Benchmarking and Consensus Ranking of Inverse Folding Models for Protein-Ligand Interface Design
Contributo in Atti di convegno
Data di Pubblicazione:
2025
Citazione:
Benchmarking and Consensus Ranking of Inverse Folding Models for Protein-Ligand Interface Design / Y. Wei, U. Guerrini, I. Eberini - In: BCB Companion '25: Companion / [a cura di] M. Xinghua Shi, X. Qian. - [s.l] : ACM, 2025. - ISBN 979-8-4007-2222-6. - pp. 1-7 (( 16. International Conference on Bioinformatics, Computational Biology and Health Informatics Philadelphia 2025 [10.1145/3768322.3769031].
Abstract:
Machine learning has advanced the progress of protein design, also
enabling more efficient and accurate modeling of protein-ligand
interfaces. Due to the complexity of biological systems, selecting
optimal candidates from the heterogeneous outputs of generative
protein design tools remains a persistent challenge. In this work, we
introduce a consensus ranking framework that integrates five state-
of-the-art inverse folding models — ProteinMPNN, LigandMPNN,
ESM-IF1, CARBonAra, and ProRefiner — applied to 25,716 curated
protein-ligand complexes from the BioLip database. Our approach
frames design selection as a supervised learning-to-rank problem
and leverages a LightGBM-based LambdaMART model to fuse het-
erogeneous scoring features into a unified ranking. We pointed
out that consensus-ranked sequences outperform individual model
selections in stability, binding affinity, and structural fidelity, as
evaluated using Schrödinger and MOE free energy difference cal-
culations. In a case study on three enzymes (NOV1, CYP153A, and
LCD), our method consistently improves design quality, suggesting
that consensus ranking can significantly enhance the success rate
and efficiency of AI-driven protein engineering.
Tipologia IRIS:
03 - Contributo in volume
Keywords:
Machine Learning; Protein Design
Elenco autori:
Y. Wei, U. Guerrini, I. Eberini
Link alla scheda completa:
Titolo del libro:
BCB Companion '25: Companion