posted on 2017-05-16, 00:00authored byWeilin Zhang, Jianfeng Pei, Luhua Lai
Targeted
covalent compounds or drugs have good potency as they
can bind to a specific target for a long time with low doses. Most
currently known covalent ligands were discovered by chance or by modifying
existing noncovalent compounds to make them covalently attached to
a nearby reactive residue. Computational methods for novel covalent
ligand binding prediction are highly demanded. We performed statistical
analysis on protein complexes with covalent ligands attached to cysteine
residues. We found that covalent modified cysteine residues have unique
features compared to those not attached to covalent ligands, including
lower pKa, higher exposure, and higher
ligand binding affinity. SVM models were built to predict cysteine
residues suitable for covalent ligand design with prediction accuracy
of 0.73. Given a protein structure, our method can be used to automatically
detect druggable cysteine residues for covalent ligand design, which
is especially useful for identifying novel binding sites for covalent
allosteric ligand design.