4.7 Article

Computational Discovery and Experimental Confirmation of TLR9 Receptor Antagonist Leads

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JOURNAL OF CHEMICAL INFORMATION AND MODELING
卷 56, 期 9, 页码 1835-1846

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AMER CHEMICAL SOC
DOI: 10.1021/acs.jcim.6b00070

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  1. Fraunhofer Institute IGB Stuttgart
  2. Hebrew University of Jerusalem
  3. planning and Budgeting Committee of the Council for Higher Education at the Israel Ministry of Education

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Toll-like receptors (TLR) ate receptors of innate immunity that recognize pathogen associated molecular patterns. They play a critical role in many pathological states, in acute and chronic inflammatory processes. TLR9 is a promising target for drug discovery, since it has been implicated in several pathologies, including defense against viral infections and psoriasis. Immune-modulators are promising molecules for therapeutic intervention in these indications. TLR9 is located in the endosome and activated by dsDNA with CpG motives encountered in microbial DNA. Here we report on a combined approach to discover new TLR9 antagonists by computational chemistry and cell based assays. We used our in-house iterative stochastic elimination (ISE) algorithm to create models that distinguish between TLR9 antagonists (actives) and other molecules (inactives), based on molecular physicochemical properties. Subsequent screening and scoring of a data set of 1.8 million commercially available molecules led to the purchasing, of top scored molecules, which were tested in anew cell based system based on human pattern recognition receptors (PRRs) stably expressed in NIH3T3 fibroblasts. As described previously, this cell line shows a very low endogenous PRR-activity and contains a reporter gene which is selectively activated by the integrated human PRR enabling rapid screening of potential ligands. IC50, values of each of these top scored molecules were determined. Out of 60 molecules tested, 56 showed antagonistic activity. We discovered 21 new highly potential antagonists with IC50 values lower than 10 mu M, with 5 of them having IC50 values under 1 mu M,

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