Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: The FluMOMO model

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Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17 : The FluMOMO model. / Nielsen, Jens; Krause, Tyra Grove; Mølbak, Kåre.

In: Influenza and Other Respiratory Viruses, Vol. 12, No. 5, 2018, p. 591-604.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Nielsen, J, Krause, TG & Mølbak, K 2018, 'Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: The FluMOMO model', Influenza and Other Respiratory Viruses, vol. 12, no. 5, pp. 591-604. https://doi.org/10.1111/irv.2018.12.issue-5

APA

Nielsen, J., Krause, T. G., & Mølbak, K. (2018). Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: The FluMOMO model. Influenza and Other Respiratory Viruses, 12(5), 591-604. https://doi.org/10.1111/irv.2018.12.issue-5

Vancouver

Nielsen J, Krause TG, Mølbak K. Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: The FluMOMO model. Influenza and Other Respiratory Viruses. 2018;12(5):591-604. https://doi.org/10.1111/irv.2018.12.issue-5

Author

Nielsen, Jens ; Krause, Tyra Grove ; Mølbak, Kåre. / Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17 : The FluMOMO model. In: Influenza and Other Respiratory Viruses. 2018 ; Vol. 12, No. 5. pp. 591-604.

Bibtex

@article{f3d7a2e44cc4499092f50936e00df80c,
title = "Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17: The FluMOMO model",
abstract = "BackgroundIn temperate zones, all‐cause mortality exhibits a marked seasonality, and influenza represents a major cause of winter excess mortality. We present a statistical model, FluMOMO, which estimate influenza‐associated mortality from all‐cause mortality data and apply it to Danish data from 2010/11 to 2016/17.MethodsWe applied a multivariable time series model with all‐cause mortality as outcome, influenza activity and extreme temperatures as explanatory variables while adjusting for time trend and seasonality. Three indicators of weekly influenza activity (IA) were explored: percentage of consultations for influenza‐like illness (ILI) at primary health care, national percentage of influenza‐positive samples, and the product of ILI percentage and percentage of influenza‐positive specimens in a given week, that is, the Goldstein index.ResultsIndependent of the choice of parameter to represent influenza activity, the estimated influenza‐associated mortality showed similar patterns with the Goldstein index being the most conservative. Over the 7 winter seasons, the median influenza‐associated mortality per 100 000 population was 17.6 (range: 0.0‐36.8), 14.1 (0.3‐31.6) and 8.3 (0.0‐25.0) for the 3 indicators, respectively, for all ages.ConclusionThe FluMOMO model fitted the Danish data well and has the potential to estimate all‐cause influenza‐associated mortality in near real time and could be used as a standardised method in other countries. We recommend using the Goldstein index as the influenza activity indicator in the FluMOMO model. Further work is needed to improve the interpretation of the estimated effects.",
author = "Jens Nielsen and Krause, {Tyra Grove} and K{\aa}re M{\o}lbak",
year = "2018",
doi = "10.1111/irv.2018.12.issue-5",
language = "English",
volume = "12",
pages = "591--604",
journal = "Influenza and other Respiratory Viruses",
issn = "1750-2640",
publisher = "Wiley-Blackwell",
number = "5",

}

RIS

TY - JOUR

T1 - Influenza-associated mortality determined from all-cause mortality, Denmark 2010/11-2016/17

T2 - The FluMOMO model

AU - Nielsen, Jens

AU - Krause, Tyra Grove

AU - Mølbak, Kåre

PY - 2018

Y1 - 2018

N2 - BackgroundIn temperate zones, all‐cause mortality exhibits a marked seasonality, and influenza represents a major cause of winter excess mortality. We present a statistical model, FluMOMO, which estimate influenza‐associated mortality from all‐cause mortality data and apply it to Danish data from 2010/11 to 2016/17.MethodsWe applied a multivariable time series model with all‐cause mortality as outcome, influenza activity and extreme temperatures as explanatory variables while adjusting for time trend and seasonality. Three indicators of weekly influenza activity (IA) were explored: percentage of consultations for influenza‐like illness (ILI) at primary health care, national percentage of influenza‐positive samples, and the product of ILI percentage and percentage of influenza‐positive specimens in a given week, that is, the Goldstein index.ResultsIndependent of the choice of parameter to represent influenza activity, the estimated influenza‐associated mortality showed similar patterns with the Goldstein index being the most conservative. Over the 7 winter seasons, the median influenza‐associated mortality per 100 000 population was 17.6 (range: 0.0‐36.8), 14.1 (0.3‐31.6) and 8.3 (0.0‐25.0) for the 3 indicators, respectively, for all ages.ConclusionThe FluMOMO model fitted the Danish data well and has the potential to estimate all‐cause influenza‐associated mortality in near real time and could be used as a standardised method in other countries. We recommend using the Goldstein index as the influenza activity indicator in the FluMOMO model. Further work is needed to improve the interpretation of the estimated effects.

AB - BackgroundIn temperate zones, all‐cause mortality exhibits a marked seasonality, and influenza represents a major cause of winter excess mortality. We present a statistical model, FluMOMO, which estimate influenza‐associated mortality from all‐cause mortality data and apply it to Danish data from 2010/11 to 2016/17.MethodsWe applied a multivariable time series model with all‐cause mortality as outcome, influenza activity and extreme temperatures as explanatory variables while adjusting for time trend and seasonality. Three indicators of weekly influenza activity (IA) were explored: percentage of consultations for influenza‐like illness (ILI) at primary health care, national percentage of influenza‐positive samples, and the product of ILI percentage and percentage of influenza‐positive specimens in a given week, that is, the Goldstein index.ResultsIndependent of the choice of parameter to represent influenza activity, the estimated influenza‐associated mortality showed similar patterns with the Goldstein index being the most conservative. Over the 7 winter seasons, the median influenza‐associated mortality per 100 000 population was 17.6 (range: 0.0‐36.8), 14.1 (0.3‐31.6) and 8.3 (0.0‐25.0) for the 3 indicators, respectively, for all ages.ConclusionThe FluMOMO model fitted the Danish data well and has the potential to estimate all‐cause influenza‐associated mortality in near real time and could be used as a standardised method in other countries. We recommend using the Goldstein index as the influenza activity indicator in the FluMOMO model. Further work is needed to improve the interpretation of the estimated effects.

U2 - 10.1111/irv.2018.12.issue-5

DO - 10.1111/irv.2018.12.issue-5

M3 - Journal article

VL - 12

SP - 591

EP - 604

JO - Influenza and other Respiratory Viruses

JF - Influenza and other Respiratory Viruses

SN - 1750-2640

IS - 5

ER -

ID: 221748974