Influenza spread on context-specific networks lifted from interaction-based diary data
Studying the spread of infections is an important tool in limiting or preventing future outbreaks. A first step in understanding disease dynamics is constructing networks that reproduce features of real-world interactions. In this paper, we generate networks that maintain some features of the partia...
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Online Access: | https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191876 |
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doaj-3593ef6a11804048bce34d6c185e58f42021-03-03T12:03:59ZengThe Royal SocietyRoyal Society Open Science2054-57032021-01-018110.1098/rsos.191876191876Influenza spread on context-specific networks lifted from interaction-based diary dataKristina MalloryJoshua Rubin AbramsAnne SchwartzMaria-Veronica CiocanelAlexandria VolkeningBjörn SandstedeStudying the spread of infections is an important tool in limiting or preventing future outbreaks. A first step in understanding disease dynamics is constructing networks that reproduce features of real-world interactions. In this paper, we generate networks that maintain some features of the partial interaction networks that were recorded in an existing diary-based survey at the University of Warwick. To preserve realistic structure in our artificial networks, we use a context-specific approach. In particular, we propose different algorithms for producing larger home, work and social networks. Our networks are able to maintain much of the interaction structure in the original diary-based survey and provide a means of accounting for the interactions of survey participants with non-participants. Simulating a discrete susceptible–infected–recovered model on the full network produces epidemic behaviour which shares characteristics with previous influenza seasons. Our approach allows us to explore how disease transmission and dynamic responses to infection differ depending on interaction context. We find that, while social interactions may be the first to be reduced after influenza infection, limiting work and school encounters may be significantly more effective in controlling the overall severity of the epidemic.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191876dynamic networkdisease spreadsusceptible–infected–recovered modelinfluenzasocial distance |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kristina Mallory Joshua Rubin Abrams Anne Schwartz Maria-Veronica Ciocanel Alexandria Volkening Björn Sandstede |
spellingShingle |
Kristina Mallory Joshua Rubin Abrams Anne Schwartz Maria-Veronica Ciocanel Alexandria Volkening Björn Sandstede Influenza spread on context-specific networks lifted from interaction-based diary data Royal Society Open Science dynamic network disease spread susceptible–infected–recovered model influenza social distance |
author_facet |
Kristina Mallory Joshua Rubin Abrams Anne Schwartz Maria-Veronica Ciocanel Alexandria Volkening Björn Sandstede |
author_sort |
Kristina Mallory |
title |
Influenza spread on context-specific networks lifted from interaction-based diary data |
title_short |
Influenza spread on context-specific networks lifted from interaction-based diary data |
title_full |
Influenza spread on context-specific networks lifted from interaction-based diary data |
title_fullStr |
Influenza spread on context-specific networks lifted from interaction-based diary data |
title_full_unstemmed |
Influenza spread on context-specific networks lifted from interaction-based diary data |
title_sort |
influenza spread on context-specific networks lifted from interaction-based diary data |
publisher |
The Royal Society |
series |
Royal Society Open Science |
issn |
2054-5703 |
publishDate |
2021-01-01 |
description |
Studying the spread of infections is an important tool in limiting or preventing future outbreaks. A first step in understanding disease dynamics is constructing networks that reproduce features of real-world interactions. In this paper, we generate networks that maintain some features of the partial interaction networks that were recorded in an existing diary-based survey at the University of Warwick. To preserve realistic structure in our artificial networks, we use a context-specific approach. In particular, we propose different algorithms for producing larger home, work and social networks. Our networks are able to maintain much of the interaction structure in the original diary-based survey and provide a means of accounting for the interactions of survey participants with non-participants. Simulating a discrete susceptible–infected–recovered model on the full network produces epidemic behaviour which shares characteristics with previous influenza seasons. Our approach allows us to explore how disease transmission and dynamic responses to infection differ depending on interaction context. We find that, while social interactions may be the first to be reduced after influenza infection, limiting work and school encounters may be significantly more effective in controlling the overall severity of the epidemic. |
topic |
dynamic network disease spread susceptible–infected–recovered model influenza social distance |
url |
https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.191876 |
work_keys_str_mv |
AT kristinamallory influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata AT joshuarubinabrams influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata AT anneschwartz influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata AT mariaveronicaciocanel influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata AT alexandriavolkening influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata AT bjornsandstede influenzaspreadoncontextspecificnetworksliftedfrominteractionbaseddiarydata |
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1724232868960403456 |