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Modeling Complex Metabolic Reactions, Ecological Systems, and Financial and Legal Networks with MIANN Models Based on Markov-Wiener Node Descriptors

机译:基于Markov-Wiener节点描述符的MIANN模型对复杂的代谢反应,生态系统以及金融和法律网络建模

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The use of numerical parameters in Complex Network analysis is expanding to new fields of application. At a molecular level, we can use them to describe the molecular structure of chemical entities, protein interactions, or metabolic networks. However, the applications are not restricted to the world of molecules and can be extended to the study of macroscopic nonliving systems, organisms, or even legal or social networks. On the other hand, the development of the field of Artificial Intelligence has led to the formulation of computational algorithms whose design is based on the structure and functioning of networks of biological neurons. These algorithms, called Artificial Neural Networks (ANNs), can be useful for the study of complex networks, since the numerical parameters that encode information of the network (for example centralitiesode descriptors) can be used as inputs for the ANNs. The Wiener index (W) is a graph invariant widely used in chemoinformatics to quantify the molecular structure of drugs and to study complex networks. In this work, we explore for the first time the possibility of using Markov chains to calculate analogues of node distance numbers/W to describe complex networks from the point of view of their nodes. These parameters are called Markov-Wiener node descriptors of order k~(th) (W_k). Please, note that these descriptors are not related to Markov- Wiener stochastic processes. Here, we calculated the W_k(i) values for a very high number of nodes (>100,000) in more than 100 different complex networks using the software MI-NODES. These networks were grouped according to the field of application. Molecular networks include the Metabolic Reaction Networks (MRNs) of 40 different organisms. In addition, we analyzed other biological and legal and social networks. These include the Interaction Web Database Biological Networks (IWDBNs), with 75 food webs or ecological systems and the Spanish Financial Law Network (SFLN). The calculated W_k(i) values were used as inputs for different ANNs in order to discriminate correct node connectivity patterns from incorrect random patterns. The MIANN models obtained present good values of Sensitivity/Specificity (%): MRNs (78/78), IWDBNs (90/88), and SFLN (86/84). These preliminary results are very promising from the point of view of a first exploratory study and suggest that the use of these models could be extended to the high-throughput re-evaluation of connectivity in known complex networks (collation).
机译:复杂网络分析中数字参数的使用正在扩展到新的应用领域。在分子水平上,我们可以使用它们来描述化学实体,蛋白质相互作用或代谢网络的分子结构。但是,这些应用程序不仅限于分子世界,还可以扩展到宏观非生物系统,生物甚至法律或社会网络的研究。另一方面,人工智能领域的发展导致计算算法的提出,其设计基于生物神经元网络的结构和功能。这些称为人工神经网络(ANN)的算法可用于研究复杂的网络,因为编码网络信息的数值参数(例如中心点/节点描述符)可以用作ANN的输入。 Wiener指数(W)是一种不变式的图,广泛用于化学信息学中,以量化药物的分子结构并研究复杂的网络。在这项工作中,我们首次探索了使用马尔可夫链来计算节点距离数/ W的类似物以从其节点的角度描述复杂网络的可能性。这些参数称为阶数k〜(th)(W_k)的Markov-Wiener节点描述符。请注意,这些描述符与Markov-Wiener随机过程无关。在这里,我们使用MI-NODES软件为100多个不同的复杂网络中的大量节点(> 100,000)计算了W_k(i)值。这些网络根据应用领域进行了分组。分子网络包括40种不同生物的代谢反应网络(MRN)。此外,我们分析了其他生物,法律和社会网络。其中包括具有75个食物网或生态系统的交互网络数据库生物网络(IWDBN)和西班牙金融法网络(SFLN)。计算出的W_k(i)值用作不同ANN的输入,以便从错误的随机模式中区分出正确的节点连接模式。获得的MIANN模型具有良好的灵敏度/特异度(%)值:MRN(78/78),IWDBN(90/88)和SFLN(86/84)。从首次探索性研究的角度来看,这些初步结果是非常有希望的,并表明可以将这些模型的使用扩展到已知复杂网络(排序规则)中对连接性的高吞吐量重新评估。

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