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A Quantitative High-Resolution Genetic Profile Rapidly Identifies Sequence Determinants of Hepatitis C Viral Fitness and Drug Sensitivity

Authors :
Qi, Hangfei
Wilke, Claus O1
Qi, Hangfei
Olson, C Anders
Wu, Nicholas C
Ke, Ruian
Loverdo, Claude
Chu, Virginia
Truong, Shawna
Remenyi, Roland
Chen, Zugen
Du, Yushen
Su, Sheng-Yao
Al-Mawsawi, Laith Q
Wu, Ting-Ting
Chen, Shu-Hua
Lin, Chung-Yen
Zhong, Weidong
Lloyd-Smith, James O
Sun, Ren
Qi, Hangfei
Wilke, Claus O1
Qi, Hangfei
Olson, C Anders
Wu, Nicholas C
Ke, Ruian
Loverdo, Claude
Chu, Virginia
Truong, Shawna
Remenyi, Roland
Chen, Zugen
Du, Yushen
Su, Sheng-Yao
Al-Mawsawi, Laith Q
Wu, Ting-Ting
Chen, Shu-Hua
Lin, Chung-Yen
Zhong, Weidong
Lloyd-Smith, James O
Sun, Ren
Source :
PLOS Pathogens; vol 10, iss 4, e1004064; 1553-7366
Publication Year :
2014

Abstract

Widely used chemical genetic screens have greatly facilitated the identification of many antiviral agents. However, the regions of interaction and inhibitory mechanisms of many therapeutic candidates have yet to be elucidated. Previous chemical screens identified Daclatasvir (BMS-790052) as a potent nonstructural protein 5A (NS5A) inhibitor for Hepatitis C virus (HCV) infection with an unclear inhibitory mechanism. Here we have developed a quantitative high-resolution genetic (qHRG) approach to systematically map the drug-protein interactions between Daclatasvir and NS5A and profile genetic barriers to Daclatasvir resistance. We implemented saturation mutagenesis in combination with next-generation sequencing technology to systematically quantify the effect of every possible amino acid substitution in the drug-targeted region (domain IA of NS5A) on replication fitness and sensitivity to Daclatasvir. This enabled determination of the residues governing drug-protein interactions. The relative fitness and drug sensitivity profiles also provide a comprehensive reference of the genetic barriers for all possible single amino acid changes during viral evolution, which we utilized to predict clinical outcomes using mathematical models. We envision that this high-resolution profiling methodology will be useful for next-generation drug development to select drugs with higher fitness costs to resistance, and also for informing the rational use of drugs based on viral variant spectra from patients.

Details

Database :
OAIster
Journal :
PLOS Pathogens; vol 10, iss 4, e1004064; 1553-7366
Notes :
application/pdf, PLOS Pathogens vol 10, iss 4, e1004064 1553-7366
Publication Type :
Electronic Resource
Accession number :
edsoai.on1449588767
Document Type :
Electronic Resource