Multi-modal features-based human-herpesvirus protein–protein interaction prediction by using LightGBM

Author:

Yang Xiaodi1ORCID,Wuchty Stefan2345,Liang Zeyin1,Ji Li1,Wang Bingjie1,Zhu Jialin1,Zhang Ziding67ORCID,Dong Yujun1

Affiliation:

1. Department of Hematology, Peking University First Hospital , Beijing , China

2. Department of Computer Science, University of Miami , Miami FL, 33146 , USA

3. Department of Biology, University of Miami , Miami FL, 33146 , USA

4. Institute of Data Science and Computation, University of Miami , Miami, FL 33146 , USA

5. Sylvester Comprehensive Cancer Center, University of Miami , Miami, FL 33136 , USA

6. State Key Laboratory of Animal Biotech Breeding , College of Biological Sciences, , Beijing 100193 , China

7. China Agricultural University , College of Biological Sciences, , Beijing 100193 , China

Abstract

Abstract The identification of human-herpesvirus protein–protein interactions (PPIs) is an essential and important entry point to understand the mechanisms of viral infection, especially in malignant tumor patients with common herpesvirus infection. While natural language processing (NLP)-based embedding techniques have emerged as powerful approaches, the application of multi-modal embedding feature fusion to predict human-herpesvirus PPIs is still limited. Here, we established a multi-modal embedding feature fusion-based LightGBM method to predict human-herpesvirus PPIs. In particular, we applied document and graph embedding approaches to represent sequence, network and function modal features of human and herpesviral proteins. Training our LightGBM models through our compiled non-rigorous and rigorous benchmarking datasets, we obtained significantly better performance compared to individual-modal features. Furthermore, our model outperformed traditional feature encodings-based machine learning methods and state-of-the-art deep learning-based methods using various benchmarking datasets. In a transfer learning step, we show that our model that was trained on human-herpesvirus PPI dataset without cytomegalovirus data can reliably predict human-cytomegalovirus PPIs, indicating that our method can comprehensively capture multi-modal fusion features of protein interactions across various herpesvirus subtypes. The implementation of our method is available at https://github.com/XiaodiYangpku/MultimodalPPI/.

Funder

National High Level Hospital Clinical Research Funding

National Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

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