Mercurial > repos > galaxyp > cardinal_colocalization
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"planemo upload for repository https://github.com/galaxyproteomics/tools-galaxyp/tree/master/tools/cardinal commit badc51fcd74ba0c14cd1ae64d5f524291fa11441"
author | galaxyp |
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date | Tue, 22 Feb 2022 20:52:51 +0000 |
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children | 8ad8061e18c4 |
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<tool id="cardinal_colocalization" name="MSI colocalization" version="@VERSION@.0"> <description>mass spectrometry imaging colocalization</description> <macros> <import>macros.xml</import> </macros> <expand macro="requirements"> <requirement type="package" version="2.3">r-gridextra</requirement> </expand> <command detect_errors="exit_code"> <![CDATA[ @INPUT_LINKING@ cat '${MSI_colocalization}' && Rscript '${MSI_colocalization}' ]]> </command> <configfiles> <configfile name="MSI_colocalization"><![CDATA[ ################################# load libraries and read file ################# library(Cardinal) library(gridExtra) @READING_MSIDATA_FULLY_COMPATIBLE@ #if str($reference_type.reference) == "roi_ref": ## read and extract x,y,annotation information input_tabular <- read.delim("$reference_type.annotation_file", header = $reference_type.tabular_header, stringsAsFactors = FALSE) annotation_input <- input_tabular[,c($reference_type.column_x, $reference_type.column_y, $reference_type.column_names)] annotation_name <- colnames(annotation_input)[3] ##extract header for annotations to later export tabular with same name colnames(annotation_input) <- c("x", "y", "annotation") ## rename annotations header to default name "annotation" ## merge with coordinate information of msidata msidata_coordinates <- data.frame(coord(msidata)\$x, coord(msidata)\$y, c(1:ncol(msidata))) colnames(msidata_coordinates) <- c("x", "y", "pixel_index") merged_annotation <- merge(msidata_coordinates, annotation_input, by=c("x", "y"), all.x=TRUE) merged_annotation[is.na(merged_annotation)] <- "NA" merged_annotation <- merged_annotation[order(merged_annotation\$pixel_index),] msidata\$annotation <- as.character(merged_annotation[,4]) reference_group <- msidata\$annotation == "$reference_type.ref_name" #end if ## remove duplicated coordinates msidata <- msidata[,!duplicated(coord(msidata))] @DATA_PROPERTIES_INRAM@ ######################################## PDF ################################### ################################################################################ ################################################################################ pdf("colocalization.pdf", fonts = "Times", pointsize = 12) plot(0,type='n',axes=FALSE,ann=FALSE) title(main=paste0("Colocalization for file: \n\n", "$infile.display_name")) grid.table(property_df, rows= NULL) if (npeaks > 0 && sum(is.na(spectra(msidata)))==0) { ## colocalization analysis col_results <- colocalized(msidata, #if str($reference_type.reference) == "mz_ref": mz = $reference_type.mz_value, #else ref = reference_group, #end if n = $n_tophits, sort.by = "$sort_by", threshold = median) ## Summary results table col_results_df <- as.data.frame(col_results) write.table(col_results_df, file="$coloc_results", quote = FALSE, row.names = FALSE, col.names=TRUE, sep = "\t") ## visualize top 10 m/z features if (nrow(col_results_df) <= 10) { for (mass in col_results_df\$mz){ par(oma=c(0,0,0,1))## margin for image legend print(image(msidata, mz=mass, plusminus=0.25, main= paste0(round(mass, digits = 2)), contrast.enhance = "histogram", strip=FALSE, ylim= c(maximumy,minimumy))) } }else{ for (mass in col_results_df\$mz[1:10]){ par(oma=c(0,0,0,1))## margin for image legend print(image(msidata, mz=mass, plusminus=0.25, main= paste0(round(mass, digits = 2)), contrast.enhance = "histogram", strip=FALSE, ylim= c(maximumy,minimumy))) } } dev.off() }else{ print("Inputfile has no intensities > 0") } ]]></configfile> </configfiles> <inputs> <expand macro="reading_msidata"/> <conditional name="reference_type"> <param name="reference" type="select" label="Reference type" help="Region of interest (selected spectra) or m/z feature."