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sc-rna-filter.cwl
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sc-rna-filter.cwl
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cwlVersion: v1.0
class: CommandLineTool
requirements:
- class: InlineJavascriptRequirement
- class: InitialWorkDirRequirement
listing:
- entryname: dummy_metadata.csv
entry: |
library_id
Experiment
- class: EnvVarRequirement
envDef:
R_MAX_VSIZE: $((inputs.vector_memory_limit * 1000000000).toString())
hints:
- class: DockerRequirement
dockerPull: biowardrobe2/sc-tools:v0.0.13
inputs:
feature_bc_matrices_folder:
type: Directory
inputBinding:
prefix: "--mex"
doc: |
Path to the folder with feature-barcode matrix from Cell Ranger Count/Aggregate
experiment in MEX format.
aggregation_metadata:
type: File?
doc: |
Path to the metadata TSV/CSV file to set the datasets identities. If '--mex' points to
the Cell Ranger Aggregate outputs, the aggregation.csv file can be used. If input is not
provided, the default dummy_metadata.csv will be used instead.
grouping_data:
type: File?
inputBinding:
prefix: "--grouping"
doc: |
Path to the TSV/CSV file to define datasets grouping.
First column - 'library_id' with the values and order
that correspond to the 'library_id' column from the '
--identity' file, second column 'condition'.
Default: each dataset is assigned to its own group.
barcodes_data:
type: File?
inputBinding:
prefix: "--barcodes"
doc: |
Path to the TSV/CSV file to optionally prefilter and
extend Seurat object metadata be selected barcodes.
First column should be named as 'barcode'. If file
includes any other columns they will be added to the
Seurat object metadata ovewriting the existing ones if
those are present.
Default: all cells used, no extra metadata is added
rna_minimum_cells:
type: int?
inputBinding:
prefix: "--rnamincells"
doc: |
Include only genes detected in at least this many cells.
Default: 5 (applied to all datasets)
minimum_genes:
type:
- "null"
- int
- int[]
inputBinding:
prefix: "--mingenes"
doc: |
Include cells where at least this many genes are detected. If multiple values
provided, each of them will be applied to the correspondent dataset from the
'--mex' input based on the '--identity' file.
Default: 250 (applied to all datasets)
maximum_genes:
type:
- "null"
- int
- int[]
inputBinding:
prefix: "--maxgenes"
doc: |
Include cells with the number of genes not bigger than this value. If multiple
values provided, each of them will be applied to the correspondent dataset from
the '--mex' input based on the '--identity' file.
Default: 5000 (applied to all datasets)
rna_minimum_umi:
type:
- "null"
- int
- int[]
inputBinding:
prefix: "--rnaminumi"
doc: |
Include cells where at least this many UMI (transcripts) are detected.
If multiple values provided, each of them will be applied to the correspondent
dataset from the '--mex' input based on the '--identity' file.
Default: 500 (applied to all datasets)
minimum_novelty_score:
type:
- "null"
- float
- float[]
inputBinding:
prefix: "--minnovelty"
doc: |
Include cells with the novelty score not lower than this value, calculated for
as log10(genes)/log10(UMI). If multiple values provided, each of them will
be applied to the correspondent dataset from the '--mex' input based on the
'--identity' file.
Default: 0.8 (applied to all datasets)
mito_pattern:
type: string?
inputBinding:
prefix: "--mitopattern"
doc: |
Regex pattern to identify mitochondrial genes.
Default: '^Mt-'
maximum_mito_perc:
type: float?
inputBinding:
prefix: "--maxmt"
doc: |
Include cells with the percentage of transcripts mapped to mitochondrial
genes not bigger than this value.
Default: 5 (applied to all datasets)
export_pdf_plots:
type: boolean?
inputBinding:
prefix: "--pdf"
doc: |
Export plots in PDF.
Default: false
color_theme:
type:
- "null"
- type: enum
symbols:
- "gray"
- "bw"
- "linedraw"
- "light"
- "dark"
- "minimal"
- "classic"
- "void"
inputBinding:
prefix: "--theme"
doc: |
Color theme for all generated plots. One of gray, bw, linedraw, light,
dark, minimal, classic, void.
