Drug Repurposing for Identification of S1P1 Agonists with Potential Application in Multiple Sclerosis Using In Silico Drug Design Approaches.

IF 3.1 Q2 PHARMACOLOGY & PHARMACY Advanced pharmaceutical bulletin Pub Date : 2023-01-01 DOI:10.34172/apb.2023.012
Ali Akbar Alizadeh, Behzad Jafari, Siavoush Dastmalchi
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引用次数: 2

Abstract

Purpose: Drug repurposing is an approach successfully used for discovery of new therapeutic applications for the existing drugs. The current study was aimed to use the combination of in silico methods to identify FDA-approved drugs with possible S1P1 agonistic activity useful in multiple sclerosis (MS). Methods: For this, a 3D-QSAR model for the known 21 S1P1 agonists were generated based on 3D-QSAR approach and used to predict the possible S1P1 agonistic activity of FDA-approved drugs. Then, the selected compounds were screened by docking into S1P1 and S1P3 receptors to select the S1P1 potent and selective compounds. Further evaluation was carried out by molecular dynamics (MD) simulation studies where the S1P1 binding energies of selected compounds were calculated. Results: The analyses resulted in identification of cobicistat, benzonatate and brigatinib as the selective and potent S1P1 agonists with the binding energies of -85.93, -69.77 and -67.44 kcal. mol-1, calculated using MM-GBSA algorithm based on 50 ns MD simulation trajectories. These values are better than that of siponimod (-59.35 kcal mol-1), an FDA approved S1P1 agonist indicated for MS treatment. Furthermore, similarity network analysis revealed that cobicistat and brigatinib are the most structurally favorable compounds to interact with S1P1. Conclusion: The findings in this study revealed that cobicistat and brigatinib can be evaluated in experimental studies as potential S1P1 agonist candidates useful in the treatment of MS.

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利用计算机药物设计方法鉴定S1P1激动剂在多发性硬化症中的潜在应用
目的:药物再利用是一种成功地用于发现现有药物的新治疗应用的方法。目前的研究旨在使用计算机方法的组合来鉴定fda批准的可能具有S1P1激动活性的药物,这些药物可用于多发性硬化症(MS)。方法:为此,基于3D-QSAR方法对已知的21种S1P1激动剂建立了3D-QSAR模型,并用于预测fda批准的药物可能的S1P1激动剂活性。然后,通过对接S1P1和S1P3受体进行筛选,筛选出S1P1强效和选择性的化合物。进一步的评价是通过分子动力学(MD)模拟研究进行的,其中计算了选定化合物的S1P1结合能。结果:基于50 ns MD模拟轨迹,采用MM-GBSA算法计算出cobicistat、苯甲酸酯和布加替尼为选择性强效S1P1激动剂,结合能分别为-85.93、-69.77和-67.44 kcal. mol-1。这些数值优于西泊尼莫(-59.35 kcal mol-1),西泊尼莫是FDA批准用于多发性硬化症治疗的S1P1激动剂。此外,相似性网络分析显示,cobicistat和brigatinib是结构上最有利于与S1P1相互作用的化合物。结论:本研究结果表明,可比司他和布加替尼可以在实验研究中作为潜在的S1P1激动剂候选药物用于治疗多发性硬化症。
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来源期刊
Advanced pharmaceutical bulletin
Advanced pharmaceutical bulletin PHARMACOLOGY & PHARMACY-
CiteScore
6.80
自引率
2.80%
发文量
51
审稿时长
12 weeks
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