| Literature DB >> 32873309 |
Kenneth S Gunasekera1, Jon Zelner2, Mercedes C Becerra3, Carmen Contreras4, Molly F Franke3, Leonid Lecca3,4, Megan B Murray3, Joshua L Warren5, Ted Cohen6.
Abstract
BACKGROUND: Identifying hotspots of tuberculosis transmission can inform spatially targeted active case-finding interventions. While national tuberculosis programs maintain notification registers which represent a potential source of data to investigate transmission patterns, high local tuberculosis incidence may not provide a reliable signal for transmission because the population distribution of covariates affecting susceptibility and disease progression may confound the relationship between tuberculosis incidence and transmission. Child cases of tuberculosis and other endemic infectious disease have been observed to provide a signal of their transmission intensity. We assessed whether local overrepresentation of child cases in tuberculosis notification data corresponds to areas where recent transmission events are concentrated.Entities:
Keywords: Age-structure; Hotspot; Modeling; Pediatric; Population surveillance/*methods; Spatial; Tuberculosis; Tuberculosis/epidemiology/*prevention & control/transmission
Mesh:
Year: 2020 PMID: 32873309 PMCID: PMC7466499 DOI: 10.1186/s12916-020-01702-x
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1Disease mapping of young children in Peru’s National Tuberculosis Program data. Log-Gaussian Cox process modeled intensity of the cases of tuberculosis among children < 5 years old notified to the Peru’s National Tuberculosis Program within two of Lima’s four health districts, Lima Ciudad and contiguous catchment areas of Lima Este, between January 1, 2005 and December 31, 2007
Fig. 2Identifying areas with local overrepresentation of young children in tuberculosis notification data. Hierarchical Bayesian spatial model fit to the child cases < 5 years old and adult cases > 15 years old in the notification data aggregated into 200 m × 200 m grid cells overlaid on the convex hull of the data. The model suggested six grid cells (red) in which > 95% of the posterior distribution of the random effect terms were above zero, and an additional eight grid cells (orange) in which > 90% of the posterior distribution was above zero. The proportion of child cases in these grid cells is greater than expected over the study region, suggesting recent tuberculosis transmission based on our hypothesis
Fig. 3Comparing tuberculosis transmission inference of hotspots of active transmission. a Reproduced with permission from Zelner et al. demonstrating regions (shaded) identified as tuberculosis transmission hotspots. Different color shading denotes clusters of different drug-sensitive and drug-resistant strains identified by MIRU-VNTR genotype. b A grayscale reproduction of this figure is overlaid on the modeled 200 m × 200 m grid from Fig. 2. We highlight those grid cells in red and orange, where the modeled proportion of child cases < 5 years old is greater than expected, to demonstrate the proximity between areas with higher local childhood tuberculosis notification and areas with conclusive evidence of transmission. MIRU-VNTR, 24-loci mycobacterial interspersed repetitive units-variable-number tandem repeats
Fig. 4Comparing per capita tuberculosis incidence to putative hotspots. a Figure reproduced with permission from Zelner et al. demonstrating the spatial variation in annual per-100 thousand incidence of drug-sensitive and drug-resistant tuberculosis by healthcare catchment area. b A grayscale reproduction is overlaid on the 200 m × 200 m grid from Fig. 2 to demonstrate the proximity between the colored grid cells, where the modeled proportion of child cases < 5 years old is greater than expected, and an area of high local incidence of tuberculosis