Protein-Protein Interactions Prediction via Multimodal Deep Polynomial Network and Regularized Extreme Learning Machine

Haijun Lei, Yuting Wen, Zhuhong You, Ahmed Elazab, Ee Leng Tan, Yujia Zhao, Baiying Lei

Research output: Contribution to journalArticlepeer-review

32 Scopus citations

Abstract

Predicting the protein-protein interactions (PPIs) has played an important role in many applications. Hence, a novel computational method for PPIs prediction is highly desirable. PPIs endow with protein amino acid mutation rate and two physicochemical properties of protein (e.g., hydrophobicity and hydrophilicity). Deep polynomial network (DPN) is well-suited to integrate these modalities since it can represent any function on a finite sample dataset via the supervised deep learning algorithm. We propose a multimodal DPN (MDPN) algorithm to effectively integrate these modalities to enhance prediction performance. MDPN consists of a two-stage DPN, the first stage feeds multiple protein features into DPN encoding to obtain high-level feature representation while the second stage fuses and learns features by cascading three types of high-level features in the DPN encoding. We employ a regularized extreme learning machine to predict PPIs. The proposed method is tested on the public dataset of H. pylori, Human, and Yeast and achieves average accuracies of 97.87%, 99.90%, and 98.11%, respectively. The proposed method also achieves good accuracies on other datasets. Furthermore, we test our method on three kinds of PPI networks and obtain superior prediction results.

Original languageEnglish
Article number8382154
Pages (from-to)1290-1303
Number of pages14
JournalIEEE Journal of Biomedical and Health Informatics
Volume23
Issue number3
DOIs
StatePublished - May 2019
Externally publishedYes

Keywords

  • multimodal deep polynomial network
  • prediction
  • Protein-protein interactions
  • regularization extreme learning machine

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