| Literature DB >> 25936682 |
D L Chao1, J K Park2, F Marks2, R L Ochiai2, I M Longini3, M E Halloran1.
Abstract
An individual's risk of infection from an infectious agent can depend on both the individual's own risk and protective factors and those of individuals in the same community. We hypothesize that an individual's exposure to an infectious agent is associated with the risks of infection of those living nearby, whether their risks are modified by pharmaceutical interventions or by other factors, because of the potential for transmission from them. For example, unvaccinated individuals living in a highly vaccinated community can benefit from indirect protection, or living near more children in a typhoid-endemic region (where children are at highest risk) might result in more exposure to typhoid. We tested this hypothesis using data from a cluster-randomized typhoid vaccine trial. We first estimated each individual's relative risk of confirmed typhoid outcome using their vaccination status and age. We defined a new covariate, potential exposure, to be the sum of the relative risks of all who live within 100 m of each person. We found that potential exposure was significantly associated with an individual's typhoid outcome, and adjusting for potential exposure affected estimates of vaccine efficacy. We suggest that it is useful and feasible to adjust for spatially heterogeneous distributions of individual-level risk factors, but further work is required to develop and test such approaches.Entities:
Keywords: Salmonella (Typhi); typhoid fever (S. Typhi); vaccination (immunization)
Mesh:
Substances:
Year: 2015 PMID: 25936682 PMCID: PMC4619120 DOI: 10.1017/S0950268815000692
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Fig. 1.Illustration of how neighbours could affect an individual's risk of disease outcome. Here, adults and children are represented as large and small icons, respectively, and their positions represent the locations of their residences. Vaccinated individuals are shaded. The vaccinated adult indicated by ‘A’ may be exposed to typhoid by persons living nearby, shown within the solid circle. This individual may have a low risk of infection both because of the individual's own risk factors (adult age and vaccination status) and because of the relatively low risk of everyone nearby. The unvaccinated child indicated by ‘B’ is at high risk not only because of young age (a risk factor for typhoid outcome in this study) and lack of vaccination, but also because of the number of unvaccinated individuals and children living nearby. The unvaccinated adult and child in the middle of the diagram might contribute to the risk of both individuals ‘A’ and ‘B’. We define an individual's ‘potential exposure’ to an infectious agent to be the sum of the relative risks of those living nearby.
Fig. 2.Maps of the study site and the potential-exposure measure. (a) Points in red are households in typhoid-vaccinated clusters, points in blue are in hepatitis A (control) vaccinated clusters. Units on the axes are in meters. Each typhoid case is plotted as a small + symbol. (b) Heat map of the potential-exposure measure of study participants. Each dot represents a trial participant's residence, with the colour based on the individual's potential exposure, as indicated by the key at the top right, based on the coefficients from model 3(3) in Table 2. A grey circle with a 100-m radius is drawn in the lower left to indicate the spatial scale of the potential-exposure measure.
Estimated vaccine effectiveness and relative risks for typhoid outcome
| Term | V̂ (%) | 95% CI | exp(β̂) | 95% CI | |
|---|---|---|---|---|---|
| Model 1 | |||||
| Typhoid vaccination | 63·7% | 42·0 to 77·2 | 0·363 | 0·228–0·580 | <0·0001 |
| 5–14·9 years | 0·565 | 0·394–0·809 | 0·002 | ||
