Improved prediction of ligand-protein binding affinities by meta-modeling
Ho-Joon Lee, Prashant S. Emani, and Mark B. Gerstein

TL;DR
This paper presents a meta-modeling framework that integrates various computational approaches to improve ligand-protein binding affinity predictions, demonstrating enhanced accuracy and generalization over individual models.
Contribution
The study introduces a novel ensemble framework combining empirical docking and deep learning models, achieving improved prediction accuracy and scalability.
Findings
Meta-models outperform individual base models.
Best meta-models match state-of-the-art deep learning tools.
Models show improved generalization in large-scale benchmarks.
Abstract
The accurate screening of candidate drug ligands against target proteins through computational approaches is of prime interest to drug development efforts. Such virtual screening depends in part on methods to predict the binding affinity between ligands and proteins. Many computational models for binding affinity prediction have been developed, but with varying results across targets. Given that ensembling or meta-modeling approaches have shown great promise in reducing model-specific biases, we develop a framework to integrate published force-field-based empirical docking and sequence-based deep learning models. In building this framework, we evaluate many combinations of individual base models, training databases, and several meta-modeling approaches. We show that many of our meta-models significantly improve affinity predictions over base models. Our best meta-models achieve…
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Taxonomy
TopicsComputational Drug Discovery Methods · Protein Structure and Dynamics · Protein purification and stability
MethodsBalanced Selection
