Abstract
Spatial molecular data has transformed the study of disease microenvironments, though, larger datasets pose an analytics challenge prompting the direct adoption of single-cell RNA-sequencing tools including normalization methods. Here, we demonstrate that library size is associated with tissue structure and that normalizing these effects out using commonly applied scRNA-seq normalization methods will negatively affect spatial domain identification. Spatial data should not be specifically corrected for library size prior to analysis, and algorithms designed for scRNA-seq data should be adopted with caution.
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CITATION STYLE
Bhuva, D. D., Tan, C. W., Salim, A., Marceaux, C., Pickering, M. A., Chen, J., … Davis, M. J. (2024). Library size confounds biology in spatial transcriptomics data. Genome Biology, 25(1). https://doi.org/10.1186/s13059-024-03241-7
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