利用机器学习模型预测和验证含有脯氨酸的三肽与血管紧张素i转换酶抑制活性

IF 1.2 4区 医学 Q4 CHEMISTRY, MEDICINAL
T. Hatakenaka, Y. Fujimoto, K. Okamoto, T. Kato
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引用次数: 0

摘要

背景:在以往的研究中发现了许多抑制血管紧张素i转换酶的肽,血管紧张素i转换酶是高血压治疗的靶点。最近,机器学习筛选已被用于使用已知抑制肽数据库和来自对接模拟的描述符数据来预测未知的抑制肽。目的:本研究以含有脯氨酸的血管紧张素i转换酶抑制性三肽为研究对象,利用机器学习算法PyCaret基于IC50和对接模拟的描述符预测新型抑制肽,并将结果与体外抑制活性研究进行比较,验证机器学习筛选方法的有效性。方法:从在线数据库中收集已知抑制肽的IC50,并通过对接模拟对描述符数据进行总结。使用PyCaret从这些数据预测候选抑制肽。采用固相法合成候选三肽,并测定其体外抑制活性。结果:从机器学习预测的具有高抑制活性的肽中发现了7个新的三肽,并对这些肽进行了合成和体外抑制活性评价。结果表明,含脯氨酸的三肽MPA具有较高的抑制活性,IC50值为8.6µM。结论:在本研究中,我们在机器学习预测的候选蛋白中发现了一种具有高ACE抑制活性的脯氨酸三肽。这一发现表明,通过机器学习预测的方法在未来的抑制肽筛选工作中是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction and Validation of Proline-containing Tripeptides with Angiotensin I-converting Enzyme Inhibitory Activity Using Machine Learning Models
Background: Numerous inhibitory peptides against angiotensin I-converting enzyme, a target for hypertension treatment, have been found in previous studies. Recently, machine learning screening has been employed to predict unidentified inhibitory peptides using a database of known inhibitory peptides and descriptor data from docking simulations. Objective: The aim of this study is to focus on angiotensin I-converting enzyme inhibitory tripeptides containing proline, to predict novel inhibitory peptides using the machine learning algorithm PyCaret based on their IC50 and descriptors from docking simulations, and to validate the screening method by machine learning by comparing the results with in vitro inhibitory activity studies. Methods: IC50 of known inhibitory peptides were collected from an online database, and descriptor data were summarized by docking simulations. Candidate inhibitory peptides were predicted from these data using the PyCaret. Candidate tripeptides were synthesized by solid-phase synthesis and their inhibitory activity was measured in vitro. Results: Seven novel tripeptides were found from the peptides predicted to have high inhibitory activity by machine learning, and these peptides were synthesized and evaluated for inhibitory activity in vitro. As a result, the proline-containing tripeptide MPA showed high inhibitory activity, with an IC50 value of 8.6 µM. Conclusion: In this study, we identified a proline-containing tripeptide with high ACE inhibitory activity among the candidates predicted by machine learning. This finding indicates that the method of predicting by machine learning is promising for future inhibitory peptide screening efforts.
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来源期刊
CiteScore
1.80
自引率
10.00%
发文量
245
审稿时长
3 months
期刊介绍: Aims & Scope Letters in Drug Design & Discovery publishes letters, mini-reviews, highlights and guest edited thematic issues in all areas of rational drug design and discovery including medicinal chemistry, in-silico drug design, combinatorial chemistry, high-throughput screening, drug targets, and structure-activity relationships. The emphasis is on publishing quality papers very rapidly by taking full advantage of latest Internet technology for both submission and review of manuscripts. The online journal is an essential reading to all pharmaceutical scientists involved in research in drug design and discovery.
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