Mercurial > repos > iuc > scater_create_qcmetric_ready_sce
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"planemo upload for repository https://github.com/galaxyproject/tools-iuc/tree/master/tools/scater commit 61f3899168453092fd25691cf31871a3a350fd3b"
author | iuc |
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date | Tue, 03 Sep 2019 14:26:31 -0400 |
parents | 2d455a7e8a3d |
children | b834074a9aff |
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# Wrappers for Scater This code wraps a number of [scater](https://bioconductor.org/packages/release/bioc/html/scater.html) functions as Galaxy wrappers. Briefly, the `scater-create-qcmetric-ready-sce` tool takes a sample gene expression matrix (usually read-counts) and a cell annotation file, creates a [SingleCellExperiment](https://bioconductor.org/packages/release/bioc/html/SingleCellExperiment.html) object and runs scater's `calculateQCMetrics` function (using other supplied files such as ERCC's and mitochondrial gene features). Various filter scripts are provided, along with some plotting functions for QC. ## Typical workflow 1. Read in data with `scater-create-qcmetric-ready-sce`. 2. Visualise it.\ Take a look at the distribution of library sizes, expressed features and mitochondrial genes with `scater-plot-dist-scatter`. Then look at the distibution of genes across cells with `scater-plot-exprs-freq`. 3. Guided by the plots, filter the data with `scater-filter`.\ You can either manually filter with user-defined parameters or use PCA to automatically removes outliers. 4. Visualise data again to see how the filtering performed using `scater-plot-dist-scatter`.\ Decide if you're happy with the data. If not, try increasing or decreasing the filtering parameters. 5. Normalise data with `scater-normalize`. 6. Investigate other confounding factors.\ Plot the data (using PCA) and display various annotated properties of the cells using `scater-plot-pca`. ## Command-line usage The scripts require the installation of scater and few other R/BioConductor packages. An easy way to install them is to create a [conda](https://conda.io/) environment using the `environment.yml` file distributed together with these wrappers: ``` conda env create -f environment.yml conda activate scater ``` For help with any of the following scripts, run: `<script-name> --help` --- `scater-create-qcmetric-ready-sce.R` Takes an expression matrix (usually read-counts) of samples (columns) and gene/transcript features (rows), along with other annotation information, such as cell metadata, control genes (mitochondrail genes, ERCC's), creates a [SingleCellExperiment](https://bioconductor.org/packages/release/bioc/html/SingleCellExperiment.html) object and runs scater's `calculateQCMetrics`. Save the resulting SingleCellExperiment object in Loom format. ``` ./scater-create-qcmetric-ready-sce.R -a test-data/counts.txt -c test-data/annotation.txt -f test-data/mt_controls.txt -o test-data/scater_qcready.loom ``` --- `scater-plot-dist-scatter.R` Takes SingleCellExperiment object (from Loom file) and plots a panel of read and feature graphs, including the distribution of library sizes, distribution of feature counts, a scatterplot of reads vs features, and % of mitochondrial genes in library. ``` ./scater-plot-dist-scatter.R -i test-data/scater_qcready.loom -o test-data/scater_reads_genes_dist.pdf ``` --- `scater-plot-exprs-freq.R` Plots mean expression vs % of expressing cells and provides information as to the number of genes expressed in 50% and 25% of cells. --- `scater-pca-filter.R` Takes SingleCellExperiment object (from Loom file) and automatically removes outliers from data using PCA. Save the filtered SingleCellExperiment object in Loom format. ``` ./scater-pca-filter.R -i test-data/scater_qcready.loom -o test-data/scater_pca_filtered.loom ``` --- `scater-manual-filter.R` Takes SingleCellExperiment object (from Loom file) and filters data using user-provided parameters. Save the filtered SingleCellExperiment object in Loom format. ``` ./scater-manual-filter.R -i test-data/scater_qcready.loom -l 10000 -d 4 -m 33 -o test-data/scater_manual_filtered.loom ``` --- `scater-normalize.R` Compute log-normalized expression values from count data in a SingleCellExperiment object, using the size factors stored in the object. Save the normalised SingleCellExperiment object in Loom format. ``` ./scater-normalize.R -i test-data/scater_manual_filtered.loom -o test-data/scater_man_filtered_normalised.loom ``` --- `scater-plot-pca.R` PCA plot of a normalised SingleCellExperiment object (produced with `scater-normalize.R`). The options `-c`, `-p`, and `-s` all refer to cell annotation features. These are the column headers of the `-c` option used in `scater-create-qcmetric-ready-sce.R`. ``` ./scater-plot-pca.R -i test-data/scater_man_filtered_normalised.loom -c Treatment -p Mutation_Status -o test-data/scater_pca_plot.pdf ```