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An Enhanced Evolutionary Algorithm for Detecting Complexes in Protein Interaction Networks with Heuristic Biological Operator

机译:一种增强的蛋白质相互作用网络与启发式生物算子检测复合物的增强进化算法

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Detecting complexes in protein interaction networks is one of the most important topics of current computational biology research due to its prominent role in predicting functions of yet uncharacterized proteins and in diseases diagnosis. Evolutionary Algorithms (EAs) have been adopted recently to identify significant protein complexes. Conductance, expansion, normalized cut, modularity, and internal density are some well-known examples of complex detection models. In spite of the improvements and the robustness of predictive functions introduced by complex detection models based on EA and regardless of the general topological properties of protein interaction networks, inherent biological data of protein complexes has not, or rarely exploited and incorporated inside the methods as a specific heuristic operator. The aim of this operator is to guide the search process towards discovering hyper-connected and biologically related complexes by allowing a more effective exploration of the state space of possible solutions. Thus, the main contribution of this study is to develop a heuristic biological operator based on Gene Ontology (GO) annotations where it can serve as a local-common optimization approach. In the experiments, the performance of eight EA-based complex detection models has analyzed when applied on the yeast protein networks that are publicly available. The results give a clear argument for the positive effect of the proposed heuristic biological operator to considerably enhance the reliability of the current state-of-the-art optimization models.
机译:检测蛋白质相互作用网络中的复合物是当前计算生物学研究中最重要的话题之一,由于其在预测无特异化蛋白和疾病诊断中的功能中的突出作用。最近通过了进化算法(EAS)以鉴定显着的蛋白质复合物。电导,膨胀,归一化切割,模块化和内部密度是复杂检测模型的一些公知的示例。尽管基于EA的复杂检测模型引入的预测功能的改善和鲁棒性,但无论蛋白质相互作用网络的一般拓扑特性如何,蛋白质复合物的固有生物数据没有,或很少被剥削和掺入其中的方法特定启发式运营商。该运营商的目的是通过允许更有效地探索可能的解决方案的状态空间来指导搜索过程来发现超连接和生物学相关的复合物。因此,本研究的主要贡献是基于基因本体学(GO)注释,开发一种启发式生物运营商,在那里它可以作为当地常见的优化方法。在实验中,在公开可用的酵母蛋白质网络上施加八个基于EA的复杂检测模型的性能。结果对拟议的启发式生物运营商的积极效果表示明确的论点,以大大提高当前最先进的优化模型的可靠性。

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