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dc.contributor.authorOrjuela Canon, Alvaro David
dc.contributor.authorPerdomo Charry, Oscar Julian
dc.date.accessioned2021-05-11T17:36:11Z
dc.date.accessioned2021-10-01T17:16:48Z
dc.date.available2021-05-11
dc.date.available2021-10-01T17:16:48Z
dc.date.issued2021
dc.identifier.issn1548-0992
dc.identifier.urihttps://repositorio.escuelaing.edu.co/handle/001/1422
dc.description.abstractThe COVID-19 disease surprised the world in the last monthsdue to the number of infections and deaths have been increased in an exponential way.Since the pandemic was established by the World Health Organization, different strategies have been proposedfordealingdiverse problems in cities that the coronavirus affected. This work presents a method to decision making support processes, specificallyin environment with few data and variables to be considered. Thus, artificial neural networks architectures were employed to cluster the informationavailable intheBogota city, and provide a tool that allows generatingadditional findings in a simultaneous mode, andexpressed as a visualmap. The present proposal reachedsensitivity measures around 75%, obtaining100% for thebest cases.eng
dc.description.abstractLa enfermedad COVID-19 ha sorprendido al mundo en los últimos meses debido a que el número de contagios y muertes se ha incrementado de forma exponencial.Desde que se estableció la pandemia por parte de la Organización Mundial de la Salud, se han propuesto diferentes estrategias para hacer frente a los diversos problemas en las ciudades que el coronavirus afectó. Este trabajo presenta un método de apoyo a los procesos de toma de decisiones, concretamente en entornos con pocos datos y variables a considerar. Así, se emplearon arquitecturas de redes neuronales artificiales para agrupar la información disponible en la ciudad de Bogotá, y proporcionar una herramienta que permite generar hallazgos adicionales de manera simultánea, y expresados como un mapa visual. La presente propuesta alcanzó medidas de sensibilidad en torno al 75%, obteniendo un 100% para los mejores casos.spa
dc.format.extent9 páginasspa
dc.format.mimetypeapplication/pdfspa
dc.language.isoengspa
dc.publisherSociedad de Informática IEEEspa
dc.sourcehttps://latamt.ieeer9.org/index.php/transactions/article/view/4403spa
dc.titleClusteringProposal Supportfor theCOVID-19 Making Decision Process in a Data Demanding Scenarioeng
dc.typeArtículo de revistaspa
dc.description.notesThis work was supported in part by the Universidad del Rosario under Grant BS123456. A. Orjuela-Cañón and O. Perdomo are with the School of Medicine and Health Sciences from Universidad del Rosario, Bogota, Colombia (e-mail: alvaro.orjuela@urosario.educ.coand oscarj.perdomo@urosario.edu.co)eng
dc.type.versioninfo:eu-repo/semantics/publishedVersionspa
oaire.accessrightshttp://purl.org/coar/access_right/c_14cbspa
oaire.versionhttp://purl.org/coar/version/c_970fb48d4fbd8a85spa
dc.contributor.researchgroupGiBiomespa
dc.publisher.placeEstados Unidosspa
dc.relation.citationeditionVol. 19 No. 6 (2021): Número especial sobre la lucha contra COVID-19spa
dc.relation.citationendpage1049spa
dc.relation.citationissue6spa
dc.relation.citationstartpage1041spa
dc.relation.citationvolume19spa
dc.relation.indexedN/Aspa
dc.relation.ispartofjournalIEEE Latin America Transactiospa
