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首页> 外文期刊>PLoS Computational Biology >Imputation of spatially-resolved transcriptomes by graph-regularized tensor completion
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Imputation of spatially-resolved transcriptomes by graph-regularized tensor completion

机译:通过图形定期化张量完成的空间分辨转录om的归纳

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High-throughput spatial-transcriptomics RNA sequencing (sptRNA-seq) based on in-situ capturing technologies has recently been developed to spatially resolve transcriptome-wide mRNA expressions mapped to the captured locations in a tissue sample. Due to the low RNA capture efficiency by in-situ capturing and the complication of tissue section preparation, sptRNA-seq data often only provides an incomplete profiling of the gene expressions over the spatial regions of the tissue. In this paper, we introduce a graph-regularized tensor completion model for imputing the missing mRNA expressions in sptRNA-seq data, namely FIST, Fast Imputation of Spatially-resolved transcriptomes by graph-regularized Tensor completion. We first model sptRNA-seq data as a 3-way sparse tensor in genes (p-mode) and the (x, y) spatial coordinates (x-mode and y-mode) of the observed gene expressions, and then consider the imputation of the unobserved entries or fibers as a tensor completion problem in Canonical Polyadic Decomposition (CPD) form. To improve the imputation of highly sparse sptRNA-seq data, we also introduce a protein-protein interaction network to add prior knowledge of gene functions, and a spatial graph to capture the the spatial relations among the capture spots. The tensor completion model is then regularized by a Cartesian product graph of protein-protein interaction network and the spatial graph to capture the high-order relations in the tensor. In the experiments, FIST was tested on ten 10x Genomics Visium spatial transcriptomic datasets of different tissue sections with cross-validation among the known entries in the imputation. FIST significantly outperformed the state-of-theart methods for single-cell RNAseq data imputation. We also demonstrate that both the spatial graph and PPI network play an important role in improving the imputation. In a case study, we further analyzed the gene clusters obtained from the imputed gene expressions to show that the imputations by FIST indeed capture the spatial characteristics in the gene expressions and reveal functions that are highly relevant to three different kinds of tissues in mouse kidney.
机译:最近开发了基于原位捕获技术的高通量空间转录常规RNA测序(SPTRNA-SEQ),以在空间地解析成映射到组织样品中的捕获位置的转录体宽mRNA表达。由于原位捕获的RNA捕获效率低,并且组织切片制备的并发症,SPTRNA-SEQ数据通常仅在组织的空间区域上提供基因表达的不完全分析。在本文中,我们介绍了一种用于将缺失的mRNA表达归咎于SPTRNA-SEQ数据,即拳头,通过图形定期的张量完成来施换缺失的mRNA表达式的缺失的mRNA表达式。我们首先将SPTRNA-SEQ数据模型为基因(P-MODE)的三通稀疏张量和观察到的基因表达的(x,y)空间坐标(x-mode和y-mode),然后考虑归属在规范多adic分解(CPD)形式中,未观察到的条目或纤维作为张量完成问题。为了改善高稀疏的SPTRNA-SEQ数据的归发,我们还引入蛋白质 - 蛋白质相互作用网络以添加基因函数的先验知识,以及空间图以捕获捕获点之间的空间关系。然后通过蛋白质 - 蛋白质相互作用网络的笛卡尔产品图和空间图来规范张量完井模型,以捕获张量中的高阶关系。在实验中,在10个10x基因组学验尸中测试不同组织切片的10倍的10x基因组学麦克风转发组数据集,其归属中已知条目中的交叉验证。拳头显着优于单细胞RNASEQ数据载算的近端的方法。我们还证明空间图和PPI网络都在提高估算方面发挥着重要作用。在一个案例研究中,我们进一步分析了从抵抗基因表达中获得的基因簇,以表明拳头的归纳确实捕获了基因表达中的空间特征,并揭示了与小鼠肾上三种不同种类的组织高度相关的功能。

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