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首页> 外文期刊>European Journal of Medicinal Chemistry: Chimie Therapeutique >A comparative study of artificial membrane permeability assay for high throughput profiling of drug absorption potential.
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A comparative study of artificial membrane permeability assay for high throughput profiling of drug absorption potential.

机译:用于药物吸收潜力高通量分析的人工膜通透性测定的比较研究。

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摘要

Artificial membrane permeability measurement is a potentially high throughput and low cost alternative for in vitro assessment of drug absorption potential. It will be an ideal screening/profiling tool in the lead generation program of drug discovery research if it is proven to be generally applicable for classifying drug absorption potential and is advantageous over other in vitro or in silico methods. This study provides an in-depth evaluation of the method in close comparison to Caco-2, LogD, LogP, polar surface area (PSA), and quantitative structure-property relationship (QSPR) predictions using a large and diverse compound set. It showed that the accuracy of using artificial membrane permeability in assessing drug absorption is comparable to Caco-2, but significantly better than LogP, LogD, PSA, and QSPR predictions. This study also explored the artificial membrane composition by adopting a hydrophilic filter membrane for artificial membrane (lecithin-dodecane) support. The use of hydrophilic filter membrane increased the rate of permeation significantly and reduced the transport time to 2 h or less as compared with over 10 h when a hydrophobic filter membrane is used.
机译:人工膜通透性测量是用于体外评估药物吸收潜力的潜在高通量和低成本替代方法。如果它被证明可普遍用于对药物吸收潜力进行分类,并且比其他体外或计算机方法更具优势,它将是药物发现研究的线索生成程序中的理想筛选/分析工具。这项研究与使用大量不同化合物组的Caco-2,LogD,LogP,极性表面积(PSA)和定量结构-性质关系(QSPR)预测值进行了比较,从而对该方法进行了深入评估。结果表明,使用人工膜通透性评估药物吸收的准确性与Caco-2相当,但明显优于LogP,LogD,PSA和QSPR预测。该研究还通过采用亲水性滤膜作为人工膜(卵磷脂-十二烷)载体来探索人工膜的组成。与使用疏水性滤膜时超过10小时相比,使用亲水性滤膜可显着提高渗透率并将运输时间减少至2小时或更短。

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