| Literature DB >> 26496983 |
Paula Moraga1, Jorge Cano2, Rebecca F Baggaley3, John O Gyapong4, Sammy M Njenga5, Birgit Nikolay6, Emmanuel Davies7, Maria P Rebollo8, Rachel L Pullan9, Moses J Bockarie10, T Déirdre Hollingsworth11,12, Manoj Gambhir13, Simon J Brooker14.
Abstract
BACKGROUND: Lymphatic filariasis (LF) is one of the neglected tropical diseases targeted for global elimination. The ability to interrupt transmission is, partly, influenced by the underlying intensity of transmission and its geographical variation. This information can also help guide the design of targeted surveillance activities. The present study uses a combination of geostatistical and mathematical modelling to predict the prevalence and transmission intensity of LF prior to the implementation of large-scale control in sub-Saharan Africa.Entities:
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Year: 2015 PMID: 26496983 PMCID: PMC4620019 DOI: 10.1186/s13071-015-1166-x
Source DB: PubMed Journal: Parasit Vectors ISSN: 1756-3305 Impact factor: 3.876
Fig. 1Selection of data for inclusion into the modelling, based on sample size, diagnostic method. NA: not available; EWH: eye worm history (presumptive of loiasis)
Fig. 2The spatial distribution of data on the prevalence of microfilaraemia (mf) (n = 1217 surveys) and antigenaemia, based on immuno-chromatographic card test (ICT) data (n = 3197 surveys). Countries defined as non-endemic by the World Organization are shown. Also shown are the spatial limits of transmission as previously defined by Cano et al. [12]
Fig. 3Predicted occurrence of the major potential vectors of lymphatic filariasis: a Anopheles, b Culex, c Mansonia, and d overlap of species
Summary of data on the prevalence of microfilaraemia (mf) and prevalence of antigenaemia, based on immuno-chromatographic card test (ICT) by region and time period. Median and inter-quartile range (IQR) are presented
| Mf prevalence | ICT prevalence | |||||||
|---|---|---|---|---|---|---|---|---|
| 1950–1969 | 1970–1989 | 1990–onwards | 1990–onwards | |||||
| Region | N | Median (IQR) | N | Median (IQR) | N | Median (IQR) | N | Median (IQR) |
| Eastern | 46 | 14.1 (2.6–34.6) | 109 | 15.8 (4.6–30.2) | 137 | 11.5 (2.8–21.6) | 2002 | 0 (0–1) |
| Middle | 21 | 0 (0–2.7) | 38 | 0 (0–0) | 31 | 1 (0–1.2) | 564 | 1 (0–5.5) |
| Northern | 3 | 22 (0–26.8) | 1 | 10 | - | - | - | - |
| Western | 304 | 6.8 (1.2–21.7) | 190 | 7.3 (2–15.9) | 265 | 6.3 (1.2–15.1) | 629 | 6 (0–26) |
| Total | 374 | 7.1 (1.1–22) | 338 | 8.1 (0.8–18.9) | 433 | 6.5 (1.2–17) | 3195 | 0 (0–4.8) |
Fig. 4Predicted geographical distribution of the prevalence of a microfilaraemia and b antigenaemia, based on a Bayesian geostatistical modelling approach for the period 1990–onwards and before the implementation of large-scale interventions. Point estimates (based on posterior median) together with lower (2.5 %) and upper (97.5 %) percentiles are presented
Validation statistics for spatio-temporal model for mf prevalence and spatial model for ICT-based prevalence
| Model | Correlation | Mean Error | Mean Absolute Error | Coverage percentage of 95 % CI |
|---|---|---|---|---|
| mf | 0.69 | 1.89 % | 4.64 % | 70.93 % |
| ICT | 0.86 | 0.06 % | 6.51 % | 52.83 %a, 77.49 %b |
For the ICT data, coverage percentages are presented for the actual intervalsa and for intervals where lower limits turned out lower than 0.01 % those were replaced by 0b
Fig. 5The modelled relationship between prevalence of microfilaraemia (mf) and the reproduction number (R0). Also shown is the distribution of observed mf prevalence (1990–onwards) included in the mapping analysis (n = 434 surveys)
Fig. 6Geographical distribution of lymphatic filariasis basic reproductive number (a) and uncertainty on R0 estimates (b) prior to the large-scale implementation of interventions. Uncertainty was calculated as the range of the 95 % confidence interval in predicted R0 estimates for each pixel and rescaling to a 0–1 scale