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Ranking Function Based on Higher Order Statistics (RF-HOS) for Two-Sample Microarray Experiments

机译:基于高阶统计量(RF-HOS)的两样本微阵列实验排序功能

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This paper proposes a novel ranking function, called RFHOS by incorporating higher order cumulants into the ranking function for finding differentially expressed genes. Traditional ranking functions assume a data distribution (e.g., Normal) and use only first two cumulants for statistical significance analysis. Ranking functions based on second order statistics are often inadequate in ranking small sampled data (e.g., Microarray data). Also, relatively small number of samples in the data makes it hard to estimate the parameters accurately causing inaccuracies in ranking of the genes. The proposed ranking function is based on higher order statistics (RFHOS) that account for both the amplitude and the phase information by incorporating the HOS. The incorporation of HOS deviates from implicit symmetry assumed for Gaussian distribution. In this paper the performance of the RFHOS is compared against other well known ranking functions designed for ranking the genes in two sample microarray experiments.
机译:本文提出了一种新的排名功能,称为RFHOS,它通过将高阶累积量合并到排名功能中来寻找差异表达的基因。传统的排名功能假定数据分布(例如,正态),并且仅使用前两个累积量进行统计显着性分析。基于二阶统计量的排名功能通常不足以对小型采样数据(例如,微阵列数据)进行排名。同样,数据中样本的数量相对较少,因此很难准确估计参数,从而导致基因排名不准确。拟议的排序功能基于高阶统计量(RFHOS),该统计量通过合并HOS同时考虑了幅度和相位信息。 HOS的引入偏离了高斯分布所假定的隐式对称性。在本文中,将RFHOS的性能与设计用于在两个样本微阵列实验中对基因进行排名的其他众所周知的排名功能进行了比较。

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