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Visualizing the Network Structure of COVID-19 in Singapore
Author(s) -
Tod Van Gunten
Publication year - 2021
Publication title -
socius sociological research for a dynamic world
Language(s) - English
Resource type - Journals
ISSN - 2378-0231
DOI - 10.1177/23780231211000171
Subject(s) - contact tracing , cluster (spacecraft) , network structure , covid-19 , disease , transmission (telecommunications) , social network (sociolinguistics) , visualization , infectious disease (medical specialty) , outbreak , disease transmission , geography , complex network , computer science , data science , virology , biology , medicine , telecommunications , world wide web , artificial intelligence , social media , computer network , distributed computing , pathology
Many infectious diseases such as coronavirus disease 2019 spread through preexisting social networks. Although network models consider the implications of micro-level interaction patterns for disease transmission, epidemiologists and social scientists know little about the meso-structure of disease transmission. Meso-structure refers to the pattern of disease spread at a higher level of aggregation, that is, among infection clusters corresponding to organizations, locales, and events. The authors visualizes this meso-structure using publicly available contact tracing data from Singapore. Visualization shows that one highly central infection cluster appears to have generated on the order of seven or eight infection chains, amounting to 60 percent of nonimported cases during the period considered. However, no other cluster generated more than two infection chains. This heterogeneity suggests that network meso-structure is highly consequential for epidemic dynamics.

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