Advancements in Ligand-Based Virtual Screening through the Synergistic Integration of Graph Neural Networks and Expert-Crafted Descriptors.

bioRxiv

Department of Chemistry, Center for Structural Biology, Vanderbilt University, 2201 West End Ave Nashville, Tennessee 37235, USA, Institute of Drug Discovery, Leipzig University Medical School, Härtelstraße 16-18, Leipzig, 04103, Germany, Center for Scalable Data Analytics and Artificial Intelligence (ScaDS.AI), Humboldtstraße 25, Leipzig, 04105, Germany.

Published: July 2024

AI Article Synopsis

  • Integrating traditional chemical descriptors with Graph Neural Networks (GNNs) enhances ligand-based virtual screening, with varying levels of effectiveness among different GNN models like GCN, SchNet, and SphereNet.
  • While GCN and SchNet show significant improvements from the integration, SphereNet has only marginal gains, yet all models reach similar performance levels when descriptors are used.
  • Expert-crafted descriptors often outperform GNN-descriptor combinations in scaffold-split scenarios, highlighting the need for GNNs to be better designed for real-world drug discovery contexts.

Article Abstract

The fusion of traditional chemical descriptors with Graph Neural Networks (GNNs) offers a compelling strategy for enhancing ligand-based virtual screening methodologies. A comprehensive evaluation revealed that the benefits derived from this integrative strategy vary significantly among different GNNs. Specifically, while GCN and SchNet demonstrate pronounced improvements by incorporating descriptors, SphereNet exhibits only marginal enhancement. Intriguingly, despite SphereNet's modest gain, all three models-GCN, SchNet, and SphereNet-achieve comparable performance levels when leveraging this combination strategy. This observation underscores a pivotal insight: sophisticated GNN architectures may be substituted with simpler counterparts without sacrificing efficacy, provided that they are augmented with descriptors. Furthermore, our analysis reveals a set of expert-crafted descriptors' robustness in scaffold-split scenarios, frequently outperforming the combined GNN-descriptor models. Given the critical importance of scaffold splitting in accurately mimicking real-world drug discovery contexts, this finding accentuates an imperative for GNN researchers to innovate models that can adeptly navigate and predict within such frameworks. Our work not only validates the potential of integrating descriptors with GNNs in advancing ligand-based virtual screening but also illuminates pathways for future enhancements in model development and application. Our implementation can be found at https://github.com/meilerlab/gnn-descriptor.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10153143PMC
http://dx.doi.org/10.1101/2023.04.17.537185DOI Listing

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