LLOT:拉普拉斯线性优化传输在空间转录组重建中的应用

Junhao Zhu, Kevin Zhang, Dehan Kong, Zhaolei Zhang
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引用次数: 0

摘要

单细胞 RNA 测序(scRNA-seq)可对单个细胞进行转录谱分析和细胞类型注释。然而,非典型 scRNA-seq 实验的样本制备通常会将样本匀浆化,因此往往会丢失单个细胞的空间定位。虽然原位杂交(ISH)或 Slide-seq 等空间转录组技术可用于测量样本中特定位置的基因表达,但要以单细胞分辨率测量或推断组织中每个位置每个基因的表达水平仍是一项挑战。现有的计算方法显示,通过整合 scRNA-seq 数据和空间表达数据(如从空间转录组学获得的数据),有望重建这些缺失的数据。在这里,我们介绍了拉普拉斯线性优化传输(LLOT),这是一种可解释的方法,用于整合单细胞和空间转录组学数据,以重建全基因组和单细胞分辨率的缺失信息。LLOT 可逐步校正平台效应,并采用拉普拉斯最优传输技术将空间转录组学数据中的每个点分解为单细胞的空间平稳概率混合物。我们用果蝇胚胎数据集、小鼠小脑数据集和论文中由 scDesign3 生成的合成数据集以及补充资料中的另外三个数据集对 LLOT 和其他几种方法进行了比较。结果表明,LLOT 在重建空间表达方面的表现始终优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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.
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