Abstract

BackgroundThe severity of an influenza infection is influenced by both host and viral characteristics. This study aims to assess the relevance of viral genomic data for the prediction of severe influenza A(H3N2) infections among patients hospitalized for severe acute respiratory infection (SARI), in view of risk assessment and patient management.Methods160 A(H3N2) influenza positive samples from the 2016–2017 season originating from the Belgian SARI surveillance were selected for whole genome sequencing. Predictor variables for severity were selected using a penalized elastic net logistic regression model from a combined host and genomic dataset, including patient information and nucleotide mutations identified in the viral genome. The goodness-of-fit of the model combining host and genomic data was compared using a likelihood-ratio test with the model including host data only. Internal validation of model discrimination was conducted by calculating the optimism-adjusted area under the Receiver Operating Characteristic curve (AUC) for both models.ResultsThe model including viral mutations in addition to the host characteristics had an improved fit ({X}^{2}=12.03, df = 3, p = 0.007). The optimism-adjusted AUC increased from 0.671 to 0.732.ConclusionsAdding genomic data (selected season-specific mutations in the viral genome) to the model containing host characteristics improved the prediction of severe influenza infection among hospitalized SARI patients, thereby offering the potential for translation into a prospective strategy to perform early season risk assessment or to guide individual patient management.

Highlights

  • Influenza is ranked as the infectious disease with the highest impact on population health in the Burden of Communicable Diseases in Europe in the period 2009– 2013 [1]

  • Van Goethem et al BMC Infect Dis (2021) 21:785 recommended to implement a hospital-based surveillance of Severe Acute Respiratory Infections (SARI) to monitor the severity of influenza infection and the virulence of circulating strains, upon which several countries have strengthened their surveillance of severe influenza infections in order to rapidly detect new variants and assess their population impact [5,6,7,8,9,10]

  • Severity was significantly associated with the presence of a chronic cardiovascular condition (p = 0.047), a chronic respiratory condition (p = 0.02), renal insufficiency (p = 0.02), and immunocompromised condition (p = 0.02)

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Summary

Introduction

Influenza is ranked as the infectious disease with the highest impact on population health in the Burden of Communicable Diseases in Europe in the period 2009– 2013 [1]. Severity is one of the critical parameters for influenza monitoring. Van Goethem et al BMC Infect Dis (2021) 21:785 recommended to implement a hospital-based surveillance of Severe Acute Respiratory Infections (SARI) to monitor the severity of influenza infection and the virulence of circulating strains, upon which several countries have strengthened their surveillance of severe influenza infections in order to rapidly detect new variants and assess their population impact [5,6,7,8,9,10]. This study aims to assess the relevance of viral genomic data for the prediction of severe influenza A(H3N2) infections among patients hospitalized for severe acute respiratory infection (SARI), in view of risk assessment and patient management

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