Repurposing Hydroxychloroquine as a Model Drug for the Prediction of Potential SARS-CoV-2 Inhibitor

K. K. Igwe, O. Ikpeazu, F. J. Amaku, I. Otuokere
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引用次数: 2

Abstract

The use of hydroxychloroquine as SARS-CoV-2 inhibitor is currently being reviewed in various clinical trials.  To exhaustively assess the benefit of hydroxychloroquine in the search for SARS-CoV-2 cure, this paper repositioned hydroxychloroquine as a model for virtual screening on the ZINC database.  Molecular docking studies of 5r7y with the retrieved molecules were performed.  The S-score of the predicted compounds were compared with the reference inhibitor (hydroxychloroquine).  After evaluating their binding energy, five compounds (ZINC52939663, ZINC21291670, ZINC12714071, ZINC40089978 and ZINC15963294) were noticed have to highest binding energy with SARS-CoV-2.  The binding scores of the top five ligands were higher than that of the reference molecule.  The pharmacokinetics, toxicity prediction, drug-likeness and global reactivity assessment of ZINC52939663, present the lead compound as a drug candidate with the probable capacity to inhibit SARS-CoV-2.
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羟氯喹作为预测潜在SARS-CoV-2抑制剂的模型药物
羟氯喹作为SARS-CoV-2抑制剂的使用目前正在各种临床试验中进行审查。为了全面评估羟氯喹在寻找SARS-CoV-2治疗方法中的益处,本文将羟氯喹重新定位为锌数据库虚拟筛选的模型。对5r7y与检索到的分子进行分子对接研究。将预测化合物的s评分与对照抑制剂羟氯喹进行比较。结果表明,5个化合物ZINC52939663、ZINC21291670、ZINC12714071、ZINC40089978和ZINC15963294与SARS-CoV-2的结合能最高。前5位配体的结合分数高于参比分子。ZINC52939663的药代动力学、毒性预测、药物相似性和整体反应性评价表明,该先导化合物可能具有抑制SARS-CoV-2的能力。
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