Department of Medical Bioinformatics, University Medical Center Göttingen, 37077 Göttingen, Germany.
Leibniz Institute for Immunotherapy, 93053 Regensburg, Germany.
Genome Res. 2024 Oct 11;34(9):1371-1383. doi: 10.1101/gr.279125.124.
Advances in omics technologies have allowed spatially resolved molecular profiling of single cells, providing a window not only into the diversity and distribution of cell types within a tissue, but also into the effects of interactions between cells in shaping the transcriptional landscape. Cells send chemical and mechanical signals which are received by other cells, where they can subsequently initiate context-specific gene regulatory responses. These interactions and their responses shape the individual molecular phenotype of a cell in a given microenvironment. RNAs or proteins measured in individual cells, together with the cells' spatial distribution, provide invaluable information about these mechanisms and the regulation of genes beyond processes occurring independently in each individual cell. "SpaCeNet" is a method designed to elucidate both the intracellular molecular networks (how molecular variables affect each other within the cell) and the intercellular molecular networks (how cells affect molecular variables in their neighbors). This is achieved by estimating conditional independence (CI) relations between captured variables within individual cells and by disentangling these from CI relations between variables of different cells.
组学技术的进步使得对单细胞进行空间分辨的分子分析成为可能,不仅为观察组织内细胞类型的多样性和分布提供了窗口,还为观察细胞间相互作用对转录景观形成的影响提供了窗口。细胞会发送化学和机械信号,这些信号被其他细胞接收,随后细胞可以启动特定于上下文的基因调控反应。这些相互作用及其反应塑造了特定微环境中单个细胞的个体分子表型。在单个细胞中测量的 RNA 或蛋白质,以及细胞的空间分布,为这些机制以及基因的调控提供了宝贵的信息,这些机制和调控超越了每个单独细胞中独立发生的过程。“SpaCeNet”是一种旨在阐明细胞内分子网络(分子变量如何在细胞内相互影响)和细胞间分子网络(细胞如何影响其邻居中的分子变量)的方法。这是通过估计单个细胞内捕获变量之间的条件独立性 (CI) 关系,并将这些关系与不同细胞之间的变量的 CI 关系分离开来实现的。