A membrane computing simulator of trans-hierarchical antibiotic resistance evolution dynamics in nested ecological compartments (ARES)


Por: Campos M, Llorens C, Sempere JM, Futami R, Rodriguez I, Carrasco P, Capilla R, Latorre A, Coque TM, Moya A and Baquero F

Publicada: 5 ago 2015
Resumen:
Background: Antibiotic resistance is a major biomedical problem upon which public health systems demand solutions to construe the dynamics and epidemiological risk of resistant bacteria in anthropogenically-altered environments. The implementation of computable models with reciprocity within and between levels of biological organization (i.e. essential nesting) is central for studying antibiotic resistances. Antibiotic resistance is not just the result of antibiotic-driven selection but more properly the consequence of a complex hierarchy of processes shaping the ecology and evolution of the distinct subcellular, cellular and supra-cellular vehicles involved in the dissemination of resistance genes. Such a complex background motivated us to explore the P-system standards of membrane computing an innovative natural computing formalism that abstracts the notion of movement across membranes to simulate antibiotic resistance evolution processes across nested levels of micro- and macro-environmental organization in a given ecosystem. Results: In this article, we introduce ARES (Antibiotic Resistance Evolution Simulator) a software device that simulates P-system model scenarios with five types of nested computing membranes oriented to emulate a hierarchy of eco-biological compartments, i.e. a) peripheral ecosystem; b) local environment; c) reservoir of supplies; d) animal host; and e) host's associated bacterial organisms (microbiome). Computational objects emulating molecular entities such as plasmids, antibiotic resistance genes, antimicrobials, and/or other substances can be introduced into this framework and may interact and evolve together with the membranes, according to a set of pre-established rules and specifications. ARES has been implemented as an online server and offers additional tools for storage and model editing and downstream analysis. Conclusions: The stochastic nature of the P-system model implemented in ARES explicitly links within and between host dynamics into a simulation, with feedback reciprocity among the different units of selection influenced by antibiotic exposure at various ecological levels. ARES offers the possibility of modeling predictive multilevel scenarios of antibiotic resistance evolution that can be interrogated, edited and re-simulated if necessary, with different parameters, until a correct model description of the process in the real world is convincingly approached. ARES can be accessed at http://gydb.org/ares.

Filiaciones:
Campos M:
 Department of Microbiology, Ramón y Cajal University Hospital, IRYCIS, Carretera de Colmenar Viejo, km. 9,100, 28034, Madrid, Spain.

 Department of Information Systems and Computation (DSIC), Polytechnic University of Valencia, Camino de Vera, 46022, Valencia, Spain.

Llorens C:
 Biotechvana, Valencia, CEEI Building, Benjamin Franklin Av. 12, Valencia Technological Park, 46980, Paterna, Spain.

Rodriguez I:
 Antibiotic Resistance and Bacterial Virulence Unit (HRYC-CSIC), associated to the Superior Council of Scientific Investigations (CSIC), Madrid, Spain.

 Network Research Center for Epidemiology and Public Health (CIBER-ESP), Madrid, Spain.

:
 Cavanilles Institute of Biodiversity and Evolutionary Biology, University of Valencia, C/ Catedrático José Beltrán 2, 46980, Paterna, Valencia, Spain.

:
 Foundation for the Promotion of Health and Biomedical Research in the Valencian Community (FISABIO) - Public Health, Avenida de Cataluña 21, 46020, Valencia, Spain.
ISSN: 17456150





BIOLOGY DIRECT
Editorial
BioMed Central, CAMPUS, 4 CRINAN ST, LONDON N1 9XW, ENGLAND, Reino Unido
Tipo de documento: Article
Volumen: 10 Número:
Páginas: 41-41
WOS Id: 000359046000001
ID de PubMed: 26243297
imagen Green Published, gold

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