SSMFN: a fused spatial and sequential deep learning model for methylation site prediction

Author:

Lumbanraja Favorisen Rosyking1,Mahesworo Bharuno23,Cenggoro Tjeng Wawan24,Sudigyo Digdo2,Pardamean Bens25

Affiliation:

1. Department of Computer Science, Faculty of Mathematics and Natural Science, University of Lampung, Bandar Lampung, Lampung, Indonesia

2. Bioinformatics and Data Science Research Center, Bina Nusantara University, West Jakarta, Jakarta, Indonesia

3. Statistics Departement, School of Computer Science, Bina Nusantara University, West Jakarta, Jakarta, Indonesia

4. Computer Science Departement, School of Computer Science, Bina Nusantara University, West Jakarta, Jakarta, Indonesia

5. Computer Science Department, BINUS Graduate Program - Master of Computer Science, Bina Nusantara University, West Jakarta, Jakarta, Indonesia

Abstract

Background Conventional in vivo methods for post-translational modification site prediction such as spectrophotometry, Western blotting, and chromatin immune precipitation can be very expensive and time-consuming. Neural networks (NN) are one of the computational approaches that can predict effectively the post-translational modification site. We developed a neural network model, namely the Sequential and Spatial Methylation Fusion Network (SSMFN), to predict possible methylation sites on protein sequences. Method We designed our model to be able to extract spatial and sequential information from amino acid sequences. Convolutional neural networks (CNN) is applied to harness spatial information, while long short-term memory (LSTM) is applied for sequential data. The latent representation of the CNN and LSTM branch are then fused. Afterwards, we compared the performance of our proposed model to the state-of-the-art methylation site prediction models on the balanced and imbalanced dataset. Results Our model appeared to be better in almost all measurement when trained on the balanced training dataset. On the imbalanced training dataset, all of the models gave better performance since they are trained on more data. In several metrics, our model also surpasses the PRMePred model, which requires a laborious effort for feature extraction and selection. Conclusion Our models achieved the best performance across different environments in almost all measurements. Also, our result suggests that the NN model trained on a balanced training dataset and tested on an imbalanced dataset will offer high specificity and low sensitivity. Thus, the NN model for methylation site prediction should be trained on an imbalanced dataset. Since in the actual application, there are far more negative samples than positive samples.

Publisher

PeerJ

Subject

General Computer Science

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