作者
Marcell Szikszai, Michael J Wise, Amitava Datta, Max Ward, David Mathews
发表日期
2022/6/24
期刊
Bioinformatics
卷号
38
期号
16
页码范围
3892–3899
出版商
Oxford University Press
简介
Motivation
The secondary structure of RNA is of importance to its function. Over the last few years, several papers attempted to use machine learning to improve de novo RNA secondary structure prediction. Many of these papers report impressive results for intra-family predictions but seldom address the much more difficult (and practical) inter-family problem.
Results
We demonstrate that it is nearly trivial with convolutional neural networks to generate pseudo-free energy changes, modelled after structure mapping data that improve the accuracy of structure prediction for intra-family cases. We propose a more rigorous method for inter-family cross-validation that can be used to assess the performance of learning-based models. Using this method, we further demonstrate that intra-family performance is insufficient proof of generalization despite the widespread assumption in the …
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