The Rücker–Markov invariants of complex bio-systems: applications in parasitology and neuroinformatics
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- Investigación (FIC) [1615]
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The Rücker–Markov invariants of complex bio-systems: applications in parasitology and neuroinformaticsFecha
2013-02-23Cita bibliográfica
González-Díaz H, Riera-Fernández P, Pazos A, Munteanu CR. The Rücker–Markov invariants of complex bio-systems: applications in parasitology and neuroinformatics. Biosystems. 2013;111(3):199-207
Resumen
[Abstract] Rücker's walk count (WC) indices are well-known topological indices (TIs) used in Chemoinformatics to quantify the molecular structure of drugs represented by a graph in Quantitative structure–activity/property relationship (QSAR/QSPR) studies. In this work, we introduce for the first time the higher-order (kth order) analogues (WCk) of these indices using Markov chains. In addition, we report new QSPR models for large complex networks of different Bio-Systems useful in Parasitology and Neuroinformatics. The new type of QSPR models can be used for model checking to calculate numerical scores S(Lij) for links Lij (checking or re-evaluation of network connectivity) in large networks of all these fields. The method may be summarized as follows: (i) first, the WCk(j) values are calculated for all jth nodes in a complex network already created; (ii) A linear discriminant analysis (LDA) is used to seek a linear equation that discriminates connected or linked (Lij = 1) pairs of nodes experimentally confirmed from non-linked ones (Lij = 0); (iii) The new model is validated with external series of pairs of nodes; (iv) The equation obtained is used to re-evaluate the connectivity quality of the network, connecting/disconnecting nodes based on the quality scores calculated with the new connectivity function. The linear QSPR models obtained yielded the following results in terms of overall test accuracy for re-construction of complex networks of different Bio-Systems: parasite–host networks (93.14%), NW Spain fasciolosis spreading networks (71.42/70.18%) and CoCoMac Brain Cortex co-activation network (86.40%). Thus, this work can contribute to the computational re-evaluation or model checking of connectivity (collation) in complex systems of any science field.
Palabras clave
Complez networks
Parasite–host networks
Brain cortex network
Walk count
Markov chains
Graph topological indices
Quantitative structure–property relationship
Parasite–host networks
Brain cortex network
Walk count
Markov chains
Graph topological indices
Quantitative structure–property relationship
Versión del editor
Derechos
Atribución-NoComercial-SinDerivadas 3.0 España
ISSN
0303-2647
1872-8324
1872-8324