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Linseed: LINear Subspace identification for gene Expresion Deconvolution

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Linseed tutorial

Linseed (LINear Subspace identification for gene Expresion Deconvolution) is a package that provides tools and interface to explore gene expression datasets in linear space.

Installing the package

You can install the package using devtools::install_github:

devtools::install_github("ctlab/linseed")

Current build was tested using rhub:

Getting started with linseed

To start working with gene expression data, we need to create a new LinseedObject, in this tutorial we will use GSE19830 (mixture of Liver, Brain and Lung), we will take only mixed samples (10-42) and will take only 10000 most expressed genes.

library(linseed)
lo <- LinseedObject$new("GSE19830", samples=10:42, topGenes=10000)

Coolinearity networks

To build a coolinearity network we first have to evaluate all pairwise collinearity coefficients, all pairwise spearman correlation and then run significance test which will calculate p value for each each by shuffling network weights randomly.

lo$calculatePairwiseLinearity()
lo$calculateSpearmanCorrelation()
lo$calculateSignificanceLevel(100)
lo$significancePlot(0.01)

lo$filterDatasetByPval(0.01)
## Total number of genes is 10000

## The number of genes after filtering is 3297
lo$svdPlot()

To visualiaze what left after filtering we can call projection plot from our object. But we have to project the data to the simplex first.

lo$setCellTypeNumber(3)
lo$project("full") # projecting full dataset
lo$projectionPlot(color="filtered")

Deconvolution

To deconvolve the dataset, you first have to project (full or filtered dataset) to the simplex, and then find corners of it.

lo$project("filtered")
lo$smartSearchCorners(dataset="filtered", error="norm")
## Final vector is

## 4 1 5

## 
lo$deconvolveByEndpoints()
plotProportions(lo$proportions)

We can also use tSNE to haave an idea of how data looks like when dimensionally reduced.

# lets select 100 genes closest to the simplex corners 
lo$selectGenes(100)
lo$tsnePlot()

To compare with actual proportions you can use dotPlotProportions function

data("proportionsLiverBrainLung")
dotPlotPropotions(lo$proportions, proportionsLiverBrainLung[, 10:42], guess=TRUE)

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