Growing fragments is probably the
most common approach to improving affinity, and it is immeasurably faster to do
this virtually than experimentally. But as anyone who has ever tried can
attest, this is often easier said than done. In a new open-access J. Comput.
Aided Mol. Des. paper, Matthias Rarey and collaborators at Universität
Hamburg, Servier, and BioSolveIT describe a free tool to help.
The application is called FastGrow,
and it can be accessed through this web server or the SeeSAR 3D software package.
It relies on the “Ray Volume Matrix (RVM) shape descriptor,” which simplifies
chemical fragments and protein binding pockets into three-dimensional shapes.
This allows extremely rapid assessments of whether a given fragment can fit
into a binding pocket. A scoring function called JAMDA assesses interactions
beyond simple shapes, such as hydrogen bonds and hydrophobic contacts, and also
allows fragments to shift slightly to optimize complementarity with the protein.
One nice feature of FastGrow is
that users can input fragments into multiple binding sites with different amino
acid conformations, allowing for protein flexibility. You can also specify an
important interaction, such as a critical hydrogen-bond, that you prefer to
maintain.
To validate the approach, the
researchers turned to the database PDBbind and looked for examples in which two
ligands with identical cores but different substituents bound to the same
protein. They chopped off the substituents from the first ligand and used the
resulting fragment as a starting point to try to grow the second ligand.
Running 425 of these took just 3 and a half hours and successfully recapitulated
the binding mode 71% of the time. This was higher than the popular program DOCK
(version 6.9), which seemed to be a pleasant surprise. They attribute the
difference to a higher clash tolerance for FastGrow in the initial stages.
For additional validation, the
researchers turned to real-world examples of fragment-growing for the kinases DYRK1A/B,
which we highlighted last year (here and here). Here too FastGrow outperformed DOCK
and was also about five-fold faster when using JAMDA (and 600-times faster without
JAMDA, though at some cost in performance).
FastGrow looks to be a valuable
tool, and indeed the researchers note that it is currently in use at Servier. There
is a lot more detail in the paper and supplementary materials, including the
full code for the FastGrow web server and all the underlying data. It would be
interesting to compare its performance to the V-SYNTHES approach we highlighted
earlier this year.
If you have experience using FastGrow, please
leave a comment!
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