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Novel topological descriptors for analyzing biological networks

机译:用于分析生物网络的新型拓扑描述符

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Background Topological descriptors, other graph measures, and in a broader sense, graph-theoretical methods, have been proven as powerful tools to perform biological network analysis. However, the majority of the developed descriptors and graph-theoretical methods does not have the ability to take vertex- and edge-labels into account, e.g., atom- and bond-types when considering molecular graphs. Indeed, this feature is important to characterize biological networks more meaningfully instead of only considering pure topological information. Results In this paper, we put the emphasis on analyzing a special type of biological networks, namely bio-chemical structures. First, we derive entropic measures to calculate the information content of vertex- and edge-labeled graphs and investigate some useful properties thereof. Second, we apply the mentioned measures combined with other well-known descriptors to supervised machine learning methods for predicting Ames mutagenicity. Moreover, we investigate the influence of our topological descriptors - measures for only unlabeled vs. measures for labeled graphs - on the prediction performance of the underlying graph classification problem. Conclusions Our study demonstrates that the application of entropic measures to molecules representing graphs is useful to characterize such structures meaningfully. For instance, we have found that if one extends the measures for determining the structural information content of unlabeled graphs to labeled graphs, the uniqueness of the resulting indices is higher. Because measures to structurally characterize labeled graphs are clearly underrepresented so far, the further development of such methods might be valuable and fruitful for solving problems within biological network analysis.
机译:背景技术拓扑描述符,其他图形度量以及广义的图形理论方法已被证明是执行生物网络分析的强大工具。但是,大多数已开发的描述符和图论方法在考虑分子图时都没有能力考虑顶点和边缘标记,例如原子和键类型。实际上,此功能对于更有意义地表征生物网络非常重要,而不是仅考虑纯拓扑信息。结果在本文中,我们着重于分析一种特殊类型的生物网络,即生物化学结构。首先,我们得出熵测度以计算顶点和边标记图的信息内容,并研究其一些有用的性质。其次,我们将上述措施与其他知名描述符相结合,应用于有监督的机器学习方法中,以预测Ames致突变性。此外,我们研究了拓扑描述符(仅针对未标记的度量与针对标记图的度量)对基础图分类问题的预测性能的影响。结论我们的研究表明,将熵测度应用于代表图形的分子有助于有意义地表征此类结构。例如,我们发现,如果将确定未标记图的结构信息内容的措施扩展到标记图,则所得索引的唯一性会更高。到目前为止,由于在结构上表征标记图的措施明显不足,因此此类方法的进一步开发对于解决生物网络分析中的问题可能是有价值且富有成果的。

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