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Accepted for/Published in: JMIR Public Health and Surveillance

Date Submitted: Nov 22, 2022
Open Peer Review Period: Nov 22, 2022 - Dec 6, 2022
Date Accepted: Mar 7, 2023
Date Submitted to PubMed: Mar 8, 2023
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Participatory Surveillance for COVID-19 Trend Detection in Brazil: Cross-sectional Study

Wittwer S, Paolotti D, Lichand G, Leal Neto O

Participatory Surveillance for COVID-19 Trend Detection in Brazil: Cross-sectional Study

JMIR Public Health Surveill 2023;9:e44517

DOI: 10.2196/44517

PMID: 36888908

PMCID: 10138922

Participatory surveillance for COVID-19 trends detection in Brazil: Cross-section study

  • Salome Wittwer; 
  • Daniela Paolotti; 
  • Guilherme Lichand; 
  • Onicio Leal Neto

ABSTRACT

Background:

The ongoing COVID-19 pandemic has emphasized the necessity of a well-functioning surveillance system to detect and mitigate disease outbreaks. Traditional surveillance (TS) usually relies on healthcare providers and generally suffers from reporting lags that prevent immediate response plans. Participatory surveillance (PS), an innovative digital approach whereby individuals voluntarily monitor and report on their own health status via Web-based surveys, has emerged in the past decade to complement traditional data collections approaches.

Objective:

For our analysis, we focus on nine cities with the largest PS participation across Brazil. Our objective was to investigate the capability of PS data to approximately mirror traditional infection rates captured through TS, as well as the relevance of citizen participation for the identification of trends in COVID-19 cases.

Methods:

This study compares novel PS data on COVID-19 infection rates across nine Brazilian cities with official TS data to examine the opportunities and challenges of using the former, and the potential advantages of combining the two approaches.

Results:

. We find that high participation rates are key for PS data to adequately mirror TS infection rates. Where participation was high, we document a significant trend correlation between lagged PS data and TS infection rates, suggesting that the former could be used for early detection. In our data, forecasting models integrating both approaches increased accuracy up to 3% relative to a 14-day forecast horizon model based exclusively on TS data. Furthermore, we show that the PS data captures a population that significantly differs from the traditional observation.

Conclusions:

These results corroborate previous studies when it comes to the benefits of an integrated and comprehensive surveillance system, but also shed lights on its limitations, and on the need for additional research to improve future implementations of PS platforms.


 Citation

Please cite as:

Wittwer S, Paolotti D, Lichand G, Leal Neto O

Participatory Surveillance for COVID-19 Trend Detection in Brazil: Cross-sectional Study

JMIR Public Health Surveill 2023;9:e44517

DOI: 10.2196/44517

PMID: 36888908

PMCID: 10138922

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