Computational insights and predictive models for lung cancer molecular structures

IF 2.2 4区 化学 Q2 Engineering
Yeliz Kara, Yeşim Sağlam Özkan, Micheal Arockiaraj
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引用次数: 0

Abstract

The structure-based investigation of the chemical and physical attributes of drugs administered for treating various forms of cancer has gained significant attention, particularly through the implication of topological indices derived from the molecular characteristics of the compounds. A deeper understanding of chemical and physical properties is crucial for drug development, and in this direction, topological indices help bridge the gap between chemistry and the pharmaceutical industry by providing a cost-effective way to determine the physical properties of molecules. This study aims to investigate the topological polynomials and indices of a series of drugs that are employed for the lung cancer treatment. These include adagrasib, alectinib, brigatinib, crizotinib, dacomitinib, entrectinib, gefitinib, lorlatinib, pralsetinib, and sotorasib. A QSPR analysis has been conducted to ascertain the mathematical relationship between the chemical and physical properties of drugs and their topological indices, including exact mass, molecular weight, heavy atom count, complexity, molar refractivity, and polarizability. The topological indices applied to the drugs under consideration exhibit a favorable correlation with the physicochemical properties in this context. Furthermore, a comparison is made between the actual values and those predicted by the QSPR models discussed.

肺癌分子结构的计算见解和预测模型
用于治疗各种形式癌症的药物的化学和物理属性的基于结构的研究已经获得了极大的关注,特别是通过从化合物的分子特征衍生的拓扑指数的含义。更深入地了解化学和物理性质对药物开发至关重要,在这个方向上,拓扑指数通过提供一种经济有效的方法来确定分子的物理性质,有助于弥合化学和制药工业之间的差距。本研究旨在探讨用于肺癌治疗的一系列药物的拓扑多项式和指标。这些药物包括阿达格拉西、阿勒替尼、布加替尼、克唑替尼、达克米替尼、enterrectinib、吉非替尼、lorlatinib、pralsetinib和sotorasib。通过QSPR分析,确定了药物的化学和物理性质与其拓扑指标(包括精确质量、分子量、重原子数、复杂性、摩尔折射率和极化率)之间的数学关系。在这种情况下,应用于所考虑的药物的拓扑指数与物理化学性质表现出良好的相关性。并将实际值与QSPR模型的预测值进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemical Papers
Chemical Papers Chemical Engineering-General Chemical Engineering
CiteScore
3.30
自引率
4.50%
发文量
590
期刊介绍: Chemical Papers is a peer-reviewed, international journal devoted to basic and applied chemical research. It has a broad scope covering the chemical sciences, but favors interdisciplinary research and studies that bring chemistry together with other disciplines.
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