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Virtual screening Docking ADMET and System Pharmacology studies on Garcinia caged Xanthone derivatives for Anticancer activity

机译:虚拟筛选对接ADMET和系统药理研究对藤黄笼中的蒽酮衍生物具有抗癌活性

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摘要

Caged xanthones are bioactive compounds mainly derived from the Garcinia genus. In this study, a structure-activity relationship (SAR) of caged xanthones and their derivatives for anticancer activity against different cancer cell lines such as A549, HepG2 and U251 were developed through quantitative (Q)-SAR modeling approach. The regression coefficient (r2), internal cross-validation regression coefficient (q2) and external cross-validation regression coefficient (pred_r2) of derived QSAR models were 0.87, 0.81 and 0.82, for A549, whereas, 0.87, 0.84 and 0.90, for HepG2, and 0.86, 0.83 and 0.83, for U251 respectively. These models were used to design and screened the potential caged xanthone derivatives. Further, the compounds were filtered through the rule of five, ADMET-risk and synthetic accessibility. Filtered compounds were then docked to identify the possible target binding pocket, to obtain a set of aligned ligand poses and to prioritize the predicted active compounds. The scrutinized compounds, as well as their metabolites, were evaluated for different pharmacokinetics parameters such as absorption, distribution, metabolism, excretion, and toxicity. Finally, the top hit compound 1G was analyzed by system pharmacology approaches such as gene ontology, metabolic networks, process networks, drug target network, signaling pathway maps as well as identification of off-target proteins that may cause adverse reactions.
机译:笼养的氧杂蒽酮是主要来自藤黄属的生物活性化合物。在这项研究中,通过定量(Q)-SAR建模方法,开发了笼状黄嘌呤及其衍生物对不同癌细胞系如A549,HepG2和U251的抗癌活性的构效关系(SAR)。回归系数(r 2 ),内部交叉验证回归系数(q 2 )和外部交叉验证回归系数(pred_r 2 )对于A549,派生的QSAR模型分别为0.87、0.81和0.82,而对于HepG2,分别为0.87、0.84和0.90,对于U251,分别为0.86、0.83和0.83。这些模型用于设计和筛选潜在的笼状黄酮衍生物。此外,通过五项规则(ADMET风险和合成可及性)对化合物进行过滤。然后将过滤的化合物停靠在一起,以识别可能的靶标结合口袋,获得一组对齐的配体姿势并确定预测的活性化合物的优先级。对于不同的药代动力学参数(例如吸收,分布,代谢,排泄和毒性),对已检查的化合物及其代谢产物进行了评估。最后,通过系统药理学方法(例如基因本体论,代谢网络,过程网络,药物靶标网络,信号传导途径图以及可能引起不良反应的脱靶蛋白质的鉴定)对热门化合物1G进行了分析。

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