DeePhafier: a phage lifestyle classifier using a multilayer self-attention neural network combining protein information.
Yan MiaoZhenyuan SunChen LinHaoran GuChenjing MaYingjian LiangGuohua WangPublished in: Briefings in bioinformatics (2024)
Bacteriophages are the viruses that infect bacterial cells. They are the most diverse biological entities on earth and play important roles in microbiome. According to the phage lifestyle, phages can be divided into the virulent phages and the temperate phages. Classifying virulent and temperate phages is crucial for further understanding of the phage-host interactions. Although there are several methods designed for phage lifestyle classification, they merely either consider sequence features or gene features, leading to low accuracy. A new computational method, DeePhafier, is proposed to improve classification performance on phage lifestyle. Built by several multilayer self-attention neural networks, a global self-attention neural network, and being combined by protein features of the Position Specific Scoring Matrix matrix, DeePhafier improves the classification accuracy and outperforms two benchmark methods. The accuracy of DeePhafier on five-fold cross-validation is as high as 87.54% for sequences with length >2000bp.
Keyphrases
- neural network
- pseudomonas aeruginosa
- metabolic syndrome
- machine learning
- deep learning
- physical activity
- weight loss
- working memory
- cardiovascular disease
- induced apoptosis
- amino acid
- cystic fibrosis
- healthcare
- protein protein
- cell cycle arrest
- type diabetes
- copy number
- signaling pathway
- dna methylation
- small molecule
- binding protein
- cell proliferation
- endoplasmic reticulum stress