| Literature DB >> 27001766 |
M Gabriela M Gomes1,2,3, Maurício L Barreto4,5, Philippe Glaziou6, Graham F Medley7, Laura C Rodrigues7, Jacco Wallinga8,9, S Bertel Squire10.
Abstract
BACKGROUND: Diseases occur in populations whose individuals differ in essential characteristics, such as exposure to the causative agent, susceptibility given exposure, and infectiousness upon infection in the case of infectious diseases. DISCUSSION: Concepts developed in demography more than 30 years ago assert that variability between individuals affects substantially the estimation of overall population risk from disease incidence data. Methods that ignore individual heterogeneity tend to underestimate overall risk and lead to overoptimistic expectations for control. Concerned that this phenomenon is frequently overlooked in epidemiology, here we feature its significance for interpreting global data on human tuberculosis and predicting the impact of control measures. We show that population-wide interventions have the greatest impact in populations where all individuals face an equal risk. Lowering variability in risk has great potential to increase the impact of interventions. Reducing inequality, therefore, empowers health interventions, which in turn improves health, further reducing inequality, in a virtuous circle.Entities:
Keywords: Cohort selection; Heterogeneity; Intervention impact; Social inequality; Tuberculosis
Mesh:
Year: 2016 PMID: 27001766 PMCID: PMC4802713 DOI: 10.1186/s12879-016-1464-8
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Fig 1Global tuberculosis incidence per 100,000 person-years. a, b, Endemic equilibrium states for model in appendix (black curves: a, homogeneous; b, heterogeneous). Colored lines represent the TB incidences reported by WHO in all countries, and associated R 0. Countries are color-coded by WHO region: African (red); South-East Asia (yellow); Eastern Mediterranean (cyan); Western Pacific (green); Europe (blue); The Americas (magenta). c, Simulation of a vaccine that halves susceptibility to infection and reduces reactivation rate by 90 %. Dashed and dash-dotted curves correspond to populations with variance-to-mean ratios of 0 (homogeneous) and 20 (heterogeneous), respectively, in two epidemiological settings: baseline incidence of 1000 per 100,000 person-years (red); and 50 per 100,000 person-years (grey)
Fig 2Impact of simulated vaccine decaying with the variance-to-mean ratio of disease risk. In all cases the vaccine is given to all individuals to halve susceptibility to infection and reduce reactivation rate by 90 %. Two epidemiological settings are considered: baseline incidence of 1000 per 100,000 person-years (red); and 50 per 100,000 person-years (grey)