Structure-based maximal affinity model predicts small-molecule druggability

AC Cheng, RG Coleman, KT Smyth, Q Cao… - Nature …, 2007 - nature.com
AC Cheng, RG Coleman, KT Smyth, Q Cao, P Soulard, DR Caffrey, AC Salzberg, ES Huang
Nature biotechnology, 2007nature.com
Lead generation is a major hurdle in small-molecule drug discovery, with an estimated 60%
of projects failing from lack of lead matter or difficulty in optimizing leads for drug-like
properties. It would be valuable to identify these less-druggable targets before incurring
substantial expenditure and effort. Here we show that a model-based approach using basic
biophysical principles yields good prediction of druggability based solely on the crystal
structure of the target binding site. We quantitatively estimate the maximal affinity achievable …
Abstract
Lead generation is a major hurdle in small-molecule drug discovery, with an estimated 60% of projects failing from lack of lead matter or difficulty in optimizing leads for drug-like properties. It would be valuable to identify these less-druggable targets before incurring substantial expenditure and effort. Here we show that a model-based approach using basic biophysical principles yields good prediction of druggability based solely on the crystal structure of the target binding site. We quantitatively estimate the maximal affinity achievable by a drug-like molecule, and we show that these calculated values correlate with drug discovery outcomes. We experimentally test two predictions using high-throughput screening of a diverse compound collection. The collective results highlight the utility of our approach as well as strategies for tackling difficult targets.
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