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Identification and validation of novel PERK inhibitors.


ABSTRACT: PERK, as one of the principle unfolded protein response signal transducers, is believed to be associated with many human diseases, such as cancer and type-II diabetes. There has been increasing effort to discover potent PERK inhibitors due to its potential therapeutic interest. In this study, a computer-based virtual screening approach is employed to discover novel PERK inhibitors, followed by experimental validation. Using a focused library, we show that a consensus approach, combining pharmacophore modeling and docking, can be more cost-effective than using either approach alone. It is also demonstrated that the conformational flexibility near the active site is an important consideration in structure-based docking and can be addressed by using molecular dynamics. The consensus approach has further been applied to screen the ZINC lead-like database, resulting in the identification of 10 active compounds, two of which show IC50 values that are less than 10 ?M in a dose-response assay.

SUBMITTER: Wang Q 

PROVIDER: S-EPMC4038368 | biostudies-literature | 2014 May

REPOSITORIES: biostudies-literature

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Identification and validation of novel PERK inhibitors.

Wang Qiantao Q   Park Jihyun J   Devkota Ashwini K AK   Cho Eun Jeong EJ   Dalby Kevin N KN   Ren Pengyu P  

Journal of chemical information and modeling 20140505 5


PERK, as one of the principle unfolded protein response signal transducers, is believed to be associated with many human diseases, such as cancer and type-II diabetes. There has been increasing effort to discover potent PERK inhibitors due to its potential therapeutic interest. In this study, a computer-based virtual screening approach is employed to discover novel PERK inhibitors, followed by experimental validation. Using a focused library, we show that a consensus approach, combining pharmaco  ...[more]

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