首页> 外文期刊>Journal of Computer-Aided Molecular Design >Parameterization of an empirical model for the prediction of n-octanol, alkane and cyclohexane/water as well as brain/blood partition coefficients
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Parameterization of an empirical model for the prediction of n-octanol, alkane and cyclohexane/water as well as brain/blood partition coefficients

机译:预测正辛醇,烷烃和环己烷/水以及脑/血分配系数的经验模型的参数化

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Quantitative information of solvation and transfer free energies is often needed for the understanding of many physicochemical processes, e.g the molecular recognition phenomena, the transport and diffusion processes through biological membranes and the tertiary structure of proteins. Recently, a concept for the localization and quantification of hydrophobicity has been introduced (Jager et al. J Chem Inf Comput Sci 43:237-247, 2003). This model is based on the assumptions that the overall hydrophobicity can be obtained as a superposition of fragment contributions. To date, all predictive models for the logP have been parameterized for n-octanol/water (logP (oct) ) solvent while very few models with poor predictive abilities are available for other solvents. In this work, we propose a parameterization of an empirical model for n-octanol/water, alkane/water (logP (alk) ) and cyclohexane/water (logP (cyc) ) systems. Comparison of both logP (alk) and logP (cyc) with the logarithms of brain/blood ratios (logBB) for a set of structurally diverse compounds revealed a high correlation showing their superiority over the logP (oct) measure in this context.
机译:通常需要溶剂化和转移自由能的定量信息来理解许多物理化学过程,例如分子识别现象,通过生物膜的运输和扩散过程以及蛋白质的三级结构。最近,已经引入了疏水性的定位和定量的概念(Jager等人,J Chem Inf Comput Sci 43:237-247,2003)。该模型基于以下假设:总疏水性可以作为片段贡献的叠加获得。迄今为止,已经针对正辛醇/水(logP(oct))溶剂对logP的所有预测模型进行了参数化,而对于其他溶剂,只有极少数具有较差预测能力的模型可用。在这项工作中,我们提出了正辛醇/水,烷烃/水(logP(alk))和环己烷/水(logP(cyc))系统的经验模型的参数化。一组结构多样的化合物的logP(alk)和logP(cyc)与脑/血比对数(logBB)的比较显示出高度相关性,表明它们在这种情况下优于logP(oct)量度。

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