Length-Dependent Deep Learning Model for RNA Secondary Structure Prediction |
| |
Authors: | Kangkun Mao Jun Wang Yi Xiao |
| |
Affiliation: | School of Physics and Key Laboratory of Molecular Biophysics of the Ministry of Education, Huazhong University of Science and Technology, Wuhan 430074, China; (K.M.); (J.W.) |
| |
Abstract: | Deep learning methods for RNA secondary structure prediction have shown higher performance than traditional methods, but there is still much room to improve. It is known that the lengths of RNAs are very different, as are their secondary structures. However, the current deep learning methods all use length-independent models, so it is difficult for these models to learn very different secondary structures. Here, we propose a length-dependent model that is obtained by further training the length-independent model for different length ranges of RNAs through transfer learning. 2dRNA, a coupled deep learning neural network for RNA secondary structure prediction, is used to do this. Benchmarking shows that the length-dependent model performs better than the usual length-independent model. |
| |
Keywords: | RNA secondary structure deep learning length-dependent model |
|
|