Back to Search Start Over

Sequence-Augmented SE(3)-Flow Matching For Conditional Protein Backbone Generation

Authors :
Huguet, Guillaume
Vuckovic, James
Fatras, Kilian
Thibodeau-Laufer, Eric
Lemos, Pablo
Islam, Riashat
Liu, Cheng-Hao
Rector-Brooks, Jarrid
Akhound-Sadegh, Tara
Bronstein, Michael
Tong, Alexander
Bose, Avishek Joey
Publication Year :
2024

Abstract

Proteins are essential for almost all biological processes and derive their diverse functions from complex 3D structures, which are in turn determined by their amino acid sequences. In this paper, we exploit the rich biological inductive bias of amino acid sequences and introduce FoldFlow-2, a novel sequence-conditioned SE(3)-equivariant flow matching model for protein structure generation. FoldFlow-2 presents substantial new architectural features over the previous FoldFlow family of models including a protein large language model to encode sequence, a new multi-modal fusion trunk that combines structure and sequence representations, and a geometric transformer based decoder. To increase diversity and novelty of generated samples -- crucial for de-novo drug design -- we train FoldFlow-2 at scale on a new dataset that is an order of magnitude larger than PDB datasets of prior works, containing both known proteins in PDB and high-quality synthetic structures achieved through filtering. We further demonstrate the ability to align FoldFlow-2 to arbitrary rewards, e.g. increasing secondary structures diversity, by introducing a Reinforced Finetuning (ReFT) objective. We empirically observe that FoldFlow-2 outperforms previous state-of-the-art protein structure-based generative models, improving over RFDiffusion in terms of unconditional generation across all metrics including designability, diversity, and novelty across all protein lengths, as well as exhibiting generalization on the task of equilibrium conformation sampling. Finally, we demonstrate that a fine-tuned FoldFlow-2 makes progress on challenging conditional design tasks such as designing scaffolds for the VHH nanobody.<br />Comment: preprint

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.20313
Document Type :
Working Paper