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

Volume: 7, Pages: e683 - e683
Published: Aug 26, 2021
Abstract
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...
Paper Details
Title
SSMFN: a fused spatial and sequential deep learning model for methylation site prediction
Published Date
Aug 26, 2021
Journal
Volume
7
Pages
e683 - e683
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