AbstractObjectivesClassification of breast cancer patients into different risk classes is very important in clinical applications. It is estimated that the advent of high-dimensional gene expression data could improve patient classification. In this study, a new method for transforming the high-dimensional gene expression data in a low-dimensional space based on wavelet transform (WT) is presented.MethodsThe proposed method was applied to three publicly available microarray data sets. After dimensionality reduction using supervised wavelet, a predictive support vector machine (SVM) model was built upon the reduced dimensional space. In addition, the proposed method was compared with the supervised principal component analysis (PCA).ResultsT...
Analyzing the genetic activity of breast cancer survival for a specific type of therapy provides a b...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
AbstractObjectivesClassification of breast cancer patients into different risk classes is very impor...
In microarray studies, the number of samples is relatively small compared to the number of genes per...
Copyright © 2014 Maryam Farhadian et al. This is an open access article distributed under the Creati...
In microarray studies, the number of samples is relatively small compared to the number of genes per...
The microarrays report the measures of the expression levels of tens of thousands of genes, this hig...
Cancer can be classified based on its morphologis structure or gene expression values in microarray ...
Recent research has shown that gene expression profiles can potentially be used for predicting pheno...
Cancer classification by doctors and radiologists was based on morphological and clinical features a...
Abstract Background The ability to accurately classify cancer patients into risk classes, i.e. to pr...
Biomarkers which predict patient’s survival can play an important role in medical diagnosis and\ud t...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
© 2018 IEEE. Breast cancer as one of the most feared killers of women, there are still no effective ...
Analyzing the genetic activity of breast cancer survival for a specific type of therapy provides a b...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
AbstractObjectivesClassification of breast cancer patients into different risk classes is very impor...
In microarray studies, the number of samples is relatively small compared to the number of genes per...
Copyright © 2014 Maryam Farhadian et al. This is an open access article distributed under the Creati...
In microarray studies, the number of samples is relatively small compared to the number of genes per...
The microarrays report the measures of the expression levels of tens of thousands of genes, this hig...
Cancer can be classified based on its morphologis structure or gene expression values in microarray ...
Recent research has shown that gene expression profiles can potentially be used for predicting pheno...
Cancer classification by doctors and radiologists was based on morphological and clinical features a...
Abstract Background The ability to accurately classify cancer patients into risk classes, i.e. to pr...
Biomarkers which predict patient’s survival can play an important role in medical diagnosis and\ud t...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
© 2018 IEEE. Breast cancer as one of the most feared killers of women, there are still no effective ...
Analyzing the genetic activity of breast cancer survival for a specific type of therapy provides a b...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...