| Literature DB >> 29162099 |
Victor A Alegana1,2, Jim Wright3, Claudio Bosco3,4, Emelda A Okiro5, Peter M Atkinson3,6,7, Robert W Snow5,8, Andrew J Tatem3,4, Abdisalan M Noor5,8,9.
Abstract
BACKGROUND: One pillar to monitoring progress towards the Sustainable Development Goals is the investment in high quality data to strengthen the scientific basis for decision-making. At present, nationally-representative surveys are the main source of data for establishing a scientific evidence base, monitoring, and evaluation of health metrics. However, little is known about the optimal precisions of various population-level health and development indicators that remains unquantified in nationally-representative household surveys. Here, a retrospective analysis of the precision of prevalence from these surveys was conducted.Entities:
Keywords: Indicators; Intra-class correlation; Malaria; Precision
Mesh:
Year: 2017 PMID: 29162099 PMCID: PMC5697056 DOI: 10.1186/s12936-017-2127-y
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Statistics relating to the prevalence of malaria parasitaemia from the nationally representative household surveys (the demographic health survey (DHS), the malaria indicator survey (MIS) and the HIV/AIDS and malaria indicator survey)
| Country | Survey, year, and months | Number of survey clusters (number missing geographic coordinates) | Number of children under five | Simple spatial random sample (mean proportion) | Bias | Simulated proportion. Mean; median; (95% CrI) | Intra-class correlation coefficient (ICC). Mean; median; (95% CrI) | Design Effect. Mean ( | Effective sample size (ESS). Mean; median; (95% CrI) | Percentage increase or decrease (95% CrI) in ESS compared to actual survey sample |
|---|---|---|---|---|---|---|---|---|---|---|
| Kenya | MIS 2007 June to July | 200 (1) | 3423 | 0.07 | − 0.01 | 0.09; 0.09 (0.08 to 0.1) | 0; 0 (0 to 0) | 1.06; 1.06 (1.03 to 1.1) | 6805; 6814 (6575 to 6983) | 99.07 (92.08 to 104) |
| Kenya | MIS 2010 July to August | 240 (8) | 5104 | 0.14 | 0.00 | 0.14; 0.14 (0.13 to 0.14) | 0; 0 (0 to 0) | 1.06; 1.06 (1.04 to 1.09) | 6788; 6797 (6584 to 6953) | 33.17 (29 to 36.23) |
| Kenya | MIS 2015 July to August | 246 (0) | 4063 | 0.09 | − 0.01 | 0.10; 0.10 (0.09 to 0.11) | 0; 0 (0 to 0) | 1.02; 1.02 (1.01 to 1.04) | 7211; 7218 (7099 to 7288) | 77.65 (74.72 to 79.37) |
| Liberia | MIS 2008 to 2009 December to March | 150 (0) | 4611 | 0.36 | 0.00 | 0.36; 0.36 (0.34 to 0.38) | 0.02; 0.02 (0.01 to 0.03) | 1.54; 1.54 (1.38 to 1.73) | 2930; 2930 (2597 to 3254) | − 36.46 (− 43.68 to − 29.43) |
| Liberia | MIS 2011 September to December | 150 (0) | 3692 | 0.52 | 0.03 | 0.49; 0.49 (0.47 to 0.51) | 0.03; 0.03 (0.02 to 0.04) | 1.83; 1.82 (1.58 to 2.12) | 2477; 2476 (2123 to 2843) | − 32.94 (− 42.5 to − 23) |
| Madagascar | MIS 2011 March to May | 268 (1) | 7138 | 0.06 | 0.00 | 0.06; 0.06 (0.05 to 0.07) | 0; 0 (0 to 0) | 1.03; 1.03 (1.02 to 1.04) | 8349; 8354 (8234 to 8437) | 17.04 (15.35 to 18.2) |
| Madagascar | MIS 2013 May to June | 274 (0) | 6288 | 0.07 | − 0.01 | 0.08; 0.08 (0.07 to 0.09) | 0; 0 (0 to 0) | 1.03; 1.03 (1.02 to 1.04) | 8538; 8544 (8414 to 8630) | 35.88 (33.81 to 37.25) |
| Malawi | MIS 2012 March to April | 140 (0) | 2436 | 0.39 | 0.01 | 0.39; 0.39 (0.37 to 0.4) | 0.01; 0.01 (0.01 to 0.02) | 1.35; 1.34 (1.23 to 1.49) | 2604; 2609 (2352 to 2857) | 7.1 (− 3.45 to 17.28) |
| Malawi | MIS 2014 May to June | 140 (0) | 2249 | 0.32 | 0.03 | 0.29; 0.29 (0.27 to 0.31) | 0.01; 0.01 (0.01 to 0.01) | 1.24; 1.24 (1.15 to 1.35) | 2827; 2831 (2592 to 3042) | 25.88 (15.25 to 35.26) |
| Nigeria | MIS 2010 October to December | 239 (0) | 4950 | 0.47 | 0.00 | 0.47; 0.47 (0.46 to 0.49) | 0.03;0.03 (0.02 to 0.03) | 1.64; 1.64 (1.49 to 1.82) | 3793; 3797 (3411 to 4182) | − 23.29 (− 31.09 to − 15.52) |
