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dc.contributorPublic Library Sciencees_CL
dc.contributor.authorMaracaja-Coutinho, Vinicius [Chile. Universidad Mayor. Centro de Genómica y Bioinformática]es_CL
dc.contributor.authorDe Farias, Savio T. [Brasil. Universidade Federal da Paraiba]es_CL
dc.contributor.authorBatista, Leonardo V. [Brasil. Universidade Federal da Paraiba]es_CL
dc.date.accessioned2018-09-07T13:04:11Z
dc.date.available2018-09-07T13:04:11Z
dc.date.issued2016es_CL
dc.identifier.citationde Brito, D. M., Maracaja-Coutinho, V., de Farias, S. T., Batista, L. V., & do Rêgo, T. G. (2016). A novel method to predict genomic islands based on mean shift clustering algorithm. PloS one, 11(1), e0146352.es_CL
dc.identifier.issnESSN 1932-6203es_CL
dc.identifier.urihttp://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0146352&type=printablees_CL
dc.identifier.urihttps://doi.org/10.1371/journal.pone.0146352es_CL
dc.identifier.urihttp://repositorio.umayor.cl/xmlui/handle/sibum/2627
dc.description.abstractGenomic Islands (GIs) are regions of bacterial genomes that are acquired from other organisms by the phenomenon of horizontal transfer. These regions are often responsible for many important acquired adaptations of the bacteria, with great impact on their evolution and behavior. Nevertheless, these adaptations are usually associated with pathogenicity, antibiotic resistance, degradation and metabolism. Identification of such regions is of medical and industrial interest. For this reason, different approaches for genomic islands prediction have been proposed. However, none of them are capable of predicting precisely the complete repertory of GIs in a genome. The difficulties arise due to the changes in performance of different algorithms in the face of the variety of nucleotide distribution in different species. In this paper, we present a novel method to predict GIs that is built upon mean shift clustering algorithm. It does not require any information regarding the number of clusters, and the bandwidth parameter is automatically calculated based on a heuristic approach. The method was implemented in a new user-friendly tool named MSGIP—Mean Shift Genomic Island Predictor. Genomes of bacteria with GIs discussed in other papers were used to evaluate the proposed method. The application of this tool revealed the same GIs predicted by other methods and also different novel unpredicted islands. A detailed investigation of the different features related to typical GI elements inserted in these new regions confirmed its effectiveness. Stand-alone and user-friendly versions for this new methodology are available at http://msgip.integrativebioinformatics.me.es_CL
dc.description.sponsorshipEste trabajo no contó con financiamiento.es_CL
dc.format.extentARTÍCULO ORIGINALes_CL
dc.language.isoenes_CL
dc.publisherCIENCIASes_CL
dc.rightsAttribution-NonCommercial-NoDerivs 3.0 Chilees_CL
dc.subjectCIENCIA Y TECNOLOGÍAes_CL
dc.titleA Novel Method to Predict Genomic Islands Based on Mean Shift Clustering Algorithmes_CL
dc.typeArtículo o Paperes_CL
umayor.indizadorCOTes_CL
umayor.politicas.sherpa/romeoLicencia color: VERDE (Revista DOAJ. Se puede archivar el pre-print y el post-print o versión de editor/PDF)--DOAJ es una revista de acceso abierto. Pre-print del autor: el autor puede archivar la versión pre-print (ie la versión previa a la revisión por pares). Postprint: el autor puede archivar la versión post-print (ie la versión final posterior a la revisión por pares), Versión de editor/PDF: green tick el autor puede archivar la versión del editor/PDF, Condiciones generales: Creative Commons Attribution License 4.0, Los autores conservan el copyright, Los autores afectados en el Reino Unido pueden depositar en OpenDepot, La versión de editor/PDF puede utilizarse, La fuente publicada debe reconocerse con la cita, Author's pre-prints can be deposited in pre-print servers, Publisher will deposit articles in PubMed Central// Disponible en: http://www.sherpa.ac.uk/romeo/issn/1932-6203/es/es_CL
umayor.indexadoWOSes_CL
umayor.indexadoSCOPUSes_CL
dc.identifier.doi10.1371/journal.pone.0146352es_CL]
umayor.indicadores.wos-(cuartil)Q1es_CL
umayor.indicadores.scopus-(scimago-sjr)sin informaciónes_CL


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