iMFP-LG:利用蛋白质语言模型和基于图的深度学习识别新型多功能肽。

Jiawei Luo, Kejuan Zhao, Junjie Chen, Caihua Yang, Fuchuan Qu, Yumeng Liu, Xiaopeng Jin, Ke Yan, Yang Zhang, Bin Liu
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引用次数: 0

摘要

功能肽是对生物体具有多种有益功能的短氨基酸片段。以前的研究大多集中在单功能肽上,但现在发现的多功能肽越来越多。尽管人们在检测多功能肽方面做出了巨大的实验努力,但在数百万个已知肽中,只有一小部分得到了探索。有效而精确的多功能肽鉴定技术可以促进对它们的发现和机理的理解。本文介绍了一种基于蛋白质语言模型(pLMs)和图注意网络(GATs)的识别多功能肽的方法 iMFP-LG。比较结果表明,iMFP-LG在多功能生物活性肽和多功能治疗肽数据集上的表现均优于最先进的方法。iMFP-LG 的可解释性还通过可视化 pLMs 和 GATs 中的注意力模式得到了体现。关于 iMFP-LG 在鉴定多功能肽方面的出色表现,我们利用 iMFP-LG 从 UniRef90 中的数百万个已知肽中筛选出同时具有 ACP 和 AMP 功能的新型候选肽。结果,我们发现了 8 种候选肽,并通过分子结构比对和生物学实验确认了 1 种同时具有抗菌和抗癌作用的候选肽。我们预计,iMFP-LG 可以帮助发现多功能多肽,促进多肽药物设计的发展。
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iMFP-LG: Identification of Novel Multi-Functional Peptides by Using Protein Language Models and Graph-Based Deep Learning.

Functional peptides are short amino acid fragments that have a wide range of beneficial functions for living organisms. The majority of previous research focused on mono-functional peptides, but a growing number of multi-functional peptides have been discovered. Although there have been enormous experimental efforts to assay multi-functional peptides, only a small fraction of millions of known peptides have been explored. Effective and precise techniques for identifying multi-functional peptides can facilitate their discovery and mechanistic understanding. In this article, we presented a method iMFP-LG for identifying multi-functional peptides based on protein language models (pLMs) and graph attention networks (GATs). Comparison results showed that iMFP-LG outperforms state-of-the-art methods on both multi-functional bioactive peptides and multi-functional therapeutic peptides datasets. The interpretability of iMFP-LG was also illustrated by visualizing attention patterns in pLMs and GATs. Regarding the outstanding performance of iMFP-LG on the identification of multi-functional peptides, we employed iMFP-LG to screen novel candidate peptides with both ACP and AMP functions from millions of known peptides in the UniRef90. As a result, 8 candidate peptides were identified, and 1 candidate that exhibits both antibacterial and anticancer effects was confirmed through molecular structure alignment and biological experiments. We anticipate that iMFP-LG can assist in the discovery of multi-functional peptides and contribute to the advancement of peptide drug design.

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