| Literature DB >> 30383204 |
James M Trauer1, Peter J Dodd2, M Gabriela M Gomes3,4, Gabriela B Gomez5, Rein M G J Houben6,7, Emma S McBryde8, Yayehirad A Melsew1, Nicolas A Menzies9, Nimalan Arinaminpathy10, Sourya Shrestha11, David W Dowdy11.
Abstract
Although less well-recognized than for other infectious diseases, heterogeneity is a defining feature of tuberculosis (TB) epidemiology. To advance toward TB elimination, this heterogeneity must be better understood and addressed. Drivers of heterogeneity in TB epidemiology act at the level of the infectious host, organism, susceptible host, environment, and distal determinants. These effects may be amplified by social mixing patterns, while the variable latent period between infection and disease may mask heterogeneity in transmission. Reliance on notified cases may lead to misidentification of the most affected groups, as case detection is often poorest where prevalence is highest. Assuming that average rates apply across diverse groups and ignoring the effects of cohort selection may result in misunderstanding of the epidemic and the anticipated effects of control measures. Given this substantial heterogeneity, interventions targeting high-risk groups based on location, social determinants, or comorbidities could improve efficiency, but raise ethical and equity considerations.Entities:
Keywords: case detection; epidemiology; heterogeneity; interventions; tuberculosis
Mesh:
Year: 2019 PMID: 30383204 PMCID: PMC6579955 DOI: 10.1093/cid/ciy938
Source DB: PubMed Journal: Clin Infect Dis ISSN: 1058-4838 Impact factor: 9.079
Figure 1.Conceptual framework for understanding heterogeneity in tuberculosis epidemiology. The cone indicates that the most local drivers are positioned toward the top of the figure and the broadest drivers toward the bottom, rather than reflecting the importance of these factors.
Examples of Specific Forms of Heterogeneity and Ways Forward
| Source of Heterogeneity | Examples of Existing Evidence | Data Needs | Analytic Needs | Intervention Needs |
|---|---|---|---|---|
| Infectious host | Sequencing and social network analysis suggest that some individuals may act as “superspreaders” [ | Importance of biological variables, eg, aerosolization, cough frequency | Implications of hosts with differential infectiousness and superspreading | Tools to identify the most infectious patients |
| Available data on contact patterns (principally from low-burden settings) suggest age-specific (assortative) mixing | Data on contact patterns from high-burden settings and for risk factors relevant to TB (eg, HIV status) | Importance of population groups to sustaining transmission relative to their burden of disease | Case-finding efforts designed to identify patients with high-risk mixing patterns for broader dissemination of infection | |
| Infecting organism | Strain responsible for extensive community spread confirmed to be highly virulent in mouse model [ | Mechanisms of strain diversity and virulence | Implications of selecting for strains of greater fitness | Interventions to limit infectiousness of difficult-to-treat strains |
| Highly resistant forms of TB causing extensive outbreaks, eg, XDR-TB in Tugela Ferry, South Africa [ | Fitness costs associated with drug resistance | Likely future trajectory of drug resistance | Improved identification and treatment of highly transmissible strains of drug-resistant TB | |
| Susceptible host | Individuals previously treated for TB had higher rates of recurrent TB due to reinfection than the general population in Cape Town, South Africa [ | Protection or susceptibility afforded by past TB episodes and whether this is attributable to infection or progression risk | Distinguish the individual-level effect of increased susceptibility post–disease episode from the effect of selecting for a more susceptible cohort through infection | Protection of highest-risk individuals from infection or progression to disease |
| Specific risk groups may experience polyclonal outbreaks [ | Better estimates of disease prevalence in risk groups | Anticipated effects of trends in comorbid risk factors on TB | TB control interventions that link with systems for other high-risk conditions | |
| Physical environment | Incarceration may have been a significant driver of community transmission [ | Better estimates of location-specific TB transmission risk | Valid models for translating environmental heterogeneity into transmission risk | Active case finding targeted at high-risk environments (eg, prisons, transit) |
| Greater proportion of infected contacts in less well-ventilated hospital wards [ | Ability of specific interventions (eg, improved ventilation) to reduce that risk | Projected population-level impact of targeted environmental interventions | Mitigation of TB transmission through modification of high-risk built environments | |
| Distal determinants | Ecological observation of declining TB rates during times of improvements in living standards [ | Mechanistic linkages between poverty alleviation and TB transmission | Projected ability of social protection and similar efforts to reduce heterogeneity | Linkage between TB control programs and schemes to alleviate poverty and/or address other distal determinants |
| Association between coverage of Brazil’s conditional cash transfer program and improved TB control [ | TB-specific effects of broader interventions | Models of the impact of TB on other outcomes in vulnerable populations | Implementation of TB interventions in a fashion that mitigates burden on the highest-risk populations, thus promoting equity and reducing disparities in risk |
Abbreviations: HIV, human immunodeficiency virus; TB, tuberculosis; XDR-TB, extensively drug-resistant tuberculosis.
Figure 2.Illustration of some selected concepts from the text. A, Degree of heterogeneity that might be observed among individuals with good access to the healthcare system (unblurred discs) compared to those with poor access (blurred discs). This may be substantially less than the heterogeneity that exists in the population as a whole (B). C, Series of transmission events. D, Subsequent relocation of infected and uninfected individuals. This results in a more homogeneous distribution of infection across the population at this later time point, even though transmission was highly heterogeneous. E, Series of individuals at variable risk of infection. F, Selection of higher-risk individuals through the infection process. Although infection is the selecting illustrated process here, similar principles would apply to progression from infection to disease, through stages of the disease process and to interaction with the health system. Abbreviation: TB, tuberculosis.
Figure 3.Composition of a simple 2-stratum heterogeneous cohort over time from entry to an epidemiological state (active undiagnosed tuberculosis). Plot displays the percentage of patients with active tuberculosis remaining undiagnosed after the onset of infectiousness (time 0 on the horizontal axis), under the assumption that 50% of the initial cohort has an average duration of infectiousness of 1 month (high-rate group), and 50% of the cohort has a duration of infectiousness of 6 months (low-rate group). The true total percentage of patients remaining infectious with time since onset of infectiousness (solid line) is compared against the proportion that would be expected to remain if the whole cohort was assumed to have the average time to diagnosis (3.5 months), and the proportion that would be expected to remain if the whole cohort was assumed to have a rate of diagnosis that is the average of the rates of the 2 groups (dotted line). The amount of the total population comprised of high-rate and low-rate persons at each time point is indicated by colored shading, demonstrating that the remaining cohort is increasingly comprised of low-rate individuals over time.