학술논문

Influence of Contact Network Topology on the Spread of Tuberculosis
Document Type
Chapter
Author
Cota, Vinícius Rosa, Editor; Barone, Dante Augusto Couto, Editor; Dias, Diego Roberto Colombo, Editor; Damázio, Laila Cristina Moreira, Editor; Pinto, Eduardo R.Nepomuceno, Erivelton G.Campanharo, Andriana S. L. O.Barbosa, Simone Diniz Junqueira, Editorial Board Member; Filipe, Joaquim, Editorial Board Member; Ghosh, Ashish, Editorial Board Member; Kotenko, Igor, Editorial Board Member; Zhou, Lizhu, Editorial Board Member
Source
Computational Neuroscience : Second Latin American Workshop, LAWCN 2019, São João Del-Rei, Brazil, September 18–20, 2019, Proceedings. 01/01/2019. 1068:81-88
Subject
Computer Science
Artificial Intelligence
Image Processing and Computer Vision
Computer System Implementation
Database Management
Language
English
ISSN
1865-0929
1865-0937
Abstract
This paper presents the influence of the complex networks topology on the spread of Tuberculosis with the use of the Individual-Based Model (IBM). Five complex network models were used with the IBM, namely, random, small world, scale-free, modular and hierarchical models. For every model, we applied the usual topological properties available in literature for the characterization of complex networks. Afterwards, we verified the topological effect of the contact networks in the evolution of tuberculosis and it was observed that different contact networks result in different epidemic thresholds $$(\beta ^*)$$ for the spread of tuberculosis. More specifically, we noted that networks that have greater heterogeneity of connections need a lower $$\beta ^*$$, however when the value of the infection rate $$(\beta )$$ is large, the number of individuals infected are similar. It is believed that this observation may contribute to actions to reduce and eradicate the disease.