2023 AIChE Annual Meeting
(361d) Pareto Optimization to Accelerate Multi-Property Virtual Screening
We combine Pareto optimization and Bayesian optimization methods to efficiently search a library of millions of molecules and identify those that optimally balance multiple objectives. Using graph neural networks as the surrogate model architecture, we apply this methodology to identify (1) dual inhibitors which minimize docking scores to two targets and (2) selective small molecule inhibitors which minimize docking scores to an on-target and maximize those to an off-target. We compare optimization performance between Pareto and scalarization acquisition functions and find that multi-objective acquisition functions outperform scalarization. This improvement is greater for the selective inhibitor task due to stronger competition between the objectives. Finally, we find that encouraging molecular and functional diversity during acquisition does not improve the hypervolume of acquired molecules but does increase the diversity of the acquired set.
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