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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Gene regulatory network inference and validation using relative change ratio analysis and time-delayed dynamic Bayesian network
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Gene regulatory network inference and validation using relative change ratio analysis and time-delayed dynamic Bayesian network

机译:使用相对变化率分析和时滞动态贝叶斯网络的基因调控网络推断和验证

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The Dialogue for Reverse Engineering Assessments and Methods (DREAM) project was initiated in 2006 as a community-wide effort for the development of network inference challenges for rigorous assessment of reverse engineering methods for biological networks. We participated in the in silico network inference challenge of DREAM3 in 2008. Here we report the details of our approach and its performance on the synthetic challenge datasets. In our methodology, we first developed a model called relative change ratio (RCR), which took advantage of the heterozygous knockdown data and null-mutant knockout data provided by the challenge, in order to identify the potential regulators for the genes. With this information, a time-delayed dynamic Bayesian network (TDBN) approach was then used to infer gene regulatory networks from time series trajectory datasets. Our approach considerably reduced the searching space of TDBN; hence, it gained a much higher efficiency and accuracy. The networks predicted using our approach were evaluated comparatively along with 29 other submissions by two metrics (area under the ROC curve and area under the precision-recall curve). The overall performance of our approach ranked the second among all participating teams.
机译:反向工程评估与方法对话(DREAM)项目于2006年启动,是一个社区范围内的工作,旨在开发网络推理挑战,以严格评估生物网络的反向工程方法。我们在2008年参加了DREAM3的计算机网络推理挑战。在这里,我们报告了我们的方法及其在综合挑战数据集上的性能的详细信息。在我们的方法中,我们首先开发了一个称为相对变化率(RCR)的模型,该模型利用了挑战提供的杂合敲除数据和无效突变敲除数据,以鉴定基因的潜在调控因子。有了这些信息,然后使用时延动态贝叶斯网络(TDBN)方法从时间序列轨迹数据集中推断基因调控网络。我们的方法大大减少了TDBN的搜索空间;因此,它获得了更高的效率和准确性。使用两种方法(ROC曲线下的面积和精确召回曲线下的面积)对使用我们的方法预测的网络与其他29个提交的内容进行了比较评估。我们方法的整体绩效在所有参赛团队中排名第二。

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