Journal article

Library size confounds biology in spatial transcriptomics data

DD Bhuva, CW Tan, A Salim, C Marceaux, MA Pickering, J Chen, M Kharbanda, X Jin, N Liu, K Feher, G Putri, WD Tilley, TE Hickey, ML Asselin-Labat, B Phipson, MJ Davis

Genome Biology | Published : 2024

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.