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STIE: Single-cell level deconvolution, convolution, and clustering in in situ capturing-based spatial transcriptomics.

Shijia ZhuNaoto KubotaShidan WangTao WangGuanghua XiaoYujin Hoshida
Published in: Nature communications (2024)
In in situ capturing-based spatial transcriptomics, spots of the same size and printed at fixed locations cannot precisely capture the randomly-located single cells, therefore inherently failing to profile transcriptome at the single-cell level. To this end, we present STIE, an Expectation Maximization algorithm that aligns the spatial transcriptome to its matched histology image-based nuclear morphology and recovers missing cells from ~70% gap area, thereby achieving the real single-cell level and whole-slide scale deconvolution, convolution, and clustering for both low- and high-resolution spots. STIE characterizes cell-type-specific gene expression and demonstrates outperforming concordance with true cell-type-specific transcriptomic signatures than the other spot- and subspot-level methods. Furthermore, STIE reveals the single-cell level insights, for instance, lower actual spot resolution than its reported spot size, unbiased evaluation of cell type colocalization, superior power of high-resolution spot in distinguishing nuanced cell types, and spatial cell-cell interactions at the single-cell level other than spot level.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • high resolution
  • gene expression
  • deep learning
  • mass spectrometry
  • machine learning
  • stem cells
  • oxidative stress
  • mesenchymal stem cells
  • neural network
  • single molecule