| Literature DB >> 27821137 |
Ruprecht Schmidt-Ott1, Markus Schwehm2, Martin Eichner3,4.
Abstract
BACKGROUND: The demographic composition and the frequency and nature of social contacts may affect the spread of influenza virus in a population, resulting in distinct age-dependent immunity patterns. As demography and social contact rates differ strongly between European countries, this may impact infection incidence and vaccine effectiveness and thus limit the extent to which conclusions derived from observations in one country can be generalized to others. In the current study, we aimed to decipher the impact of social contact patterns and demographic factors on simulation results and, thus, to determine to what extent vaccination results can be generalized.Entities:
Keywords: 4Flu; Influenza; Mathematical model; POLYMOD; Simulation; Vaccination
Mesh:
Year: 2016 PMID: 27821137 PMCID: PMC5100331 DOI: 10.1186/s12879-016-1981-5
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Fig. 1Transmission and immunity dynamics in the simulations: black arrows indicate births and disease progression, red solid arrows indicate infections, green arrows indicate successful vaccinations, and grey arrows show loss of immunity; dotted red arrows indicate cross-immunization against a B lineage caused by an infection or vaccination with the other B lineage; vaccinations and infections can also boost existing immunity (indicated by a “+”); arrows for deaths (which drain each single compartment) were omitted
Fig. 2Age distributions of eight European countries. 1st and 2nd column: age distribution of the populations in 1994 and 2033, respectively (the vertical scales of each pair are identical, but they differ between countries). The white inlays give the number of children (C; 0–19 years), young adults (A; 20–64 years) and elderly (E; 65+ years) as well as the mean age in the population and the increase of the mean age from 1994 to 2033. 3rd column: growth of the populations (the size in 1994 is set to 100 %)
Summary of demographic and contact features of each country averages over the evaluation period 2014–2033
| Average age [years] | Percentage of population | Contacts per individual per day | ||||||
|---|---|---|---|---|---|---|---|---|
| <20 years | 20–64 years | 65+ years | <20 years | 20–24 years | 65+ years | Average | ||
| Belgium | 41.6 | 23.0 | 57.3 | 19.7 | 23.2 | 24.7 | 13.0 | 22.0 |
| Finland | 43.0 | 22.1 | 55.3 | 22.7 | 23.6 | 20.8 | 8.2 | 18.5 |
| Germany | 46.7 | 16.9 | 57.3 | 25.8 | 17.1 | 15.9 | 9.9 | 14.5 |
| Great Britain | 41.2 | 23.8 | 56.6 | 19.5 | 26.5 | 21.8 | 13.1 | 21.2 |
| Italy | 45.2 | 18.5 | 58.2 | 23.3 | 50.4 | 36.2 | 20.5 | 35.1 |
| Luxembourg | 39.6 | 23.2 | 61.3 | 15.4 | 38.0 | 35.8 | 17.1 | 33.4 |
| Netherlands | 42.8 | 21.7 | 57.0 | 21.3 | 33.4 | 27.3 | 13.0 | 25.5 |
| Poland | 42.7 | 19.8 | 60.6 | 19.6 | 32.0 | 33.5 | 17.7 | 30.1 |
Vaccination coverage in the different countriesa
| Country | Group | Vaccination coverage (from age to age) [%] | Ref. |
|---|---|---|---|
| Belgium | not at risk | 1.7 (0–17), 6.5 (18–24), 10.1 (25–34), 14.8 (35–44), | [ |
| at risk | 5.0 (0–17), 15.3 (18–24), 13.0 (25–34), 15.6 (35–44), | ||
| Finland | not at risk | 36.2 (0–2), 6.1 (3–6), 5.1 (7–10), 2.6 (11–14), | [ |
| at risk | 24.0 (0–64), 64.6 (65+) | ||
| Germany | not at risk | 19.2 (0–2), 22.4 (3–6), 23.6 (7–10), 11.0 (11–13), | [ |
| at risk | 26.8 (0–64), 76.3 (65+) | ||
| Great Britain | not at risk | 13.4 (0–2), 7.1 (3–6), 4.3 (7–10), 3.0 (11–15), | [ |
| at risk | 56.4 (0–64), 91.6 (65+) | ||
| Italy | not at risk | 24.5 (0–2), 17.9 (3–6), 14.7 (7–10), 8.3 (11–13), | [ |
| at risk | 42.1 (0–64), 72.7 (65+) | ||
| Netherlands | All | 2.0 (0–4), 4.2 (5–9), 4.9 (10–14), 5.0 (15–19), | [ |
| Poland | not at risk | 10.0 (0–2), 13.0 (3–6), 10.7 (7–10), 5.2 (11–14), | [ |
| at risk | 11.6 (0–64), 17.1 (65+) | ||
| Unified vaccination | not at risk | 20.0 (0–2, 10.0 (3–10), 5.0 (11–15), 10.0 (16–59), | |
| at risk | 30.0 (0–59), 70.0 (60+) |
abased on data from 2007 to 2008; sufficient information on Luxembourg was not available
