ConsAMPHemo:一个基于机器学习方法预测抗菌肽溶血的计算框架。

IF 5.2 3区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Protein Science Pub Date : 2025-07-01 DOI:10.1002/pro.70087
Peilin Xie, Lantian Yao, Jiahui Guan, Chia-Ru Chung, Zhihao Zhao, Feiyu Long, Zhenglong Sun, Tzong-Yi Lee, Ying-Chih Chiang
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引用次数: 0

摘要

许多抗菌肽(AMPs)通过破坏微生物的细胞膜发挥作用。虽然这种能力对它们的功效至关重要,但它也引发了对它们安全性的质疑。具体来说,这种破坏膜的能力可能导致溶血。传统上,amp的溶血活性是通过实验来评估的。为了降低评估AMP作为药物安全性的成本,我们引入了ConsAMPHemo,这是一个基于深度学习的两阶段框架。ConsAMPHemo对amp的溶血活性进行传统的二元分类,并通过回归预测其溶血浓度。我们的模型表现出优异的分类性能,在三个不同的数据集上分别实现了99.54%、82.57%和88.04%的准确率。在回归预测方面,模型的Pearson相关系数为0.809。此外,我们确定了特征和溶血活动之间的相关性。从这项工作中获得的见解揭示了AMP溶血性质的潜在物理特性。因此,我们的研究通过具有成本效益的溶血活性预测和揭示具有低溶血毒性的AMP的设计原则,有助于开发更安全的AMP。ConsAMPHemo的代码和数据集可在https://github.com/Cpillar/ConsAMPHemo上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ConsAMPHemo: A computational framework for predicting hemolysis of antimicrobial peptides based on machine learning approaches.

Many antimicrobial peptides (AMPs) function by disrupting the cell membranes of microbes. While this ability is crucial for their efficacy, it also raises questions about their safety. Specifically, the membrane-disrupting ability could lead to hemolysis. Traditionally, the hemolytic activity of AMPs is evaluated through experiments. To reduce the cost of assessing the safety of an AMP as a drug, we introduce ConsAMPHemo, a two-stage framework based on deep learning. ConsAMPHemo performs conventional binary classification of the hemolytic activities of AMPs and predicts their hemolysis concentrations through regression. Our model demonstrates excellent classification performance, achieving an accuracy of 99.54%, 82.57%, and 88.04% on three distinct datasets, respectively. Regarding regression prediction, the model achieves a Pearson correlation coefficient of 0.809. Additionally, we identify the correlation between features and hemolytic activity. The insights gained from this work shed light on the underlying physics of the hemolytic nature of an AMP. Therefore, our study contributes to the development of safer AMPs through cost-effective hemolytic activity prediction and by revealing the design principles for AMPs with low hemolytic toxicity. The codes and datasets of ConsAMPHemo are available at https://github.com/Cpillar/ConsAMPHemo.

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来源期刊
Protein Science
Protein Science 生物-生化与分子生物学
CiteScore
12.40
自引率
1.20%
发文量
246
审稿时长
1 months
期刊介绍: Protein Science, the flagship journal of The Protein Society, is a publication that focuses on advancing fundamental knowledge in the field of protein molecules. The journal welcomes original reports and review articles that contribute to our understanding of protein function, structure, folding, design, and evolution. Additionally, Protein Science encourages papers that explore the applications of protein science in various areas such as therapeutics, protein-based biomaterials, bionanotechnology, synthetic biology, and bioelectronics. The journal accepts manuscript submissions in any suitable format for review, with the requirement of converting the manuscript to journal-style format only upon acceptance for publication. Protein Science is indexed and abstracted in numerous databases, including the Agricultural & Environmental Science Database (ProQuest), Biological Science Database (ProQuest), CAS: Chemical Abstracts Service (ACS), Embase (Elsevier), Health & Medical Collection (ProQuest), Health Research Premium Collection (ProQuest), Materials Science & Engineering Database (ProQuest), MEDLINE/PubMed (NLM), Natural Science Collection (ProQuest), and SciTech Premium Collection (ProQuest).
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