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INFERRING DISEASE-RELATED PATHWAYS USING A PROBABILISTIC EPISTASIS MODEL

机译:使用概率性流行病模型推断与疾病相关的途径

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Motivation: We present a probabilistic model called a Joint Intervention Network (JIN) for inferring interactions among a chosen set of regulator genes. The input to the method are expression changes of downstream indicator genes observed under the knock-out of the regulators. JIN can use any number of perturbation combinations for model inference (e.g. single, double, and triple knock-outs). Results/Conclusions: We applied JIN to a Vibrio cholerae regulatory network to uncover mechanisms critical to its environmental persistence. V. cholerae is a facultative human pathogen that causes cholera in humans and responsible for seven pandemics. We analyzed the expression response of 17 V. cholerae biofilm indicator genes under various single and multiple knock-outs of three known biofilm regulators. Using the inferred network, we were able to identify new genes involved in biofilm formation more accurately than clustering expression profiles.
机译:动机:我们提出了一种称为联合干预网络(JIN)的概率模型,用于推断一组选定的调节基因之间的相互作用。该方法的输入是在调节子的敲除下观察到的下游指示基因的表达变化。 JIN可以使用任意数量的扰动组合进行模型推断(例如,单,双和三级敲除)。结果/结论:我们将JIN应用于霍乱弧菌监管网络,以发现对其环境持久性至关重要的机制。霍乱弧菌是一种兼性的人类病原体,可引起人类霍乱,并导致七次大流行。我们分析了三种已知的生物膜调节剂的单次和多次敲除下的霍乱弧菌霍乱弧菌生物膜指示剂基因的表达响应。使用推断的网络,我们能够比聚类表达谱更准确地识别参与生物膜形成的新基因。

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