dc.relation.referencesW. H. Organization and others, “WHO statement regarding cluster of pneumonia cases in Wuhan, China,” Beijing WHO, vol. 9, 2020.eng
dc.relation.referencesN. Chen et al., “Epidemiological and clinical characteristics of 99 cases of 2019 novel coronavirus pneumonia in Wuhan, China: a descriptive study,” Lancet, vol. 395, no. 10223, pp. 507–513, 2020.eng
dc.relation.referencesA. Patel, D. B. Jernigan, and others, “Initial public health response and interim clinical guidance for the 2019 novel coronavirusoutbreak--United States, December 31, 2019--February 4, 2020,” Morb. Mortal. Wkly. Rep., vol. 69, no. 5, p. 140, 2020.eng
dc.relation.referencesK. J. Smereka, Jacek and Szarpak, Lukasz and Filipiak, “Modern medicine in COVID-19 era,” Disaster Emerg. Med. J., vol. 5, no. 2, pp. 103–105, 2020.eng
dc.relation.referencesS. Zaim, J. H. Chong, V. Sankaranarayanan, and A. Harky, “COVID-19 and Multiorgan Response,” Curr. Probl. Cardiol., vol. 45, no. 8, p. 100618, 2020.eng
dc.relation.referencesB. N. Silva, M. Khan, and K. Han, “Towards sustainable smart cities: A review of trends, architectures, components, and open challenges in smart cities,” Sustain. Cities Soc., vol. 38, pp. 697–713, 2018eng
dc.relation.referencesM. I. Pramanik, R. Y. K. Lau, H. Demirkan, and M. A. K. Azad, “Smart health: Big data enabled health paradigm within smart cities,” Expert Syst. Appl., vol. 87, pp. 370–383, 2017.eng
dc.relation.referencesY. Wang et al., “Clinical information extraction applications: a literature review,” J. Biomed. Inform., vol. 77, pp. 34–49, 2018.eng
dc.relation.referencesC. Xiao, E. Choi, and J. Sun, “Opportunities and challenges in developing deep learning models using electronic health records data: a systematic review,” J. Am. Med. Informatics Assoc., vol. 25, no. 10, pp. 1419–1428, 2018.eng
dc.relation.referencesA. Manya and P. Nielsen, “Reporting practices and data quality in health information systems in developing countries: an exploratory case study in Kenya,” J. Health Inform. Dev. Ctries., vol. 10, no. 1, 2016.eng
dc.relation.referencesY. Glèlè Ahanhanzo, E.-M. Ouendo, A. Kpozèhouen, A. Levêque, M. Makoutodé, and M. Dramaix-Wilmet, “Data quality assessment in the routine health information system: an application of the lot quality assurance sampling in Benin,” Health Policy Plan., vol. 30, no. 7, pp. 837–843, 2015eng
dc.relation.referencesJ. Macinko, F. C. Guanais, P. Mullachery, and G. Jimenez, “Gaps in primary care and health system performance in six Latin American and Caribbean countries,” Health Aff., vol. 35, no. 8, pp. 1513–1521, 2016.eng
dc.relation.referencesN. Peek, C. Combi, R. Marin, and R. Bellazzi, “Thirty years of artificial intelligence in medicine (AIME) conferences: A review of research themes,” Artif. Intell. Med., vol. 65, no. 1, pp. 61–73, 2015.eng
dc.relation.referencesF. Jiang et al., “Artificial intelligence in healthcare: past, present and future,” Stroke Vasc. Neurol., vol. 2, no. 4, pp. 230–243, 2017.[15]J. A. Hartigan, Clustering algorithms. 1975.[16]D. Xu and Y. Tian, “A comprehensive survey of clustering algorithms,” Ann. Data Sci., vol. 2, no. 2, pp. 165–193, 2015.[17]E. Elveren and N. Yumuvak, “Tuberculosis disease diagnosis using artificial neural network trained with genetic algorithm,” J. Med. Syst., vol. 35, no. 3, pp. 329–332, 2011.[18]P. Venkatesan and M. Mullai, “Clustering of Disease Data base using Self Organizing Maps and Logical Inferences,” Indian J. Autom. Artif. Intell., vol. 1, no. 1, pp. 2–6, 2013.