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Comparison of estimation methods for missing value imputation of gene expression data

机译:基因表达数据缺失价值归档的估计方法比较

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Control and correction process of missing values (imputation of MVs) is the first stage of the preprocessing of microarray datasets. This paper focuses on a comparison of most reliable and up to date estimation methods to control and correct the missing values. Imputation of MVs has a very high priority because of its impact on next pre-processing and post-processing stages of microarray data analysis namely, quality control, normalization, differential gene expression, classification, clustering, and pathway analysis, etc. Normalized root mean square error (NRMSE) value is used to evaluate the performances of most popular five methods (k-nearest neighbors, Bayesian principal component analysis, local least squares, mean and median). When NRMSE values of methods were compared, it has observed that local least squares (LLS) and Bayesian principal component analysis (BPCA) methods outperformed all other methods in all percentages of MVs (1%, 5%, 10%, and 20%). BPCA method has given the best results in all percentages of MVs over the number of probes or genes, whereas LLS method has given the best results in all percentages of MVs over the number of samples. The advantage of these two methods over others is that they are least affected by the complexity of the data set.
机译:缺失值的控制和校正过程(MVS的归纳)是微阵列数据集预处理的第一阶段。本文重点介绍了最可靠和最新的估计方法来控制和纠正缺失值的比较。 MVS的归纳具有非常高的优先级,因为它对微阵列数据分析的下一个预处理和后处理阶段的影响即,质量控制,归一化,差异基因表达,分类,聚类和途径分析等。标准化的根本方形错误(NRMSE)值用于评估最受欢迎的五种方法的性能(K-Collest邻居,贝叶斯主成分分析,局部最小二乘,均值和中位数)。当比较方法的NRMSE值时,已经观察到局部最小二乘(LLS)和贝叶斯主成分分析(BPCA)方法优于所有百分比的MV(1%,5%,10%和20%)中的所有其他方法。 BPCA方法在探针或基因的数量上给出了所有百分比MV的最佳结果,而LLS方法在所有百分比的样品数量上给出了最佳结果。这两种方法对他人的优点是它们对数据集的复杂性的影响最小。

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