Background: Missing values commonly occur in the microarray data, which usually contain more than 5 % missing values with up to 90 % of genes affected. Inaccurate missing value estimation results in reducing the power of downstream microarray data analyses. Many types of methods have been developed to estimate missing values. Among them, the regression-based methods are very popular and have been shown to perform better than the other types of methods in many testing microarray datasets. Results: To further improve the performances of the regression-based methods, we propose shrinkage regression-based methods. Our methods take the advantage of the correlation structure in the microarray data and select similar genes for the target gene by P...
Gene expression data is widely used in various post genomic analyses. The data is often probed using...
Motivation: Significance analysis of differential expression in DNA microarray data is an important ...
AbstractVarious machine learning algorithms are used for classification of microarray data. The accu...
Background Microarray technology has become popular for gene expression profiling, and many analysis...
Control and correction process of missing values (imputation of MVs) is the first stage of the prepr...
Microarray experiments generate data sets with information on the expression levels of thousands of ...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
DNA microarray is a high throughput gene profiling technology employed in numerous biological and me...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Background: Microarray technologies produced large amount of data. In a previous study, we have show...
Control and correction process of missing values (imputation of MVs) is the first stage of the prepr...
Motivation: Gene expression data often contain missing expression values. Effective missing value es...
DNA microarray experiment inevitably generates gene expression data with missing values. An importan...
Abstract. Microarrays have unique ability to probe thousands of genes at a time that makes it a usef...
Gene expression microarray experiments generate data sets with multiple missing expression values. I...
Gene expression data is widely used in various post genomic analyses. The data is often probed using...
Motivation: Significance analysis of differential expression in DNA microarray data is an important ...
AbstractVarious machine learning algorithms are used for classification of microarray data. The accu...
Background Microarray technology has become popular for gene expression profiling, and many analysis...
Control and correction process of missing values (imputation of MVs) is the first stage of the prepr...
Microarray experiments generate data sets with information on the expression levels of thousands of ...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
DNA microarray is a high throughput gene profiling technology employed in numerous biological and me...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Background: Microarray technologies produced large amount of data. In a previous study, we have show...
Control and correction process of missing values (imputation of MVs) is the first stage of the prepr...
Motivation: Gene expression data often contain missing expression values. Effective missing value es...
DNA microarray experiment inevitably generates gene expression data with missing values. An importan...
Abstract. Microarrays have unique ability to probe thousands of genes at a time that makes it a usef...
Gene expression microarray experiments generate data sets with multiple missing expression values. I...
Gene expression data is widely used in various post genomic analyses. The data is often probed using...
Motivation: Significance analysis of differential expression in DNA microarray data is an important ...
AbstractVarious machine learning algorithms are used for classification of microarray data. The accu...