Default: classic
verbose:
type: boolean?
inputBinding:
prefix: "--verbose"
doc: |
Print debug information.
Default: false
export_h5seurat_data:
type: boolean?
inputBinding:
prefix: "--h5seurat"
doc: |
Save Seurat data to h5seurat file.
Default: false
export_h5ad_data:
type: boolean?
inputBinding:
prefix: "--h5ad"
doc: |
Save Seurat data to h5ad file.
Default: false
output_prefix:
type: string?
inputBinding:
prefix: "--output"
doc: |
Output prefix.
Default: ./sc
parallel_memory_limit:
type: int?
inputBinding:
prefix: "--memory"
doc: |
Maximum memory in GB allowed to be shared between the workers
when using multiple --cpus.
Default: 32
vector_memory_limit:
type: int?
default: 128
doc: |
Maximum vector memory in GB allowed to be used by R.
Default: 128
threads:
type: int?
inputBinding:
prefix: "--cpus"
doc: |
Number of cores/cpus to use.
Default: 1
outputs:
raw_1_2_qc_mtrcs_pca_plot_png:
type: File?
outputBinding:
glob: "*_raw_1_2_qc_mtrcs_pca.png"
doc: |
PC1 and PC2 from the QC metrics PCA (not filtered).
PNG format
raw_1_2_qc_mtrcs_pca_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_1_2_qc_mtrcs_pca.pdf"
doc: |
PC1 and PC2 from the QC metrics PCA (not filtered).
PDF format
raw_2_3_qc_mtrcs_pca_plot_png:
type: File?
outputBinding:
glob: "*_raw_2_3_qc_mtrcs_pca.png"
doc: |
PC2 and PC3 from the QC metrics PCA (not filtered).
PNG format
raw_2_3_qc_mtrcs_pca_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_2_3_qc_mtrcs_pca.pdf"
doc: |
PC2 and PC3 from the QC metrics PCA (not filtered).
PDF format
raw_cells_count_plot_png:
type: File?
outputBinding:
glob: "*_raw_cells_count.png"
doc: |
Number of cells per dataset (not filtered).
PNG format
raw_cells_count_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_cells_count.pdf"
doc: |
Number of cells per dataset (not filtered).
PDF format
raw_umi_dnst_plot_png:
type: File?
outputBinding:
glob: "*_raw_umi_dnst.png"
doc: |
UMI per cell density (not filtered).
PNG format
raw_umi_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_umi_dnst.pdf"
doc: |
UMI per cell density (not filtered).
PDF format
raw_gene_dnst_plot_png:
type: File?
outputBinding:
glob: "*_raw_gene_dnst.png"
doc: |
Genes per cell density (not filtered).
PNG format
raw_gene_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_gene_dnst.pdf"
doc: |
Genes per cell density (not filtered).
PDF format
raw_gene_umi_corr_plot_png:
type: File?
outputBinding:
glob: "*_raw_gene_umi_corr.png"
doc: |
Genes vs UMI per cell correlation (not filtered).
PNG format
raw_gene_umi_corr_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_gene_umi_corr.pdf"
doc: |
Genes vs UMI per cell correlation (not filtered).
PDF format
raw_mito_dnst_plot_png:
type: File?
outputBinding:
glob: "*_raw_mito_dnst.png"
doc: |
Percentage of transcripts mapped to mitochondrial genes per cell density (not filtered).
PNG format
raw_mito_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_mito_dnst.pdf"
doc: |
Percentage of transcripts mapped to mitochondrial genes per cell density (not filtered).
PDF format
raw_nvlt_dnst_plot_png:
type: File?
outputBinding:
glob: "*_raw_nvlt_dnst.png"
doc: |
Novelty score per cell density (not filtered).
PNG format
raw_nvlt_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_nvlt_dnst.pdf"
doc: |
Novelty score per cell density (not filtered).
PDF format
raw_qc_mtrcs_dnst_plot_png:
type: File?
outputBinding:
glob: "*_raw_qc_mtrcs_dnst.png"
doc: |
QC metrics per cell density (not filtered).
PNG format
raw_qc_mtrcs_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_qc_mtrcs_dnst.pdf"
doc: |
QC metrics per cell density (not filtered).
