Institute for Bioinformatics and Translational Research, UMIT, Hall in Tyrol, Austria.
PLoS One. 2009 Dec 15;4(12):e8057. doi: 10.1371/journal.pone.0008057.
This paper aims to investigate information-theoretic network complexity measures which have already been intensely used in mathematical- and medicinal chemistry including drug design. Numerous such measures have been developed so far but many of them lack a meaningful interpretation, e.g., we want to examine which kind of structural information they detect. Therefore, our main contribution is to shed light on the relatedness between some selected information measures for graphs by performing a large scale analysis using chemical networks. Starting from several sets containing real and synthetic chemical structures represented by graphs, we study the relatedness between a classical (partition-based) complexity measure called the topological information content of a graph and some others inferred by a different paradigm leading to partition-independent measures. Moreover, we evaluate the uniqueness of network complexity measures numerically. Generally, a high uniqueness is an important and desirable property when designing novel topological descriptors having the potential to be applied to large chemical databases.
本文旨在研究信息论网络复杂性度量方法,这些方法已在数学和药物化学领域得到广泛应用,包括药物设计。到目前为止,已经开发了许多这样的方法,但其中许多方法缺乏有意义的解释,例如,我们想要检查它们检测到哪种结构信息。因此,我们的主要贡献是通过使用化学网络进行大规模分析,揭示一些选定的图信息度量之间的相关性。从几组包含通过图表示的真实和合成化学结构的集合开始,我们研究了经典的(基于分区的)复杂性度量,即图的拓扑信息内容与其他一些通过不同范式推断的度量之间的相关性,这些范式导致与分区无关的度量。此外,我们还通过数值评估网络复杂性度量的独特性。通常,在设计具有潜在应用于大型化学数据库的新型拓扑描述符时,高独特性是一个重要和理想的特性。