1. Academic Validation
  2. Identification of new inhibitors of protein kinase R guided by statistical modeling

Identification of new inhibitors of protein kinase R guided by statistical modeling

  • Bioorg Med Chem Lett. 2011 Jul 1;21(13):4108-14. doi: 10.1016/j.bmcl.2011.04.149.
Ruslana Bryk 1 Kangyun Wu Brian C Raimundo Paul E Boardman Ping Chao Graeme L Conn Eric Anderson James L Cole Nigel P Duffy Carl Nathan John H Griffin
Affiliations

Affiliation

  • 1 Department of Microbiology and Immunology, Weill Cornell Medical College, New York, NY 10065, USA.
Abstract

We report the identification of new, structurally diverse inhibitors of interferon-induced, double-stranded RNA-activated protein kinase (PKR) using a combined experimental and computational approach. A training set with which to build a predictive statistical model was generated by screening a set of 80 known Ser/Thr kinase inhibitors against recombinant human PKR, resulting in the identification of 28 compounds from 18 chemical classes with <0.1 μM ≤ IC(50) ≤ 20 μM. The model built with this data was used to screen a database of 5 million commercially available compounds in silico to identify candidate inhibitors. Testing of 128 structurally diverse candidates resulted in the confirmation of 20 new inhibitors from 11 chemical classes with 2 μM ≤ IC(50) ≤ 20 μM. Testing of 34 analogs in the newly identified pyrimidin-2-amine active series provided initial SAR. One newly identified inhibitor, N-[2-(1H-indol-3-yl)ethyl]-4-(2-methyl-1H-indol-3-yl)pyrimidin-2-amine (compound 51), inhibited intracellular PKR activation in a dose-dependent manner in primary mouse macrophages without evident toxicity at effective concentrations.

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