PersiST: Robust Identification of Spatially Variable Features in Spatial Omics Datasets via Topological Data Analysis
PersiST: Robust Identification of Spatially Variable Features in Spatial Omics Datasets via Topological Data Analysis
Spatial transcriptomics studies are becoming increasingly large and commonplace, necessitating the analysis of a large number of spatially resolved variables. With spatial transcriptomics data sets typically containing data on thousands of different genes, on increasingly large numbers of samples, there is a need for bioinformatics tools that enable the comparison of spatial structure across large numbers of variables. Here we present PersiST, an exploratory tool that uses topology to automatically compute a continuous measure of spatial structure for each gene in a spatial transcriptomics sample. This quantification can be used for analytical tasks such as spatially variable gene identification, or searching for spatial differences in the expression of a gene between samples. We use PersiST to derive biologically meaningful insights into two public spatial transcriptomics data sets, and we experiment with applying PersiST to a spatial metabolomics data set, making use of PersiST's non-parametric approach to enable application across different measurement types. Our work showcases the advantages of using a continuous quantification of spatial structure over p-value based approaches to SVG identification, the potential for developing unified methods for the analysis of different spatial `omics modalities, and the utility of persistent homology in big data applications.
Michael Casey、Gregory Hamm、James Boyle、Eleanor Williams、Robin JG Hartman、Magnus Soderburg、Ian Henry
生物科学研究方法、生物科学研究技术分子生物学
Michael Casey,Gregory Hamm,James Boyle,Eleanor Williams,Robin JG Hartman,Magnus Soderburg,Ian Henry.PersiST: Robust Identification of Spatially Variable Features in Spatial Omics Datasets via Topological Data Analysis[EB/OL].(2025-05-07)[2025-06-07].https://arxiv.org/abs/2505.04360.点此复制
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