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arxiv: 2405.18768 · v2 · pith:OQHO5L5F · submitted 2024-05-29 · q-bio.BM · cs.LG

RNAFlow: RNA Structure & Sequence Design via Inverse Folding-Based Flow Matching

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classification q-bio.BM cs.LG
keywords designstructureinversemodelfoldingnetworkrnaflowconformational
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The growing significance of RNA engineering in diverse biological applications has spurred interest in developing AI methods for structure-based RNA design. While diffusion models have excelled in protein design, adapting them for RNA presents new challenges due to RNA's conformational flexibility and the computational cost of fine-tuning large structure prediction models. To this end, we propose RNAFlow, a flow matching model for protein-conditioned RNA sequence-structure design. Its denoising network integrates an RNA inverse folding model and a pre-trained RosettaFold2NA network for generation of RNA sequences and structures. The integration of inverse folding in the structure denoising process allows us to simplify training by fixing the structure prediction network. We further enhance the inverse folding model by conditioning it on inferred conformational ensembles to model dynamic RNA conformations. Evaluation on protein-conditioned RNA structure and sequence generation tasks demonstrates RNAFlow's advantage over existing RNA design methods.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. GoForth: Language Models for RNA Design under Structure, Sequence, and Coding Constraints

    q-bio.QM 2026-05 unverdicted novelty 7.0

    GoForth is a forward-trained encoder-decoder RNA language model that generates sequences under mixed constraints on fold, sequence, and coding by separating sequence prior, forward folding sampler, and reward oracle.

  2. Multimodal Alignment and Preference Optimization for Zero-Shot Conditional RNA Generation

    q-bio.BM 2026-05 unverdicted novelty 4.0

    Moirain models use multimodal SFT and DPO to generate novel RNA sequences with superior protein binding affinities in a zero-shot conditional setting.