Disease Surveillance on Complex Social Networks.
As infectious disease surveillance systems expand to include digital, crowd-sourced, and social network data, public health agencies are gaining unprecedented access to high-resolution data and have an opportunity to selectively monitor informative individuals. Contact networks, which are the webs o...
Main Authors: | , , , , |
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Format: | Article |
Language: | English |
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Public Library of Science (PLoS)
2016-07-01
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Series: | PLoS Computational Biology |
Online Access: | http://europepmc.org/articles/PMC4944951?pdf=render |
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author | Jose L Herrera Ravi Srinivasan John S Brownstein Alison P Galvani Lauren Ancel Meyers |
author_facet | Jose L Herrera Ravi Srinivasan John S Brownstein Alison P Galvani Lauren Ancel Meyers |
author_sort | Jose L Herrera |
collection | DOAJ |
description | As infectious disease surveillance systems expand to include digital, crowd-sourced, and social network data, public health agencies are gaining unprecedented access to high-resolution data and have an opportunity to selectively monitor informative individuals. Contact networks, which are the webs of interaction through which diseases spread, determine whether and when individuals become infected, and thus who might serve as early and accurate surveillance sensors. Here, we evaluate three strategies for selecting sensors-sampling the most connected, random, and friends of random individuals-in three complex social networks-a simple scale-free network, an empirical Venezuelan college student network, and an empirical Montreal wireless hotspot usage network. Across five different surveillance goals-early and accurate detection of epidemic emergence and peak, and general situational awareness-we find that the optimal choice of sensors depends on the public health goal, the underlying network and the reproduction number of the disease (R0). For diseases with a low R0, the most connected individuals provide the earliest and most accurate information about both the onset and peak of an outbreak. However, identifying network hubs is often impractical, and they can be misleading if monitored for general situational awareness, if the underlying network has significant community structure, or if R0 is high or unknown. Taking a theoretical approach, we also derive the optimal surveillance system for early outbreak detection but find that real-world identification of such sensors would be nearly impossible. By contrast, the friends-of-random strategy offers a more practical and robust alternative. It can be readily implemented without prior knowledge of the network, and by identifying sensors with higher than average, but not the highest, epidemiological risk, it provides reasonably early and accurate information. |
first_indexed | 2024-12-14T13:31:58Z |
format | Article |
id | doaj.art-2384d36d359d4dcbba83695e745ae239 |
institution | Directory Open Access Journal |
issn | 1553-734X 1553-7358 |
language | English |
last_indexed | 2024-12-14T13:31:58Z |
publishDate | 2016-07-01 |
publisher | Public Library of Science (PLoS) |
record_format | Article |
series | PLoS Computational Biology |
spelling | doaj.art-2384d36d359d4dcbba83695e745ae2392022-12-21T22:59:40ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582016-07-01127e100492810.1371/journal.pcbi.1004928Disease Surveillance on Complex Social Networks.Jose L HerreraRavi SrinivasanJohn S BrownsteinAlison P GalvaniLauren Ancel MeyersAs infectious disease surveillance systems expand to include digital, crowd-sourced, and social network data, public health agencies are gaining unprecedented access to high-resolution data and have an opportunity to selectively monitor informative individuals. Contact networks, which are the webs of interaction through which diseases spread, determine whether and when individuals become infected, and thus who might serve as early and accurate surveillance sensors. Here, we evaluate three strategies for selecting sensors-sampling the most connected, random, and friends of random individuals-in three complex social networks-a simple scale-free network, an empirical Venezuelan college student network, and an empirical Montreal wireless hotspot usage network. Across five different surveillance goals-early and accurate detection of epidemic emergence and peak, and general situational awareness-we find that the optimal choice of sensors depends on the public health goal, the underlying network and the reproduction number of the disease (R0). For diseases with a low R0, the most connected individuals provide the earliest and most accurate information about both the onset and peak of an outbreak. However, identifying network hubs is often impractical, and they can be misleading if monitored for general situational awareness, if the underlying network has significant community structure, or if R0 is high or unknown. Taking a theoretical approach, we also derive the optimal surveillance system for early outbreak detection but find that real-world identification of such sensors would be nearly impossible. By contrast, the friends-of-random strategy offers a more practical and robust alternative. It can be readily implemented without prior knowledge of the network, and by identifying sensors with higher than average, but not the highest, epidemiological risk, it provides reasonably early and accurate information.http://europepmc.org/articles/PMC4944951?pdf=render |
spellingShingle | Jose L Herrera Ravi Srinivasan John S Brownstein Alison P Galvani Lauren Ancel Meyers Disease Surveillance on Complex Social Networks. PLoS Computational Biology |
title | Disease Surveillance on Complex Social Networks. |
title_full | Disease Surveillance on Complex Social Networks. |
title_fullStr | Disease Surveillance on Complex Social Networks. |
title_full_unstemmed | Disease Surveillance on Complex Social Networks. |
title_short | Disease Surveillance on Complex Social Networks. |
title_sort | disease surveillance on complex social networks |
url | http://europepmc.org/articles/PMC4944951?pdf=render |
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