Optimizing Provider Recruitment for Influenza Surveillance Networks
Open Access
- 12 April 2012
- journal article
- research article
- Published by Public Library of Science (PLoS) in PLoS Computational Biology
- Vol. 8 (4) , e1002472
- https://doi.org/10.1371/journal.pcbi.1002472
Abstract
The increasingly complex and rapid transmission dynamics of many infectious diseases necessitates the use of new, more advanced methods for surveillance, early detection, and decision-making. Here, we demonstrate that a new method for optimizing surveillance networks can improve the quality of epidemiological information produced by typical provider-based networks. Using past surveillance and Internet search data, it determines the precise locations where providers should be enrolled. When applied to redesigning the provider-based, influenza-like-illness surveillance network (ILINet) for the state of Texas, the method identifies networks that are expected to significantly outperform the existing network with far fewer providers. This optimized network avoids informational redundancies and is thereby more effective than networks designed by conventional methods and a recently published algorithm based on maximizing population coverage. We show further that Google Flu Trends data, when incorporated into a network as a virtual provider, can enhance but not replace traditional surveillance methods. Public health agencies use surveillance systems to detect and monitor chronic and infectious diseases. These systems often rely on data sources that are chosen based on loose guidelines or out of convenience. In this paper, we introduce a new, data-driven method for designing and improving surveillance systems. Our approach is a geographic optimization of data sources designed to achieve specific surveillance goals. We tested our method by re-designing Texas' provider-based influenza surveillance system (ILINet). The resulting networks better predicted influenza associated hospitalizations and contained fewer providers than the existing ILINet. Furthermore, our study demonstrates that the integration of Internet source data, like Google Flu Trends, into surveillance systems can enhance traditional, provider-based networks.Keywords
This publication has 27 references indexed in Scilit:
- The Next Public Health Revolution: Public Health Information Fusion and Social NetworksAmerican Journal of Public Health, 2010
- Optimizing Influenza Sentinel Surveillance at the State LevelAmerican Journal of Epidemiology, 2009
- Review of an Influenza Surveillance System, Beijing, People’s Republic of ChinaEmerging Infectious Diseases, 2009
- Bayesian Information Fusion Networks for Biosurveillance ApplicationsJournal of the American Medical Informatics Association, 2009
- Bayesian prediction of an epidemic curveJournal of Biomedical Informatics, 2009
- Detecting influenza epidemics using search engine query dataNature, 2009
- Surveillance Sans Frontières: Internet-Based Emerging Infectious Disease Intelligence and the HealthMap ProjectPLoS Medicine, 2008
- Influenza-Associated Hospitalizations in the United StatesJAMA, 2004
- Influenza in Madrid, Spain, 1991-92: validity of the sentinel network.Journal of Epidemiology and Community Health, 1995
- The maximal covering location problemPapers in Regional Science, 1974