Litcius/Paper detail

Evaluating spatially variable gene detection methods for spatial transcriptomics data

Carissa Chen, Hani Jieun Kim, Pengyi Yang

2024Genome biology82 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The identification of genes that vary across spatial domains in tissues and cells is an essential step for spatial transcriptomics data analysis. Given the critical role it serves for downstream data interpretations, various methods for detecting spatially variable genes (SVGs) have been proposed. However, the lack of benchmarking complicates the selection of a suitable method. RESULTS: Here we systematically evaluate a panel of popular SVG detection methods on a large collection of spatial transcriptomics datasets, covering various tissue types, biotechnologies, and spatial resolutions. We address questions including whether different methods select a similar set of SVGs, how reliable is the reported statistical significance from each method, how accurate and robust is each method in terms of SVG detection, and how well the selected SVGs perform in downstream applications such as clustering of spatial domains. Besides these, practical considerations such as computational time and memory usage are also crucial for deciding which method to use. CONCLUSIONS: Our study evaluates the performance of each method from multiple aspects and highlights the discrepancy among different methods when calling statistically significant SVGs across diverse datasets. Overall, our work provides useful considerations for choosing methods for identifying SVGs and serves as a key reference for the future development of related methods.

Topics & Concepts

BenchmarkingComputer scienceCluster analysisIdentification (biology)Spatial analysisData miningSet (abstract data type)Computational biologyVariable (mathematics)Selection (genetic algorithm)BiologyArtificial intelligenceStatisticsMathematicsEcologyMathematical analysisBusinessMarketingProgramming languageSingle-cell and spatial transcriptomicsGene expression and cancer classificationBioinformatics and Genomic Networks