Department of Biostatistics, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Department of Applied Physical Sciences, University of North Carolina at Chapel Hill, North Carolina, USA.
Brief Bioinform. 2022 Jul 18;23(4). doi: 10.1093/bib/bbac245.
Spatial transcriptomics (ST) technologies allow researchers to examine transcriptional profiles along with maintained positional information. Such spatially resolved transcriptional characterization of intact tissue samples provides an integrated view of gene expression in its natural spatial and functional context. However, high-throughput sequencing-based ST technologies cannot yet reach single cell resolution. Thus, similar to bulk RNA-seq data, gene expression data at ST spot-level reflect transcriptional profiles of multiple cells and entail the inference of cell-type composition within each ST spot for valid and powerful subsequent analyses. Realizing the critical importance of cell-type decomposition, multiple groups have developed ST deconvolution methods. The aim of this work is to review state-of-the-art methods for ST deconvolution, comparing their strengths and weaknesses. In particular, we construct ST spots from single-cell level ST data to assess the performance of 10 methods, with either ideal reference or non-ideal reference. Furthermore, we examine the performance of these methods on spot- and bead-level ST data by comparing estimated cell-type proportions to carefully matched single-cell ST data. In comparing the performance on various tissues and technological platforms, we concluded that RCTD and stereoscope achieve more robust and accurate inferences.
空间转录组学 (ST) 技术使研究人员能够在保持位置信息的情况下检查转录谱。这种对完整组织样本的空间分辨转录特征提供了在其自然空间和功能背景下对基因表达的综合视图。然而,基于高通量测序的 ST 技术还无法达到单细胞分辨率。因此,与批量 RNA-seq 数据类似,ST 点水平的基因表达数据反映了多个细胞的转录谱,并需要在每个 ST 点内推断细胞类型组成,以便进行有效和强大的后续分析。多个小组意识到细胞类型分解的重要性,已经开发了 ST 去卷积方法。这项工作的目的是综述 ST 去卷积的最新方法,比较它们的优缺点。特别是,我们从单细胞水平的 ST 数据构建 ST 点,以评估 10 种方法的性能,包括理想的参考或非理想的参考。此外,我们通过将估计的细胞类型比例与精心匹配的单细胞 ST 数据进行比较,在 ST 点和珠粒水平的 ST 数据上检查这些方法的性能。在比较各种组织和技术平台上的性能时,我们得出结论,RCTD 和立体镜能够实现更稳健和准确的推断。