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Inhibitors for the hepatitis C virus RNA polymerase explored by SAR with advanced machine learning methods.


ABSTRACT: Hepatitis C virus (HCV) is a global health challenge, affecting approximately 200 million people worldwide. In this study we developed SAR models with advanced machine learning classifiers Random Forest and k Nearest Neighbor Simulated Annealing for 679 small molecules with measured inhibition activity for NS5B genotype 1b. The activity was expressed as a binary value (active/inactive), where actives were considered molecules with IC50 ?0.95 ?M. We applied our SAR models to various drug-like databases and identified novel chemical scaffolds for NS5B inhibitors. Subsequent in vitro antiviral assays suggested a new activity for an existing prodrug, Candesartan cilexetil, which is currently used to treat hypertension and heart failure but has not been previously tested for anti-HCV activity. We also identified NS5B inhibitors with two novel non-nucleoside chemical motifs.

SUBMITTER: Weidlich IE 

PROVIDER: S-EPMC3653294 | biostudies-literature | 2013 Jun

REPOSITORIES: biostudies-literature

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Inhibitors for the hepatitis C virus RNA polymerase explored by SAR with advanced machine learning methods.

Weidlich Iwona E IE   Filippov Igor V IV   Brown Jodian J   Kaushik-Basu Neerja N   Krishnan Ramalingam R   Nicklaus Marc C MC   Thorpe Ian F IF  

Bioorganic & medicinal chemistry 20130329 11


Hepatitis C virus (HCV) is a global health challenge, affecting approximately 200 million people worldwide. In this study we developed SAR models with advanced machine learning classifiers Random Forest and k Nearest Neighbor Simulated Annealing for 679 small molecules with measured inhibition activity for NS5B genotype 1b. The activity was expressed as a binary value (active/inactive), where actives were considered molecules with IC50 ≤0.95 μM. We applied our SAR models to various drug-like dat  ...[more]

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