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Multivariate modeling of cytochrome P450 3A4 inhibition.

机译:细胞色素P450 3A4抑制的多变量建模。

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摘要

In the early phases of current pharmaceutical research projects, huge numbers of compounds are tested on their biological activity with respect to a certain target by experimental or virtual screening campaigns. To reduce the attrition rate in later stages of a project, other relevant properties such as physicochemical and ADMET (absorption, distribution, metabolism, excretion, toxicity) properties should be assessed as early as possible in lead discovery and optimization. The present study describes the development of in silico models to predict the inhibition of human cytochrome P450 3A4 (CYP3A4) from calculated molecular descriptors. The models were trained and validated using a set of 967 structural diverse drug-like research compounds with an experimentally determined CYP3A4 inhibition potency (IC50 value) which was carefully split into a training and a test set. For classification models, the data sets were further subdivided into strong, medium, and weak inhibitors. Different descriptor sets were used to cover various aspects of molecular properties, including properties derived from the 2D structure, the interaction of the molecule with its environment, and properties derived from quantum-mechanical calculations. The descriptors were related to the CYP3A4 inhibition potency by multivariate data analysis methods such as partial least-squares projection to latent structures (PLS), PLS discriminant analysis (PLS-DA), and soft independent class modeling (SIMCA). The squared correlation between experimental and predicted IC50 values of the previously unseen test set compounds was Qext2=0.6 for the best PLS models, corresponding to a root mean squared error (RMSE) of RMSE=0.45 (logarithm of IC50). The best PLS-DA models were able to correctly classify more than 60% of the test set compounds, whereas almost no strong inhibitors were wrongly classified as weak inhibitors and vice versa. Furthermore, relevant molecular properties were identified which are closely related to the CYP3A4 inhibition potency of a compound. The results presented here are very encouraging since our models could, for instance, serve to flag problematic compounds or to guide further synthesis efforts.
机译:在当前药物研究项目的早期阶段,通过实验或虚拟筛选活动对大量化合物针对特定目标的生物活性进行了测试。为了降低项目后期的人员流失率,应在铅的发现和优化过程中尽早评估其他相关属性,例如理化性质和ADMET(吸收,分布,代谢,排泄,毒性)属性。本研究描述了计算机模型的发展,该模型可通过计算的分子描述子预测对人类细胞色素P450 3A4(CYP3A4)的抑制作用。使用一组967种结构多样的药物样研究化合物对模型进行训练和验证,这些化合物具有通过实验确定的CYP3A4抑制效能(IC50值),将其仔细分为训练和测试集。对于分类模型,将数据集进一步细分为强,中和弱抑制剂。使用了不同的描述符集来涵盖分子特性的各个方面,包括从2D结构派生的特性,分子与其环境的相互作用以及从量子力学计算派生的特性。描述符通过多种数据分析方法与CYP3A4抑制能力相关,例如对潜在结构的局部最小二乘投影(PLS),PLS判别分析(PLS-DA)和软独立类建模(SIMCA)。对于最佳的PLS模型,先前看不见的测试集化合物的实验IC50值和预测IC50值之间的平方相关性为Qext2 = 0.6,对应于RMSE的均方根误差(RMSE)= 0.45(IC50的对数)。最好的PLS-DA模型能够正确分类60%以上的测试化合物,而几乎没有强抑制剂被错误地分类为弱抑制剂,反之亦然。此外,鉴定了与化合物的CYP3A4抑制能力密切相关的相关分子性质。此处给出的结果令人鼓舞,因为我们的模型可以例如用于标记有问题的化合物或指导进一步的合成工作。

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