There has been ever increasing interest in the use of microarray experiments as a basis for the provision of prediction (discriminant) rules for improved diagnosis of cancer and other diseases. Typically, the microarray cancer studies provide only a limited number of tissue samples from the specified classes of tumours or patients, whereas each tissue sample may contain the expression levels of thousands of genes. Thus researchers are faced with the problem of forming a prediction rule on the basis of a small number of classified tissue samples, which are of very high dimension. Usually, some form of feature (gene) selection is adopted in the formation of the prediction rule. As the subset of genes used in the final form of the rule have no...
Gene-expression data gathered with microarrays play an important role in detection, classification, ...
<div><p>Classification methods used in microarray studies for gene expression are diverse in the way...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
Currently there is much interest in using microarray gene-expression data to form prediction rules f...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
There is increasing interest in the use of diagnostic rules based on microarray data. These rules ar...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
Microarrays are being increasingly used in cancer research for a better understanding of the molecul...
Motivations: One of the main problems in cancer diagnosis by using DNA microarray data is selecting ...
Background: The measurement of expression levels of many genes through a single experiment is now po...
For data that have many more features than observations, finding a low-dimensional representation th...
Scientific advances are raising expectations that patient-tailored treatment will soon be available....
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Microarray technology is now enabling us to measure the expression levels of large number of genes s...
Gene-expression data gathered with microarrays play an important role in detection, classification, ...
<div><p>Classification methods used in microarray studies for gene expression are diverse in the way...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...
Currently there is much interest in using microarray gene-expression data to form prediction rules f...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
There is increasing interest in the use of diagnostic rules based on microarray data. These rules ar...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
Microarrays are being increasingly used in cancer research for a better understanding of the molecul...
Motivations: One of the main problems in cancer diagnosis by using DNA microarray data is selecting ...
Background: The measurement of expression levels of many genes through a single experiment is now po...
For data that have many more features than observations, finding a low-dimensional representation th...
Scientific advances are raising expectations that patient-tailored treatment will soon be available....
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
One of the main applications of microarray technology is to determine the gene expression profiles o...
Microarray technology is now enabling us to measure the expression levels of large number of genes s...
Gene-expression data gathered with microarrays play an important role in detection, classification, ...
<div><p>Classification methods used in microarray studies for gene expression are diverse in the way...
Gene expression microarray datasets often consist of a limited number of samples relative to a large...