A deep dense inception network for protein beta-turn prediction

Proteins. 2020 Jan;88(1):143-151. doi: 10.1002/prot.25780. Epub 2019 Jul 23.

Abstract

Beta-turn prediction is useful in protein function studies and experimental design. Although recent approaches using machine-learning techniques such as support vector machine (SVM), neural networks, and K nearest neighbor have achieved good results for beta-turn prediction, there is still significant room for improvement. As previous predictors utilized features in a sliding window of 4-20 residues to capture interactions among sequentially neighboring residues, such feature engineering may result in incomplete or biased features and neglect interactions among long-range residues. Deep neural networks provide a new opportunity to address these issues. Here, we proposed a deep dense inception network (DeepDIN) for beta-turn prediction, which takes advantage of the state-of-the-art deep neural network design of dense networks and inception networks. A test on a recent BT6376 benchmark data set shows that DeepDIN outperformed the previous best tool BetaTPred3 significantly in both the overall prediction accuracy and the nine-type beta-turn classification accuracy. A tool, called MUFold-BetaTurn, was developed, which is the first beta-turn prediction tool utilizing deep neural networks. The tool can be downloaded at http://dslsrv8.cs.missouri.edu/~cf797/MUFoldBetaTurn/download.html.

Keywords: deep learning; deep neural network; dense network; inception network; protein beta turn; protein structure prediction.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Animals
  • Databases, Protein
  • Humans
  • Machine Learning
  • Models, Molecular
  • Neural Networks, Computer
  • Protein Conformation, beta-Strand*
  • Protein Folding
  • Proteins / chemistry*
  • Software

Substances

  • Proteins