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Sensitivity and specificity of inferring genetic regulatory interactions from microarray experiments with dynamic Bayesian networks.

机译:从微阵列实验与动态贝叶斯网络推断遗传调控相互作用的敏感性和特异性。

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MOTIVATION: Bayesian networks have been applied to infer genetic regulatory interactions from microarray gene expression data. This inference problem is particularly hard in that interactions between hundreds of genes have to be learned from very small data sets, typically containing only a few dozen time points during a cell cycle. Most previous studies have assessed the inference results on real gene expression data by comparing predicted genetic regulatory interactions with those known from the biological literature. This approach is controversial due to the absence of known gold standards, which renders the estimation of the sensitivity and specificity, that is, the true and (complementary) false detection rate, unreliable and difficult. The objective of the present study is to test the viability of the Bayesian network paradigm in a realistic simulation study. First, gene expression data are simulated from a realistic biological network involving DNAs, mRNAs, inactive protein monomers and active protein dimers. Then, interaction networks are inferred from these data in a reverse engineering approach, using Bayesian networks and Bayesian learning with Markov chain Monte Carlo. RESULTS: The simulation results are presented as receiver operator characteristics curves. This allows estimating the proportion of spurious gene interactions incurred for a specified target proportion of recovered true interactions. The findings demonstrate how the network inference performance varies with the training set size, the degree of inadequacy of prior assumptions, the experimental sampling strategy and the inclusion of further, sequence-based information. AVAILABILITY: The programs and data used in the present study are available from http://www.bioss.sari.ac.uk/~dirk/Supplements
机译:动机:贝叶斯网络已被用于从微阵列基因表达数据推断遗传调控相互作用。该推断问题特别困难,因为必须从非常小的数据集中学习数百个基因之间的相互作用,这些数据通常在一个细胞周期中仅包含几十个时间点。通过将预测的遗传调控相互作用与生物学文献中已知的相互作用进行比较,大多数先前的研究已经评估了对真实基因表达数据的推断结果。由于缺乏已知的金标准,该方法引起争议,这使得对灵敏度和特异性(即真实和(互补)错误检测率)的估计不可靠且困难。本研究的目的是在现实的仿真研究中测试贝叶斯网络范式的可行性。首先,从现实的生物网络模拟基因表达数据,涉及DNA,mRNA,非活性蛋白单体和活性蛋白二聚体。然后,使用贝叶斯网络和带马尔可夫链蒙特卡洛的贝叶斯学习,通过逆向工程方法从这些数据中推断出交互网络。结果:仿真结果以接收机操作员特性曲线的形式给出。这允许估计针对特定目标比例的恢复的真实相互作用而引起的虚假基因相互作用的比例。研究结果证明了网络推理性能如何随训练集大小,先前假设的不足程度,实验性采样策略以及包含更多基于序列的信息而变化。可用性:本研究中使用的程序和数据可从http://www.bioss.sari.ac.uk/~dirk/Supplements获得

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