| Literature DB >> 34753437 |
Susy Echeverria-Londono1, Xiang Li1, Jaspreet Toor1, Margaret J de Villiers1, Shevanthi Nayagam1, Timothy B Hallett1, Kaja Abbas2, Mark Jit2, Petra Klepac2, Kévin Jean1,3,4, Tini Garske1, Neil M Ferguson1, Katy A M Gaythorpe5.
Abstract
BACKGROUND: Deaths due to vaccine preventable diseases cause a notable proportion of mortality worldwide. To quantify the importance of vaccination, it is necessary to estimate the burden averted through vaccination. The Vaccine Impact Modelling Consortium (VIMC) was established to estimate the health impact of vaccination.Entities:
Keywords: Hepatitis; Impact; Measles; Modelling; Vaccine; Yellow fever
Mesh:
Year: 2021 PMID: 34753437 PMCID: PMC8577012 DOI: 10.1186/s12889-021-12040-9
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Parameter and variable definitions
| Parameter | Definition | Variable | Definition |
|---|---|---|---|
| Year | Burden in baseline/counterfactual scenario | ||
| Years of vaccination | Burden in focal scenario | ||
| Years evaluated | Difference or impact between baseline and focal burden | ||
| Age | baseline and focal scenarios ( | ||
| Age at routine vaccination | Impact ratio (impact per FVP) | ||
| Ages modelled | Vaccine impact | ||
| Country | The number of fully vaccinated persons | ||
| Vaccine | |||
| Birth cohort |
Stratifications of the impact ratios (ρ)
Here, FVP and FVP denote fully vaccinated persons (FVPs) due to routine (RV) or campaign vaccination activities (CV) only; D and D denote impact due to RV or CV only, D denotes impact from both routine and campaign vaccinations, and k denotes a particular birth cohort
Summary of methods used by the VIMC for calculating the impact of vaccination (refer to Tables 1–2 for parameter values and for stratifications of the year of vaccination method, respectively)
| Method | Definition | Advantages | Limitations |
|---|---|---|---|
| Calendar year | Impact for a particular year | Intuitive. | Does not account for the long-term impact of vaccination on individual disease risk and cannot be linked to specific vaccination activities. |
| Birth year | Impact for a particular birth cohort | Captures the long-term effects of vaccination in protecting those vaccinated. | Duration of modelling needs to be pathogen-appropriate, e.g. the effects of HepB require a longer modelling time frame. Does not account for inter-cohort effects (e.g. herd protection). |
| Year of vaccination (YoV) | Impact attributed to year in which vaccination occurred | Possible to assess the effects of a specific year’s activities and thus provide a direct comparison of the number of doses provided and their effect. This is useful for planning and economic purposes. | An impact ratio is required which can be affected by the years/activities or birth cohorts included, see Table |
Fig. 1Fully vaccinated persons (FVPs) and mean estimates of deaths averted for hepatitis B (HepB) in Country A, measles in Country B and yellow fever (YF) in Country C from 2000 to 2017. (A) FVPs for HepB birth dose (BD routine) and infant dose (routine) routine vaccination activities. FVPs for first routine dose of a measles containing vaccine and measles campaign activities. FVPs for YF routine and campaign activities. (B) Impact by calendar and birth year methods. (C) Impact by year of vaccination (YoV) with impact ratio stratified by activity type and birth cohort
Fig. 2Model estimates and impact extrapolation showing deaths averted by year of vaccination per year for hepatitis B (HepB) in Country A, measles in Country B and yellow fever (YF) in Country C from 2000 to 2017 using 2017 coverage (2017 model), 2018 coverage with corresponding model estimates (2018 model), and 2018 coverage with the impact extrapolation (2017–2018 IE). (A) Fully vaccinated persons (FVPs) in 2017 and 2018. (B) Impact by year of vaccination with unstratified impact ratio. (C) Impact by year of vaccination with impact ratio stratified by activity type. (D) Impact by year of vaccination with impact ratio stratified by birth cohort. (E) Impact by year of vaccination with impact ratio stratified by activity type and birth cohort
Fig. 3Model estimates and impact extrapolation showing deaths averted by year of vaccination per birth year for hepatitis B (HepB) in Country A, measles in Country B and yellow fever (YF) in Country C from 2000 to 2017 using 2017 coverage (2017 model), 2018 coverage with corresponding model estimates (2018 model), and 2018 coverage with the impact extrapolation (2017–2018 IE). (A) Fully vaccinated persons (FVPs) in 2017 and 2018. (B) Impact by year of birth with unstratified impact ratio. (C) Impact by year of birth with impact ratio stratified by activity type. (D) Impact by year of birth with impact ratio stratified by birth cohort. (E) Impact by year of birth with impact ratio stratified by activity type and birth cohort
Relative total difference of impact extrapolation (IE) to model estimates for deaths averted over 2000–2017 (%) by year of vaccination (YoV) and year of birth (YoB) due to vaccination activities for hepatitis B (HepB) in Country A, measles in Country B and yellow fever (YF) in Country C
| Disease and deaths averted by YoV/YoB | No stratification | Activity type stratification | Birth cohort stratification | Activity type and birth cohort stratification |
|---|---|---|---|---|
| HepB- YoV | -0.86 | 7.24 | 0.40 | 0.30 |
| HepB- YoB | -4.12 | -0.35 | 0.40 | 0.04 |
| Measles- YoV | -8.90 | -0.76 | -0.02 | -0.81 |
| Measles- YoB | -0.51 | -4.04 | -4.34 | -4.10 |
| YF- YoV | -12.16 | -0.84 | -8.80 | -0.67 |
| YF- YoB | -10.37 | -7.41 | -8.62 | -4.66 |
Impact estimated by the year of vaccination stratification methods as shown in Figs. 2-3. Negative numbers correspond to the IE underestimating and positive numbers correspond to the IE overestimating the number of deaths averted over 2000–2017