cr_fragmentInfo$CB)

# Attach cell metadata to seurat object
PBMC_cr_seurat$fragments <- PBMC_cr_fragmentInfo[colnames(PBMC_cr_seurat), "frequency_count"]
PBMC_cr_seurat$mononucleosomal <- PBMC_cr_fragmentInfo[colnames(PBMC_cr_seurat), "mononucleosomal"]
PBMC_cr_seurat$nucleosome_free <- PBMC_cr_fragmentInfo[colnames(PBMC_cr_seurat), "nucleosome_free"]
PBMC_cr_seurat$reads_count <- PBMC_cr_fragmentInfo[colnames(PBMC_cr_seurat), "reads_count"]

# Calculate FRiP
PBMC_cr_seurat <- FRiP(
  object = PBMC_cr_seurat,
  assay = 'peaks',
  total.fragments = "fragments"
)
Calculating fraction of reads in peaks per cell
# Calculate signal over excluded regions
PBMC_cr_seurat$blacklist_fraction <- FractionCountsInRegion(
  object = PBMC_cr_seurat, 
  assay = 'peaks',
  regions = blacklist_hg38
)

# Compute nucleosome signal score per cell
PBMC_cr_seurat <- NucleosomeSignal(PBMC_cr_seurat)

# Compute TSS enrichment
PBMC_cr_seurat <- TSSEnrichment(PBMC_cr_seurat, fast=FALSE)
Extracting TSS positions
Finding + strand cut sites
Finding - strand cut sites
Computing mean insertion frequency in flanking regions
Normalizing TSS score

Plot TSS enrichment

PBMC_cr_seurat$high.tss <- ifelse(PBMC_cr_seurat$TSS.enrichment > 2, 'High', 'Low')
TSSPlot(PBMC_cr_seurat, group.by = 'high.tss') + NoLegend()

Plot nucleosome fragment length periodicity for all cells

PBMC_cr_seurat$nucleosome_group <- ifelse(PBMC_cr_seurat$nucleosome_signal > 4, 'NS > 4', 'NS < 4')
FragmentHistogram(object = PBMC_cr_seurat, group.by = 'nucleosome_group')
Warning: Removed 63 rows containing non-finite values (stat_bin).
Warning: Removed 4 rows containing missing values (geom_bar).

Save workspace

save.image("Cellranger_HGMM_PBMC_seurat_090222_QC.RData")

sessionInfo()
R version 4.1.0 (2021-05-18)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: Red Hat Enterprise Linux 8.5 (Ootpa)

Matrix products: default
BLAS/LAPACK: /nas/longleaf/rhel8/apps/r/4.1.0/lib/libopenblas_haswellp-r0.3.5.so

locale:
 [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
 [3] LC_TIME=en_US.UTF-8        LC_COLLATE=en_US.UTF-8    
 [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8   
 [7] LC_PAPER=en_US.UTF-8       LC_NAME=C                 
 [9] LC_ADDRESS=C               LC_TELEPHONE=C            
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       

attached base packages:
[1] stats4    stats     graphics  grDevices utils     datasets  methods  
[8] base     

other attached packages:
 [1] EnsDb.Hsapiens.v86_2.99.0 ensembldb_2.18.3         
 [3] AnnotationFilter_1.18.0   GenomicFeatures_1.46.5   
 [5] AnnotationDbi_1.56.2      Biobase_2.54.0           
 [7] Signac_1.7.0.9003         SeuratObject_4.0.4       
 [9] Seurat_4.1.0              GenomicRanges_1.46.1     
[11] GenomeInfoDb_1.30.1       IRanges_2.28.0           
[13] S4Vectors_0.32.4          BiocGenerics_0.40.0      
[15] forcats_0.5.1             stringr_1.4.0            
[17] dplyr_1.0.9               purrr_0.3.4              
[19] readr_2.1.2               tidyr_1.2.0              
[21] tibble_3.1.8              ggplot2_3.3.6            
[23] tidyverse_1.3.1           workflowr_1.7.0          

