Identification and Visualization of Kinase-Specific
Subpockets
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Posted on 2016-02-16 - 15:10
The identification
and design of selective compounds is important
for the reduction of unwanted side effects as well as for the development
of tool compounds for target validation studies. This is, in particular,
true for therapeutically important protein families that possess conserved
folds and have numerous members such as kinases. To support the design
of selective kinase inhibitors, we developed a novel approach that
allows identification of specificity determining subpockets between
closely related kinases solely based on their three-dimensional structures.
To account for the intrinsic flexibility of the proteins, multiple
X-ray structures of the target protein of interest as well as of unwanted
off-target(s) are taken into account. The binding pockets of these
protein structures are calculated and fused to a combined target and
off-target pocket, respectively. Subsequently, shape differences between
these two combined pockets are identified via fusion rules. The approach
provides a user-friendly visualization of target-specific areas in
a binding pocket which should be explored when designing selective
compounds. Furthermore, the approach can be easily combined with in
silico alanine mutation studies to identify selectivity determining
residues. The potential impact of the approach is demonstrated in
four retrospective experiments on closely related kinases, i.e., p38α
vs Erk2, PAK1 vs PAK4, ITK vs AurA, and BRAF vs VEGFR2. Overall, the
presented approach does not require any profiling data for training
purposes, provides an intuitive visualization of a large number of
protein structures at once, and could also be applied to other target
classes.