In Silico Analysis and Docking Studies on Cystic Fibrosis to identify Potential Drug Candidates

IF 0.2 Q4 Biochemistry, Genetics and Molecular Biology Research Journal of Biotechnology Pub Date : 2023-08-15 DOI:10.25303/1809rjbt2590270
Nishita Verma, Abhishek Sengupta, Seema Bhatnagar, Priyanka Narad
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Abstract

Cystic fibrosis (CF) is a multi-system autosomal recessive disorder due to defects in the CF transmembrane conductance regulator (CFTR) protein, most commonly affecting the lungs. Despite being thought of as an uncommon ailment, cystic fibrosis (CF) is the most common monogenic sickness among those who are mostly of European descent. It is estimated that 1% of people worldwide have a single faulty copy of the CFTR gene. A recent pilot study using NGS technology in 2020 from Delhi’s Sir Ganga Ram Hospital, indicated the prevalence of cystic fibrosis mutations of 1 in 2,000 persons. This is much higher than the earlier estimated prevalence as the disease was rare in the Indian population. The most common mutations are delta F 508 and G551D which are also prevalent in the Indian population. The use of computer-aided drug design (CADD) can reduce the time needed for the discovery, evaluation and structure-optimization of new therapeutic candidates. CADD may be advantageous for pharmaceuticals with logical designs. Multiple breakthroughs have been made in the study of small molecule medicines and natural chemicals for the treatment of cystic fibrosis. Seven well-known small-molecule medications that target the CFTR were chosen including Ivacaftor, Lumacaftor, Tezacaftor, Galicaftor, Olacaftor, Navocaftor and Elexacaftor. The natural compounds chosen were Genistein, Curcumin and Resveratrol. They were all docked onto the CFTR target protein and the effectiveness of the therapy was evaluated based on the docking scores. It was also planned to investigate if the combined impacts of these two different kinds of molecules may help in the development of new medications. To achieve this, combinatorial docking was tried using the small molecule market medication and the natural chemical that showed the best interaction with the target protein. Finally, based on molecular docking studies, Lonidamine, a well-known medicinal molecule was used to determine whether it may target cystic fibrosis.
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囊性纤维化的计算机分析和对接研究,以确定潜在的候选药物
囊性纤维化(CF)是一种多系统常染色体隐性遗传病,由CF跨膜传导调节蛋白(CFTR)缺陷引起,最常影响肺部。尽管被认为是一种罕见的疾病,但囊性纤维化(CF)是欧洲人后裔中最常见的单基因疾病。据估计,全世界有1%的人有一个CFTR基因的错误拷贝。德里恒河公羊爵士医院(Sir Ganga Ram Hospital)最近在2020年使用NGS技术进行的一项试点研究表明,每2000人中就有1人患有囊性纤维化突变。由于该病在印度人口中很少见,这一数字远高于早先估计的流行率。最常见的突变是delta F 508和G551D,它们在印度人群中也很普遍。使用计算机辅助药物设计(CADD)可以减少发现、评估和结构优化新候选治疗所需的时间。CADD对于具有逻辑设计的药物可能是有利的。治疗囊性纤维化的小分子药物和天然化学物质的研究取得了多项突破。研究人员选择了7种知名的靶向CFTR的小分子药物,包括Ivacaftor、Lumacaftor、Tezacaftor、Galicaftor、Olacaftor、Navocaftor和Elexacaftor。选择的天然化合物为染料木素、姜黄素和白藜芦醇。它们都与CFTR靶蛋白对接,并根据对接评分评估治疗的有效性。研究人员还计划调查这两种不同分子的联合作用是否有助于新药物的开发。为了实现这一目标,我们尝试使用小分子市场药物和与目标蛋白相互作用最好的天然化学物质进行组合对接。最后,在分子对接研究的基础上,利用Lonidamine这一著名的药用分子来确定其是否可以靶向囊性纤维化。
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来源期刊
Research Journal of Biotechnology
Research Journal of Biotechnology 工程技术-生物工程与应用微生物
CiteScore
0.60
自引率
0.00%
发文量
192
审稿时长
1.5 months
期刊介绍: We invite you to contribute Research Papers / Short Communications / Review Papers: -In any field of Biotechnology, Biochemistry, Microbiology and Industrial Microbiology, Soil Technology, Agriculture Biotechnology. -in any field related to Food Biotechnology, Nutrition Biotechnology, Genetic Engineering and Commercial Biotechnology. -in any field of Biotechnology related to Drugs and Pharmaceutical products for human beings, animals and plants. -in any field related to Environmental Biotechnolgy, Waste Treatment of Liquids, Soilds and Gases; Sustainability. -in inter-realted field of Chemical Sciences, Biological Sciences, Environmental Sciences and Life Sciences. -in any field related to Biotechnological Engineering, Industrial Biotechnology and Instrumentation. -in any field related to Nano-technology. -in any field related to Plant Biotechnology.
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