RNACG: A Universal RNA Sequence Conditional Generation model based on Flow-Matching
- URL: http://arxiv.org/abs/2407.19838v2
- Date: Sat, 08 Mar 2025 10:22:21 GMT
- Title: RNACG: A Universal RNA Sequence Conditional Generation model based on Flow-Matching
- Authors: Letian Gao, Zhi John Lu,
- Abstract summary: We propose RNACG (RNA Generator), a universal framework for RNA sequence design based on flow matching.<n>By unifying sequence generation under a single framework, RNACG enables the integration of multiple RNA design paradigms.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: RNA plays a pivotal role in diverse biological processes, ranging from gene regulation to catalysis. Recent advances in RNA design, such as RfamGen, Ribodiffusion and RDesign, have demonstrated promising results, with successful designs of functional sequences. However, RNA design remains challenging due to the inherent flexibility of RNA molecules and the scarcity of experimental data on tertiary and secondary structures compared to proteins. These limitations highlight the need for a more universal and comprehensive approach to RNA design that integrates diverse annotation information at the sequence level. To address these challenges, we propose RNACG (RNA Conditional Generator), a universal framework for RNA sequence design based on flow matching. RNACG supports diverse conditional inputs, including structural, functional, and family-specific annotations, and offers a modular design that allows users to customize the encoding network for specific tasks. By unifying sequence generation under a single framework, RNACG enables the integration of multiple RNA design paradigms, from family-specific generation to tertiary structure inverse folding.
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