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Predicting Penetration Across the Blood-Brain Barrier - A Rough Set Approach

机译:预测血脑屏障的渗透 - 一种粗糙的设定方法

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This paper reports on the results of experiments regarding a biomedical data set describing blood-brain barrier penetration ability of molecules. In this data set 415 cases represent organic compounds with known steady-state concentrations of a drug in the brain and blood. In our experiments we used two different discretization algorithms, based on agglomerative and divisive approaches of cluster analysis, respectively, and two different approaches to missing attribute values: deletion of cases with missing attribute values and deletion of attributes with missing values. Using ten-fold cross validation we concluded that the best strategy is based on a divisive approach of cluster analysis and deleting cases affected by missing attribute values. Moreover, prediction accuracy of this strategy is comparable with the other successful approaches reported in this area.
机译:本文报告了关于描述分子血脑阻隔渗透能力的生物医学数据集的实验结果。在该数据中,415例患者代表脑和血液中具有已知稳态浓度的有机化合物。在我们的实验中,我们使用两种不同的离散化算法,基于聚类分析的凝聚和分歧方法,以及缺少属性值的两种不同方法:删除具有缺少属性值的案例和缺少具有缺失值的属性。使用十倍的交叉验证,我们得出的结论是,最佳策略基于集群分析和受缺失属性值影响的丢失案例的分隔方法。此外,该策略的预测准确性与该区域报告的其他成功方法相当。

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