Quantitative differences between intra-host HCV populations from persons with recently established and persistent infections

Author:

Icer Baykal Pelin B1ORCID,Lara James2,Khudyakov Yury2,Zelikovsky Alex1,Skums Pavel1

Affiliation:

1. Department of Computer Science, Georgia State University, 25 Park Place, Atlanta, GA 30302, USA

2. Division of Viral Hepatitis, Centers for Disease Control and Prevention, 1600 Clifton Rd., Atlanta, GA 30329, USA

Abstract

Abstract Detection of incident hepatitis C virus (HCV) infections is crucial for identification of outbreaks and development of public health interventions. However, there is no single diagnostic assay for distinguishing recent and persistent HCV infections. HCV exists in each infected host as a heterogeneous population of genomic variants, whose evolutionary dynamics remain incompletely understood. Genetic analysis of such viral populations can be applied to the detection of incident HCV infections and used to understand intra-host viral evolution. We studied intra-host HCV populations sampled using next-generation sequencing from 98 recently and 256 persistently infected individuals. Genetic structure of the populations was evaluated using 245,878 viral sequences from these individuals and a set of selected features measuring their diversity, topological structure, complexity, strength of selection, epistasis, evolutionary dynamics, and physico-chemical properties. Distributions of the viral population features differ significantly between recent and persistent infections. A general increase in viral genetic diversity from recent to persistent infections is frequently accompanied by decline in genomic complexity and increase in structuredness of the HCV population, likely reflecting a high level of intra-host adaptation at later stages of infection. Using these findings, we developed a machine learning classifier for the infection staging, which yielded a detection accuracy of 95.22 per cent, thus providing a higher accuracy than other genomic-based models. The detection of a strong association between several HCV genetic factors and stages of infection suggests that intra-host HCV population develops in a complex but regular and predictable manner in the course of infection. The proposed models may serve as a foundation of cyber-molecular assays for staging infection, which could potentially complement and/or substitute standard laboratory assays.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Virology,Microbiology

Reference59 articles.

1. Distinguishing Acute from Chronic Hepatitis C Virus (HCV) Infection Based on Antibody Reactivities to Specific HCV Structural and Nonstructural Proteins;Araujo;Journal of Clinical Microbiology,2011

2. Differences in Variability of Hypervariable Region 1 of Hepatitis C Virus (HCV) between Acute and Chronic Stages of HCV Infection;Astrakhantseva;In Silico Biology,2011

3. Genome-Wide Hepatitis C Virus Amino Acid Covariance Networks Can Predict Response to Antiviral Therapy in Humans;Aurora;The Journal of Clinical Investigation,2009

4. Global Prevalence and Genotype Distribution of Hepatitis C Virus Infection in 2015: A Modelling Study;Blach;The Lancet Gastroenterology & Hepatology,2017

5. Adaptive Immune Responses in Acute and Chronic Hepatitis C Virus Infection;Bowen;Nature,2005

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