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Prior knowledge guided active modules identification: an integrated multi-objective approach

机译:先验知识指导的活动模块识别:集成的多目标方法

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Background Active module, defined as an area in biological network that shows striking changes in molecular activity or phenotypic signatures, is important to reveal dynamic and process-specific information that is correlated with cellular or disease states. Methods A prior information guided active module identification approach is proposed to detect modules that are both active and enriched by prior knowledge. We formulate the active module identification problem as a multi-objective optimisation problem, which consists two conflicting objective functions of maximising the coverage of known biological pathways and the activity of the active module simultaneously. Network is constructed from protein-protein interaction database. A beta-uniform-mixture model is used to estimate the distribution of p -values and generate scores for activity measurement from microarray data. A multi-objective evolutionary algorithm is used to search for Pareto optimal solutions. We also incorporate a novel constraints based on algebraic connectivity to ensure the connectedness of the identified active modules. Results Application of proposed algorithm on a small yeast molecular network shows that it can identify modules with high activities and with more cross-talk nodes between related functional groups. The Pareto solutions generated by the algorithm provides solutions with different trade-off between prior knowledge and novel information from data. The approach is then applied on microarray data from diclofenac-treated yeast cells to build network and identify modules to elucidate the molecular mechanisms of diclofenac toxicity and resistance. Gene ontology analysis is applied to the identified modules for biological interpretation. Conclusions Integrating knowledge of functional groups into the identification of active module is an effective method and provides a flexible control of balance between pure data-driven method and prior information guidance.
机译:背景主动模块被定义为生物网络中显示分子活性或表型特征发生显着变化的区域,对于揭示与细胞或疾病状态相关的动态和过程特定信息非常重要。方法提出了一种先验信息指导的主动模块识别方法,以检测主动的和被先验知识丰富的模块。我们将主动模块识别问题公式化为一个多目标优化问题,该问题包含两个相互冲突的目标函数,即最大化已知生物途径的覆盖范围和同时激活主动模块的活动。网络由蛋白质-蛋白质相互作用数据库构建。使用β均匀混合物模型来估计p值的分布并从微阵列数据生成用于活性测量的分数。使用多目标进化算法搜索帕累托最优解。我们还结合了基于代数连接性的新颖约束,以确保所标识的活动模块的连接性。结果该算法在小型酵母分子网络上的应用表明,该算法可以识别具有较高活性,相关功能基团之间具有更多串扰节点的模块。该算法生成的帕累托解提供了在先验知识和数据中的新颖信息之间具有不同权衡的解决方案。然后将该方法应用于双氯芬酸处理过的酵母细胞的微阵列数据上,以建立网络并确定模块,阐明双氯芬酸毒性和耐药性的分子机制。基因本体分析被应用于所识别的模块以进行生物学解释。结论将功能组的知识整合到活动模块的识别中是一种有效的方法,并且可以灵活地控制纯数据驱动方法与先验信息指导之间的平衡。

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