治疗肺癌的新型蓝藻药物的预测

Subramaniyan Vijayakumar, Muniaraj Menakha
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引用次数: 5

摘要

肺癌引起的EGFR激酶蛋白被选为靶点,并对市售的抗癌药物和蓝藻化合物进行治疗。本研究旨在预测、筛选和鉴定海洋蓝藻菌群中潜在的高效抗肺癌化合物。筛选EGFR激酶、Glide模块(Schrodinger套件)等抗肺癌蛋白活性化合物。在筛选的33种生物活性化合物中,Tiglicamide A对EGFR激酶的滑翔对接评分最高,为- 10.485。通过分子对接将该替格利胺A与市售药物卡巴他赛、阿普拉定等进行比较,发现替格利胺A与肺癌靶蛋白EGFR激酶的强相互作用更有效。该研究结果支持了使用Glide和Hex程序进行的硅分子对接研究对预测肺癌治疗药物非常有用的事实。在本研究中,Tiglicamide A被预测为最具活性的蓝细菌化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of new cyanobacterial drug for treating lung cancer

Lung cancer causing EGFR kinase protein selected as target and treated against commercially available anticancer drugs and cyanobacterial compounds. The present study was to predict screen and identify the potential high efficient antilung cancer compounds from the marine flora of cyanobacteria. To screen the bioactive compounds against lung cancer causing protein, EGFR kinase, Glide module (Schrodinger suite) was applied. Among the 33 bioactive compounds screened, best Glide docking score of −10.485 was found in Tiglicamide A against EGFR kinase. When this Tiglicamide A was compared with the commercially available drugs like cabazitaxel and apraclonidine through molecular docking, Tiglicamide A was found to be more effective by interacting strongly with lung cancer causing target protein, EGFR kinase. The results of the study support the fact that in silico molecular docking studies using Glide and Hex programs are very useful in predicting lung cancer treating drug. In this study, Tiglicamide A was predicted as the best active cyanobacterial compound derived from Lyngbya confervoides.

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