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首页> 外文期刊>Journal of the American statistical association >Bayesian Spatio-Dynamic Modeling in Cell Motility Studies: Learning Nonlinear Taxic Fields Guiding the Immune Response
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Bayesian Spatio-Dynamic Modeling in Cell Motility Studies: Learning Nonlinear Taxic Fields Guiding the Immune Response

机译:细胞运动研究中的贝叶斯时空动力学模型:学习指导免疫反应的非线性税收领域。

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摘要

We develop and analyze models of the spatio-temporal organization of lymphocytes in the lymph nodes and spleen. The spatial dynamics of these immune system white blood cells are influenced by biochemical fields and represent key components of the overall immune response to vaccines and infections. A primary goal is to learn about the structure of these fields that fundamentally shape the immune response. We define dynamic models of single-cell motion involving nonparametric representations of scalar potential fields underlying the directional biochemical fields that guide cellular motion. Bayesian hierarchical extensions define multicellular models for aggregating models and data on colonies of cells. Analysis via customized Markov chain Monte Carlo methods leads to Bayesian inference on cell-specific and population parameters together with the underlying spatial fields. Our case study explores data from multiphoton intravital microscopy in lymph nodes of mice, and we use a number of visualization tools to summarize and compare posterior inferences on the three-dimensional taxic fields.
机译:我们开发和分析淋巴结和脾脏中淋巴细胞的时空组织模型。这些免疫系统白细胞的空间动力学受生化领域的影响,代表了对疫苗和感染的整体免疫反应的关键组成部分。主要目标是了解从根本上影响免疫反应的这些领域的结构。我们定义了单细胞运动的动力学模型,该模型涉及指导细胞运动的定向生化场下面标量势场的非参数表示。贝叶斯分层扩展定义了多细胞模型,用于聚集细胞集落上的模型和数据。通过定制的马尔可夫链蒙特卡洛方法进行的分析导致贝叶斯推断特定于细胞和种群的参数以及潜在的空间场。我们的案例研究探索了小鼠淋巴结中多光子活体显微术的数据,并且我们使用了许多可视化工具来汇总和比较三维税收领域的后验推论。

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