2 research outputs found
Leveraging Data Fusion Strategies in Multireceptor Lead Optimization MM/GBSA End-Point Methods
Accurate
and efficient affinity calculations are critical to enhancing
the contribution of in silico modeling during the lead optimization
phase of a drug discovery campaign. Here, we present a large-scale
study of the efficacy of data fusion strategies to leverage results
from end-point MM/GBSA calculations in multiple receptors to identify
potent inhibitors among an ensemble of congeneric ligands. The retrospective
analysis of 13 congeneric ligand series curated from publicly available
data across seven biological targets demonstrates that in 90% of the
individual receptor structures MM/GBSA scores successfully identify
subsets of inhibitors that are more potent than a random selection,
and data fusion strategies that combine MM/GBSA scores from each of
the receptors significantly increase the robustness of the predictions.
Among nine different data fusion metrics based on consensus scores
or receptor rankings, the SumZScore (i.e., converting MM/GBSA scores
into standardized Z-Scores within a receptor and computing the sum
of the Z-Scores for a given ligand across the ensemble of receptors)
is found to be a robust and physically meaningful metric for combining
results across multiple receptors. Perhaps most surprisingly, even
with relatively low to modest overall correlations between SumZScore
and experimental binding affinities, SumZScore tends to reliably prioritize
subsets of inhibitors that are at least as potent as those that are
prioritized from a “best” single receptor identified
from known compounds within the congeneric series