Generalized Protein Pocket Generation with Prior-Informed Flow Matching
Designing ligand-binding proteins, such as enzymes and biosensors, is essential in bioengineering and protein biology. One critical step in this process involves designing protein pockets, the protein interface binding with the ligand. Current approaches to pocket generation often suffer from time-i...
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Zusammenfassung: | Designing ligand-binding proteins, such as enzymes and biosensors, is
essential in bioengineering and protein biology. One critical step in this
process involves designing protein pockets, the protein interface binding with
the ligand. Current approaches to pocket generation often suffer from
time-intensive physical computations or template-based methods, as well as
compromised generation quality due to the overlooking of domain knowledge. To
tackle these challenges, we propose PocketFlow, a generative model that
incorporates protein-ligand interaction priors based on flow matching. During
training, PocketFlow learns to model key types of protein-ligand interactions,
such as hydrogen bonds. In the sampling, PocketFlow leverages multi-granularity
guidance (overall binding affinity and interaction geometry constraints) to
facilitate generating high-affinity and valid pockets. Extensive experiments
show that PocketFlow outperforms baselines on multiple benchmarks, e.g.,
achieving an average improvement of 1.29 in Vina Score and 0.05 in scRMSD.
Moreover, modeling interactions make PocketFlow a generalized generative model
across multiple ligand modalities, including small molecules, peptides, and
RNA. |
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DOI: | 10.48550/arxiv.2409.19520 |