Ligandability refers to the ability to find small-molecule
leads against a target. A protein might be ligandable but not druggable if, for
example, potent inhibitors of the target do not affect a disease state. But
knowing in advance whether a target is ligandable can be useful, both to decide
whether to embark on a campaign and to plan the resources it will likely
require. Fragment screens by NMR have been shown to be good predictors of
ligandability, but not everyone has access to this technology. Computational
methods (such as FTMap) are also useful, but require a structure of the target.
In a recent paper in J. Med. Chem.,
Stefan Geschwindner and colleagues at AstraZeneca describe high-throughput
thermal scanning (HTTS) for assessing ligandability.
Thermal scanning (alternately called, as the researchers
note, thermal shift, differential scanning fluorimetry (DSF), or thermofluor)
relies on the preferential binding of a fluorescent dye to protein that is
heat-denatured. Since ligands generally stabilize a protein against
denaturation, an increase in melting temperature (Tm) is taken as an indication
of binding. The assays can be plate-based and thus very fast.
The researchers chose 16 diverse targets (mostly enzymes)
and screened their 763-ligandability fragment set (described here) at 1 mM by
HTTS. Hits were defined as compounds that increased thermal stability at least 3-fold above the
standard deviation of controls. Targets were then categorized as follows:
Low ligandability: hit rate < 1.5%
Medium ligandability: hit rate between 1.5 and 4.5%
High ligandability: hit rate > 4.5%
Nine targets ranked low, and all of these failed high
throughput screening (HTS), while 5 out of the 7 targets ranked medium or high
by HTTS yielded useful HTS hits. Of course, failure in an HTS does not preclude
target advancement by other means – including FBLD. Ultimately all but three
targets (including all of those ranked medium or high and 6 of 9 ranked low)
went on to enter hit-to-lead optimization programs.
Encouragingly, HTTS and NMR agreed perfectly for low and
high ligandability targets, but NMR assigned three targets as medium where HTTS
assigned them as low. The researchers thus set out to increase the sensitivity
of HTTS.
It turns out that entropically-driven binders tend to cause
greater thermal shifts than enthalpically driven binders. The observation that
most fragments bind largely enthalpically, and with low affinity too, makes
them particularly challenging to detect. To try to shift the balance, the
researchers repeated the HTTS assay for three of the low-scoring targets in D2O
instead of H2O, which enhances entropic interactions at the expense
of enthalpic interactions. Indeed, all three targets showed enhanced hit rates,
and two moved from low to medium ligandability.
Another way to improve sensitivity of a thermal shift assay
is to add urea, which destabilizes proteins by lowering the unfolding enthalpy.
Adding non-denaturing amounts of urea (0.8 to 2.4 M concentration) to the three
low-scoring targets above did indeed increase the hit rate for two of them.
One interesting tidbit is the observation that particularly
stable targets, with unfolding temperatures >70 °C, tend to produce lower
hit rates in HTTS than less stable targets. This could account for the very
different experiences people have had with the technique.
When analyzing HTS data it is common practice to determine the cut-off for hits by taking the sample mean + 3*SD, instead of mean of the negative controls (DMSO)as was done here. So I believe the hit rates are a bit exagerated.
ReplyDeleteAlso it would have been interesting to know the molecular weights of the targets, since larger proteins are more difficult to stabilize than smaller ones, and hence this will affect hit rates.
Good in theory. Since it is easy to implement, people use it as a tool to screen fragments just in case it might find some hits, but NOT reliable.... This technique should be the last to use if ones can not afford to other biophysical means e.g. NMR, SPR, Affinity Mass Spectroscopy etc.
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