Title of article :
Microarray Missing Values Imputation Methods: Critical Analysis Review
Author/Authors :
Mouath Hourani and Ibrahiem M. M. El Emary، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
26
From page :
165
To page :
190
Abstract :
Gene expression data often contain missing expression values. For the purpose of conducting an effective clustering analysis and since many algorithms for gene expression data analysis require a complete matrix of gene array values, choosing the most effective missing value estimation method is necessary. In this paper, the most commonly used imputation methods from literature are critically reviewed and analyzed to explain the proper use, weakness and point the observations on each published method. From the conducted analysis, we conclude that the Local Least Square (LLS) and Support Vector Regression (SVR) algorithms have achieved the best performances. SVR can be considered as a complement algorithm for LLS especially when applied to noisy data. However, both algorithms suffer from some deficiencies presented in choosing the value of Number of Selected Genes (K) and the appropriate kernel function. To overcome these drawbacks, the need for new method that automatically chooses the parameters of the function and it also has an appropriate computational complexity is imperative.
Keywords :
Least Squares Imputation (LSI) , Singular value decomposition (SVD) , Local Least Square Imputation (LLSI) , Completely at random (MCAR) , Missing At Random (MAR) , Sequential K-Nearest Neighbors (SKNN) , Gene Ontology (GO) , Bayesian Principal Component Analysi
Journal title :
Computer Science and Information Systems
Serial Year :
2009
Journal title :
Computer Science and Information Systems
Record number :
679240
Link To Document :
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