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http://hdl.handle.net/10553/36063
Título: | A digital communication analysis of gene expression of proteins in biological systems: a layered network model view | Autores/as: | Cevallos, Yesenia Molina, Lorena Santillán, Alex De Rango, Floriano Rushdi, Ahmad Alonso-Hernández, Jesús B. |
Clasificación UNESCO: | 2407 Biología celular 33 Ciencias tecnológicas |
Palabras clave: | Digital communication Gene expression Protein Biological communication Layered network model, et al. |
Fecha de publicación: | 2017 | Publicación seriada: | Cognitive Computation | Resumen: | Biological communication is a core component of biological systems, mainly presented in the form of evolution, transmitting information from a generation to the next. Unfortunately, biological systems also include other components and functionalities that would cause unwanted information processing and/or communication problems that manifest as diseases. On the other hand, general communication systems, e.g. digital communications, have been well developed and analysed to yield accuracy, high performance, and efficiency. Therefore, we extend the theories of digital communication systems to analyse biological communications. However, in order to accurately model biological communication as digital ones, an analysis of the analogies between both systems is essential. In this work, we propose a novel stacked-layer network model that presents gene expression (i.e. the process by which the information carried by deoxyribonucleic acid or DNA is transformed into the appropriate proteins) and the role of the Golgi apparatus in transmitting these proteins to a target organ. This is analogous to the transmit process in digital communications where a transmitting device in some network would send digital information to a destination/receiver device in another network through a router. The proposed stacked-layer network model exploits key networks' theories and applies them into the broad field genomic analysis, which in turn can impact our understanding and use of medical methods. For example, it would be useful in detecting a target site (e.g. tumour cells) for drug therapy, improving the targeting accuracy (addressing), and reducing side effects in patients from health and socio-economic perspectives. Besides improving our understanding of biological communication systems, the proposed model unleashes the true duality between digital and biological communication systems. Therefore, it could be deployed into leveraging the advantages and efficiencies of biological systems into digital communication systems as well and to further develop efficient models that would overcome the disadvantages of either system. | URI: | http://hdl.handle.net/10553/36063 | ISSN: | 1866-9956 | DOI: | 10.1007/s12559-016-9434-4 | Fuente: | Cognitive Computation [ISSN 1866-9956], v. 9 (1), p. 43-67 |
Colección: | Artículos |
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