Seasonal influence on respiratory tract infection severity including COVID‐19 quantified through Markov Chain modeling

Author:

van Wijk Rob C.1ORCID,Mockeliunas Laurynas1ORCID,Upton Caryn M.2,Peter Jonathan3,Diacon Andreas H.2,Simonsson Ulrika S. H.1ORCID

Affiliation:

1. Department of Pharmaceutical Biosciences Uppsala University Uppsala Sweden

2. TASK Cape Town South Africa

3. Department of Medicine, University of Cape Town Lung Institute and Division of Allergy and Clinical Immunology University of Cape Town Cape Town South Africa

Abstract

AbstractRespiratory tract infections (RTIs) are a burden to global health, but their characterization is complicated by the influence of seasonality on incidence and severity. The Re‐BCG‐CoV‐19 trial (NCT04379336) assessed BCG (re)vaccination for protection from coronavirus disease 2019 (COVID‐19) and recorded 958 RTIs in 574 individuals followed over 1 year. We characterized the probability of RTI occurrence and severity using a Markov model with health scores (HSs) for four states of symptom severity. Covariate analysis on the transition probability between HSs explored the influence of demographics, medical history, severe acute respiratory syndrome‐coronavirus 2 (SARS‐CoV‐2), or influenza vaccinations, which became available during the trial, SARS‐CoV‐2 serology, and epidemiology‐informed seasonal influence of infection pressure represented as regional COVID‐19 pandemic waves, as well as BCG (re)vaccination. The infection pressure reflecting the pandemic waves increased the risk of RTI symptom development, whereas the presence of SARS‐CoV‐2 antibodies protected against RTI symptom development and increased the probability of symptom relief. Higher probability of symptom relief was also found in participants with African ethnicity and with male biological gender. SARS‐CoV‐2 or influenza vaccination reduced the probability of transitioning from mild to healthy symptoms. Model diagnostics over calendar‐time indicated that COVID‐19 cases were under‐reported during the first wave by an estimated 2.76‐fold. This trial was performed during the initial phase of the COVID‐19 pandemic in South Africa and the results reflect that situation. Using this unique clinical dataset of prospectively studied RTIs over the course of 1 year, our Markov Chain model was able to capture risk factors for RTI development and severity, including epidemiology‐informed infection pressure.

Publisher

Wiley

Subject

Pharmacology (medical),Modeling and Simulation

Reference27 articles.

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