Skip to yearly menu bar Skip to main content


Spotlight
in
Workshop: AI for Accelerated Materials Design (AI4Mat)

MolPAL: Software for Sample Efficient High-Throughput Virtual Screening

David Graff · Connor Coley

Keywords: [ Bayesian optimization ] [ Active Learning ] [ Drug Discovery ] [ computational chemistry ] [ docking ]


Abstract:

Structure-based virtual screening (SBVS) of ultra-large chemical libraries has led to the discovery of novel inhibitors for challenging protein targets. However, screening campaigns of these magnitudes are expensive and thus impractical to employ in standard practice. As the broad goal of most SBVS workflows is the identification of the most potent compounds in the library, the task can be viewed as an optimization problem. Previous work has demonstrated the ability for Bayesian optimization to improve sample efficiency in SBVS using the MolPAL software. In this tutorial, we provide a broad algorithmic overview of the MolPAL software and a guide for its utilization in a prospective virtual screening task.

Chat is not available.