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Ranking of multidimensional drug profiling data by fractional-adjusted bi-partitional scores

机译:分数调整后的双分区分数对多维药物分析数据的排名

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Motivation: The recent development of high-throughput drug profiling (high content screening or HCS) provides a large amount of quantitative multidimensional data. Despite its potentials, it poses several challenges for academia and industry analysts alike. This is especially true for ranking the effectiveness of several drugs from many thousands of images directly. This paper introduces, for the first time, a new framework for automatically ordering the performance of drugs, called fractional adjusted bi-partitional score (FABS). This general strategy takes advantage of graph-based formulations and solutions and avoids many shortfalls of traditionally used methods in practice. We experimented with FABS framework by implementing it with a specific algorithm, a variant of normalized cut-normalized cut prime (FABS-NC'), producing a ranking of drugs. This algorithm is known to run in polynomial time and therefore can scale well in high-throughput applications. Results: We compare the performance of FABS-NC' to other methods that could be used for drugs ranking. We devise two variants of the FABS algorithm: FABS-SVM that utilizes support vector machine (SVM) as black box, and FABS-Spectral that utilizes the eigenvector technique (spectral) as black box. We compare the performance of FABS-NC' also to three other methods that have been previously considered: center ranking (Center), PCA ranking (PCA), and graph transition energy method (GTEM). The conclusion is encouraging: FABS-NC' consistently outperforms all these five alternatives. FABS-SVM has the second best performance among these six methods, but is far behind FABS-NC': In some cases FABS-NC' produces over half correctly predicted ranking experiment trials than FABS-SVM.
机译:动机:高通量药物分析(高含量筛选或HCS)的最新发展提供了大量的定量多维数据。尽管具有潜力,但它给学术界和行业分析师都带来了一些挑战。直接从成千上万个图像中对几种药物的效果进行排名尤其如此。本文首次介绍了一种自动排序药物性能的新框架,称为分数调整的二部分分数(FABS)。这种通用策略利用了基于图形的公式和解决方案,并避免了实践中传统使用方法的许多不足。我们通过使用特定算法实施FABS框架进行了实验,该算法是归一化割归一化割素数(FABS-NC')的变体,从而产生了药品排名。该算法运行在多项式时间内,因此可以在高通量应用中很好地扩展。结果:我们将FABS-NC'的性能与可用于药物排名的其他方法进行了比较。我们设计了FABS算法的两种变体:利用支持向量机(SVM)作为黑盒的FABS-SVM,以及利用特征向量技术(频谱)作为黑盒的FABS-Spectral。我们还将FABS-NC'的性能与之前考虑的其他三种方法进行了比较:中心排名(Center),PCA排名(PCA)和图形转换能量方法(GTEM)。结论令人鼓舞:FABS-NC始终胜过所有这五个替代方案。 FABS-SVM在这六种方法中具有第二好的性能,但远远落后于FABS-NC':在某些情况下,FABS-NC'比FABS-SVM产生了一半以上的正确预测的排名实验。

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