Department of Biochemistry, IMRIC, The Hebrew University-Hadassah Medical School Jerusalem, Israel.
J Control Release. 2012 Jun 10;160(2):147-57. doi: 10.1016/j.jconrel.2011.11.029. Epub 2011 Dec 1.
Remote loading of liposomes by trans-membrane gradients is used to achieve therapeutically efficacious intra-liposome concentrations of drugs. We have developed Quantitative Structure Property Relationship (QSPR) models of remote liposome loading for a data set including 60 drugs studied in 366 loading experiments internally or elsewhere. Both experimental conditions and computed chemical descriptors were employed as independent variables to predict the initial drug/lipid ratio (D/L) required to achieve high loading efficiency. Both binary (to distinguish high vs. low initial D/L) and continuous (to predict real D/L values) models were generated using advanced machine learning approaches and 5-fold external validation. The external prediction accuracy for binary models was as high as 91-96%; for continuous models the mean coefficient R(2) for regression between predicted versus observed values was 0.76-0.79. We conclude that QSPR models can be used to identify candidate drugs expected to have high remote loading capacity while simultaneously optimizing the design of formulation experiments.
通过跨膜梯度远程加载脂质体可实现治疗有效浓度的药物载入脂质体。我们已为包括内部或其他地方 366 次加载实验中研究的 60 种药物的数据集开发了定量构效关系(QSPR)远程脂质体加载模型。实验条件和计算化学描述符都被用作独立变量,以预测实现高载药效率所需的初始药物/脂质比(D/L)。使用先进的机器学习方法和 5 重外部验证生成了二进制(用于区分高初始 D/L 与低初始 D/L)和连续(用于预测真实 D/L 值)模型。二进制模型的外部预测准确性高达 91-96%;对于连续模型,预测值与观察值之间的回归的平均系数 R(2)为 0.76-0.79。我们得出结论,QSPR 模型可用于识别预期具有高远程载药能力的候选药物,同时优化制剂实验的设计。