Publication | Open Access
Disparities in spatially variable gene calling highlight the need for benchmarking spatial transcriptomics methods
22
Citations
40
References
2023
Year
EngineeringGeneticsTranscriptomics TechnologyGenomicsSpatial OmicsGene Expression ProfilingComputational GenomicsGenome AnalysisBiostatisticsTranscriptomicsSpatial TranscriptomicsRna SequencingSvg SetsGene ExpressionFunctional GenomicsBioinformaticsBiologyGene Sequence AnnotationSpatial Transcriptomics MethodsComputational BiologyVariable GeneSvg IdentificationSystems BiologyMedicineVariable Genes
Identifying spatially variable genes (SVGs) is a key step in the analysis of spatially resolved transcriptomics data. SVGs provide biological insights by defining transcriptomic differences within tissues, which was previously unachievable using RNA-sequencing technologies. However, the increasing number of published tools designed to define SVG sets currently lack benchmarking methods to accurately assess performance. This study compares results of 6 purpose-built packages for SVG identification across 9 public and 5 simulated datasets and highlights discrepancies between results. Additional tools for generation of simulated data and development of benchmarking methods are required to improve methods for identifying SVGs.
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