[19]S.-L. Shieh and I.-E. Liao, “A new approach for data clustering and visualization using self-organizing maps,” Expert Syst. Appl., vol. 39, no. 15, pp. 11924–11933, 2012.[20]F. S. Aguiar, R. C. Torres, J. V. F. Pinto, A. L. Kritski, J. M. Seixas, and F. C. Q. Mello, “Development of two artificial neural network models to support the diagnosis of pulmonary tuberculosis in hospitalized patients in Rio de Janeiro, Brazil,” Med. Biol. Eng. Comput., vol. 54, no. 11, pp. 1751–1759, 2016.[21]G. A. Carpenter, S. Grossberg, and D. B. Rosen, “Fuzzy ART: Fast stable learning and categorization of analog patterns by an adaptive resonance system,” Neural networks, vol. 4, no. 6, pp. 759–771, 1991.[22]A. D. Orjuela-Cañón, J. E. C. Mendoza, C. E. A. García, and E. P. V. Vela, “Tuberculosis diagnosis support analysis for precarious health information systems,” Comput. Methods Programs Biomed., 2018.[23]A. D. Orjuela-Cañón and J. de Seixas, “Fuzzy-ART neural networks for triage in pleural tuberculosis,” in Health Care Exchanges (PAHCE), 2013 Pan American, 2013, pp. 1–4.[24]A. D. Orjuela-Cañón, J. M. de Seixas, and A. Trajman, “SOM Neural Networks as a Tool in Pleural Tuberculosis Diagnostic,” in Annals of the 11th Brazilian Congress on Computational Intelligence, 2013, pp. 1–5.[25]Y. Mohamadou, A. Halidou, and P. T. Kapen, “A review of mathematical modeling, artificial intelligence and datasets used in the study, prediction and management of COVID-19,” Appl. Intell., pp. 1–13, 2020.[26]A. Kumar, P. K. Gupta, and A. Srivastava, “A review of modern technologies for tackling COVID-19 pandemic,” Diabetes Metab. Syndr. Clin. Res. Rev., vol. 14, no. 4, pp. 569–573, 2020.[27]S. Debnath et al., “Machine learning to assist clinical decision-making during the COVID-19 pandemic,” Bioelectron. Med., vol. 6, no. 1, pp. 1–8, 2020.[28]L. Wynants et al., “Prediction models for diagnosis and prognosis of covid-19 infection: systematic review and critical appraisal,” bmj, vol. 369, 2020.[29]M. Nemati, J. Ansary, and N. Nemati, “Machine Learning Approaches in COVID-19 Survival Analysis and Discharge Time Likelihood Prediction using Clinical Data,” Patterns, p. 100074, 2020.[30]R. Chen et al., “Risk factors of fatal outcome in hospitalized subjects with coronavirus disease 2019 from a nationwide analysis in China,” Chest, 2020.[31]M. R. Desjardins, A. Hohl, and E. M. Delmelle, “Rapid surveillance of COVID-19 in the United States using a prospective space-time scan statistic: Detecting and evaluating emerging clusters,” Appl. Geogr., p. 102202, 2020.[32]S. E. F. Yong et al., “Connecting clusters of COVID-19: an epidemiological and serological investigation,” Lancet Infect. Dis., 2020.[33]M. A. Rahman, “Data-driven dynamic clustering framework for mitigating the adverse economic impact of Covid-19 lockdown practices,” Sustain. Cities Soc., p. 102372, 2020.[34]T. Kanungo, D. M. Mount, N. S. Netanyahu, C. D. Piatko, R. Silverman, and A. Y. Wu, “An efficient k-means clustering algorithm: Analysis and implementation,” IEEE Trans. Pattern Anal. Mach. Intell., vol. 24, no. 7, pp. 881–892, 2002.[35]S. Haykin, Neural Networks and Learning Machines, 3ra ed. Pearson, 2009.[36]C. Budayan, I. Dikmen, and M. T. Birgonul, “Comparing the performance of traditional cluster analysis, self-organizing maps and fuzzy C-means method for strategic grouping,” Expert Syst. Appl., vol. 36, no. 9, pp. 11772–11781, 2009.