PDF format
raw_umi_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_raw_umi_dnst_spl_cnd.png"
doc: |
Split by grouping condition UMI per cell density (not filtered).
PNG format
raw_umi_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_umi_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition UMI per cell density (not filtered).
PDF format
raw_gene_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_raw_gene_dnst_spl_cnd.png"
doc: |
Split by grouping condition genes per cell density (not filtered).
PNG format
raw_gene_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_gene_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition genes per cell density (not filtered).
PDF format
raw_mito_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_raw_mito_dnst_spl_cnd.png"
doc: |
Split by grouping condition the percentage of transcripts mapped
to mitochondrial genes per cell density (not filtered).
PNG format
raw_mito_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_mito_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition the percentage of transcripts mapped
to mitochondrial genes per cell density (not filtered).
PDF format
raw_nvlt_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_raw_nvlt_dnst_spl_cnd.png"
doc: |
Split by grouping condition the novelty score per cell density (not filtered).
PNG format
raw_nvlt_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_raw_nvlt_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition the novelty score per cell density (not filtered).
PDF format
fltr_1_2_qc_mtrcs_pca_plot_png:
type: File?
outputBinding:
glob: "*_fltr_1_2_qc_mtrcs_pca.png"
doc: |
PC1 and PC2 from the QC metrics PCA (filtered).
PNG format
fltr_1_2_qc_mtrcs_pca_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_1_2_qc_mtrcs_pca.pdf"
doc: |
PC1 and PC2 from the QC metrics PCA (filtered).
PDF format
fltr_2_3_qc_mtrcs_pca_plot_png:
type: File?
outputBinding:
glob: "*_fltr_2_3_qc_mtrcs_pca.png"
doc: |
PC2 and PC3 from the QC metrics PCA (filtered).
PNG format
fltr_2_3_qc_mtrcs_pca_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_2_3_qc_mtrcs_pca.pdf"
doc: |
PC2 and PC3 from the QC metrics PCA (filtered).
PDF format
fltr_cells_count_plot_png:
type: File?
outputBinding:
glob: "*_fltr_cells_count.png"
doc: |
Number of cells per dataset (filtered).
PNG format
fltr_cells_count_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_cells_count.pdf"
doc: |
Number of cells per dataset (filtered).
PDF format
fltr_umi_dnst_plot_png:
type: File?
outputBinding:
glob: "*_fltr_umi_dnst.png"
doc: |
UMI per cell density (filtered).
PNG format
fltr_umi_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_umi_dnst.pdf"
doc: |
UMI per cell density (filtered).
PDF format
fltr_gene_dnst_plot_png:
type: File?
outputBinding:
glob: "*_fltr_gene_dnst.png"
doc: |
Genes per cell density (filtered).
PNG format
fltr_gene_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_gene_dnst.pdf"
doc: |
Genes per cell density (filtered).
PDF format
fltr_gene_umi_corr_plot_png:
type: File?
outputBinding:
glob: "*_fltr_gene_umi_corr.png"
doc: |
Genes vs UMI per cell correlation (filtered).
PNG format
fltr_gene_umi_corr_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_gene_umi_corr.pdf"
doc: |
Genes vs UMI per cell correlation (filtered).
PDF format
fltr_mito_dnst_plot_png:
type: File?
outputBinding:
glob: "*_fltr_mito_dnst.png"
doc: |
Percentage of transcripts mapped to mitochondrial genes per cell density (filtered).
PNG format
fltr_mito_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_mito_dnst.pdf"
doc: |
Percentage of transcripts mapped to mitochondrial genes per cell density (filtered).
PDF format
fltr_nvlt_dnst_plot_png:
type: File?
outputBinding:
glob: "*_fltr_nvlt_dnst.png"
doc: |
Novelty score per cell density (filtered).
PNG format
fltr_nvlt_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_nvlt_dnst.pdf"
doc: |
Novelty score per cell density (filtered).
PDF format
fltr_qc_mtrcs_dnst_plot_png:
type: File?
outputBinding:
glob: "*_fltr_qc_mtrcs_dnst.png"
doc: |
QC metrics per cell density (filtered).
