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首页> 外文期刊>Nucleic Acids Research >SingleCellSignalR: inference of intercellular networks from single-cell transcriptomics
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SingleCellSignalR: inference of intercellular networks from single-cell transcriptomics

机译:SingleCellsignalr:来自单细胞转录组织的细胞间网络的推理

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Single-cell transcriptomics offers unprecedented opportunities to infer the ligand-receptor (LR) interactions underlying cellular networks. We introduce a new, curated LR database and a novel regularized score to perform such inferences. For the first time, we try to assess the confidence in predicted LR interactions and show that our regularized score outperforms other scoring schemes while controlling false positives. SingleCellSignalR is implemented as an open-access R package accessible to entry-level users and available from https://github.com/SCA-IRCM. Analysis results come in a variety of tabular and graphical formats. For instance, we provide a unique network view integrating all the intercellular interactions, and a function relating receptors to expressed intracellular pathways. A detailed comparison of related tools is conducted. Among various examples, we demonstrate SingleCellSignalR on mouse epidermis data and discover an oriented communication structure from external to basal layers.
机译:单细胞转录组织提供了前所未有的机会,可推断蜂窝网络下面的配体受体(LR)相互作用。我们介绍一个新的,策划的LR数据库和新的正规分数,以执行这种推断。我们首次尝试评估对预测的LR交互的信心,并表明我们的正则化得分优于控制误报的同时表现出其他评分方案。 singlecellsignalr是由入门级用户访问的开放访问R包,可从https://github.com/sca-ircm获得。分析结果有各种表格和图形格式。例如,我们提供一种独特的网络视图,其整合所有细胞间相互作用,以及与表达细胞内途径的函数相关的受体。进行了相关工具的详细比较。在各种示例中,我们在小鼠表皮数据上证明了SingleCellsignalr,并从外部到基础层发现定向的通信结构。

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