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A Fast Ranking Algorithm for Predicting Gene Functions in Biomolecular Networks

机译:一种预测生物分子网络中基因功能的快速排序算法

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摘要

Ranking genes in functional networks according to a specific biological function is a challenging task raising relevant performance and computational complexity problems. To cope with both these problems we developed a transductive gene ranking method based on kernelized score functions able to fully exploit the topology and the graph structure of biomolecular networks and to capture significant functional relationships between genes. We run the method on a network constructed by integrating multiple biomolecular data sources in the yeast model organism, achieving significantly better results than the compared state-of-the-art network-based algorithms for gene function prediction, and with relevant savings in computational time. The proposed approach is general and fast enough to be in perspective applied to other relevant node ranking problems in large and complex biological networks.
机译:根据特定的生物学功能对功能网络中的基因进行排名是一项艰巨的任务,从而引起相关的性能和计算复杂性问题。为了解决这两个问题,我们开发了一种基于核化得分函数的转导基因分级方法,该方法能够充分利用生物分子网络的拓扑结构和图结构,并捕获基因之间的重要功能关系。我们在通过将多个生物分子数据源整合到酵母模型生物中而构建的网络上运行该方法,与用于基因功能预测的最先进的基于网络的比较算法相比,获得了明显更好的结果,并且节省了计算时间。所提出的方法是通用且快速的,足以透视地应用于大型和复杂的生物网络中的其他相关节点排名问题。

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