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首页> 外文期刊>Frontiers in Genetics >Construction of a Suite of Computable Biological Network Models Focused on Mucociliary Clearance in the Respiratory Tract
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Construction of a Suite of Computable Biological Network Models Focused on Mucociliary Clearance in the Respiratory Tract

机译:一套专注于呼吸道粘膜纤毛清除的可计算生物网络模型的构建

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Mucociliary clearance (MCC), considered as a collaboration of mucus secreted from goblet cells, the airway surface liquid layer, and the beating of cilia of ciliated cells, is the airways’ defense system against airborne contaminants. Because the process is well described at the molecular level, we gathered the available information into a suite of comprehensive causal biological network (CBN) models. The suite consists of three independent models that represent (1) cilium assembly, (2) ciliary beating, and (3) goblet cell hyperplasia/metaplasia and that were built in the Biological Expression Language, which is both human-readable and computable. The network analysis of highly connected nodes and pathways demonstrated that the relevant biology was captured in the MCC models. We also show the scoring of transcriptomic data onto these network models and demonstrate that the models capture the perturbation in each dataset accurately. This work is a continuation of our approach to use computational biological network models and mathematical algorithms that allow for the interpretation of high-throughput molecular datasets in the context of known biology. The MCC network model suite can be a valuable tool in personalized medicine to further understand heterogeneity and individual drug responses in complex respiratory diseases.
机译:粘液纤毛清除(MCC)被认为是杯状细胞分泌的粘液,气道表面液层和纤毛细胞的纤毛跳动的共同作用,是呼吸道对空气传播污染物的防御系统。由于该过程在分子水平上得到了很好的描述,因此我们将可用信息收集到一套全面的因果生物学网络(CBN)模型中。该套件由三个独立的模型组成,分别代表(1)纤毛组装,(2)睫毛跳动和(3)杯状细胞增生/间质转移,并以生物表达语言构建,该模型既易于人类阅读又可计算。对高度连接的节点和路径的网络分析表明,相关生物学已在MCC模型中捕获。我们还显示了转录组数据在这些网络模型上的评分,并证明了该模型准确地捕获了每个数据集中的扰动。这项工作是我们使用计算生物学网络模型和数学算法的方法的继续,这些模型和数学算法可以在已知生物学的背景下解释高通量分子数据集。 MCC网络模型套件可以成为个性化医学中的宝贵工具,以进一步了解复杂的呼吸系统疾病的异质性和个体药物反应。

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