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Bayesian Hierarchical Models for Protein Networks in Single-Cell Mass Cytometry

机译:单细胞大规模细胞计数中蛋白质网络的贝叶斯层次模型

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We propose a class of hierarchical models to investigate the protein functional network of cellular markers. We consider a novel data set from single-cell proteomics. The data are generated from single-cell mass cytometry experiments, in which protein expression is measured within an individual cell for multiple markers. Tens of thousands of cells are measured serving as biological replicates. Applying the Bayesian models, we report protein functional networks under different experimental conditions and the differences between the networks, ie, differential networks. We also present the differential network in a novel fashion that allows direct observation of the links between the experimental agent and its putative targeted proteins based on posterior inference. Our method serves as a powerful tool for studying molecular interactions at cellular level.
机译:我们提出了一类层次模型来研究细胞标志物的蛋白质功能网络。我们考虑了来自单细胞蛋白质组学的新型数据集。数据是从单细胞大规模流式细胞仪实验中产生的,其中在单个细胞内针对多种标记物测量蛋白质表达。数以万计的细胞被用作生物学复制品。应用贝叶斯模型,我们报告了在不同实验条件下蛋白质功能网络以及网络之间的差异,即差异网络。我们还以一种新颖的方式介绍了差分网络,该网络允许基于后验推断直接观察实验剂与其推定的靶向蛋白之间的联系。我们的方法是研究细胞水平上分子相互作用的有力工具。

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