| Nigeria | MIS 2015 October to November | 326 (4) | 7016 | 0.44 | − 0.03 | 0.47; 0.47 (0.46 to 0.49) | 0.03; 0.03 (0.02 to 0.03) | 1.62; 1.61 (1.47 to 1.79) | 5059; 5063 (4541 to 5549) | − 27.84 (− 35.28 to − 20.91) |
| Rwanda | DHS 2010 to 2011 September to March | 492 (0) | 8963 | 0.02 | 0.00 | 0.02; 0.02 (0.02 to 0.03) | 0; 0 (0 to 0) | 1.01; 1.01 (1 to 1.01) | 12720; 12730 (12,660 to 12,760) | 42.03 (41.25 to 42.36) |
| Rwanda | DHS 2014 to 2015 November to April | 492 (0) | 7931 | 0.08 | − 0.01 | 0.08; 0.08 (0.07 to 0.09) | 0; 0 (0 to 0) | 1.05; 1.05 (1.03 to 1.07) | 12,210; 12,220 (11,950 to 12,410) | 54.08 (50.67 to 56.47) |
| Senegal | MIS 2008 to 2009 November to February | 320 (2) | 16,156 | 0.12 | − 0.02 | 0.14; 0.14 (0.13 to 0.15) | 0; 0 (0 to 0.01) | 1.12; 1.12 (1.08 to 1.17) | 8590; 8599 (8231 to 8895) | − 46.78 (− 49.05 to − 44.94) |
| Senegal | DHS 2010 to 2011 October to May | 391 (6) | 13,334 | 0.03 | − 0.01 | 0.04; 0.04 (0.04 to 0.05) | 0; 0 (0 to 0) | 1.01; 1.01 (1 to 1.01) | 8161; 8163 (8120 to 8188) | − 38.78 (− 39.1 to − 38.59) |
| Senegal | DHS 2012 to 2013 September to June | 200 (0) | 7413 | 0.04 | 0.00 | 0.04; 0.04 (0.04 to 0.05) | 0; 0 (0 to 0) | 1.01; 1.01 (1 to 1.01) | 8169; 8171 (8144 to 8189) | 10.23 (9.86 to 10.47) |
| Tanzania | HIV/AIDS and MIS 2011 to 2012 December to May | 583 (10) | 9319 | 0.10 | 0.00 | 0.10; 0.10 (0.09 to 0.11) | 0; 0 (0 to 0) | 1.04; 1.04 (1.03 to 1.05) | 10,130; 10,140 (10,010 to 10,230) | 8.81 (7.41 to 9.78) |
| Tanzania | DHS 2015 to 2016 August to February | 608 (0) | 10,901 | 0.12 | 0.01 | 0.11; 0.11 (0.1 to 0.11) | 0; 0 (0 to 0) | 1.03; 1.03 (1.02 to 1.04) | 13,000; 13,000 (12,880 to 13,110) | 19.26 (18.15 to 20.26) |
| Uganda | MIS 2009 to 2010 November to February | 170 (0) | 4202 | 0.53 | 0.02 | 0.51; 0.51 (0.5 to 0.53) | 0.02; 0.02 (0.02 to 0.03) | 1.57; 1.57 (1.41 to 1.78) | 3035; 3038 (2680 to 3366) | − 27.7 (− 36.22 to − 19.9) |
| Uganda | MIS 2014 to 2015 December to February | 210 (2) | 5210 | 0.33 | − 0.02 | 0.35; 0.35 (0.33 to 0.36) | 0.01; 0.01 (0.01 to 0.02) | 1.33; 1.33 (1.24 to 1.44) | 4425; 4424 (4074 to 4743) | − 15.09 (− 21.8 to − 8.96) |
Data for prevalence of fever and use of insecticide treated bed nets from the same surveys is shown in the Additional file 2: Table S1 and Additional file 3: Table S2, respectively. In total, there were 134,399 children aged 0–4 years in 5839 clusters. The spatial distribution of these clusters in shown in Fig. 1a. Data includes surveys where the three indicators were simultaneously collected at the household level and in countries with more than two surveys. The mean, median and 95% credible intervals of the marginal posterior distribution from the Bayesian analysis are presented for measures of effectiveness: intra-class correlation coefficient (ICC), the estimated design effect (hdeff) and the effective sample size (ESS). The absolute bias is the difference in the means between the simple spatial random sample and the Bayesian model estimate. ICC intra-class correlation coefficient, ESS effective sample size; CrI Bayesian credible interval
Fig. 1a The spatial distribution of clusters (n = 5839) in the 20 surveys in nine countries. b A scatterplot of the intra-class correlation coefficient and the modelled estimate of prevalence for the three child morbidity indicators [fever prevalence, ITN use and malaria prevalence based on rapid diagnostic testing (RDTs)]. Each data point in the scatter represents a survey. ρ refers to the variability between clusters and shows that surveys with low prevalence exhibit small between-cluster variance. c A scatterplot showing the decrease in ρ as Effective Sample Size increases with a Bayesian 95% credible interval
Fig. 2Ranking of country-level estimated effective sample size (ESS) based on RDT positivity (prevalence of malaria) from Bayesian modelling. The countries (y-axis) has been ordered based on RDT positivity from low to high prevalence (Liberia 2011)