Publications des scientifiques de l'IRD

Legendre E., Girond F., Herbreteau Vincent, Hoeun S., Rebaudet S., Thu A. M., Rae J. D., Lehot L., Dieng S., Delmas G., Nosten F., Gaudart J., Landier Jordi. (2023). "Forest malaria" in Myanmar ? Tracking transmission landscapes in a diversity of environments. Parasites and Vectors, 16 (1), p. 324 [ p.]. ISSN 1756-3305.

Titre du document
"Forest malaria" in Myanmar ? Tracking transmission landscapes in a diversity of environments
Année de publication
2023
Type de document
Article référencé dans le Web of Science WOS:001066174000001
Auteurs
Legendre E., Girond F., Herbreteau Vincent, Hoeun S., Rebaudet S., Thu A. M., Rae J. D., Lehot L., Dieng S., Delmas G., Nosten F., Gaudart J., Landier Jordi
Source
Parasites and Vectors, 2023, 16 (1), p. 324 [ p.] ISSN 1756-3305
Background In the Greater Mekong Subregion, case-control studies and national-level analyses have shown an association between malaria transmission and forest activities. The term ' forest malaria' hides the diversity of ecosystems in the GMS, which likely do not share a uniform malaria risk. To reach malaria elimination goals, it is crucial to document accurately (both spatially and temporally) the influence of environmental factors on malaria to improve resource allocation and policy planning within given areas. The aim of this ecological study is to characterize the association between malaria dynamics and detailed ecological environments determined at village level over a period of several years in Kayin State, Myanmar. Methods We characterized malaria incidence profiles at village scale based on intra- and inter-annual variations in amplitude, seasonality, and trend over 4 years (2016-2020). Environment was described independently of village localization by overlaying a 2-km hexagonal grid over the region. Specifically, hierarchical classification on principal components, using remote sensing data of high spatial resolution, was used to assign a landscape and a climate type to each grid cell. We used conditional inference trees and random forests to study the association between the malaria incidence profile of each village, climate and landscape. Finally, we constructed eco-epidemiological zones to stratify and map malaria risk in the region by summarizing incidence and environment association information. Results We identified a high diversity of landscapes (n = 19) corresponding to a gradient from pristine to highly anthropogenically modified landscapes. Within this diversity of landscapes, only three were associated with malariaaffected profiles. These landscapes were composed of a mosaic of dense and sparse forest fragmented by small agricultural patches. A single climate with moderate rainfall and a temperature range suitable for mosquito presence was also associated with malaria-affected profiles. Based on these environmental associations, we identified three eco-epidemiological zones marked by later persistence of Plasmodium falciparum, high Plasmodium vivax incidence after 2018, or a seasonality pattern in the rainy season. Conclusions The term forest malaria covers a multitude of contexts of malaria persistence, dynamics and populations at risk. Intervention planning and surveillance could benefit from consideration of the diversity of landscapes to focus on those specifically associated with malaria transmission.
Plan de classement
Sciences du milieu [021] ; Santé : généralités [050] ; Entomologie médicale / Parasitologie / Virologie [052]
Description Géographique
MYANMAR
Localisation
Fonds IRD [F B010090285]
Identifiant IRD
fdi:010090285
Contact