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Mining Relationships among Multiple Entities in Biological Networks

机译:生物网络中多个实体的挖掘关系

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Identifying topological relationships among multiple entities in biological networks is critical towards the understanding of the organizational principles of network functionality. Theoretically, this problem can be solved using minimum Steiner tree (MSTT) algorithms. However, due to large network size, it remains to be computationally challenging, and the predictive value of multi-entity topological relationships is still unclear. We present a novel solution called Cluster-based Steiner Tree Miner (CST-Miner) to instantly identify multi-entity topological relationships in biological networks. Given a list of user-specific entities, CST-Miner decomposes a biological network into nested cluster-based subgraphs, on which multiple minimum Steiner trees are identified. By merging all of them into a minimum cost tree, the optimal topological relationships among all the user-specific entities are revealed. Experimental results showed that CST-Miner can finish in nearly log-linear time and the tree constructed by CST-Miner is close to the global minimum.
机译:识别生物网络中多个实体之间的拓扑关系对于了解网络功能的组织原则至关重要。从理论上讲,可以使用最小施蒂纳树(MSTT)算法来解决这个问题。然而,由于网络尺寸大,它仍有待计算上具有挑战性,并且多实体拓扑关系的预测值仍不清楚。我们提出了一种名为基于群集的施泰尔树矿工(CST-Miner)的新型解决方案,以立即识别生物网络中的多实体拓扑关系。鉴于用户特定实体列表,CST-MINER将生物网络分解为基于嵌套的基于群集的子图,其中识别多个最小静脉树。通过将所有人合并到最低成本树中,揭示了所有特定于用户特定实体中的最佳拓扑关系。实验结果表明,CST-MINER可以在几乎对数线性的时间内完成,CST-MINER构建的树木靠近全局最小值。

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