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药物发现中的ADME评估。5. Caco-2细胞通透性与简单分子性质的相关性。

ADME evaluation in drug discovery. 5. Correlation of Caco-2 permeation with simple molecular properties.

作者信息

Hou T J, Zhang W, Xia K, Qiao X B, Xu X J

机构信息

College of Chemistry and Molecular Engineering, Peking University, Beijing 100871, China.

出版信息

J Chem Inf Comput Sci. 2004 Sep-Oct;44(5):1585-600. doi: 10.1021/ci049884m.

Abstract

The correlations between Caco-2 permeability (logPapp) and molecular properties have been investigated. A training set of 77 structurally diverse organic molecules was used to construct significant QSAR models for Caco-2 cell permeation. Cellular permeation was found to depend primarily upon experimental distribution coefficient (logD) at pH = 7.4, high charged polar surface area (HCPSA), and radius of gyration (rgyr). Among these three descriptors, logD may have the largest impact on diffusion through Caco-2 cell because logD shows obvious linear correlation with logPapp (r=0.703) when logD is smaller than 2.0. High polar surface area will be unfavorable to achieve good Caco-2 permeability because higher polar surface area will introduce stronger H-bonding interactions between Caco-2 cells and drugs. The comparison among HCPSA, PSA (polar surface area), and TPSA (topological polar surface area) implies that high-charged atoms may be more important to the interactions between Caco-2 cell and drugs. Besides logD and HCPSA, rgyr is also closely connected with Caco-2 permeabilities. The molecules with larger rgyr are more difficult to cross Caco-2 monolayers than those with smaller rgyr. The descriptors included in the prediction models permit the interpretation in structural terms of the passive permeability process, evidencing the main role of lipholiphicity, H-bonding, and bulk properties. Besides these three molecular descriptors, the influence of other molecular descriptors was also investigated. From the calculated results, it can be found that introducing descriptors concerned with molecular flexibility can improve the linear correlation. The resulting model with four descriptors bears good statistical significance, n = 77, r = 0.82, q = 0.79, s = 0.45, F = 35.7. The actual predictive abilities of the QSAR model were validated through an external validation test set of 23 diverse compounds. The predictions for the tested compounds are as the same accuracy as the compounds of the training set and significantly better than those predicted by using the model reported. The good predictive ability suggests that the proposed model may be a good tool for fast screening of logPapp for compound libraries or large sets of new chemical entities via combinatorial chemistry synthesis.

摘要

已对Caco-2通透性(logPapp)与分子性质之间的相关性进行了研究。使用一组包含77种结构各异的有机分子的训练集来构建用于Caco-2细胞渗透的有效定量构效关系(QSAR)模型。发现细胞渗透主要取决于pH = 7.4时的实验分配系数(logD)、高电荷极性表面积(HCPSA)和回转半径(rgyr)。在这三个描述符中,logD对通过Caco-2细胞的扩散可能影响最大,因为当logD小于2.0时,logD与logPapp呈现明显的线性相关性(r = 0.703)。高极性表面积不利于实现良好的Caco-2通透性,因为更高的极性表面积会在Caco-2细胞与药物之间引入更强的氢键相互作用。HCPSA、PSA(极性表面积)和TPSA(拓扑极性表面积)之间的比较表明,高电荷原子对Caco-2细胞与药物之间的相互作用可能更为重要。除了logD和HCPSA外,rgyr也与Caco-2通透性密切相关。回转半径较大的分子比回转半径较小的分子更难穿过Caco-2单层。预测模型中包含的描述符允许从结构角度解释被动通透性过程,证明了脂溶性、氢键和体积性质的主要作用。除了这三个分子描述符外,还研究了其他分子描述符的影响。从计算结果可以发现,引入与分子柔韧性有关的描述符可以改善线性相关性。所得的包含四个描述符的模型具有良好的统计学意义,n = 77,r = 0.82,q = 0.79,s = 0.45 , F = 35.7。通过23种不同化合物的外部验证测试集验证了QSAR模型的实际预测能力。对测试化合物的预测与训练集化合物具有相同的准确性,并且明显优于使用所报道模型预测的结果。良好的预测能力表明,所提出的模型可能是通过组合化学合成快速筛选化合物库或大量新化学实体logPapp的良好工具。

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