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首页> 外文期刊>BMC Veterinary Research >Signaling network prediction by the Ontology Fingerprint enhanced Bayesian network
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Signaling network prediction by the Ontology Fingerprint enhanced Bayesian network

机译:通过本体指纹增强贝叶斯网络进行信号网络预测

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BackgroundDespite large amounts of available genomic and proteomic data, predicting the structure and response of signaling networks is still a significant challenge. While statistical method such as Bayesian network has been explored to meet this challenge, employing existing biological knowledge for network prediction is difficult. The objective of this study is to develop a novel approach that integrates prior biological knowledge in the form of the Ontology Fingerprint to infer cell-type-specific signaling networks via data-driven Bayesian network learning; and to further use the trained model to predict cellular responses.ResultsWe applied our novel approach to address the Predictive Signaling Network Modeling challenge of the fourth (2009) Dialog for Reverse Engineering Assessment's and Methods (DREAM4) competition. The challenge results showed that our method accurately captured signal transduction of a network of protein kinases and phosphoproteins in that the predicted protein phosphorylation levels under all experimental conditions were highly correlated (R2 = 0.93) with the observed results. Based on the evaluation of the DREAM4 organizer, our team was ranked as one of the top five best performers in predicting network structure and protein phosphorylation activity under test conditions.ConclusionsBayesian network can be used to simulate the propagation of signals in cellular systems. Incorporating the Ontology Fingerprint as prior biological knowledge allows us to efficiently infer concise signaling network structure and to accurately predict cellular responses.
机译:尽管有大量可用的基因组和蛋白质组数据,但预测信号网络的结构和响应仍然是一项重大挑战。尽管已经探索了诸如贝叶斯网络之类的统计方法来应对这一挑战,但是很难将现有的生物学知识用于网络预测。这项研究的目的是开发一种新颖的方法,以本体指纹的形式整合先前的生物学知识,以通过数据驱动的贝叶斯网络学习来推断特定于细胞类型的信号网络。结果我们应用了新颖的方法来应对第四次(2009年)逆向工程评估与方法对话(DREAM4)竞赛的预测信号网络建模挑战。挑战性结果表明,我们的方法准确地捕获了蛋白激酶和磷蛋白网络的信号转导,因为在所有实验条件下预测的蛋白磷酸化水平高度相关(R 2 = 0.93)与观察到的结果。根据DREAM4组织者的评估,我们的团队被评为在测试条件下预测网络结构和蛋白质磷酸化活性的前五名中表现最好的人之一。结论贝叶斯网络可用于模拟信号在细胞系统中的传播。将本体指纹作为现有的生物学知识,可以使我们有效地推断出简明的信号网络结构并准确预测细胞反应。

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