| Literature DB >> 30445962 |
Aung Minn Thway1, Chawarat Rotejanaprasert1, Jetsumon Sattabongkot2, Siam Lawawirojwong3, Aung Thi4, Tin Maung Hlaing5, Thiha Myint Soe6, Jaranit Kaewkungwal7.
Abstract
BACKGROUND: One challenge in moving towards malaria elimination is cross-border malaria infection. The implemented measures to prevent and control malaria re-introduction across the demarcation line between two countries require intensive analyses and interpretation of data from both sides, particularly in border areas, to make correct and timely decisions. Reliable maps of projected malaria distribution can help to direct intervention strategies. In this study, a Bayesian spatiotemporal analytic model was proposed for analysing and generating aggregated malaria risk maps based on the exceedance probability of malaria infection in the township-district adjacent to the border between Myanmar and Thailand. Data of individual malaria cases in Hlaingbwe Township and Tha-Song-Yang District during 2016 were extracted from routine malaria surveillance databases. Bayesian zero-inflated Poisson model was developed to identify spatial and temporal distributions and associations between malaria infections and risk factors. Maps of the descriptive statistics and posterior distribution of predicted malaria infections were also developed.Entities:
Keywords: Border areas; Malaria; Myanmar; Spatiotemporal analysis; Thailand
Mesh:
Year: 2018 PMID: 30445962 PMCID: PMC6240260 DOI: 10.1186/s12936-018-2574-0
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Map of the study area
Fig. 2Malaria cases and incidences in Tha-Song-Yang and Hlaingbwe, 2016
Malaria cases classified by gender and age groups in Tha-Song-Yang and Hlaingbwe, 2016
| Gender/age | Tha-Song-Yang | Hlaingbwe Township | ||||
|---|---|---|---|---|---|---|
| < 15 years | ≥ 15 years | Total | < 15 | ≥ 15 | Total | |
| Male | 141 (41.23%) | 201 (58.77%) | 342 | 56 (34.36%) | 107 (65.64%) | 163 |
| Female | 118 (53.88%) | 101 (46.12%) | 219 | 56 (54.37%) | 47 (45.63%) | 103 |
| Total | 259 | 302 | 561 | 112 | 154 | 266 |
Fig. 3Malaria cases in Tha-Song-Yang and Hlaingbwe in 2016, classified by different demographic characteristics
Fig. 4Total malaria cases and incidences in Tha-Song-Yang and Hlaingbwe regions during 2016. a Total malaria cases. b Incidence rate per 10,000 population
Fig. 5Exceedance probability of relative risk in Tha-Song-Yang and Hlaingbwe regions from January to April, 2016
Fig. 6Exceedance probability of relative risk in Tha-Song-Yang and Hlaingbwe regions from May to August, 2016
Fig. 7Exceedance probability of relative risk in Tha-Song-Yang and Hlaingbwe regions from September to December, 2016
Regression coefficients with 95% credible interval and deviance information criterion (DIC) from zero-inflated Poisson models for malaria cases in 2016
| Model/variables | Tha-Song-Yang model | Hlaingbwe model |
|---|---|---|
| Zero-inflated Poisson | ||
| Intercept | − 1.38 (− 1.90, − 0.84) | − 1.99 (− 2.65, − 1.37) |
| Age ( | 1.87 (1.31, 2.48) | 2.82 (2.03, 3.62) |
| Sex (male) | 2.27 (1.71, 2.86) | 2.87 (2.07, 3.68) |
| Age and sex | − 2.68 (− 3.50, − 1.88) | − 3.45 (− 4.58, − 2.35) |
| DIC | 935.51 | 477.58 |
| DICr | 939.53 | 479.22 |