Affiliation:
1. Department of Computer Science, University of Freiburg , Freiburg 79110, Germany
Abstract
Abstract
Motivation
RNA design is a key technique to achieve new functionality in fields like synthetic biology or biotechnology. Computational tools could help to find such RNA sequences but they are often limited in their formulation of the search space.
Results
In this work, we propose partial RNA design, a novel RNA design paradigm that addresses the limitations of current RNA design formulations. Partial RNA design describes the problem of designing RNAs from arbitrary RNA sequences and structure motifs with multiple design goals. By separating the design space from the objectives, our formulation enables the design of RNAs with variable lengths and desired properties, while still allowing precise control over sequence and structure constraints at individual positions. Based on this formulation, we introduce a new algorithm, libLEARNA, capable of efficiently solving different constraint RNA design tasks. A comprehensive analysis of various problems, including a realistic riboswitch design task, reveals the outstanding performance of libLEARNA and its robustness.
Availability and Implementation
libLEARNA is open-source and publicly available at: https://github.com/automl/learna_tools.
Funder
Deutsche Forschungsgemeinschaft
German Research Foundation
European Union
ERC Consolidator Grant DeepLearning 2.0
European Research Council
Publisher
Oxford University Press (OUP)