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Uncertain interactions affect degree distribution of biological networks

机译:不确定的相互作用影响生物网络的程度分布

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Biological interactions are often uncertain events, that may or may not take place under different scenarios. Existing studies analyze the degree distribution of biological networks by assuming that all the given interactions take place under all circumstances. This strong and often incorrect assumption can have misleading results. Here, we address this problem and develop sound mathematical basis to analyze degree distribution of biological networks in the presence of uncertain interactions. We present a comparative study of node degree distributions in two types of biological networks: the classical deterministic networks and the more flexible probabilistic networks. We extend this comparison to joint degree distributions of nodes connected by edges. The number of possible network topologies grows exponentially with the number of uncertain interactions. However, the mathematical apparatus we develop allows us to compute these degree distributions quickly even for entire protein protein interaction networks. It also helps us find an adequate mathematical model using maximum likelihood estimation. l Our results confirm that power law and log-normal models best describe degree distributions for both probabilistic and deterministic networks. Moreover, the inverse correlation of degrees of neighboring nodes shows that, in probabilistic networks, nodes with large number of interactions prefer to interact with those with small number of interactions more frequently than expected.
机译:生物相互作用通常是不确定的事件,在不同情况下可能会或可能不会发生。现有研究通过假设所有给定的相互作用均在所有情况下发生来分析生物网络的程度分布。这种强烈且通常不正确的假设可能会产生误导性的结果。在这里,我们解决了这个问题,并建立了良好的数学基础来分析存在不确定相互作用的生物网络的程度分布。我们对两种类型的生物网络中的节点度分布进行比较研究:经典确定性网络和更灵活的概率网络。我们将此比较扩展到由边连接的节点的联合度分布。可能的网络拓扑结构的数量随着不确定的交互作用的数量呈指数增长。但是,我们开发的数学仪器使我们能够快速计算这些度分布,甚至对于整个蛋白质蛋白质相互作用网络也是如此。它还可以帮助我们使用最大似然估计找到合适的数学模型。 l 我们的结果证实,幂定律和对数正态模型最能描述概率网络和确定性网络的度分布。而且,邻近节点的度数的反相关表明,在概率网络中,具有大量交互作用的节点比预期的更倾向于与具有少量交互作用的节点进行交互。

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