Analyzing DNA microarray data sets is a great challenge, which faces the bioinformaticians due to the complication of using statistical and machine learning techniques. The challenge will be doubled if the microarray data sets contain missing data, which happens regularly because these techniques cannot deal with missing data. One of the most important data analysis process on the microarray data set is feature selection. This process finds the most important genes that affect certain disease. In this paper, we introduce a technique for imputing the missing data in microarray data sets while performing feature selection
In gene expression studies, missing values are a common problem with important consequences for the ...
Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance of molec...
<div><p>Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance ...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Abstract — Gene expression microarray technology has en-abled advanced biological and medical resear...
DNA microarray is a high throughput gene profiling technology employed in numerous biological and me...
Motivation: Significance analysis of differential expression in DNA microarray data is an important ...
The amount of biological data has grown exponentially in recent decades. Modern biotechnologies, suc...
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...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
In gene expression studies missing values have been a common problem. It has an important consequen...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Abstract. Microarrays have unique ability to probe thousands of genes at a time that makes it a usef...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
In gene expression studies, missing values are a common problem with important consequences for the ...
Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance of molec...
<div><p>Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance ...
Abstract — Many attempts have been carried out to deal with missing values (MV) in microarrays data ...
Abstract — Gene expression microarray technology has en-abled advanced biological and medical resear...
DNA microarray is a high throughput gene profiling technology employed in numerous biological and me...
Motivation: Significance analysis of differential expression in DNA microarray data is an important ...
The amount of biological data has grown exponentially in recent decades. Modern biotechnologies, suc...
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...
Amongst the high-throughput technologies, DNA microarray experiments provide enormous quantity of ge...
In gene expression studies missing values have been a common problem. It has an important consequen...
Microarrays measure expression patterns of thousands of genes at a time, under same or diverse condi...
Abstract. Microarrays have unique ability to probe thousands of genes at a time that makes it a usef...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
In gene expression studies, missing values are a common problem with important consequences for the ...
Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance of molec...
<div><p>Oligonucleotide microarrays are commonly adopted for detecting and qualifying the abundance ...