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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Octanol-water partition coefficient measurements for the SAMPL6 blind prediction challenge
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Octanol-water partition coefficient measurements for the SAMPL6 blind prediction challenge

机译:SAMPL6盲预测挑战的辛醇 - 水分配系数测量

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Partition coefficients describe the equilibrium partitioning of a single, defined charge state of a solute between two liquid phases in contact, typically a neutral solute. Octanol-water partition coefficients (Kowor their logarithms (log P), are frequently used as a measure of lipophilicity in drug discovery. The partition coefficient is a physicochemical property that captures the thermodynamics of relative solvation between aqueous and nonpolar phases, and therefore provides an excellent test for physics-based computational models that predict properties of pharmaceutical relevance such as protein-ligand binding affinities or hydration/solvation free energies. The SAMPL6 Part II octanol-water partition coefficient prediction challenge used a subset of kinase inhibitor fragment-like compounds from the SAMPL6 pKa prediction challenge in a blind experimental benchmark. Following experimental data collection, the partition coefficient dataset was kept blinded until all predictions were collected from participating computational chemistry groups. A total of 91 submissions were received from 27 participating research groups. This paper presents the octanol-water log P dataset for this SAMPL6 Part II partition coefficient challenge, which consisted of 11 compounds (six 4-aminoquinazolines, two benzimidazole, one pyrazolo[3,4-d]pyrimidine, one pyridine, one 2-oxoquinoline substructure containing compounds) with log P values in the range of 1.95-4.09. We describe the potentiometric log P measurement protocol used to collect this dataset using a Sirius T3, discuss the limitations of this experimental approach, and share suggestions for future log P data collection efforts for the evaluation of computational methods.
机译:分区系数描述了在接触的两个液相之间的单个定义电荷状态的平衡分配,通常是中性溶质。辛醇 - 水分配系数(kowor它们的对数(log p)经常被用作药物发现中的亲脂性的量度。分区系数是捕获水性和非极阶段之间相对溶剂的热力学的物理化学性质,因此提供了一种物理化学性质,因此提供了一种对基于物理学的计算模型的优异测试,其预测药物相关性的性质,例如蛋白质 - 配体结合亲和力或水合/溶剂化无能量。SAMPR6部分辛醇 - 水分配系数预测攻击使用激酶抑制剂片段状化合物的子集盲目实验基准中的SAMPR6 PKA预测挑战。在实验数据收集之后,分区系数数据集保持蒙蔽,直到所有预测从参与计算化学组收集。从27个参与的研究小组收到了91个提交。本文呈现octanol-w ater log p数据集进行该SAMPR6部分分区系数挑战,其中包括11种化合物(六个氨基喹唑啉,两个苯并咪唑,一个吡唑[3,4-D]嘧啶,一种吡啶,含有2-氧代喹啉亚结构的含有化合物) log p值范围为1.95-4.09。我们描述了用于使用Sirius T3收集该数据集的电位测量数量协议,讨论这种实验方法的限制,并分享未来日志数据收集的建议,以评估计算方法。

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