| Literature DB >> 32036785 |
Michele Nguyen1, Rosalind E Howes2, Tim C D Lucas2, Katherine E Battle2, Ewan Cameron2, Harry S Gibson2, Jennifer Rozier2, Suzanne Keddie2, Emma Collins2, Rohan Arambepola2, Su Yun Kang2, Chantal Hendriks2, Anita Nandi2, Susan F Rumisha2, Samir Bhatt3, Sedera A Mioramalala4, Mauricette Andriamananjara Nambinisoa4, Fanjasoa Rakotomanana5, Peter W Gething2, Daniel J Weiss2.
Abstract
BACKGROUND: Many malaria-endemic areas experience seasonal fluctuations in case incidence as Anopheles mosquito and Plasmodium parasite life cycles respond to changing environmental conditions. Identifying location-specific seasonality characteristics is useful for planning interventions. While most existing maps of malaria seasonality use fixed thresholds of rainfall, temperature, and/or vegetation indices to identify suitable transmission months, we construct a statistical modelling framework for characterising the seasonal patterns derived directly from monthly health facility data.Entities:
Keywords: Geostatistical model; Health facility data; Madagascar; Malaria; Seasonality
Mesh:
Year: 2020 PMID: 32036785 PMCID: PMC7008536 DOI: 10.1186/s12916-019-1486-3
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1a Number of positive rapid diagnostic tests (RDTs) reported from an example Malagasy health centre recorded monthly between 2013 and 2016. b The corresponding monthly proportions computed by dividing the monthly medians by the annual total
Parameter posterior summaries of the refitted model for Madagascar
| Description | Term | Posterior median | 95% credible interval |
|---|---|---|---|
| Intercept | Intercept | (− 2.740,− 2.570) | |
| Precipitation | CHIRPS_r | (0.029,0.090) | |
| CHIRPS_r_lag1 | 0.019 | (− 0.012,0.050) | |
| CHIRPS_r_lag2 | (0.021,0.082) | ||
| CHIRPS_r_lag3 | (0.022,0.084) | ||
| Temperature suitability | TSI_Pv_r | 0.013 | (− 0.022,0.047) |
| TSI_Pv_r_lag2 | (0.039,0.109) | ||
| Vegetation cover | EVI_r_lag3 | 0.006 | (− 0.021,0.032) |
| Tasselled cap brightness | TCB_r | − 0.019 | (− 0.050,0.012) |
| TCB_r_lag3 | 0.011 | (− 0.020,0.043) | |
| Observation variance | 0.326 | (0.318,0.333) | |
| Field variance | 0.245 | (0.221,0.268) | |
| Matérn scaling parameter | 3.163 | (2.834,3.522) | |
| Autoregressive parameter | (0.718,0.777) |
The posterior medians of the statistically significant parameters under a 5% significance level are italicized. The Matérn smoothness parameter ν was fixed to 1
Fig. 2Map of seasonality types based on quartiles of the estimated seasonality index as well as representative examples of the estimated monthly parasite incidence for the categories. Here, ‘1’ and ‘2’ refer to the unimodal and bimodal intra-annual distributions, respectively, while ‘Low’, ‘Medium’, and ‘High’ refer to the different degrees of seasonality
Fig. 3Probability of locations having one seasonal peak in malaria cases. This is calculated by the proportion of posterior samples which indicate that the locations have unimodal intra-annual case distributions rather than bimodal distributions
Fig. 4a Median peak months of the first transmission season in Madagascar. b The associated deviations
Fig. 5a Median start months of the first transmission season in Madagascar. b The associated deviations
Fig. 6Examples of the model fit and rescaled von Mises density fit for three health facilities. The black line denotes the empirical monthly proportions of cases, the black dotted lines represent the median proportions and 95% credible intervals, and the red line the fitted rescaled von Mises density. Note that no cases were reported for Health Centres B and C, leading to a uniform empirical intra-annual distribution. a Health Centre A. b Health Centre B. c Health Centre C