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Validating module network learning algorithms using simulated data

机译:使用模拟数据验证模块网络学习算法

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摘要

BackgroundIn recent years, several authors have used probabilistic graphical models to learn expression modules and their regulatory programs from gene expression data. Despite the demonstrated success of such algorithms in uncovering biologically relevant regulatory relations, further developments in the area are hampered by a lack of tools to compare the performance of alternative module network learning strategies. Here, we demonstrate the use of the synthetic data generator SynTReN for the purpose of testing and comparing module network learning algorithms. We introduce a software package for learning module networks, called LeMoNe, which incorporates a novel strategy for learning regulatory programs. Novelties include the use of a bottom-up Bayesian hierarchical clustering to construct the regulatory programs, and the use of a conditional entropy measure to assign regulators to the regulation program nodes. Using SynTReN data, we test the performance of LeMoNe in a completely controlled situation and assess the effect of the methodological changes we made with respect to an existing software package, namely Genomica. Additionally, we assess the effect of various parameters, such as the size of the data set and the amount of noise, on the inference performance.
机译:背景技术近年来,几位作者使用概率图形模型从基因表达数据中学习表达模块及其调控程序。尽管已证明这种算法在揭示生物学上相关的调节关系方面取得了成功,但该领域的进一步发展因缺乏比较替代模块网络学习策略性能的工具而受到阻碍。在这里,我们演示了使用综合数据生成器SynTReN来测试和比较模块网络学习算法的目的。我们介绍了一种用于学习模块网络的软件包,称为LeMoNe,该软件包结合了一种用于学习监管计划的新颖策略。新奇之处包括使用自底向上的贝叶斯层次聚类来构建监管程序,以及使用条件熵测度将监管人员分配给监管程序节点。使用SynTReN数据,我们在完全受控的情况下测试了LeMoNe的性能,并评估了针对现有软件包Genomica进行的方法更改的效果。此外,我们评估各种参数对推理性能的影响,例如数据集的大小和噪声量。

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