整合机器学习和药效团特征增强预测H1受体阻滞剂。

IF 1.9 4区 医学 Q3 CHEMISTRY, MEDICINAL
Zaid Anis Sherwani, Mohammad Nur-E-Alam, Aftab Ahmed, Zaheer Ul-Haq
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引用次数: 0

摘要

组胺I型受体拮抗剂(H1阻滞剂)广泛用于减轻组胺诱导的炎症,特别是在过敏反应中。组胺是一种存在于内皮细胞、血管平滑肌、支气管平滑肌和下丘脑中的生物胺,在这些反应中起着关键作用。H1阻滞剂在止咳糖浆和流感药物中是必不可少的,分为两代:第一代H1阻滞剂,具有镇静作用,有许多副作用;第二代阻滞剂,无镇静作用,毒性较小,但仍可能与其他受体发生交叉反应。方法:在本研究中,以非索非那定为基准,利用一个综合的化合物数据库来发现可能具有更好疗效和更少副作用的化合物。特别是,多维k均值聚类,一种机器学习技术,被用于识别化学结构类似于非索非那定的化合物。结果:利用药代动力学谱计算预测和分子对接实验,评估了这些药物对H1受体的作用。此外,通过对高毒性抗组胺药与各种受体的对接姿态进行基于结构的药效团特征分析,研究了抗组胺药的交叉反应性。结论:通过识别和提出去除常见的毒性特征,我们旨在促进开发副作用更小的抗组胺药。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Machine Learning and Pharmacophore Features for Enhanced Prediction of H1 Receptor Blockers.

Introduction: Histamine Type I Receptor Antagonists (H1 blockers) are widely used to mitigate histamine-induced inflammation, particularly in allergic reactions. Histamine, a biogenic amine found in endothelial cells, vascular smooth muscle, bronchial smooth muscle, and the hypothalamus, is a key player in these responses. H1 blockers are essential in cough syrups and flu medications and are divided into two generations: first-generation H1 blockers, which are sedating and have numerous side effects, and second-generation blockers, which are non-sedating and generally less toxic but may still exhibit cross-reactivity with other receptors.

Method: In this study, a comprehensive database of compounds was utilized alongside fexofenadine as a benchmark to discover compounds with potentially superior efficacy and reduced side effect profiles. In particular, multidimensional K-means clustering, a machine-learning technique, was applied to identify compounds with chemical structures similar to fexofenadine.

Result: Utilizing computational prediction of pharmacokinetic profile and molecular docking experiments, the action of these drugs on the H1 receptor was assessed. Furthermore, the crossreactivity of antihistamines was investigated by conducting a structure-based pharmacophore feature analysis of the docked poses of highly toxic antihistamines with various receptors.

Conclusion: By identifying and proposing the removal of common toxic features, we aim to facilitate the development of antihistamines with fewer adverse effects.

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来源期刊
Medicinal Chemistry
Medicinal Chemistry 医学-医药化学
CiteScore
4.30
自引率
4.30%
发文量
109
审稿时长
12 months
期刊介绍: Aims & Scope Medicinal Chemistry a peer-reviewed journal, aims to cover all the latest outstanding developments in medicinal chemistry and rational drug design. The journal publishes original research, mini-review articles and guest edited thematic issues covering recent research and developments in the field. Articles are published rapidly by taking full advantage of Internet technology for both the submission and peer review of manuscripts. Medicinal Chemistry is an essential journal for all involved in drug design and discovery.
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