Publication | Open Access
nnSVG for the scalable identification of spatially variable genes using nearest-neighbor Gaussian processes
14
Citations
37
References
2022
Year
Unknown Venue
EngineeringMachine LearningAbstract Feature SelectionTranscriptomics TechnologyGenomicsGene RecognitionSpatial OmicsGene Expression ProfilingLength Scale ParametersData SciencePattern RecognitionComputational GenomicsBiostatisticsPlant Gene ExpressionMedicineDimensionality ReductionFunctional GenomicsBioinformaticsGaussian ProcessComputational BiologyNearest-neighbor Gaussian ProcessesStatistical InferenceSystems BiologyScalable IdentificationVariable Genes
Abstract Feature selection to identify spatially variable genes or other biologically informative genes is a key step during analyses of spatially-resolved transcriptomics data. Here, we propose nnSVG, a scalable approach to identify spatially variable genes based on nearest-neighbor Gaussian processes. Our method (i) identifies genes that vary in expression continuously across the entire tissue or within a priori defined spatial domains, (ii) uses gene-specific estimates of length scale parameters within the Gaussian process models, and (iii) scales linearly with the number of spatial locations. We demonstrate the performance of our method using experimental data from several technological platforms and simulations. A software implementation is available at https://bioconductor.org/packages/nnSVG .
| Year | Citations | |
|---|---|---|
Page 1
Page 1