> <option value="mz_ref" selected="True">m/z feature</option> <option value="roi_ref">Region of interest (spectra)</option> </param> <when value="mz_ref"> <param name="mz_value" type="float" value="1000" label="m/z feature" help="The m/z closest to this m/z value will be used as a reference."/> </when> <when value="roi_ref"> <expand macro="reading_pixel_annotations"/> <param name="ref_name" type="text" value="reference" label="Reference name" help="Name has to match exactly on of the annotation names in the annotation file"/> </when> </conditional> <param name="n_tophits" type="integer" value="10" label="Top hits" help="The number of top-ranked colocalized features to return in the tabular file." /> <param name="sort_by" type="select" display="radio" label="sort.by" help="The colocalization measure used to rank colocalized features. Possible options include Pearson’s correlation and Manders’ colocalization coefficients."> <option value="correlation" selected="True">Pearson's correlation</option> <option value="M1">Manders' colocalization coefficient 1</option> <option value="M2">Manders' colocalization coefficient 2</option> </param> </inputs> <outputs> <data format="pdf" name="coloc_pdf" from_work_dir="colocalization.pdf" label = "${tool.name} on ${on_string}: results"/> <data format="tabular" name="coloc_results" label="${tool.name} on ${on_string}: summary"/> </outputs> <tests> <test> <param name="infile" value="" ftype="imzml"> <composite_data value="spatial_DGMM_input.imzML"/> <composite_data value="spatial_DGMM_input.ibd"/> </param> <conditional name="reference_type"> <param name="reference" value="mz_ref"/> <param name="mz_value" value="1000"/> </conditional> <output name="coloc_pdf" file="coloc1.pdf" compare="sim_size" delta="2000"/> <output name="coloc_results" file="coloc_table1.tabular"/> </test> <test> <param name="infile" value="" ftype="imzml"> <composite_data value="spatial_DGMM_input.imzML"/> <composite_data value="spatial_DGMM_input.ibd"/> </param> <conditional name="reference_type"> <param name="reference" value="roi_ref"/> <param name="annotation_file" value="DGMM_annotations.tabular"/> <param name="column_x" value="1"/> <param name="column_y" value="2"/> <param name="column_names" value="3"/> <param name="tabular_header" value="True"/> <param name="ref_name" value="circle"/> </conditional> <param name="n_tophits" value="5"/> <param name="sort_by" value="M2"/> <output name="coloc_pdf" file="coloc2.pdf" compare="sim_size" delta="2000"/> <output name="coloc_results" file="coloc_table2.tabular"/> </test> <test> <param name="infile" value="123_combined.RData" ftype="rdata"/> <conditional name="reference_type"> <param name="reference" value="mz_ref"/> <param name="mz_value" value="102.0"/> </conditional> <param name="n_tophits" value="50"/> <param name="sort_by" value="correlation"/> <output name="coloc_pdf" file="coloc3.pdf" compare="sim_size" delta="2000"/> <output name="coloc_results" file="coloc_table3.tabular"/> </test> </tests> <help> <![CDATA[ @CARDINAL_DESCRIPTION@ ----- This tool finds colocalized features in an imaging dataset. Use it to find m/z features that are colocalized with another m/z feature or regions of interests. @MSIDATA_INPUT_DESCRIPTION@ - NA intensities are not allowed - duplicated coordinates will be removed - it is highly recommended to use a dataset that is reduced for the number of m/z features e.g. pre-processed and optionally filtered for m/z of interest in order to keep computational times reasonable. **Options** - The reference can be either a single m/z feature or a region of interest provided via the annotation file. - For single m/z features the closest m/z to the m/z value that is used as reference is used - For regions of interest as a reference the name of the region that should be used as a reference has to be written exactly in the way in which it appears in the annotation file input. @SPECTRA_TABULAR_INPUT_DESCRIPTION@ - By default, pearson correlation is used to rank the colocalized features. Manders’ colocalization coefficients (M1 and M2) are also provided. **Output** - Pdf with file info and the ion images of the top 10 m/z features (to plot the ion images for more m/z features use the MSI mz images tool) - Tabular file with the top m/z features and their correlation values (pearson, Manders 1 and Manders 2) with the reference ]]> </help> <citations> <citation type="doi">10.1093/bioinformatics/btv146</citation> </citations> </tool>