Assessing receptivity to malaria using case surveillance and forest data in a near-elimination setting in northeast Thailand

Author:

Walshe Rebecca1,Pongsoipetch Kulchada1,Mukem Suwanna1,Kamsri Tanong2,Singkham Navarat3,Sudathip Prayuth4,Kitchakarn Suravadee4,Maude Rapeephan Rattanawongnara5,Maude Richard James1

Affiliation:

1. Mahidol Oxford Tropical Medicine Research Unit, Faculty of Tropical Medicine, Mahidol University

2. Phibun Mangsahan Hospital, Ubon Ratchathani Province

3. Buntharik hospital, Ubon Ratchathani Province

4. Division of Vector Borne Diseases, Department of Disease Control

5. Faculty of Medicine Ramathibodi Hospital, Mahidol University

Abstract

Abstract

Background Thailand aims to eliminate malaria by 2024, and as such is now planning for future prevention of re-establishment. Understanding the receptivity of local areas to malaria allows the appropriate targeting of interventions. Current approaches to assessing receptivity involve collecting entomological data. Forest coverage is known to be associated with malaria risk, as an environment conducive to both vector breeding and high-risk human behaviours. Methods Geolocated, anonymised, individual-level surveillance data from 2011 to 2021 from the Thai Division of Vector-Borne Disease (DVBD) was used to calculate incidence and estimated Rc at village level. Forest cover was calculated using raster maps of tree crown cover density and year of forest loss from the publicly available Hansen dataset. Incidence and forest cover were compared graphically and using spearman’s rho. The current foci classification system was applied to data to the last 5 years (2017–2021) and forest cover for 2021 compared between the classifications. A simple risk score was developed to identify villages with high receptivity. Results There was a non-linear decrease in annual cases by 96.6% (1,061 to 36) across the two provinces from 2011 to 2021. Indigenous Annual Parasite Index (API) and approximated Rc were higher in villages in highly forested subdistricts, and with higher forest cover within 5km. Forest cover was also higher in malaria foci which consistently reported malaria cases each year than those which did not. An Rc > 1 was only reported in villages in subdistricts with > 25% forest cover. When applying a simple risk score using forest cover and recent case history, the classifications were comparable to those of the risk stratification system currently used by the DVBD. Conclusions There was a positive association between forest coverage around a village and indigenous malaria cases. Most local transmission was observed in the heavily forested subdistricts on the international borders with Laos and Cambodia, which are where the most receptive villages are located. These areas are at greater risk of importation of malaria due to population mobility and forest-going activities. Combining forest cover and recent case surveillance data with measures of vulnerability may be useful for prediction of malaria recurrence risk.

Publisher

Springer Science and Business Media LLC

Reference36 articles.

1. Guide to Malaria Elimination for Thailand [Internet]. [cited 2023 Jul 6]. Available from: https://malaria.ddc.moph.go.th/downloadfiles/Guide%20to%20Malaria%20Elimination%20for%20Thailand%20LAO_EN.pdf.

2. Environmental factors linked to reporting of active malaria foci in Thailand;Prempree P;Trop Med Infect Dis,2023

3. A framework for malaria elimination [Internet]. [cited 2023 Jul 26]. Available from: https://www.who.int/publications-detail-redirect/9789241511988.

4. Receptivity to malaria: meaning and measurement;Yukich JO;Malar J,2022

5. WHO malaria terminology. 2021 update. 2021 [cited 2023 Jul 6]; Available from: https://apps.who.int/iris/bitstream/handle/10665/349442/9789240038400-eng.pdf?sequence=1&isAllowed=y

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