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Bayesian Networks to Model Pseudomonas aeruginosa Survival Mechanism and Identify Low Nutrient Response Genes in Water

机译:贝叶斯网络铜绿假单胞菌的模型铜绿假单胞菌存活机制,并在水中鉴定低营养反应基因

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Pseudomonas aeruginosa is an organism notable for its ubiquity in the ecosystem and its resistance to antibiotics. It is an environmental bacterium that is a common cause of hospital-acquired infections. Identifying its survival mechanism is critical for designing preventative and curative measures. Also, understanding this mechanism is beneficial because P. aeruginosa and other related organisms are capable of bioremediation. To address this practical problem, we proceeded by decomposition into multiple learnable components, two of which are presented in this paper. With unlabeled data collected from P. aeruginosa gene expression response to low nutrient water, a Bayesian Machine Learning methodology was implemented, and we created an optimal regulatory network model of the survival mechanism. Subsequently, node influence techniques were used to computationally infer a group of twelve genes as key orchestrators of the observed survival phenotype. These results are biologically plausible, and are of great contribution to the overall goal of apprehending P. aeruginosa survival mechanism in nutrient depleted water environment.
机译:假单胞菌铜绿假单胞菌是一种在生态系统中繁琐的生物体,其对抗生素的抗性。它是一种环保细菌,是医院收养的感染的常见原因。确定其生存机制对于设计预防和治疗措施至关重要。此外,理解这种机制是有益的,因为P.铜绿假单胞菌和其他相关的生物能够生物化。为了解决这个实际问题,我们通过分解成多个学习组件,其中两个是本文提出的。利用从P.铜绿假单胞菌基因表达反应的未标记数据对低营养水进行,实施了贝叶斯机器学习方法,我们创建了一个最佳的存活机制的监管网络模型。随后,节点影响技术用于将一组12个基因推断为观察到的存活表型的关键协调剂。这些结果在生物学上是合理的,对营养耗尽水环境中伪装铜绿假单胞菌存活机制的总体目标具有巨大贡献。

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