PNG format
fltr_qc_mtrcs_dnst_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_qc_mtrcs_dnst.pdf"
doc: |
QC metrics per cell density (filtered).
PDF format
fltr_umi_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_fltr_umi_dnst_spl_cnd.png"
doc: |
Split by grouping condition UMI per cell density (filtered).
PNG format
fltr_umi_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_umi_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition UMI per cell density (filtered).
PDF format
fltr_gene_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_fltr_gene_dnst_spl_cnd.png"
doc: |
Split by grouping condition genes per cell density (filtered).
PNG format
fltr_gene_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_gene_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition genes per cell density (filtered).
PDF format
fltr_mito_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_fltr_mito_dnst_spl_cnd.png"
doc: |
Split by grouping condition the percentage of transcripts mapped
to mitochondrial genes per cell density (filtered).
PNG format
fltr_mito_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_mito_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition the percentage of transcripts mapped
to mitochondrial genes per cell density (filtered).
PDF format
fltr_nvlt_dnst_spl_cnd_plot_png:
type: File?
outputBinding:
glob: "*_fltr_nvlt_dnst_spl_cnd.png"
doc: |
Split by grouping condition the novelty score per cell density (filtered).
PNG format
fltr_nvlt_dnst_spl_cnd_plot_pdf:
type: File?
outputBinding:
glob: "*_fltr_nvlt_dnst_spl_cnd.pdf"
doc: |
Split by grouping condition the novelty score per cell density (filtered).
PDF format
seurat_data_rds:
type: File
outputBinding:
glob: "*_data.rds"
doc: |
Filtered Seurat data in RDS format
seurat_data_h5seurat:
type: File?
outputBinding:
glob: "*_data.h5seurat"
doc: |
Filtered Seurat data in h5seurat format
seurat_data_h5ad:
type: File?
outputBinding:
glob: "*_data.h5ad"
doc: |
Reduced Seurat data in h5ad format
stdout_log:
type: stdout
stderr_log:
type: stderr
baseCommand: ["sc_rna_filter.R"]
arguments:
- valueFrom: |
${
if (inputs.aggregation_metadata) {
return inputs.aggregation_metadata;
} else {
return runtime.outdir + "/dummy_metadata.csv"
}
}
prefix: "--identity"
stdout: sc_rna_filter_stdout.log
stderr: sc_rna_filter_stderr.log
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label: "Single-cell RNA-Seq Filtering Analysis"
s:name: "Single-cell RNA-Seq Filtering Analysis"
s:alternateName: "Filters single-cell RNA-Seq datasets based on the common QC metrics"
s:downloadUrl: https://raw.githubusercontent.com/Barski-lab/workflows/master/tools/sc-rna-filter.cwl
s:codeRepository: https://github.com/Barski-lab/workflows
s:license: http://www.apache.org/licenses/LICENSE-2.0
s:isPartOf:
class: s:CreativeWork
s:name: Common Workflow Language
s:url: http://commonwl.org/
s:creator:
- class: s:Organization
s:legalName: "Cincinnati Children's Hospital Medical Center"
s:location:
- class: s:PostalAddress
s:addressCountry: "USA"
s:addressLocality: "Cincinnati"
s:addressRegion: "OH"
s:postalCode: "45229"
s:streetAddress: "3333 Burnet Ave"
s:telephone: "+1(513)636-4200"
s:logo: "https://www.cincinnatichildrens.org/-/media/cincinnati%20childrens/global%20shared/childrens-logo-new.png"
s:department:
- class: s:Organization
s:legalName: "Allergy and Immunology"
s:department:
- class: s:Organization
s:legalName: "Barski Research Lab"
s:member:
- class: s:Person
s:name: Michael Kotliar
s:email: mailto:[email protected]
s:sameAs:
- id: http://orcid.org/0000-0002-6486-3898
doc: |
Single-cell RNA-Seq Filtering Analysis
Filters single-cell RNA-Seq datasets based on the common QC metrics.
s:about: |
usage: sc_rna_filter.R [-h] --mex MEX [MEX ...] --identity
IDENTITY [--grouping GROUPING]
[--barcodes BARCODES]
[--rnamincells RNAMINCELLS]
[--mingenes [MINGENES [MINGENES ...]]]
