Socioeconomic bias in influenza surveillance.
Individuals in low socioeconomic brackets are considered at-risk for developing influenza-related complications and often exhibit higher than average influenza-related hospitalization rates. This disparity has been attributed to various factors, including restricted access to preventative and therap...
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2020-07-01
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doaj-8a67315b22df424683757734738828322021-05-29T04:33:04ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-07-01167e100794110.1371/journal.pcbi.1007941Socioeconomic bias in influenza surveillance.Samuel V ScarpinoJames G ScottRosalind M EggoBruce ClementsNedialko B DimitrovLauren Ancel MeyersIndividuals in low socioeconomic brackets are considered at-risk for developing influenza-related complications and often exhibit higher than average influenza-related hospitalization rates. This disparity has been attributed to various factors, including restricted access to preventative and therapeutic health care, limited sick leave, and household structure. Adequate influenza surveillance in these at-risk populations is a critical precursor to accurate risk assessments and effective intervention. However, the United States of America's primary national influenza surveillance system (ILINet) monitors outpatient healthcare providers, which may be largely inaccessible to lower socioeconomic populations. Recent initiatives to incorporate Internet-source and hospital electronic medical records data into surveillance systems seek to improve the timeliness, coverage, and accuracy of outbreak detection and situational awareness. Here, we use a flexible statistical framework for integrating multiple surveillance data sources to evaluate the adequacy of traditional (ILINet) and next generation (BioSense 2.0 and Google Flu Trends) data for situational awareness of influenza across poverty levels. We find that ZIP Codes in the highest poverty quartile are a critical vulnerability for ILINet that the integration of next generation data fails to ameliorate.https://doi.org/10.1371/journal.pcbi.1007941 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Samuel V Scarpino James G Scott Rosalind M Eggo Bruce Clements Nedialko B Dimitrov Lauren Ancel Meyers |
spellingShingle |
Samuel V Scarpino James G Scott Rosalind M Eggo Bruce Clements Nedialko B Dimitrov Lauren Ancel Meyers Socioeconomic bias in influenza surveillance. PLoS Computational Biology |
author_facet |
Samuel V Scarpino James G Scott Rosalind M Eggo Bruce Clements Nedialko B Dimitrov Lauren Ancel Meyers |
author_sort |
Samuel V Scarpino |
title |
Socioeconomic bias in influenza surveillance. |
title_short |
Socioeconomic bias in influenza surveillance. |
title_full |
Socioeconomic bias in influenza surveillance. |
title_fullStr |
Socioeconomic bias in influenza surveillance. |
title_full_unstemmed |
Socioeconomic bias in influenza surveillance. |
title_sort |
socioeconomic bias in influenza surveillance. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2020-07-01 |
description |
Individuals in low socioeconomic brackets are considered at-risk for developing influenza-related complications and often exhibit higher than average influenza-related hospitalization rates. This disparity has been attributed to various factors, including restricted access to preventative and therapeutic health care, limited sick leave, and household structure. Adequate influenza surveillance in these at-risk populations is a critical precursor to accurate risk assessments and effective intervention. However, the United States of America's primary national influenza surveillance system (ILINet) monitors outpatient healthcare providers, which may be largely inaccessible to lower socioeconomic populations. Recent initiatives to incorporate Internet-source and hospital electronic medical records data into surveillance systems seek to improve the timeliness, coverage, and accuracy of outbreak detection and situational awareness. Here, we use a flexible statistical framework for integrating multiple surveillance data sources to evaluate the adequacy of traditional (ILINet) and next generation (BioSense 2.0 and Google Flu Trends) data for situational awareness of influenza across poverty levels. We find that ZIP Codes in the highest poverty quartile are a critical vulnerability for ILINet that the integration of next generation data fails to ameliorate. |
url |
https://doi.org/10.1371/journal.pcbi.1007941 |
work_keys_str_mv |
AT samuelvscarpino socioeconomicbiasininfluenzasurveillance AT jamesgscott socioeconomicbiasininfluenzasurveillance AT rosalindmeggo socioeconomicbiasininfluenzasurveillance AT bruceclements socioeconomicbiasininfluenzasurveillance AT nedialkobdimitrov socioeconomicbiasininfluenzasurveillance AT laurenancelmeyers socioeconomicbiasininfluenzasurveillance |
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1721422576733913088 |