[37]J. Huang, M. Georgiopoulos, and G. L. Heileman, “Fuzzy ART properties,” Neural Networks, vol. 8, no. 2, pp. 203–213, 1995.[38]T. Kohonen, “Self-organizing maps, ser,” Inf. Sci. Berlin Springer, vol. 30, 2001.[39]M. Zribi, Y. Boujelbene, I. Abdelkafi, and R. Feki, “The self-organizing maps of Kohonen in the medical classification,” in Sciences of Electronics, Technologies of Information and Telecommunications (SETIT), 2012 6th International Conference on, 2012, pp. 852–856.[40]D. L. Davies and D. W. Bouldin, “A cluster separation measure,”IEEE Trans. Pattern Anal. Mach. Intell., no. 2, pp. 224–227, 1979.[41]P. J. Rousseeuw, “Silhouettes: a graphical aid to the interpretation and validation of cluster analysis,” J. Comput. Appl. Math., vol. 20, pp. 53–65, 1987.[42]L. Kaufman and P. J. Rousseeuw, Finding groups in data: an introduction to cluster analysis, vol. 344. John Wiley & Sons, 2009.[43]Ministerio de Tecnologías de la Información y las Comunicaciones, “Guía para el uso y aprovechamiento de Datos Abiertos en Colombia.” 2016.[44]Alcaldía Mayor de Bogotá, “COVID-19 en Bogotá.” 2020.[45]A. Agresti, An introduction to categorical data analysis, vol. 135. Wiley New York, 1996.[46]A. Ahmad and L. Dey, “A k-mean clustering algorithm for mixed numeric and categorical data,” Data Knowl. Eng., vol. 63, no. 2, pp. 503–527, 2007.[47]T.-H. T. Nguyen, D.-T. Dinh, S. Sriboonchitta, and V.-N. Huynh, “A method for k-means-like clustering of categorical data,” J. Ambient Intell. Humaniz. Comput., pp. 1–11, 2019.[48]S. Khanmohammadi, N. Adibeig, and S. Shanehbandy, “An improved overlappingk-means clustering method for medical applications,” Expert Syst. Appl., vol. 67, pp. 12–18, 2017.[49]G. Cherry et al., “Loss of smell and taste: a new marker of COVID-19? Tracking reduced sense of smell during the coronavirus pandemic using search trends,” Expert Rev. Anti. Infect. Ther., vol. 18, no. 11, pp. 1165–1170, 2020Alvaro D. Orjuela-Cañón(StM’ 00-M’06–SM’17) nació en Bogotá D.C., Colombia en1981. Recibió su grado de ingeniería electrónicade la Universidad Distrital Francisco José de Caldas in Bogotá D.C., en el año 2006. Realizó su maestría y doctorado en la Universidade Federal do Rio de Janeiro, RJ, Brasil en 2009 y 2015, respectivamente.Actualmente hace parte del programa de ingeniería biomédica de la Escuela de Medicina y Ciencias de la Salud de la Universidad del Rosario en la misma ciudad.Tiene intereses en áreas como el procesamiento digital de señalesbiomédicas, inteligencia computacional en salud, así como energías alternativas. Dr. Orjuela-Cañón es miembro de IEEE en los últimos 18 años.Participando activamente en el capítulo profesional de inteligencia computacional IEEE-CIS.eng
dc.relation.referencesJ. A. Hartigan, Clustering algorithms. 1975.eng
dc.relation.referencesD. Xu and Y. Tian, “A comprehensive survey of clustering algorithms,” Ann. Data Sci., vol. 2, no. 2, pp. 165–193, 2015eng
dc.relation.referencesE. Elveren and N. Yumuvak, “Tuberculosis disease diagnosis using artificial neural network trained with genetic algorithm,” J. Med. Syst., vol. 35, no. 3, pp. 329–332, 2011.eng
dc.relation.referencesP. Venkatesan and M. Mullai, “Clustering of Disease Data base using Self Organizing Maps and Logical Inferences,” Indian J. Autom. Artif. Intell., vol. 1, no. 1, pp. 2–6, 2013.eng
