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Molecular hashkeys: a novel method for molecular characterization and its application for predicting important pharmaceutical properties of molecules.

机译:分子哈希键:一种用于分子表征的新方法及其在预测分子重要药物特性中的应用。

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摘要

We define a novel numerical molecular representation, called the molecular hashkey, that captures sufficient information about a molecule to predict pharmaceutically interesting properties directly from three-dimensional molecular structure. The molecular hashkey represents molecular surface properties as a linear array of pairwise surface-based comparisons of the target molecule against a common 'basis-set' of molecules. Hashkey-measured molecular similarity correlates well with direct methods of measuring molecular surface similarity. Using a simple machine-learning technique with the molecular hashkeys, we show that it is possible to accurately predict the octanol-water partition coefficient, log P. Using more sophisticated learning techniques, we show that an accurate model of intestinal absorption for a set of drugs can be constructed using the same hashkeys used in the aforementioned experiments. Once a set of molecular hashkeys is calculated, its use in the training and testing of property-based models is very fast. Further, the required amount of data for model construction is very small. Neural network-based hashkey models trained on data sets as small as 30 molecules yield statistically significant prediction of molecular properties. The lack of a requirement for large data sets lends itself well to the prediction of pharmaceutically relevant molecular parameters for which data generation is expensive and slow. Molecular hashkeys coupled with machine-learning techniques can yield models that predict key pharmacological aspects of biologically important molecules and should therefore be important in the design of effective therapeutics.
机译:我们定义了一种新颖的数字分子表示形式,称为分子哈希键,它可以捕获有关分子的足够信息,以直接从三维分子结构中预测可药用的特性。分子哈希键将分子表面特性表示为目标分子与常见分子“基集”的成对基于表面的比较的线性阵列。 Hashkey测量的分子相似性与测量分子表面相似性的直接方法具有很好的相关性。使用带有分子哈希键的简单机器学习技术,我们表明可以准确预测辛醇-水分配系数logP。使用更复杂的学习技术,我们可以显示一组准确的肠道吸收模型可以使用上述实验中使用的相同哈希键构建药物。一旦计算出一组分子哈希键,它就可以很快地用于基于属性的模型的训练和测试中。此外,模型构建所需的数据量非常小。在仅30个分子的数据集上进行训练的基于神经网络的哈希键模型就可以得出具有统计学意义的分子特性预测。对大数据集的需求的缺乏很适合预测药物相关的分子参数,对于这些参数而言,数据生成既昂贵又缓慢。分子哈希键与机器学习技术相结合,可以产生可预测生物学上重要分子的关键药理方面的模型,因此在有效治疗剂的设计中应十分重要。

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