通过基于度的拓扑指标和回归模型对用于心脏病治疗的一些重要药物进行 QSPR 分析

IF 2.4 3区 化学 Q2 CHEMISTRY, ORGANIC Polycyclic Aromatic Compounds Pub Date : 2024-09-13 DOI:10.1080/10406638.2023.2262697
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引用次数: 0

摘要

基于度的拓扑指数是非常有用的工具,可用于模拟和描述药物的分子结构,从而预测其理化性质,而无需进行费时费力的实验室实验。这些指数是利用图论原理得出的分子结构数值描述符。基于度的拓扑指数在心脏病药物的 QSPR 分析中发挥着重要作用,它提供了预测药物性质的分子描述符。本文的主要目的是计算七种心脏病药物的六个基于度的拓扑指数和一个回归模型。这些药物包括硝酸甘油、氯吡格雷、β-受体阻滞剂(美托洛尔)、ACE 抑制剂(利辛普利)、他汀类药物(阿托伐他汀)、(ARBs)洛沙坦和β-肾上腺素能阻滞剂(普萘洛尔)。回归分析和基于度的指数与与药物活性有关的各种理化性质(如分子量、复杂性、熔点和沸点)相关。通过相关性可以深入了解分子结构如何影响这些特性,从而帮助设计和优化新药。在研究结果中,使用了各种统计参数来分析心脏病药物。
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QSPR Analysis of Some Important Drugs Used in Heart Attack Treatment via Degree-Based Topological Indices and Regression Models
Degree-based topological indices are very useful tools to model and characterize the molecular structure of drugs in order to predict their physicochemical properties without going into laborious and time-consuming laboratory experiments. These indices are numerical descriptors derived for the molecular structures using the principles of graph theory. Degree-based topological indices play a vital role in the QSPR analysis of heart attack drugs by providing molecular descriptors to predict their properties. The main goal of this paper is to compute six degree-based topological indices and a regression model for seven heart attack drugs. These drugs are nitroglycerin, clopidogrel, beta-blockers (metoprolol), ACE inhibitors (lisinopril), statins (atorvastatin), (ARBs) losartan, and beta-adrenergic blockers (propranolol). Regression analysis and degree-based indices correlate with various physicochemical properties related to drug activities, such as molecular weight, complexity, melting point, and boiling point. Correlations provide insights into how the molecular structure influences these properties, helping design and optimize new drugs. In the results, various statistical parameters are used to analyze heart attack drugs.
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来源期刊
Polycyclic Aromatic Compounds
Polycyclic Aromatic Compounds 化学-有机化学
CiteScore
3.70
自引率
20.80%
发文量
412
审稿时长
3 months
期刊介绍: The purpose of Polycyclic Aromatic Compounds is to provide an international and interdisciplinary forum for all aspects of research related to polycyclic aromatic compounds (PAC). Topics range from fundamental research in chemistry (including synthetic and theoretical chemistry) and physics (including astrophysics), as well as thermodynamics, spectroscopy, analytical methods, and biology to applied studies in environmental science, biochemistry, toxicology, and industry. Polycyclic Aromatic Compounds has an outstanding Editorial Board and offers a rapid and efficient peer review process, as well as a flexible open access policy.
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