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

Jianwen Fang, J. Grzymala-Busse
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引用次数: 10

Abstract

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.
预测穿透血脑屏障的粗糙集方法
本文报道了描述分子血脑屏障穿透能力的生物医学数据集的实验结果。在这个数据集中,415个案例代表了在大脑和血液中具有已知稳态药物浓度的有机化合物。在我们的实验中,我们使用了两种不同的离散化算法,分别基于聚类分析的聚集和分裂方法,以及两种不同的缺失属性值方法:删除缺失属性值的案例和删除缺失值的属性。通过十倍交叉验证,我们得出结论,最佳策略是基于聚类分析的分裂方法,并删除受缺失属性值影响的情况。此外,该策略的预测精度与该领域报道的其他成功方法相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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