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影响药物向人乳中转移量的分子描述符。

Molecular descriptors that influence the amount of drugs transfer into human breast milk.

作者信息

Agatonovic-Kustrin S, Ling L H, Tham S Y, Alany R G

机构信息

School of Pharmaceutical, Molecular and Biomedical Science, University of South Australia, North Terrace, Adelaide 5000, Australia.

出版信息

J Pharm Biomed Anal. 2002 Jun 20;29(1-2):103-19. doi: 10.1016/s0731-7085(02)00037-7.

Abstract

Most drugs are excreted into breast milk to some extent and are bioavailable to the infant. The ability to predict the approximate amount of drug that might be present in milk from the drug structure would be very useful in the clinical setting. The aim of this research was to simplify and upgrade the previously developed model for prediction of the milk to plasma (M/P) concentration ratio, given only the molecular structure of the drug. The set of 123 drug compounds, with experimentally derived M/P values taken from the literature, was used to develop, test and validate a predictive model. Each compound was encoded with 71 calculated molecular structure descriptors, including constitutional descriptors, topological descriptors, molecular connectivity, geometrical descriptors, quantum chemical descriptors, physicochemical descriptors and liquid properties. Genetic algorithm was used to select a subset of the descriptors that best describe the drug transfer into breast milk and artificial neural network (ANN) to correlate selected descriptors with the M/P ratio and develop a QSAR. The averaged literature M/P values were used as the ANN's output and calculated molecular descriptors as the inputs. A nine-descriptor nonlinear computational neural network model has been developed for the estimation of M/P ratio values for a data set of 123 drugs. The model included the percent of oxygen, parachor, density, highest occupied molecular orbital energy (HOMO), topological indices (chiV2, chi2 and chi1) and shape indices (kappa3, kappa2), as the inputs had four hidden neurons and one output neuron. The QSPR that was developed indicates that molecular size (parachor, density) shape (topological shape indices, molecular connectivity indices) and electronic properties (HOMO) are the most important for drug transfer into breast milk. Unlike previously reported models, the QSPR model described here does not require experimentally derived parameters and could potentially provide a useful prediction of M/P ratio of new drugs only from a sketch of their structure and this approach might also be useful for drug information service. Regardless of the model or method used to estimate drug transfer into breast milk, these predictions should only be used to assist in the evaluation of risk, in conjunction with assessment of the infant's response.

摘要

大多数药物在一定程度上会排泄到母乳中,并对婴儿具有生物利用度。从药物结构预测母乳中可能存在的药物大致量的能力在临床环境中非常有用。本研究的目的是简化和升级先前开发的仅根据药物分子结构预测母乳与血浆(M/P)浓度比的模型。使用从文献中获取实验得出的M/P值的123种药物化合物数据集来开发、测试和验证预测模型。每种化合物用71个计算得出的分子结构描述符进行编码,包括组成描述符、拓扑描述符、分子连接性、几何描述符、量子化学描述符、物理化学描述符和液体性质。遗传算法用于选择最能描述药物向母乳中转移的描述符子集,人工神经网络(ANN)用于将所选描述符与M/P比相关联并开发定量构效关系(QSAR)。平均文献M/P值用作ANN的输出,计算得出的分子描述符用作输入。已开发出一个九描述符非线性计算神经网络模型,用于估计123种药物数据集的M/P比值。该模型包括氧含量百分比、等张比容、密度、最高占据分子轨道能量(HOMO)、拓扑指数(chiV2、chi2和chi1)和形状指数(kappa3、kappa2),输入层有四个隐藏神经元和一个输出神经元。所开发的定量构效关系表明,分子大小(等张比容、密度)、形状(拓扑形状指数、分子连接指数)和电子性质(HOMO)对于药物向母乳中的转移最为重要。与先前报道的模型不同,此处描述的QSAR模型不需要实验得出的参数,仅根据新药的结构草图就可能对其M/P比提供有用的预测,并且这种方法可能对药物信息服务也有用。无论用于估计药物向母乳中转移的模型或方法如何,这些预测仅应用于协助评估风险,并结合对婴儿反应的评估。

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