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A novel interpolation based missing value estimation method to predict missing values in microarray gene expression data

机译:一种基于内插的缺失值估计新方法,用于预测微阵列基因表达数据中的缺失值

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摘要

Microarray experiments can generate data sets with multiple missing expression values, normally due to various experimental problems. Unfortunately, many algorithms for gene expression analysis require a complete matrix of gene array values as input. Thereore, effective missing value estimation methods are essential to minimize the effect of incomplete data sets on analysis, and to increase the range of data sets to which these algorithms can be applied. In this regard, a new interpolation based imputation method is proposed to predict missing values in microarray gene expression data. The proposed method selects a subset of similar genes and a subset of similar samples with respect to each missing position and then applies interpolation in a novel manner to predict that missing value. The performance of the proposed method is studied based on the normalized root mean square error with existing estimation techniques including K-nearest neighbor (KNN), Sequential K-nearest neighbor (SKNN) and Iterative K-nearest neighbor (IKNN). The effectiveness of the proposed method, along with a comparison with existing methods, is demonstrated on different microarray data sets.
机译:通常由于各种实验问题,微阵列实验可以生成具有多个缺失表达值的数据集。不幸的是,许多用于基因表达分析的算法需要完整的基因阵列值矩阵作为输入。因此,有效的缺失值估计方法对于最小化不完整数据集对分析的影响以及扩大可应用这些算法的数据集的范围至关重要。在这方面,提出了一种新的基于插值的插补方法来预测微阵列基因表达数据中的缺失值。所提出的方法针对每个缺失位置选择相似基因的子集和相似样本的子集,然后以新颖的方式应用内插法来预测该缺失值。在归一化均方根误差的基础上,利用包括K近邻(KNN),顺序K近邻(SKNN)和迭代K近邻(IKNN)在内的现有估计技术,研究了该方法的性能。在不同的微阵列数据集上证明了该方法的有效性以及与现有方法的比较。

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