loaded via a namespace (and not attached):
  [1] rappdirs_0.3.3              rtracklayer_1.54.0         
  [3] scattermore_0.8             bit64_4.0.5                
  [5] knitr_1.37                  irlba_2.3.5                
  [7] DelayedArray_0.20.0         data.table_1.14.2          
  [9] rpart_4.1.16                KEGGREST_1.34.0            
 [11] RCurl_1.98-1.6              generics_0.1.2             
 [13] callr_3.7.0                 cowplot_1.1.1              
 [15] RSQLite_2.2.10              RANN_2.6.1                 
 [17] future_1.24.0               bit_4.0.4                  
 [19] tzdb_0.2.0                  spatstat.data_2.1-2        
 [21] xml2_1.3.3                  lubridate_1.8.0            
 [23] httpuv_1.6.5                SummarizedExperiment_1.24.0
 [25] assertthat_0.2.1            xfun_0.30                  
 [27] hms_1.1.1                   jquerylib_0.1.4            
 [29] evaluate_0.15               promises_1.2.0.1           
 [31] fansi_1.0.3                 restfulr_0.0.13            
 [33] progress_1.2.2              dbplyr_2.1.1               
 [35] readxl_1.3.1                igraph_1.3.3               
 [37] DBI_1.1.2                   htmlwidgets_1.5.4          
 [39] spatstat.geom_2.3-2         ellipsis_0.3.2             
 [41] backports_1.4.1             biomaRt_2.50.3             
 [43] deldir_1.0-6                MatrixGenerics_1.6.0       
 [45] vctrs_0.4.1                 ROCR_1.0-11                
 [47] abind_1.4-5                 cachem_1.0.6               
 [49] withr_2.5.0                 BSgenome_1.62.0            
 [51] checkmate_2.0.0             sctransform_0.3.3          
 [53] GenomicAlignments_1.30.0    prettyunits_1.1.1          
 [55] goftest_1.2-3               cluster_2.1.2              
 [57] lazyeval_0.2.2              crayon_1.5.1               
 [59] hdf5r_1.3.5                 pkgconfig_2.0.3            
 [61] labeling_0.4.2              nlme_3.1-155               
 [63] ProtGenerics_1.26.0         nnet_7.3-17                
 [65] rlang_1.0.4                 globals_0.14.0             
 [67] lifecycle_1.0.1             miniUI_0.1.1.1             
 [69] filelock_1.0.2              BiocFileCache_2.2.1        
 [71] modelr_0.1.8                dichromat_2.0-0            
 [73] cellranger_1.1.0            rprojroot_2.0.2            
 [75] polyclip_1.10-0             matrixStats_0.62.0         
 [77] lmtest_0.9-40               Matrix_1.4-0               
 [79] zoo_1.8-9                   reprex_2.0.1               
 [81] base64enc_0.1-3             whisker_0.4                
 [83] ggridges_0.5.3              processx_3.5.2             
 [85] png_0.1-7                   viridisLite_0.4.0          
 [87] rjson_0.2.21                bitops_1.0-7               
 [89] getPass_0.2-2               KernSmooth_2.23-20         
 [91] Biostrings_2.62.0           blob_1.2.2                 
 [93] parallelly_1.30.0           spatstat.random_2.1-0      
 [95] jpeg_0.1-9                  scales_1.2.0               
 [97] memoise_2.0.1               magrittr_2.0.2             
 [99] plyr_1.8.7                  ica_1.0-2                  
[101] zlibbioc_1.40.0             compiler_4.1.0             
[103] BiocIO_1.4.0                RColorBrewer_1.1-3         
[105] fitdistrplus_1.1-6          Rsamtools_2.10.0           
[107] cli_3.3.0                   XVector_0.34.0             
[109] listenv_0.8.0               patchwork_1.1.1            
[111] pbapply_1.5-0               ps_1.6.0                   
[113] htmlTable_2.4.0             Formula_1.2-4              
[115] MASS_7.3-55                 mgcv_1.8-40                
[117] tidyselect_1.1.2            stringi_1.7.6              
[119] highr_0.9                   yaml_2.3.5                 
[121] latticeExtra_0.6-29         ggrepel_0.9.1              
[123] grid_4.1.0                  sass_0.4.0                 
[125] VariantAnnotation_1.40.0    fastmatch_1.1-3            
[127] tools_4.1.0                 future.apply_1.8.1         
[129] parallel_4.1.0              rstudioapi_0.13            
[131] foreign_0.8-82              git2r_0.30.1               
[133] gridExtra_2.3               farver_2.1.0               
[135] Rtsne_0.15                  digest_0.6.29              
[137] shiny_1.7.1                 Rcpp_1.0.8.3               
[139] broom_1.0.0                 later_1.3.0                
[141] RcppAnnoy_0.0.19            httr_1.4.2                 
[143] biovizBase_1.42.0           colorspace_2.0-3           
[145] rvest_1.0.2                 XML_3.99-0.9               
[147] fs_1.5.2                    tensor_1.5                 
[149] reticulate_1.25             splines_4.1.0              
[151] uwot_0.1.11                 RcppRoll_0.3.0             
[153] spatstat.utils_2.3-0        plotly_4.10.0              
[155] xtable_1.8-4                jsonlite_1.8.0             
[157] R6_2.5.1                    Hmisc_4.6-0                
[159] pillar_1.7.0                htmltools_0.5.2            
[161] mime_0.12                   glue_1.6.2                 
[163] fastmap_1.1.0               BiocParallel_1.28.3        
[165] codetools_0.2-18            utf8_1.2.2                 
[167] lattice_0.20-45             bslib_0.3.1                
[169] spatstat.sparse_2.1-0       curl_4.3.2                 
[171] leiden_0.3.9                survival_3.2-13            
[173] rmarkdown_2.12              munsell_0.5.0              
[175] GenomeInfoDbData_1.2.7      haven_2.4.3                
[177] reshape2_1.4.4              gtable_0.3.0               
[179] spatstat.core_2.4-0