4Flu-an individual based simulation tool to study the effects of quadrivalent vaccination on seasonal influenza in Germany

被引:32
作者
Eichner, Martin [1 ,2 ]
Schwehm, Markus [3 ]
Hain, Johannes [4 ]
Uphoff, Helmut [5 ]
Salzberger, Bernd [6 ]
Knuf, Markus [7 ]
Schmidt-Ott, Ruprecht [8 ]
机构
[1] Univ Tubingen, Dept Clin Epidemiol & Appl Biometry, D-72076 Tubingen, Germany
[2] Epimos GmbH, D-72144 Dusslingen, Germany
[3] ExploSYS GmbH, D-70771 Leinfelden Echterdingen, Germany
[4] GlaxoSmithKline GmbH & Co KG, D-81675 Munich, Germany
[5] Zentrum Gesundheitsschutz, Hess Landesprufungs & Untersuchungsamt Gesundheit, D-35683 Dillenburg, Germany
[6] Univ Klinikum Regensburg, Klin Innere Med, D-93042 Regensburg, Germany
[7] Klin Kinder & Jugendliche, Dr Horst Schmidt Klin, D-65199 Wiesbaden, Germany
[8] GlaxoSmithKline Vaccines, Wavre, Belgium
关键词
Influenza; Vaccination; Simulation; Mathematical model; PANDEMIC INFLUENZA; TRANSMISSION DYNAMICS; EPIDEMIC SPREAD; SOCIAL NETWORKS; B VIRUS; A H1N1; IMPACT; POPULATION; EVOLUTION; DISEASE;
D O I
10.1186/1471-2334-14-365
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
Background: Influenza vaccines contain Influenza A and B antigens and are adjusted annually to match the characteristics of circulating viruses. In Germany, Influenza B viruses belonged to the B/Yamagata lineage, but since 2001, the antigenically distinct B/Victoria lineage has been co-circulating. Trivalent influenza vaccines (TIV) contain antigens of the two A subtypes A(H3N2) and A(H1N1), yet of only one B lineage, resulting in frequent vaccine mismatches. Since 2012, the WHO has been recommending vaccine strains from both B lineages, paving the way for quadrivalent influenza vaccines (QIV). Methods: Using an individual-based simulation tool, we simulate the concomitant transmission of four influenza strains, and compare the effects of TIV and QIV on the infection incidence. Individuals are connected in a dynamically evolving age-dependent contact network based on the POLYMOD matrix; their age-distribution reproduces German demographic data and predictions. The model considers maternal protection, boosting of existing immunity, loss of immunity, and cross-immunizing events between the B lineages. Calibration to the observed annual infection incidence of 10.6% among young adults yielded a basic reproduction number of 1.575. Vaccinations are performed annually in October and November, whereby coverage depends on the vaccinees' age, their risk status and previous vaccination status. New drift variants are introduced at random time points, leading to a sudden loss of protective immunity for part of the population and occasionally to reduced vaccine efficacy. Simulations run for 50 years, the first 30 of which are used for initialization. During the final 20 years, individuals receive TIV or QIV, using a mirrored simulation approach. Results: Using QIV, the mean annual infection incidence can be reduced from 8,943,000 to 8,548,000, i.e. by 395,000 infections, preventing 11.2% of all Influenza B infections which still occur with TIV (95% CI: 10.7-11.8%). Using a lower B lineage cross protection than the baseline 60%, the number of Influenza B infections increases and the number additionally prevented by QIV can be 5.5 times as high. Conclusions: Vaccination with TIV substantially reduces the Influenza incidence compared to no vaccination. Depending on the assumed degree of B lineage cross protection, QIV further reduces Influenza B incidence by 11-33%.
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页数:21
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