[--maxgenes [MAXGENES [MAXGENES ...]]]
[--rnaminumi [RNAMINUMI [RNAMINUMI ...]]]
[--minnovelty [MINNOVELTY [MINNOVELTY ...]]]
[--mitopattern MITOPATTERN]
[--maxmt MAXMT] [--pdf] [--verbose]
[--h5seurat] [--h5ad] [--output OUTPUT]
[--theme {gray,bw,linedraw,light,dark,minimal,classic,void}]
[--cpus CPUS] [--memory MEMORY]
Single-cell RNA-Seq Filtering Analysis
optional arguments:
-h, --help show this help message and exit
--mex MEX [MEX ...] Path to the folder with feature-barcode matrix from
Cell Ranger Count/Aggregate experiment in MEX format.
If multiple locations provided data is assumed to be
not aggregated (outputs from the multiple Cell Ranger
Count experiments) and will be merged before the
analysis.
--identity IDENTITY Path to the metadata TSV/CSV file to set the datasets
identities. If '--mex' points to the Cell Ranger
Aggregate outputs, the aggregation.csv file can be
used. In case of using feature-barcode matrices from a
single or multiple Cell Ranger Count experiments the
file with identities should include at least one
column - 'library_id', and a row with aliases per each
experiment from the '--mex' input. The order of rows
should correspond to the order of feature-barcode
matrices provided in the '--mex' parameter.
--grouping GROUPING Path to the TSV/CSV file to define datasets grouping.
First column - 'library_id' with the values and order
that correspond to the 'library_id' column from the '
--identity' file, second column 'condition'. Default:
each dataset is assigned to its own group.
--barcodes BARCODES Path to the TSV/CSV file to optionally prefilter and
extend Seurat object metadata be selected barcodes.
First column should be named as 'barcode'. If file
includes any other columns they will be added to the
Seurat object metadata ovewriting the existing ones if
those are present. Default: all cells used, no extra
metadata is added
--rnamincells RNAMINCELLS
Include only genes detected in at least this many
cells. Ignored when '--mex' points to the feature-
barcode matrices from the multiple Cell Ranger Count
experiments. Default: 5 (applied to all datasets)
--mingenes [MINGENES [MINGENES ...]]
Include cells where at least this many genes are
detected. If multiple values provided, each of them
will be applied to the correspondent dataset from the
'--mex' input based on the '--identity' file. Default:
250 (applied to all datasets)
--maxgenes [MAXGENES [MAXGENES ...]]
Include cells with the number of genes not bigger than
this value. If multiple values provided, each of them
will be applied to the correspondent dataset from the
'--mex' input based on the '--identity' file. Default:
5000 (applied to all datasets)
--rnaminumi [RNAMINUMI [RNAMINUMI ...]]
Include cells where at least this many UMI
(transcripts) are detected. If multiple values
provided, each of them will be applied to the
correspondent dataset from the '--mex' input based on
the '--identity' file. Default: 500 (applied to all
datasets)
--minnovelty [MINNOVELTY [MINNOVELTY ...]]
Include cells with the novelty score not lower than
this value, calculated for as log10(genes)/log10(UMI).
If multiple values provided, each of them will be
applied to the correspondent dataset from the '--mex'
input based on the '--identity' file. Default: 0.8
(applied to all datasets)
--mitopattern MITOPATTERN
Regex pattern to identify mitochondrial genes.
Default: '^Mt-'
--maxmt MAXMT Include cells with the percentage of transcripts
mapped to mitochondrial genes not bigger than this
value. Default: 5 (applied to all datasets)
--pdf Export plots in PDF. Default: false
--verbose Print debug information. Default: false
--h5seurat Save Seurat data to h5seurat file. Default: false
--h5ad Save Seurat data to h5ad file. Default: false
--output OUTPUT Output prefix. Default: ./sc
--theme {gray,bw,linedraw,light,dark,minimal,classic,void}
Color theme for all generated plots. Default: classic
--cpus CPUS Number of cores/cpus to use. Default: 1
--memory MEMORY Maximum memory in GB allowed to be shared between the
workers when using multiple '--cpus'. Default: 32