dc.relation.referencesS.-L. Shieh and I.-E. Liao, “A new approach for data clustering and visualization using self-organizing maps,” Expert Syst. Appl., vol. 39, no. 15, pp. 11924–11933, 2012.eng
dc.relation.referencesF. S. Aguiar, R. C. Torres, J. V. F. Pinto, A. L. Kritski, J. M. Seixas, and F. C. Q. Mello, “Development of two artificial neural network models to support the diagnosis of pulmonary tuberculosis in hospitalized patients in Rio de Janeiro, Brazil,” Med. Biol. Eng. Comput., vol. 54, no. 11, pp. 1751–1759, 2016.eng
dc.relation.referencesG. A. Carpenter, S. Grossberg, and D. B. Rosen, “Fuzzy ART: Fast stable learning and categorization of analog patterns by an adaptive resonance system,” Neural networks, vol. 4, no. 6, pp. 759–771, 1991.eng
dc.relation.referencesA. D. Orjuela-Cañón, J. E. C. Mendoza, C. E. A. García, and E. P. V. Vela, “Tuberculosis diagnosis support analysis for precarious health information systems,” Comput. Methods Programs Biomed., 2018.eng
dc.relation.referencesA. D. Orjuela-Cañón and J. de Seixas, “Fuzzy-ART neural networks for triage in pleural tuberculosis,” in Health Care Exchanges (PAHCE), 2013 Pan American, 2013, pp. 1–4eng
dc.relation.referencesA. D. Orjuela-Cañón, J. M. de Seixas, and A. Trajman, “SOM Neural Networks as a Tool in Pleural Tuberculosis Diagnostic,” in Annals of the 11th Brazilian Congress on Computational Intelligence, 2013, pp. 1–5.eng
dc.relation.referencesY. Mohamadou, A. Halidou, and P. T. Kapen, “A review of mathematical modeling, artificial intelligence and datasets used in the study, prediction and management of COVID-19,” Appl. Intell., pp. 1–13, 2020.eng
dc.relation.referencesA. Kumar, P. K. Gupta, and A. Srivastava, “A review of modern technologies for tackling COVID-19 pandemic,” Diabetes Metab. Syndr. Clin. Res. Rev., vol. 14, no. 4, pp. 569–573, 2020.eng
dc.relation.referencesS. Debnath et al., “Machine learning to assist clinical decision-making during the COVID-19 pandemic,” Bioelectron. Med., vol. 6, no. 1, pp. 1–8, 2020.eng
dc.relation.referencesL. Wynants et al., “Prediction models for diagnosis and prognosis of covid-19 infection: systematic review and critical appraisal,” bmj, vol. 369, 2020.eng
dc.relation.referencesM. Nemati, J. Ansary, and N. Nemati, “Machine Learning Approaches in COVID-19 Survival Analysis and Discharge Time Likelihood Prediction using Clinical Data,” Patterns, p. 100074, 2020eng
dc.relation.referencesR. Chen et al., “Risk factors of fatal outcome in hospitalized subjects with coronavirus disease 2019 from a nationwide analysis in China,” Chest, 2020eng
dc.relation.referencesM. R. Desjardins, A. Hohl, and E. M. Delmelle, “Rapid surveillance of COVID-19 in the United States using a prospective space-time scan statistic: Detecting and evaluating emerging clusters,” Appl. Geogr., p. 102202, 2020.eng
dc.relation.referencesS. E. F. Yong et al., “Connecting clusters of COVID-19: an epidemiological and serological investigation,” Lancet Infect. Dis., 2020eng
dc.relation.referencesM. A. Rahman, “Data-driven dynamic clustering framework for mitigating the adverse economic impact of Covid-19 lockdown practices,” Sustain. Cities Soc., p. 102372, 2020.eng
dc.relation.referencesT. Kanungo, D. M. Mount, N. S. Netanyahu, C. D. Piatko, R. Silverman and A. Y. Wu, “An efficient k-means clustering algorithm: Analysis and implementation,” IEEE Trans. Pattern Anal. Mach. Intell., vol. 24, no. 7, pp. 881–892, 2002.eng
