Modelling heterogeneity in malaria transmission using large sparse spatio-temporal entomological data

被引:18
|
作者
Rumisha, Susan Fred [1 ,2 ,3 ]
Smith, Thomas [1 ,2 ]
Abdulla, Salim [4 ]
Masanja, Honorath [4 ]
Vounatsou, Penelope [1 ,2 ]
机构
[1] Swiss Trop & Publ Hlth Inst, Dept Epidemiol & Publ Hlth, CH-4002 Basel, Switzerland
[2] Univ Basel, Dept Biozentrum, Basel, Switzerland
[3] Natl Inst Med Res, Dept Dis Surveillance & Geog Informat Syst, Dar Es Salaam, Tanzania
[4] Ifakara Hlth Inst, Dar Es Salaam, Tanzania
基金
瑞士国家科学基金会;
关键词
approximate spatial process; malaria transmission; seasonality; MCMC; INDEPTH-MTIMBA; INFLATED POISSON REGRESSION; INOCULATION RATES; ANOPHELES-FUNESTUS; MOSQUITO DENSITY; AREA; SOUTHERN; GAMBIAE; VECTOR; RISK; PREVALENCE;
D O I
10.3402/gha.v7.22682
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Malaria transmission is measured using entomological inoculation rate (EIR), number of infective mosquito bites/person/unit time. Understanding heterogeneity of malaria transmission has been difficult due to a lack of appropriate data. A comprehensive entomological database compiled by the Malaria Transmission Intensity and Mortality Burden across Africa (MTIMBA) project (2001-2004) at several sites is the most suitable dataset for studying malaria transmission mortality relations. The data are sparse and large, with small-scale spatial-temporal variation. Objective: This work demonstrates a rigorous approach for analysing large and highly variable entomological data for the study of malaria transmission heterogeneity, measured by EIR, within the Rufiji Demographic Surveillance System (DSS), MTIMBA project site in Tanzania. Design: Bayesian geostatistical binomial and negative binomial models with zero inflation were fitted for sporozoite rates (SRs) and mosquito density, respectively. The spatial process was approximated from a subset of locations. The models were adjusted for environmental effects, seasonality and temporal correlations and assessed based on their predictive ability. EIR was calculated using model-based predictions of SR and density. Results: Malaria transmission was mostly influenced by rain and temperature, which significantly reduces the probability of observing zero mosquitoes. High transmission was observed at the onset of heavy rains. Transmission intensity reduced significantly during Year 2 and 3, contrary to the Year 1, pronouncing high seasonality and spatial variability. The southern part of the DSS showed high transmission throughout the years. A spatial shift of transmission intensity was observed where an increase in households with very low transmission intensity and significant reduction of locations with high transmission were observed over time. Over 68 and 85% of the locations selected for validation for SR and density, respectively, were correctly predicted within 95% credible interval indicating good performance of the models. Conclusion: Methodology introduced here has the potential for efficient assessment of the contribution of malaria transmission in mortality and monitoring performance of control and intervention strategies.
引用
收藏
页码:1 / 13
页数:13
相关论文
共 50 条
  • [21] Do hotspots fuel malaria transmission: a village-scale spatio-temporal analysis of a 2-year cohort study in The Gambia
    Stresman, Gillian H.
    Mwesigwa, Julia
    Achan, Jane
    Giorgi, Emanuele
    Worwui, Archibald
    Jawara, Musa
    Di Tanna, Gian Luca
    Bousema, Teun
    Van Geertruyden, Jean-Pierre
    Drakeley, Chris
    D'Alessandro, Umberto
    BMC MEDICINE, 2018, 16
  • [22] Spatio-temporal associations between deforestation and malaria incidence in Lao PDR
    Rerolle, Francois
    Dantzer, Emily
    Lover, Andrew A.
    Marshall, John M.
    Hongvanthong, Bouasy
    Sturrock, Hugh J. W.
    Bennett, Adam
    ELIFE, 2021, 10
  • [23] An integrated, spatio-temporal modelling framework for analysing biological invasions
    Mang, Thomas
    Essl, Franz
    Moser, Dietmar
    Kleinbauer, Ingrid
    Dullinger, Stefan
    DIVERSITY AND DISTRIBUTIONS, 2018, 24 (05) : 652 - 665
  • [24] Fine scale analysis of malaria incidence in under-5: hierarchical Bayesian spatio-temporal modelling of routinely collected malaria data between 2012-2018 in Cameroon
    Danwang, Celestin
    Khalil, Elie
    Achu, Dorothy
    Ateba, Marcelin
    Abomabo, Moise
    Souopgui, Jacob
    De Keukeleire, Mathilde
    Robert, Annie
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [25] Spatio-temporal dynamics of malaria in Rwanda between 2012 and 2022: a demography-specific analysis
    Rubuga, Felix K.
    Moraga, Paula
    Ahmed, Ayman
    Siddig, Emmanuel
    Remera, Eric
    Moirano, Giovenale
    Cisse, Gueladio
    Utzinger, Jurg
    INFECTIOUS DISEASES OF POVERTY, 2024, 13 (01)
  • [26] Improving national level spatial mapping of malaria through alternative spatial and spatio-temporal models
    Toh, Kok Ben
    Bliznyuk, Nikolay
    Valle, Denis
    SPATIAL AND SPATIO-TEMPORAL EPIDEMIOLOGY, 2021, 36
  • [27] Improving national level spatial mapping of malaria through alternative spatial and spatio-temporal models
    Toh, Kok Ben
    Bliznyuk, Nikolay
    Valle, Denis
    SPATIAL AND SPATIO-TEMPORAL EPIDEMIOLOGY, 2021, 36
  • [28] Explore Spatio-Temporal Learning of Large Sample Hydrology Using Graph Neural Networks
    Sun, Alexander Y.
    Jiang, Peishi
    Mudunuru, Maruti K.
    Chen, Xingyuan
    WATER RESOURCES RESEARCH, 2021, 57 (12)
  • [29] Systematic modelling of the development of laminar projection origins in the cerebral cortex: Interactions of spatio-temporal patterns of neurogenesis and cellular heterogeneity
    Beul, Sarah F.
    Hilgetag, Claus C.
    PLOS COMPUTATIONAL BIOLOGY, 2020, 16 (10)
  • [30] Process-Based Atmosphere-Hydrology-Malaria Modeling: Performance for Spatio-Temporal Malaria Transmission Dynamics in Sub-Saharan Africa
    Dieng, Mame Diarra Bousso
    Tompkins, Adrian M.
    Arnault, Joel
    Sie, Ali
    Fersch, Benjamin
    Laux, Patrick
    Schwarz, Maximilian
    Zabre, Pascal
    Munga, Stephen
    Khagayi, Sammy
    Diouf, Ibrahima
    Kunstmann, Harald
    WATER RESOURCES RESEARCH, 2024, 60 (06)