Sialic
acid sugars on mammalian cells regulate numerous biological
processes, while aberrant expression of sialic acid is associated
with diseases such as cancer and pathogenic infection. Inhibition
of the sialic acid biosynthesis may therefore hold considerable therapeutic
potential. To effectively decrease the sialic acid expression, we
synthesized C-5-modified 3-fluoro sialic acid sialyltransferase inhibitors.
We found that C-5 carbamates significantly enhanced and prolonged
the inhibitory activity in multiple mouse and human cell lines. As
an underlying mechanism, we have identified that carbamate-modified
3-fluoro sialic acid inhibitors are more efficiently metabolized to
their active cytidine monophosphate analogues, reaching higher effective
inhibitor concentrations inside cells.
The use of virtual compound libraries in computer-assisted drug discovery has gained in popularity and has already lead to numerous successes. Here, we examine key static and dynamic virtual library concepts that have been developed over the past decade. To facilitate the search for new drugs in the vastness of chemical space, there are still several hurdles to overcome, including the current difficulties in screening and parsing efficiency and the need for more reliable vendors and accurate synthesis prediction tools. These challenges should be tackled by both the developers of virtual libraries and by their users, in order for the exploration of chemical space to live up to its potential.
Fragment-based drug discovery is intimately linked to fragment extension approaches that can be accelerated using software for de novo design. Although computers allow for the facile generation of millions of suggestions, synthetic feasibility is however often neglected. In this study we computationally extended, chemically synthesized, and experimentally assayed new ligands for the β-adrenergic receptor (βAR) by growing fragment-sized ligands. In order to address the synthetic tractability issue, our in silico workflow aims at derivatized products based on robust organic reactions. The study started from the predicted binding modes of five fragments. We suggested a total of eight diverse extensions that were easily synthesized, and further assays showed that four products had an improved affinity (up to 40-fold) compared to their respective initial fragment. The described workflow, which we call "growing via merging" and for which the key tools are available online, can improve early fragment-based drug discovery projects, making it a useful creative tool for medicinal chemists during structure-activity relationship (SAR) studies.
In biological systems,
proteins can be attracted to curved or stretched
regions of lipid bilayers by sensing hydrophobic defects in the lipid
packing on the membrane surface. Here, we present an efficient end-state
free energy calculation method to quantify such sensing in molecular
dynamics simulations. We illustrate that lipid packing defect sensing
can be defined as the difference in mechanical work required to stretch
a membrane with and without a peptide bound to the surface. We also
demonstrate that a peptide’s ability to concurrently induce
excess leaflet area (tension) and elastic softening—a property
we call the “characteristic area of sensing” (CHAOS)—and
lipid packing sensing behavior are in fact two sides of the same coin.
In essence, defect sensing displays a peptide’s propensity
to generate tension. The here-proposed mechanical pathway is equally
accurate yet, computationally, about 40 times less costly than the
commonly used alchemical pathway (thermodynamic integration), allowing
for more feasible free energy calculations in atomistic simulations.
This enabled us to directly compare the Martini 2 and 3 coarse-grained
and the CHARMM36 atomistic force fields in terms of relative binding
free energies for six representative peptides including the curvature
sensor ALPS and two antiviral amphipathic helices (AH). We observed
that Martini 3 qualitatively reproduces experimental trends while
producing substantially lower (relative) binding free energies and
shallower membrane insertion depths compared to atomistic simulations.
In contrast, Martini 2 tends to overestimate (relative) binding free
energies. Finally, we offer a glimpse into how our end-state-based
free energy method can enable the inverse design of optimal lipid
packing defect sensing peptides when used in conjunction with our
recently developed evolutionary molecular dynamics (Evo-MD) method.
We argue that these optimized defect sensors—aside from their
biomedical and biophysical relevance—can provide valuable targets
for the development of lipid force fields.
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