The likelihood of severe COVID-19 outcomes among PLHIV with various comorbidities: A comparative frequentist and Bayesian meta-analysis approach
Abstract
INTRODUCTION: The SARS-CoV-2 virus can currently pose a serious health threat and can lead to severe COVID-19 outcomes, especially for populations suffering from comorbidities. Currently, the data available on the risk for severe COVID-19 outcomes due to an HIV infection with or without comorbidities paint a heterogenous picture. In this meta-analysis, we summarized the likelihood for severe COVID-19 outcomes among people living with HIV (PLHIV) with or without comorbidities. METHODS: Following PRISMA guidelines, we utilized PubMed, Web of Science and medRxiv to search for studies describing COVID-19 outcomes in PLHIV with or without comorbidities up to 25 June 2021. Consequently, we conducted two meta-analyses, based on a classic frequentist and Bayesian perspective of higher quality studies. RESULTS AND DISCUSSION: We identified 2580 studies (search period: January 2020–25 June 2021, data extraction period: 1 January 2021–25 June 2021) and included nine in the meta-analysis. Based on the frequentist meta-analytical model, PLHIV with diabetes had a seven times higher risk of severe COVID-19 outcomes (odd ratio, OR = 6.69, 95% CI: 3.03–19.30), PLHIV with hypertension a four times higher risk (OR = 4.14, 95% CI: 2.12–8.17), PLHIV with cardiovascular disease an odds ratio of 4.75 (95% CI: 1.89–11.94), PLHIV with respiratory disease an odds ratio of 3.67 (95% CI: 1.79–7.54) and PLHIV with chronic kidney disease an OR of 9.02 (95% CI: 2.53–32.14) compared to PLHIV without comorbidities. Both meta-analytic models converged, thereby providing robust summative evidence. The Bayesian meta-analysis produced similar effects overall, with the exclusion of PLHIV with respiratory diseases who showed a non-significant higher risk to develop severe COVID-19 outcomes compared to PLHIV without comorbidities. CONCLUSIONS: Our meta-analyses show that people with HIV, PLHIV with coexisting diabetes, hypertension, cardiovascular disease, respiratory disease and chronic kidney disease are at a higher likelihood of developing severe COVID-19 outcomes. Bayesian analysis helped to estimate small sample biases and provided predictive likelihoods. Clinical practice should take these risks due to comorbidities into account and not only focus on the HIV status alone, vaccination priorities should be adjusted accordingly.
Authors
Wang H, Jonas KJ
Year
2021
Topics
- Epidemiology and Determinants of Health
- Epidemiology
- Population(s)
- General HIV+ population
- Co-infections
- Other
- Co-morbidities
- Cardiovascular
- Other