Learning to Design RNA
Frederic Runge, Danny Stoll, Stefan Falkner, Frank Hutter

TL;DR
This paper introduces LEARNA, a deep reinforcement learning algorithm for RNA design, which, through meta-learning and architecture optimization, achieves state-of-the-art results efficiently on multiple benchmarks.
Contribution
The paper presents LEARNA, a novel RL-based RNA design method that is meta-trained across numerous tasks and jointly optimizes network architecture and training hyperparameters.
Findings
Achieves new state-of-the-art performance on RNA design benchmarks.
Significantly faster convergence compared to previous methods.
Meta-LEARNA generalizes well to novel RNA design tasks.
Abstract
Designing RNA molecules has garnered recent interest in medicine, synthetic biology, biotechnology and bioinformatics since many functional RNA molecules were shown to be involved in regulatory processes for transcription, epigenetics and translation. Since an RNA's function depends on its structural properties, the RNA Design problem is to find an RNA sequence which satisfies given structural constraints. Here, we propose a new algorithm for the RNA Design problem, dubbed LEARNA. LEARNA uses deep reinforcement learning to train a policy network to sequentially design an entire RNA sequence given a specified target structure. By meta-learning across 65000 different RNA Design tasks for one hour on 20 CPU cores, our extension Meta-LEARNA constructs an RNA Design policy that can be applied out of the box to solve novel RNA Design tasks. Methodologically, for what we believe to be the…
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Taxonomy
TopicsRNA and protein synthesis mechanisms · RNA Research and Splicing · RNA modifications and cancer
