Determining the likely place of HIV acquisition for migrants in Europe combining subject-specific information and biomarkers data

Author:

Pantazis Nikos1ORCID,Thomadakis Christos1ORCID,del Amo Julia2,Alvarez-del Arco Debora2,Burns Fiona M34,Fakoya Ibidun3,Touloumi Giota1

Affiliation:

1. Department of Hygiene, Epidemiology and Medical Statistics, Medical School, National and Kapodistrian University of Athens, Athens, Greece

2. National Centre of Epidemiology, Instituto de Salud Carlos III, Madrid, Spain

3. Research Department of Infection and Population Health, University College London, London, UK

4. Royal Free London NHS Foundation Trust, London, UK

Abstract

In most HIV-positive individuals, infection time is only known to lie between the time an individual started being at risk for HIV and diagnosis time. However, a more accurate estimate of infection time is very important in certain cases. For example, one of the objectives of the Advancing Migrant Access to Health Services in Europe (aMASE) study was to determine if HIV-positive migrants, diagnosed in Europe, were infected pre- or post-migration. We propose a method to derive subject-specific estimates of unknown infection times using information from HIV biomarkers’ measurements, demographic, clinical, and behavioral data. We assume that CD4 cell count (CD4) and HIV-RNA viral load trends after HIV infection follow a bivariate linear mixed model. Using post-diagnosis CD4 and viral load measurements and applying the Bayes’ rule, we derived the posterior distribution of the HIV infection time, whereas the prior distribution was informed by AIDS status at diagnosis and behavioral data. Parameters of the CD4–viral load and time-to-AIDS models were estimated using data from a large study of individuals with known HIV infection times (CASCADE). Simulations showed substantial predictive ability (e.g. 84% of the infections were correctly classified as pre- or post-migration). Application to the aMASE study ( n = 2009) showed that 47% of African migrants and 67% to 72% of migrants from other regions were most likely infected post-migration. Applying a Bayesian method based on bivariate modeling of CD4 and viral load, and subject-specific information, we found that the majority of HIV-positive migrants in aMASE were most likely infected after their migration to Europe.

Publisher

SAGE Publications

Subject

Health Information Management,Statistics and Probability,Epidemiology

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