PL-PatchSurfer2: Improved Local Surface Matching-Based
Virtual Screening Method That Is Tolerant to Target and Ligand Structure
Variation
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Abstract
Virtual
screening has become an indispensable procedure in drug
discovery. Virtual screening methods can be classified into two categories:
ligand-based and structure-based. While the former have advantages,
including being quick to compute, in general they are relatively weak
at discovering novel active compounds because they use known actives
as references. On the other hand, structure-based methods have higher
potential to find novel compounds because they directly predict the
binding affinity of a ligand in a target binding pocket, albeit with
substantially lower speed than ligand-based methods. Here we report
a novel structure-based virtual screening method, PL-PatchSurfer2.
In PL-PatchSurfer2, protein and ligand surfaces are represented by
a set of overlapping local patches, each of which is represented by
three-dimensional Zernike descriptors (3DZDs). By means of 3DZDs,
the shapes and physicochemical complementarities of local surface
regions of a pocket surface and a ligand molecule can be concisely
and effectively computed. Compared with the previous version of the
program, the performance of PL-PatchSurfer2 is substantially improved
by the addition of two more features, atom-based hydrophobicity and
hydrogen-bond acceptors and donors. Benchmark studies showed that
PL-PatchSurfer2 performed better than or comparable to popular existing
methods. Particularly, PL-PatchSurfer2 significantly outperformed
existing methods when apo-form or template-based protein models were
used for queries. The computational time of PL-PatchSurfer2 is about
20 times shorter than those of conventional structure-based methods.
The PL-PatchSurfer2 program is available at http://www.kiharalab.org/plps2/