dc.relation.referencesS. Haykin, Neural Networks and Learning Machines, 3ra ed. Pearson, 2009.eng
dc.relation.referencesC. Budayan, I. Dikmen, and M. T. Birgonul, “Comparing the performance of traditional cluster analysis, self-organizing maps and fuzzy C-means method for strategic grouping,” Expert Syst. Appl., vol. 36, no. 9, pp. 11772–11781, 2009eng
dc.relation.referencesJ. Huang, M. Georgiopoulos, and G. L. Heileman, “Fuzzy ART properties,” Neural Networks, vol. 8, no. 2, pp. 203–213, 1995.eng
dc.relation.referencesT. Kohonen, “Self-organizing maps, ser,” Inf. Sci. Berlin Springer, vol. 30, 2001eng
dc.relation.referencesM. Zribi, Y. Boujelbene, I. Abdelkafi, and R. Feki, “The self-organizing maps of Kohonen in the medical classification,” in Sciences of Electronics, Technologies of Information and Telecommunications (SETIT), 2012 6th International Conference on, 2012, pp. 852–856.eng
dc.relation.referencesD. L. Davies and D. W. Bouldin, “A cluster separation measure,”IEEE Trans. Pattern Anal. Mach. Intell., no. 2, pp. 224–227, 1979.eng
dc.relation.referencesP. J. Rousseeuw, “Silhouettes: a graphical aid to the interpretation and validation of cluster analysis,” J. Comput. Appl. Math., vol. 20, pp. 53–65, 1987.eng
dc.relation.referencesL. Kaufman and P. J. Rousseeuw, Finding groups in data: an introduction to cluster analysis, vol. 344. John Wiley & Sons, 2009.eng
dc.relation.referencesMinisterio de Tecnologías de la Información y las Comunicaciones, “Guía para el uso y aprovechamiento de Datos Abiertos en Colombia.” 2016.spa
dc.relation.referencesAlcaldía Mayor de Bogotá, “COVID-19 en Bogotá.” 2020spa
dc.relation.referencesA. Agresti, An introduction to categorical data analysis, vol. 135. Wiley New York, 1996.eng
dc.relation.referencesA. Ahmad and L. Dey, “A k-mean clustering algorithm for mixed numeric and categorical data,” Data Knowl. Eng., vol. 63, no. 2, pp. 503–527, 2007.eng
dc.relation.referencesT.-H. T. Nguyen, D.-T. Dinh, S. Sriboonchitta, and V.-N. Huynh, “A method for k-means-like clustering of categorical data,” J. Ambient Intell. Humaniz. Comput., pp. 1–11, 2019.eng
dc.relation.referencesS. Khanmohammadi, N. Adibeig, and S. Shanehbandy, “An improved overlappingk-means clustering method for medical applications,” Expert Syst. Appl., vol. 67, pp. 12–18, 2017.eng
dc.relation.referencesG. Cherry et al., “Loss of smell and taste: a new marker of COVID-19? Tracking reduced sense of smell during the coronavirus pandemic using search trends,” Expert Rev. Anti. Infect. Ther., vol. 18, no. 11, pp. 1165–1170, 2020eng
dc.rights.accessrightsinfo:eu-repo/semantics/openAccessspa
dc.subject.armarcInteligencia artificial
dc.subject.armarcCOVID-19 (Enfermedad) - Infecciones por coronavirus
dc.subject.armarcRedes neuronales
dc.subject.proposalInteligencia artificialspa
dc.subject.proposalAgrupación en clústeresspa
dc.subject.proposalRedes neuronales artificialesspa
dc.subject.proposalSistemas de apoyo a la toma de decisionesspa
dc.subject.proposalCOVID-19spa
dc.subject.proposalArtificial intelligencespa
dc.subject.proposalClusteringspa
dc.subject.proposalArtificial neural networksspa
dc.subject.proposalDecision support systemsspa
dc.subject.proposalCOVID-19spa
dc.type.coarhttp://purl.org/coar/resource_type/c_2df8fbb1spa
dc.type.contentTextspa
dc.type.driverinfo:eu-repo/semantics/articlespa
dc.type.redcolhttp://purl.org/redcol/resource_type/ARTspa


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