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CYP1A2抑制剂预测模型的建立及评价 被引量:3
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作者 李曼华 孙昊鹏 尤启冬 《中国药科大学学报》 CAS CSCD 北大核心 2013年第5期401-409,共9页
CYP1A2酶在药物代谢中起着重要作用,抑制CYP1A2会引起被CYP1A2代谢的其他药物代谢率降低,从而导致这些药物的血浆浓度增加,进而使药物的生物效应增强,可能产生药物毒性。因此识别区分CYP1A2抑制剂成为新药早期评选及药物安全性评估的研... CYP1A2酶在药物代谢中起着重要作用,抑制CYP1A2会引起被CYP1A2代谢的其他药物代谢率降低,从而导致这些药物的血浆浓度增加,进而使药物的生物效应增强,可能产生药物毒性。因此识别区分CYP1A2抑制剂成为新药早期评选及药物安全性评估的研究重点。本研究利用674个已知CYP1A2抑制活性的化合物构建CYP1A2抑制剂配体库,从基于受体和基于配体的角度,采用分子对接和药效团的方法,利用Pipeline Pilot软件建立自动化筛选预测流程,简单全面地从蛋白-配体结合角度快速准确预测出CYP1A2的抑制剂分子。最终从配体库中共预测出16个目标化合物,其中14个化合物具有CYP1A2抑制活性。研究最后对美国成药数据库进行综合预测,共发现4个药物是已报道的CYP1A2抑制剂。说明本模型对CYP1A2抑制剂具有很好的预测能力,可以应用于CYP1A2抑制剂的预测。 展开更多
关键词 cyp1a2抑制剂 预测模型 对接 药效团模型 自动化流程
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Combination Computing of Support Vector Machine, Support Vector Regression and Molecular Docking for Potential Cytochrome P450 1A2 Inhibitors 被引量:1
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作者 陈茜 乔连生 +2 位作者 蔡漪涟 张燕玲 李贡宇 《Chinese Journal of Chemical Physics》 SCIE CAS CSCD 2016年第5期629-634,I0002,共7页
The computational approaches of support vector machine (SVM), support vector regression (SVR) and molecular docking were widely utilized for the computation of active compounds. In this work, to improve the accura... The computational approaches of support vector machine (SVM), support vector regression (SVR) and molecular docking were widely utilized for the computation of active compounds. In this work, to improve the accuracy and reliability of prediction, the strategy of combining the above three computational approaches was applied to predict potential cytochrome P450 1A2 (CYP1A2) inhibitors. The accuracy of the optimal SVM qualitative model was 99.432%, 97.727%, and 91.667% for training set, internal test set and external test set, respectively, showing this model had high discrimination ability. The R2 and mean square error for the optimal SVR quantitative model were 0.763, 0.013 for training set, and 0.753, 0.056 for test set respectively, indicating that this SVR model has high predictive ability for the biolog-ical activities of compounds. According to the results of the SVM and SVR models, some types of descriptors were identi ed to be essential to bioactivity prediction of compounds, including the connectivity indices, constitutional descriptors and functional group counts. Moreover, molecular docking studies were used to reveal the binding poses and binding a n-ity of potential inhibitors interacting with CYP1A2. Wherein, the amino acids of THR124 and ASP320 could form key hydrogen bond interactions with active compounds. And the amino acids of ALA317 and GLY316 could form strong hydrophobic bond interactions with active compounds. The models obtained above were applied to discover potential CYP1A2 inhibitors from natural products, which could predict the CYPs-mediated drug-drug inter-actions and provide useful guidance and reference for rational drug combination therapy. A set of 20 potential CYP1A2 inhibitors were obtained. Part of the results was consistent with references, which further indicates the accuracy of these models and the reliability of this combinatorial computation strategy. 展开更多
关键词 Support vector machine Support vector regression Molecular docking cypIa2 inhibitor
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