Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.

BACKGROUND: Reliable estimates of disease burden associated with respiratory viruses are keys to deployment of preventive strategies such as vaccination and resource allocation. Such estimates are particularly needed in tropical and subtropical regions where some methods commonly used in temperate r...

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Main Authors: Lin Yang, Susan S Chiu, King-Pan Chan, Kwok-Hung Chan, Wilfred Hing-Sang Wong, J S Malik Peiris, Chit-Ming Wong
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3055891?pdf=render
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spelling doaj-02d37940a42149599db86a9ad13c2c552020-11-25T02:00:15ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0163e1788210.1371/journal.pone.0017882Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.Lin YangSusan S ChiuKing-Pan ChanKwok-Hung ChanWilfred Hing-Sang WongJ S Malik PeirisChit-Ming WongBACKGROUND: Reliable estimates of disease burden associated with respiratory viruses are keys to deployment of preventive strategies such as vaccination and resource allocation. Such estimates are particularly needed in tropical and subtropical regions where some methods commonly used in temperate regions are not applicable. While a number of alternative approaches to assess the influenza associated disease burden have been recently reported, none of these models have been validated with virologically confirmed data. Even fewer methods have been developed for other common respiratory viruses such as respiratory syncytial virus (RSV), parainfluenza and adenovirus. METHODS AND FINDINGS: We had recently conducted a prospective population-based study of virologically confirmed hospitalization for acute respiratory illnesses in persons <18 years residing in Hong Kong Island. Here we used this dataset to validate two commonly used models for estimation of influenza disease burden, namely the rate difference model and Poisson regression model, and also explored the applicability of these models to estimate the disease burden of other respiratory viruses. The Poisson regression models with different link functions all yielded estimates well correlated with the virologically confirmed influenza associated hospitalization, especially in children older than two years. The disease burden estimates for RSV, parainfluenza and adenovirus were less reliable with wide confidence intervals. The rate difference model was not applicable to RSV, parainfluenza and adenovirus and grossly underestimated the true burden of influenza associated hospitalization. CONCLUSION: The Poisson regression model generally produced satisfactory estimates in calculating the disease burden of respiratory viruses in a subtropical region such as Hong Kong.http://europepmc.org/articles/PMC3055891?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lin Yang
Susan S Chiu
King-Pan Chan
Kwok-Hung Chan
Wilfred Hing-Sang Wong
J S Malik Peiris
Chit-Ming Wong
spellingShingle Lin Yang
Susan S Chiu
King-Pan Chan
Kwok-Hung Chan
Wilfred Hing-Sang Wong
J S Malik Peiris
Chit-Ming Wong
Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
PLoS ONE
author_facet Lin Yang
Susan S Chiu
King-Pan Chan
Kwok-Hung Chan
Wilfred Hing-Sang Wong
J S Malik Peiris
Chit-Ming Wong
author_sort Lin Yang
title Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
title_short Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
title_full Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
title_fullStr Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
title_full_unstemmed Validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
title_sort validation of statistical models for estimating hospitalization associated with influenza and other respiratory viruses.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description BACKGROUND: Reliable estimates of disease burden associated with respiratory viruses are keys to deployment of preventive strategies such as vaccination and resource allocation. Such estimates are particularly needed in tropical and subtropical regions where some methods commonly used in temperate regions are not applicable. While a number of alternative approaches to assess the influenza associated disease burden have been recently reported, none of these models have been validated with virologically confirmed data. Even fewer methods have been developed for other common respiratory viruses such as respiratory syncytial virus (RSV), parainfluenza and adenovirus. METHODS AND FINDINGS: We had recently conducted a prospective population-based study of virologically confirmed hospitalization for acute respiratory illnesses in persons <18 years residing in Hong Kong Island. Here we used this dataset to validate two commonly used models for estimation of influenza disease burden, namely the rate difference model and Poisson regression model, and also explored the applicability of these models to estimate the disease burden of other respiratory viruses. The Poisson regression models with different link functions all yielded estimates well correlated with the virologically confirmed influenza associated hospitalization, especially in children older than two years. The disease burden estimates for RSV, parainfluenza and adenovirus were less reliable with wide confidence intervals. The rate difference model was not applicable to RSV, parainfluenza and adenovirus and grossly underestimated the true burden of influenza associated hospitalization. CONCLUSION: The Poisson regression model generally produced satisfactory estimates in calculating the disease burden of respiratory viruses in a subtropical region such as Hong Kong.
url http://europepmc.org/articles/PMC3055891?pdf=render
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