Arockiaraj Micheal, Campena Joseph H, Berin Greeni A, Ghani Muhammad Usman, Gajavalli S, Tchier Fairouz, Jan Ahmad Zubair
Department of Mathematics, Loyola College, Chennai 600034, India.
Department of Mathematics and Statistics, College of Science, De La Salle University, 2401 Taft Avenue, Malate, Manila, 1004 Metro Manila, Philippines.
Heliyon. 2024 Jan 8;10(2):e23981. doi: 10.1016/j.heliyon.2024.e23981. eCollection 2024 Jan 30.
Tuberculosis (TB) is one of the most contagious diseases that has a greater mortality rate than HIV/AIDS and the cases of TB are feared to rise as a repercussion of the COVID-19 pandemic. The pharmaceutical industry is constantly looking for ways to improve drug design processes in order to combat the growth of infections and cure newly identified syndromes or genetically based dysfunctions with the help of QSPR models. QSPR models are mathematical tools that establish relationships between a molecular structure and its physicochemical attributes using structural properties. Topological indices are such properties that are generated from the molecular graph without any empirically derived measurements. This work focuses on developing a QSPR model using distance-based topological indices for anti-tuberculosis medications and their diverse physicochemical features.
结核病(TB)是传染性最强的疾病之一,其死亡率高于艾滋病毒/艾滋病,而且由于新冠疫情的影响,结核病病例恐将增加。制药行业一直在寻找改进药物设计流程的方法,以便借助定量构效关系(QSPR)模型对抗感染的发展,并治愈新发现的综合征或基于基因的功能障碍。QSPR模型是一种数学工具,它利用结构特性建立分子结构与其物理化学属性之间的关系。拓扑指数就是这样一种特性,它由分子图生成,无需任何经验性测量。这项工作的重点是利用基于距离的拓扑指数,为抗结核药物及其多样的物理化学特征开发一个QSPR模型。