| Literature DB >> 35369874 |
Konstantinos Pateras1, Polychronis Kostoulas2.
Abstract
BACKGROUND: Tests have false positive or false negative results, which, if not properly accounted for, may provide misleading apparent prevalence estimates based on the observed rate of positive tests and not the true disease prevalence estimates. Methods to estimate the true prevalence of disease, adjusting for the sensitivity and the specificity of the diagnostic tests are available and can be applied, though, such procedures can be cumbersome to researchers with or without a solid statistical background. This manuscript introduces a web-based application that integrates statistical methods for Bayesian inference of true disease prevalence based on prior elicitation for the accuracy of the diagnostic tests. This tool allows practitioners to simultaneously analyse and visualize results while using interactive sliders and output prior/posterior plots. METHODS - IMPLEMENTATION: Three methods for prevalence prior elicitation and four core families of Bayesian methods have been combined and incorporated in this web tool. |tPRiors| user interface has been developed with R and Shiny and may be freely accessed on-line.Entities:
Keywords: Bayesian; JAGS; Pooled samples; Prevalence estimation; Prior elicitation; Shiny; Statistical modelling
Mesh:
Year: 2022 PMID: 35369874 PMCID: PMC8977049 DOI: 10.1186/s12874-022-01557-1
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Initial screen and menus of the |tPRiors| web-based application. This screen-shot showcases the application and it is not meant for direct reading. For a dynamic web-page one should visit the link https://publicandonehealth.shinyapps.io/tPRiors/
Fig. 2Box plots with estimates for each one of the nine studies presented in Table 2 - |tPRiors| output
True prevalence results (mean and quantile of the 95% credible interval (Q) of the toy example with 24% and 5% apparent prevalence, 500 sample size, 120/25 positive tests with consistent assumptions on sensitivity (80%) and specificity (90%). Speybroek et al. 2012 Model 1 assumes fixed values for Se and Sp, while Model 2 assumes Se∼Unif(0.7,0.9) and Sp∼Unif(0.85,0.95). For the |tPRiors| example, Se∼Beta(195.76,48.94) and Sp∼Beta(135.86,15.1), while for Setup A: π∼Beta(1,1) and Setup B: π∼Beta(1.3,1.3)
| Speybroek et al. 2012 | tPRiors | |||||||
|---|---|---|---|---|---|---|---|---|
| Model 1 | Model 2 | Setup A. | Setup B. | |||||
| Measure | 24% | 5% | 24% | 5% | 24% | 5% | 24% | 5% |
| Mean | 0.2015 | 0.0048 | 0.2008 | 0.0096 | 0.2004 | 0.0103 | 0.2026 | 0.0127 |
| 2.5% Q | 0.1493 | 0.0001 | 0.1133 | 0.0003 | 0.1266 | 0.0003 | 0.1203 | 0.0008 |
| 97.5% Q | 0.2577 | 0.0173 | 0.2927 | 0.0336 | 0.2705 | 0.0327 | 0.2764 | 0.0367 |
Studies included in the systematic review of Bacigalupo et al. 2018 alongside their apparent prevalence
| ID | Study | Country | Year(s) | Positive ( | N ( | App. Prev ( | 95% CIs |
|---|---|---|---|---|---|---|---|
| 1 | Ravaglia et al. | Italy | 1999 | 60 | 961 | 0.062 | (0.047,0.078) |
| 2 | Tognoni et al. | Italy | 2000 | 100 | 1662 | 0.060 | (0.049,0.072) |
| 3 | Gascon-Bayarri et al. | Spain | 2002 | 165 | 1754 | 0.094 | (0.080,0.108) |
| 4 | Fish et al. | UK | 2003 | 88 | 1754 | 0.053 | (0.042,0.064) |
| 5 | Bermejo-Pareja et al. | Spain | 1994-5, 1997-8 | 306 | 5278 | 0.058 | (0.052,0.064) |
| 6 | Mathillas et al. | Sweden | 2000-2, 2005-7 | 287 | 895 | 0.321 | (0.290,0.351) |
| 7 | Tola-Arribas et al. | Spain | 2009-10 | 184 | 2170 | 0.085 | (0.073,0.097) |
| 8 | Lucca et al. | Italy | 2009-10 | 894 | 2501 | 0.357 | (0.339,0.376) |
| 9 | Perquin et al. | Luxembourg | 2008 | 53 | 1377 | 0.038 | (0.028,0.049) |
Fig. 3Prior, posterior probability densities alongside the likelihood for Setup B with i. apparent prevalence: 24% or ii. apparent prevalence: 5% of the single population toy example - |tPRiors| output