Biologists seek to identify a small number of significant features that are important, non-redundant, and relevant from diverse omics data. For example, statistical methods such as LIMMA and DEseq distinguish differentially expressed genes between a case and control group from the transcript profile. Researchers also apply various column subset selection algorithms on genomics datasets for a similar purpose. Unfortunately, genes selected by such statistical or machine learning methods are often highly co-regulated, making their performance inconsistent. Here, we introduce a novel feature selection algorithm that selects highly disease-related and non-redundant features from a diverse set of omics datasets. We successfully applied this algor...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
Classification of high dimensional gene expression data is key to the development of effective di-ag...
The identification and classification of different cancer type and feature gene subset selection are...
Background: Genome wide gene expression data is a rich source for the identification of gene signatu...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
© 2018 IEEE. Classification in cancer has traditionally relied on feature selection by differential ...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
Cancer is a fearful, deadly disease. Currently there is almost no cure. The reason is that the disea...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
Classification of high dimensional gene expression data is key to the development of effective di-ag...
The identification and classification of different cancer type and feature gene subset selection are...
Background: Genome wide gene expression data is a rich source for the identification of gene signatu...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
© 2018 IEEE. Classification in cancer has traditionally relied on feature selection by differential ...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
Cancer is a fearful, deadly disease. Currently there is almost no cure. The reason is that the disea...
Although there are several causes of cancer, scientists have made a major breakthrough in discoveri...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...