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Comparing the reconstruction of regulatory pathways with distinct Bayesian networks inference methods

机译:用不同的贝叶斯网络推断方法比较监管途径的重建

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摘要

BackgroundInference of biological networks has become an important tool in Systems Biology. Nowadays it is becoming clearer that the complexity of organisms is more related with the organization of its components in networks rather than with the individual behaviour of the components. Among various approaches for inferring networks, Bayesian Networks are very attractive due to their probabilistic nature and flexibility to incorporate interventions and extra sources of information. Recently various attempts to infer networks with different Bayesian Networks approaches were pursued. The specific interest in this paper is to compare the performance of three different inference approaches: Bayesian Networks without any modification; Bayesian Networks modified to take into account specific interventions produced during data collection; and a probabilistic hierarchical model that allows the inclusion of extra knowledge in the inference of Bayesian Networks. The inference is performed in three different types of data: (i) synthetic data obtained from a Gaussian distribution, (ii) synthetic data simulated with Netbuilder and (iii) Real data obtained in flow cytometry experiments.
机译:背景技术生物网络的推理已成为系统生物学中的重要工具。如今,越来越明显的是,生物的复杂性与其网络中各个组成部分的组织有关,而不是与各个组成部分的个体行为有关。在各种推断网络的方法中,贝叶斯网络由于其概率性和合并干预措施和额外信息源的灵活性而非常具有吸引力。最近,人们进行了各种尝试以不同的贝叶斯网络方法来推断网络。本文特别关注的是比较三种不同推理方法的性能:未经修改的贝叶斯网络;贝叶斯网络进行了修改,以考虑到数据收集过程中产生的特定干预措施;以及一个概率层次模型,该模型允许在贝叶斯网络的推理中包含额外的知识。推断是在三种不同类型的数据中执行的:(i)从高斯分布获得的合成数据,(ii)用Netbuilder模拟的合成数据,以及(iii)在流式细胞术实验中获得的实际数据。

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