Bitter peptide prediction using graph neural networks

被引:1
|
作者
Srivastava, Prashant [1 ]
Steuer, Alexandra [2 ,3 ]
Ferri, Francesco [2 ,3 ]
Nicoli, Alessandro [2 ,3 ]
Schultz, Kristian [1 ]
Bej, Saptarshi [4 ]
Di Pizio, Antonella [2 ,3 ]
Wolkenhauer, Olaf [1 ,2 ]
机构
[1] Univ Rostock, Inst Comp Sci, D-18051 Rostock, Germany
[2] Tech Univ Munich, Leibniz Inst Food Syst Biol, Sect In Sil Biol & Machine Learning 3, D-85354 Freising Weihenstephan, Germany
[3] Tech Univ Munich, TUM Sch Life Sci, Professorship Chemoinformat & Prot Modelling, D-85354 Freising Weihenstephan, Germany
[4] Indian Inst Sci Educ & Res Thiruvananthapuram, Maruthamala PO, Vithura 695551, Kerala, India
来源
JOURNAL OF CHEMINFORMATICS | 2024年 / 16卷 / 01期
关键词
Peptides; Representation learning; Bitter taste; Food; TASTE;
D O I
10.1186/s13321-024-00909-x
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Bitter taste is an unpleasant taste modality that affects food consumption. Bitter peptides are generated during enzymatic processes that produce functional, bioactive protein hydrolysates or during the aging process of fermented products such as cheese, soybean protein, and wine. Understanding the underlying peptide sequences responsible for bitter taste can pave the way for more efficient identification of these peptides. This paper presents BitterPep-GCN, a feature-agnostic graph convolution network for bitter peptide prediction. The graph-based model learns the embedding of amino acids in the bitter peptide sequences and uses mixed pooling for bitter classification. BitterPep-GCN was benchmarked using BTP640, a publicly available bitter peptide dataset. The latent peptide embeddings generated by the trained model were used to analyze the activity of sequence motifs responsible for the bitter taste of the peptides. Particularly, we calculated the activity for individual amino acids and dipeptide, tripeptide, and tetrapeptide sequence motifs present in the peptides. Our analyses pinpoint specific amino acids, such as F, G, P, and R, as well as sequence motifs, notably tripeptide and tetrapeptide motifs containing FF, as key bitter signatures in peptides. This work not only provides a new predictor of bitter taste for a more efficient identification of bitter peptides in various food products but also gives a hint into the molecular basis of bitterness.Scientific ContributionOur work provides the first application of Graph Neural Networks for the prediction of peptide bitter taste. The best-developed model, BitterPep-GCN, learns the embedding of amino acids in the bitter peptide sequences and uses mixed pooling for bitter classification. The embeddings were used to analyze the sequence motifs responsible for the bitter taste.
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页数:13
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