Junhao Zhu, Kevin Zhang, Dehan Kong, Zhaolei Zhang
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LLOT: application of Laplacian Linear Optimal Transport in spatial transcriptome reconstruction
Single-cell RNA sequencing (scRNA-seq) allows transcriptional profiling, and
cell-type annotation of individual cells. However, sample preparation in
typical scRNA-seq experiments often homogenizes the samples, thus spatial
locations of individual cells are often lost. Although spatial transcriptomic
techniques, such as in situ hybridization (ISH) or Slide-seq, can be used to
measure gene expression in specific locations in samples, it remains a
challenge to measure or infer expression level for every gene at a single-cell
resolution in every location in tissues. Existing computational methods show
promise in reconstructing these missing data by integrating scRNA-seq data with
spatial expression data such as those obtained from spatial transcriptomics.
Here we describe Laplacian Linear Optimal Transport (LLOT), an interpretable
method to integrate single-cell and spatial transcriptomics data to reconstruct
missing information at a whole-genome and single-cell resolution. LLOT
iteratively corrects platform effects and employs Laplacian Optimal Transport
to decompose each spot in spatial transcriptomics data into a spatially-smooth
probabilistic mixture of single cells. We benchmarked LLOT against several
other methods on datasets of Drosophila embryo, mouse cerebellum and synthetic
datasets generated by scDesign3 in the paper, and another three datasets in the
supplementary. The results showed that LLOT consistently outperformed others in
reconstructing spatial expressions.