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A semi-supervised learning approach to predict synthetic genetic interactions by combining functional and topological properties of functional gene network

机译:通过结合功能基因网络的功能和拓扑特性来预测合成遗传相互作用的半监督学习方法

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Background Genetic interaction profiles are highly informative and helpful for understanding the functional linkages between genes, and therefore have been extensively exploited for annotating gene functions and dissecting specific pathway structures. However, our understanding is rather limited to the relationship between double concurrent perturbation and various higher level phenotypic changes, e.g. those in cells, tissues or organs. Modifier screens, such as synthetic genetic arrays (SGA) can help us to understand the phenotype caused by combined gene mutations. Unfortunately, exhaustive tests on all possible combined mutations in any genome are vulnerable to combinatorial explosion and are infeasible either technically or financially. Therefore, an accurate computational approach to predict genetic interaction is highly desirable, and such methods have the potential of alleviating the bottleneck on experiment design. Results In this work, we introduce a computational systems biology approach for the accurate prediction of pairwise synthetic genetic interactions (SGI). First, a high-coverage and high-precision functional gene network (FGN) is constructed by integrating protein-protein interaction (PPI), protein complex and gene expression data; then, a graph-based semi-supervised learning (SSL) classifier is utilized to identify SGI, where the topological properties of protein pairs in weighted FGN is used as input features of the classifier. We compare the proposed SSL method with the state-of-the-art supervised classifier, the support vector machines (SVM), on a benchmark dataset in S. cerevisiae to validate our method's ability to distinguish synthetic genetic interactions from non-interaction gene pairs. Experimental results show that the proposed method can accurately predict genetic interactions in S. cerevisiae (with a sensitivity of 92% and specificity of 91%). Noticeably, the SSL method is more efficient than SVM, especially for very small training sets and large test sets. Conclusions We developed a graph-based SSL classifier for predicting the SGI. The classifier employs topological properties of weighted FGN as input features and simultaneously employs information induced from labelled and unlabelled data. Our analysis indicates that the topological properties of weighted FGN can be employed to accurately predict SGI. Also, the graph-based SSL method outperforms the traditional standard supervised approach, especially when used with small training sets. The proposed method can alleviate experimental burden of exhaustive test and provide a useful guide for the biologist in narrowing down the candidate gene pairs with SGI. The data and source code implementing the method are available from the website: http://home.ustc.edu.cn/~yzh33108/GeneticInterPred.htm
机译:背景技术遗传相互作用谱具有丰富的信息,有助于理解基因之间的功能性联系,因此已被广泛用于注释基因功能和解剖特定的途径结构。但是,我们的理解仅限于双重并发扰动与各种更高水平的表型变化(例如,细胞,组织或器官中的那些。修饰子筛选,例如合成遗传阵列(SGA)可以帮助我们了解由组合基因突变引起的表型。不幸的是,对任何基因组中所有可能的组合突变进行详尽的测试很容易受到组合爆炸的影响,无论从技术上还是从经济上都是不可行的。因此,非常需要一种精确的计算方法来预测遗传相互作用,并且这种方法具有减轻实验设计瓶颈的潜力。结果在这项工作中,我们引入了一种计算系统生物学方法来准确预测成对的合成遗传相互作用(SGI)。首先,通过整合蛋白质-蛋白质相互作用(PPI),蛋白质复合物和基因表达数据,构建高覆盖度和高精度功能基因网络(FGN)。然后,使用基于图的半监督学习(SSL)分类器来识别SGI,其中将加权FGN中蛋白质对的拓扑特性用作分类器的输入特征。我们在酿酒酵母的基准数据集上将拟议的SSL方法与最新的监督分类器,支持向量机(SVM)进行了比较,以验证我们的方法能够区分非相互作用基因对中合成遗传相互作用的能力。实验结果表明,该方法可以准确预测酿酒酵母的遗传相互作用(灵敏度为92%,特异性为91%)。值得注意的是,SSL方法比SVM更有效,特别是对于非常小的训练集和大型测试集。结论我们开发了基于图的SSL分类器来预测SGI。分类器将加权FGN的拓扑属性用作输入特征,同时使用从标记和未标记数据中得出的信息。我们的分析表明,加权FGN的拓扑特性可用于准确预测SGI。此外,基于图的SSL方法优于传统的标准监督方法,尤其是在使用小型训练集的情况下。所提出的方法可以减轻详尽测试的实验负担,并为生物学家缩小SGI候选基因对提供有用的指导。可从以下网站获得实现该方法的数据和源代码:http://home.ustc.edu.cn/~yzh33108/GeneticInterPred.htm

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