Deploying digital health data to optimize influenza surveillance at national and local scales.

The surveillance of influenza activity is critical to early detection of epidemics and pandemics and the design of disease control strategies. Case reporting through a voluntary network of sentinel physicians is a commonly used method of passive surveillance for monitoring rates of influenza-like il...

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Main Authors: Elizabeth C Lee, Ali Arab, Sandra M Goldlust, Cécile Viboud, Bryan T Grenfell, Shweta Bansal
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-03-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC5858836?pdf=render
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spelling doaj-4e629d46eb39463393de1c2a52248e2e2020-11-25T00:46:05ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-03-01143e100602010.1371/journal.pcbi.1006020Deploying digital health data to optimize influenza surveillance at national and local scales.Elizabeth C LeeAli ArabSandra M GoldlustCécile ViboudBryan T GrenfellShweta BansalThe surveillance of influenza activity is critical to early detection of epidemics and pandemics and the design of disease control strategies. Case reporting through a voluntary network of sentinel physicians is a commonly used method of passive surveillance for monitoring rates of influenza-like illness (ILI) worldwide. Despite its ubiquity, little attention has been given to the processes underlying the observation, collection, and spatial aggregation of sentinel surveillance data, and its subsequent effects on epidemiological understanding. We harnessed the high specificity of diagnosis codes in medical claims from a database that represented 2.5 billion visits from upwards of 120,000 United States healthcare providers each year. Among influenza seasons from 2002-2009 and the 2009 pandemic, we simulated limitations of sentinel surveillance systems such as low coverage and coarse spatial resolution, and performed Bayesian inference to probe the robustness of ecological inference and spatial prediction of disease burden. Our models suggest that a number of socio-environmental factors, in addition to local population interactions, state-specific health policies, as well as sampling effort may be responsible for the spatial patterns in U.S. sentinel ILI surveillance. In addition, we find that biases related to spatial aggregation were accentuated among areas with more heterogeneous disease risk, and sentinel systems designed with fixed reporting locations across seasons provided robust inference and prediction. With the growing availability of health-associated big data worldwide, our results suggest mechanisms for optimizing digital data streams to complement traditional surveillance in developed settings and enhance surveillance opportunities in developing countries.http://europepmc.org/articles/PMC5858836?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Elizabeth C Lee
Ali Arab
Sandra M Goldlust
Cécile Viboud
Bryan T Grenfell
Shweta Bansal
spellingShingle Elizabeth C Lee
Ali Arab
Sandra M Goldlust
Cécile Viboud
Bryan T Grenfell
Shweta Bansal
Deploying digital health data to optimize influenza surveillance at national and local scales.
PLoS Computational Biology
author_facet Elizabeth C Lee
Ali Arab
Sandra M Goldlust
Cécile Viboud
Bryan T Grenfell
Shweta Bansal
author_sort Elizabeth C Lee
title Deploying digital health data to optimize influenza surveillance at national and local scales.
title_short Deploying digital health data to optimize influenza surveillance at national and local scales.
title_full Deploying digital health data to optimize influenza surveillance at national and local scales.
title_fullStr Deploying digital health data to optimize influenza surveillance at national and local scales.
title_full_unstemmed Deploying digital health data to optimize influenza surveillance at national and local scales.
title_sort deploying digital health data to optimize influenza surveillance at national and local scales.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2018-03-01
description The surveillance of influenza activity is critical to early detection of epidemics and pandemics and the design of disease control strategies. Case reporting through a voluntary network of sentinel physicians is a commonly used method of passive surveillance for monitoring rates of influenza-like illness (ILI) worldwide. Despite its ubiquity, little attention has been given to the processes underlying the observation, collection, and spatial aggregation of sentinel surveillance data, and its subsequent effects on epidemiological understanding. We harnessed the high specificity of diagnosis codes in medical claims from a database that represented 2.5 billion visits from upwards of 120,000 United States healthcare providers each year. Among influenza seasons from 2002-2009 and the 2009 pandemic, we simulated limitations of sentinel surveillance systems such as low coverage and coarse spatial resolution, and performed Bayesian inference to probe the robustness of ecological inference and spatial prediction of disease burden. Our models suggest that a number of socio-environmental factors, in addition to local population interactions, state-specific health policies, as well as sampling effort may be responsible for the spatial patterns in U.S. sentinel ILI surveillance. In addition, we find that biases related to spatial aggregation were accentuated among areas with more heterogeneous disease risk, and sentinel systems designed with fixed reporting locations across seasons provided robust inference and prediction. With the growing availability of health-associated big data worldwide, our results suggest mechanisms for optimizing digital data streams to complement traditional surveillance in developed settings and enhance surveillance opportunities in developing countries.
url http://europepmc.org/articles/PMC5858836?pdf=render
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