Fig. 3Distribution of contacts for eight countries. 1st column: contacts per individual per day according to the POLYMOD study [5]. Second column: age distributions using the age classes of the POLYMOD study (averages of representative population samples of 1000 individuals per year for the period from 2014 to 2033). 3rd column: total number of contacts per day in a population of 1000 individuals with the age distributions of the 2nd column (combining contacts initiated by the age group and directed to the age group by others; see text for further explanations). Color coding of the bars in the 1st and 3rd column: black = contact with children and juveniles (0–19 years); dark grey: contacts with young adults (20–64 years); light grey: contacts with elderly (65+ years). 4th column: contacts among children (C), young adults (A) and elderly (E); thickness of arrows are proportional to the numbers of contacts (numbers denote daily contacts in a population with a total size of 1000 individuals)
Fig. 4Simulation results for the annual incidence of influenza infections per 100,000 individuals without vaccination in eight countries (black: children (C) 0–17 years, dark grey: adults (A) 18–64 years; light grey: elderly (E) 65+ years). a original combination of each country’s demography and contact matrix (coefficient of variation [CV] for C: 17.8 %, A: 12.3 %, E: 20.5 %, all: 11.8 %); b combining the Finnish demography with each country’s contact matrix (CV for C: 6.5 %, A: 7.0 %, E: 16.5 %, all: 7.8 %); c combining each country’s demography with the Belgian contact matrix (CV for C: 15.3 %, A: 4.1 %, E: 14.6 %, all: 3.2 %). Comparing the variability in the three graphs (either by age group or for the total), using Brown-Forsythe-Test, yielded non-significant results (p > 0.05). For each set of simulation parameters, averages of 1000 simulations running for 20 years were calculated
Fig. 5Simulation results for the number of influenza infections which are annually prevented by QIV vaccination in a population of 100,000 individuals (black: children (C) 0–17 years, dark grey: adults (A) 18–64 years; dark grey: elderly (E) 65+ years). a combining each country’s specific vaccination coverage with its demography and contact matrix (coefficient of variation [CV] for C: 65.2 %, A: 47.7 %, E: 36.2 %, all: 41.4 %); b–d using the same unified vaccination coverage for all countries: b combining each country’s demography with its contact matrix (CV for C: 31.1 %, A: 34.9 %, E: 22.1 %, all: 27.9 %); c combining the Finnish demography with each country’s contact matrix (CV for C: 30.1 %, A: 30.0 %, E: 14.2 %, all: 22.6 %); d combining each country’s demography with the Belgian contact matrix (CV for C: 8.6 %, A: 7.2 %, E: 17.9 %, all: 8.0 %). Comparing the variability in the four graphs (either by age group or for the total), using Brown-Forsythe-Test, yielded non-significant results (p > 0.05). For each set of simulation parameters, differences are based on 1000 simulations with vaccination and 1000 simulations without vaccination whereby each simulation ran for 20 years
Mean number of infections per year per 100,000 inhabitants
| Country | Original demography and contact matrix | Demography of Finland | Contact matrix of Belgium | ||||
|---|---|---|---|---|---|---|---|
| No vacc. | Original vacc. | Unified vacc. | No vacc. | Unified vacc. | No vacc. | Unified vacc. | |
| Belgium | 29,194 | 24,391 (−16.5 %) | 24,301 (−16.8 %) | 28,799 | 23,566 (−18.2 %) | 29,194 | 24,301 (−16.8 %) |
| Finland | 26,675 | 23,002 (−13.8 %) | 22,270 (−16.5 %) | 26,675 | 22,270 (−16.5 %) | 28,799 | 23,566 (−18.2 %) |
| Germany | 20,984 | 13,263 (−36.8 %) | 14,795 (−29.5 %) | 24,893 | 19,174 (−23.0 %) | 27,249 | 21,327 (−21.7 %) |
| Great Britain | 28,952 | 23,617 (−18.4 %) | 24,480 (−15.4 %) | 27,975 | 23,121 (−17.4 %) | 29,474 | 24,552 (−16.7 %) |
| Italy | 31,322 | 27,643 (−11.7 %) | 28,238 (−9.8 %) | 31,997 | 28,880 (−9.7 %) | 27,584 | 22,135 (−19.8 %) |
| Luxembourg | 31,216 | n.a. | 28,588 (−8.4 %) | 30,256 | 26,913 (−11.0 %) | 29,970 | 25,409 (−15.2 %) |
| Netherlands | 29,351 | 25,319 (−13.7 %) | 25,562 (−12.9 %) | 29,135 | 25,437 (−12.7 %) | 28,507 | 23,339 (−18.1 %) |
| Poland | 30,056 | 28,297 (−5.9 %) | 26,750 (−11.0 %) | 30,167 | 26,641 (−11.7 %) | 28,498 | 23,491 (−17.6 %) |
| CV | 11.8 % | 21.1 % | 18.1 % | 7.8 % | 12.6 % | 3.2 % | 5.6 % |
Mean number of infections per year per 100,000 inhabitants without or with vaccination, using either the country’s own combination of contact matrix and demography, or replacing the country’s contact matrix by the Belgian one, or replacing the country’s demography by the Finish one; “Original vacc.” denotes the vaccination coverage which actually is used in the different countries (unknown for Luxembourg); “Unified vacc.” uses the same vaccination strategy in every country (see text for details); trivalent influenza vaccine (TIV) is used before 2014; tetravalent influenza vaccine (QIV) is used from 2014 to 2033. Each cell gives the average result of 1000 simulations running from 2014 to 2033