gRNAde: Geometric Deep Learning for 3D RNA inverse design.

ArXiv Pub Date : 2025-02-25
Chaitanya K Joshi, Arian R Jamasb, Ramon Viñas, Charles Harris, Simon V Mathis, Alex Morehead, Rishabh Anand, Pietro Liò
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Abstract

Computational RNA design tasks are often posed as inverse problems, where sequences are designed based on adopting a single desired secondary structure without considering 3D conformational diversity. We introduce gRNAde, a geometric RNA design pipeline operating on 3D RNA backbones to design sequences that explicitly account for structure and dynamics. gRNAde uses a multi-state Graph Neural Network and autoregressive decoding to generates candidate RNA sequences conditioned on one or more 3D backbone structures where the identities of the bases are unknown. On a single-state fixed backbone re-design benchmark of 14 RNA structures from the PDB identified by Das et al. (2010), gRNAde obtains higher native sequence recovery rates (56% on average) compared to Rosetta (45% on average), taking under a second to produce designs compared to the reported hours for Rosetta. We further demonstrate the utility of gRNAde on a new benchmark of multi-state design for structurally flexible RNAs, as well as zero-shot ranking of mutational fitness landscapes in a retrospective analysis of a recent ribozyme. Experimental wet lab validation on 10 different structured RNA backbones finds that gRNAde has a success rate of 50% at designing pseudoknotted RNA structures, a significant advance over 35% for Rosetta. Open source code and tutorials are available at: https://github.com/chaitjo/geometric-rna-design.

gRNAde:用于三维 RNA 反向设计的几何深度学习。
计算 RNA 设计任务通常被视为逆向问题,即在不考虑三维几何和构象多样性的情况下,根据采用单一所需二级结构来设计序列。我们介绍了 gRNAde,这是一种几何 RNA 设计管道,可在三维 RNA 主干上运行,设计出明确考虑结构和动力学的序列。gRNAde 是一个多状态图神经网络,可根据一个或多个三维骨架结构生成候选 RNA 序列,其中碱基的身份是未知的。在 Das 等人[2010]从 PDB 中确定的 14 种 RNA 结构的单状态固定骨架重新设计基准上,gRNAde 与 Rosetta(平均 45%)相比,获得了更高的原生序列恢复率(平均 56%),产生设计的时间不到一秒,而 Rosetta 则需要数小时。我们进一步证明了 gRNAde 在结构灵活的 RNA 的多态设计新基准上的实用性,以及在对最近的 RNA 聚合酶核酶结构的回顾性分析中对突变适配性景观的零次排序。开放源代码:https://github.com/chaitjo/geometric-rna-design。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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