arXiv (Cornell University)
RNA secondary structures: from ab initio prediction to better compression, and back
February 2023 • Evarista Onokpasa, Sebastian Wild, Prudence W. H. Wong
In this paper, we use the biological domain knowledge incorporated into stochastic models for ab initio RNA secondary-structure prediction to improve the state of the art in joint compression of RNA sequence and structure data (Liu et al., BMC Bioinformatics, 2008). Moreover, we show that, conversely, compression ratio can serve as a cheap and robust proxy for comparing the prediction quality of different stochastic models, which may help guide the search for better RNA structure prediction models. Our results bui…