| ⩾15 years | 0·059 | 0·033–0·108 | <0·0001 | ||
| Model 2a | |||||
| Typhoid vaccination | 20·5% | −371·7 to 86·6 | 0·795 | 0·134–4·717 | 0·801 |
| 5–14·9 years | 0·564 | 0·394–0·809 | 0·002 | ||
| ⩾15 years | 0·060 | 0·033–0·109 | <0·0001 | ||
| Fraction vaccinated in cluster | 0·274 | 0·016–4·675 | 0·371 | ||
| Model 2b | |||||
| Typhoid vaccination | 59·1% | 32·0 to 75·3 | 0·409 | 0·247–0·680 | <0·001 |
| 5–14·9 years | 0·562 | 0·393–0·805 | 0·002 | ||
| ⩾15 years | 0·060 | 0·033–0·108 | <0·0001 | ||
| Fraction vaccinated in 100 m | 0·494 | 0·112–2·172 | 0·350 | ||
| Model 2c | |||||
| Typhoid vaccination | 56·9% | 32·6 to 72·4 | 0·431 | 0·276–0·674 | <0·001 |
| 5–14·9 years | 0·565 | 0·395–0·807 | 0·002 | ||
| ⩾15 years | 0·068 | 0·037–0·126 | <0·0001 | ||
| Number | 1·139 | 1·053–1·231 | 0·001 | ||
| Model 3(1) | |||||
| Typhoid vaccination | 58·3% | 34·8 to 73·3 | 0·416 | 0·266–0·650 | 0·0001 |
| 5–14·9 years | 0·565 | 0·396–0·807 | 0·002 | ||
| ⩾15 years | 0·069 | 0·037–0·127 | <0·0001 | ||
| 100 m exposure/1000 | 1·488 | 1·172–1·890 | 0·001 | ||
| Model 3(2) | |||||
| Typhoid vaccination | 58·4% | 35·0 to 73·4 | 0·416 | 0·266–0·650 | 0·0001 |
| 5–14·9 years | 0·565 | 0·396–0·807 | 0·002 | ||
| ⩾15 years | 0·069 | 0·037–0·127 | <0·0001 | ||
| 100 m exposure/1000 | 1·471 | 1·166–1·856 | 0·001 | ||
| Model 3(3) | |||||
| Typhoid vaccination | 58·4% | 35·0 to 73·4 | 0·416 | 0·266–0·650 | 0·0001 |
| 5–14·9 years | 0·565 | 0·396–0·807 | 0·002 | ||
| ⩾15 years | 0·069 | 0·037–0·127 | <0·0001 | ||
| 100 m exposure/1000 | 1·471 | 1·166–1·856 | 0·001 | ||
| Model 4(3) | |||||
| Typhoid vaccination | 38·6% | 6·5 to 59·7 | 0·614 | 0·403–0·935 | 0·023 |
| 5–14·9 years | 0·813 | 0·606–1·091 | 0·168 | ||
| ⩾15 years | 0·100 | 0·064–0·157 | <0·0001 | ||
| 100 m exposure/1000 | 1·357 | 1·169–1·576 | <0·0001 | ||
CI, Confidence interval.
Relative risks are reported as exp(estimate), with the coefficient estimated using a Cox proportional hazards model regression. Relative risks for models 1–3 were estimated for trial participants (typhoid and control vaccinees). V̂ in model 1 is the total vaccine effectiveness, which is simply (1 – exp()) × 100%. The fractions vaccinated in a cluster or within a 100-m radius are the fractions of total inhabitants vaccinated against typhoid. 100 m exposure/1000 is the potential exposure divided by 1000. Model 3(1) computes potential exposure using the weight estimates from model 2, model 3(2) computes potential exposure using the weight estimates from model 3(1), and model 3(3) computes potential exposure using the weight estimates from model 3(2). Model 4(3) is analogous to model 3(3), except that the risks and potential exposure are estimated for everyone living in the study site, including non-participants.
Summary of characteristics of confirmed typhoid cases and non-cases
| Trial participants | Total population | |||||
|---|---|---|---|---|---|---|
| Cases | Non-cases | Cases | Non-cases | |||
| 130 | 37 543 | 177 | 62 579 | |||
| typhoid vaccination | 34 | 18 835 | <0·001 | 34 | 18 835 | 0·002 |
| Age, years (mean) | 10·4 | 28·3 | <0·001 | 10·8 | 28·4 | <0·001 |
| % female | 45·4% | 47·5% | 0·64 | 44·1% | 46·2% | 0·58 |
| No. of people living within 100 m (mean) | 6140 | 4284 | <0·001 | 6244 | 4559 | <0·001 |
| % typhoid-vaccinated within 100 m (mean) | 23·8% | 30·2% | <0·001 | 24·3% | 29·5% | <0·001 |
| 100 m potential exposure (mean) | 1466 | 930 | <0·001 | 2047 | 1393 | <0·001 |
The first three columns summarize trial participants, who were vaccinated against typhoid or against hepatitis A (control vaccination). The last three columns summarize the total population of the study area, including those who did not participate in the trial. The Wilcoxon rank-sum test was used to obtain P values.