Identification of the secondary metabolites of Sargassum tenerrimum and their molecular docking analysis against the targets of anxiety, depression and cognitive disorder

Punnagai Kumaravelu, R. Yadav, U. S., Viswanathan Subramanian, Suvarna Jyoti Kantipudi
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Abstract

This article aimed to identify the bioactive compounds present in the brown algae Sargassum tenerrimum using TLC and HPTLC fingerprinting analysis and followed in silico molecular docking against a potential target of anxiety, depression, and cognitive disorder with identified compounds. Bioactive compounds were identified from the methanolic extract of Sargassum tenerrimum through TLC and HPTLC fingerprinting analysis. In silico molecular docking against a potential target of anxiety, depression, and cognitive disorder was performed on the latest version of AutoDock Vina v.1.2.0 software. The pharmacokinetic profile and possible bioactivities of the compounds were predicted using SwissADME. Fucoxanthin, β-Cryptoxanthin, and Canthaxanthin were identified from the brown algae Sargassum tenerrimum through TLC and HPTLC fingerprinting analysis. Fucoxanthin showed the highest fitness score of -9.7 kcal/mol, -9.6 kcal/mol, and -9.7 kcal/mol against the target protein GABA-A, 5ht2c, and AchE, respectively. β-Cryptoxanthin showed the highest fitness score of -9.4 kcal/mol against target SERT compared with Fucoxanthin and Canthaxanthin. Canthaxanthin exhibited the highest fitness score-7.5 kcal/mol, -9.0 kcal/mol, -9.7 kcal/mol, -9.1 kcal/mol, -9.1 kcal/mol, -7.4 kcal/mol, -7.9 kcal/mol and -7.6 kcal/mol against the target receptor trkB, 5ht1A, D2, DAT, MOA-A, COMT, NMDA and 7nAchR respectively on the comparing with Fucoxanthin and β-Cryptoxanthin In silico docking and ADME analysis concluded that the canthaxanthin acted through various targets and was safer than the fucoxanthin and β-Cryptoxanthin. Hence, canthaxanthin can be the best potential compound in the therapy of neuropsychological disorders.
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马尾草次生代谢产物的鉴定及其与焦虑、抑郁和认知障碍靶点的分子对接分析
本文旨在利用薄层色谱和HPTLC指纹图谱分析鉴定褐藻马尾藻中存在的生物活性化合物,并与鉴定的化合物进行硅分子对接,以对抗焦虑、抑郁和认知障碍的潜在靶标。通过薄层色谱和HPTLC指纹图谱分析,鉴定了马尾草甲醇提取物中的生物活性成分。在最新版本的AutoDock Vina v.1.2.0软件上,对焦虑、抑郁和认知障碍的潜在目标进行了硅分子对接。利用SwissADME预测了化合物的药动学特征和可能的生物活性。通过薄层色谱和HPTLC指纹图谱分析,分别从褐藻马尾草中鉴定出岩藻黄素、β-隐黄素和角黄素。岩藻黄质对靶蛋白GABA-A、5ht2c和AchE的适合度评分最高,分别为-9.7 kcal/mol、-9.6 kcal/mol和-9.7 kcal/mol。与岩藻黄素和角黄素相比,β-隐黄素对目标SERT的适应度得分最高,为-9.4 kcal/mol。与岩藻黄素和β-隐黄素相比,角黄素对靶受体trkB、5ht1A、D2、DAT、MOA-A、COMT、NMDA和7nAchR的适应度评分最高,分别为7.5、-9.0、-9.7、-9.1、-9.1、-9.1、-7.4、-7.9和-7.6 kcal/mol。硅对接和ADME分析表明,角黄素作用于多种靶标,比岩藻黄素和β-隐黄素更安全。因此,角黄素可能是治疗神经心理障碍的最有潜力的化合物。
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