1. Inferring transmission trees to guide targeting of interventions against visceral leishmaniasis and post–kala-azar dermal leishmaniasis
- Author
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T. Déirdre Hollingsworth, Mary M. Cameron, Caryn Bern, Chris P. Jewell, Dinesh Mondal, Timothy M Pollington, Lloyd A. C. Chapman, Simon E. F. Spencer, Graham F. Medley, and Jorge Alvar
- Subjects
0301 basic medicine ,medicine.medical_specialty ,Medical Sciences ,transmission tree ,Endemic Diseases ,Bayesian inference ,030231 tropical medicine ,Leishmaniasis, Cutaneous ,Disease ,Asymptomatic ,law.invention ,03 medical and health sciences ,0302 clinical medicine ,law ,parasitic diseases ,Epidemiology ,medicine ,visceral leishmaniasis ,Humans ,Longitudinal Studies ,Asymptomatic Infections ,030304 developmental biology ,Post-kala-azar dermal leishmaniasis ,0303 health sciences ,Bangladesh ,Multidisciplinary ,Coinfection ,business.industry ,Incidence ,Incidence (epidemiology) ,spatiotemporal transmission ,Sequela ,Leishmaniasis ,Biological Sciences ,medicine.disease ,Dermatology ,post–kala-azar dermal leishmaniasis ,3. Good health ,030104 developmental biology ,Transmission (mechanics) ,Visceral leishmaniasis ,Leishmaniasis, Visceral ,Contact Tracing ,medicine.symptom ,business ,RC - Abstract
Significance Methods for analyzing individual-level geo-located disease data have existed for some time, but have rarely been used to analyze endemic human diseases. Here we apply such methods to nearly a decade’s worth of uniquely detailed epidemiological data on incidence of the deadly vector-borne disease visceral leishmaniasis (VL) and its secondary condition, post–kala-azar dermal leishmaniasis (PKDL), to quantify the spread of infection around cases in space and time by inferring who infected whom, and estimate the relative contribution of different infection states to transmission. Our findings highlight the key role long diagnosis delays and PKDL play in maintaining VL transmission. This detailed characterization of the spatiotemporal transmission of VL will help inform targeting of interventions around VL and PKDL cases., Understanding of spatiotemporal transmission of infectious diseases has improved significantly in recent years. Advances in Bayesian inference methods for individual-level geo-located epidemiological data have enabled reconstruction of transmission trees and quantification of disease spread in space and time, while accounting for uncertainty in missing data. However, these methods have rarely been applied to endemic diseases or ones in which asymptomatic infection plays a role, for which additional estimation methods are required. Here, we develop such methods to analyze longitudinal incidence data on visceral leishmaniasis (VL) and its sequela, post–kala-azar dermal leishmaniasis (PKDL), in a highly endemic community in Bangladesh. Incorporating recent data on VL and PKDL infectiousness, we show that while VL cases drive transmission when incidence is high, the contribution of PKDL increases significantly as VL incidence declines (reaching 55% in this setting). Transmission is highly focal: 85% of mean distances from inferred infectors to their secondary VL cases were
- Published
- 2020
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