This paper presents a new method for tumor classification using gene expression data. In the proposed method, we first select genes using nonnegative matrix factorization (NMF) or sparse NMF (SNMF), and then we extract features from the selected genes by virtue of NMF or SNMF. At last, we apply support vector machines (SVM) to classify the tumor samples using the extracted features. In order for a better classification, a modified SNMF algorithm is also proposed. The experimental results on benchmark three microarray data sets validate that the proposed method is efficient. Moreover, the biological meaning of the selected genes are also analyzed.Department of Computin
Gene expression data always suffer from the high dimensionality issue, therefore feature selection b...
Expression-based classification of tumors requires stable, reliable and variance re-duction methods,...
Abstract: Problem statement: The objective of this study is, to find the smallest set of genes that ...
Non-negative matrix factorization (NMF) is a relatively new approach to analyze gene expression data...
Using gene expression data to discriminate tumor from the normal ones is a powerful method. However,...
DNA microarray technology allows detection of the expression levels of thousands of genes at a time,...
This paper gives a novel method for improving classification performance for cancer classification w...
This paper proposes a new method for tumor classification using gene expression data, which mainly c...
Personalized drug design requires the classification of cancer patients as accurate as possible. Wit...
The classification of different types of tumor is of great importance in cancer diagnosis and drug d...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
One challenge in microarray analysis is to discover and capture valuable knowledge to understand bio...
The rapid development of high-performance technologies has greatly promoted studies of molecular onc...
In this paper a gene expression study is presented aiming at distinguishing between brain tumors of ...
ABSTRACT Over the past few years, there has been a considerable spread of microarray technology in ...
Gene expression data always suffer from the high dimensionality issue, therefore feature selection b...
Expression-based classification of tumors requires stable, reliable and variance re-duction methods,...
Abstract: Problem statement: The objective of this study is, to find the smallest set of genes that ...
Non-negative matrix factorization (NMF) is a relatively new approach to analyze gene expression data...
Using gene expression data to discriminate tumor from the normal ones is a powerful method. However,...
DNA microarray technology allows detection of the expression levels of thousands of genes at a time,...
This paper gives a novel method for improving classification performance for cancer classification w...
This paper proposes a new method for tumor classification using gene expression data, which mainly c...
Personalized drug design requires the classification of cancer patients as accurate as possible. Wit...
The classification of different types of tumor is of great importance in cancer diagnosis and drug d...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
One challenge in microarray analysis is to discover and capture valuable knowledge to understand bio...
The rapid development of high-performance technologies has greatly promoted studies of molecular onc...
In this paper a gene expression study is presented aiming at distinguishing between brain tumors of ...
ABSTRACT Over the past few years, there has been a considerable spread of microarray technology in ...
Gene expression data always suffer from the high dimensionality issue, therefore feature selection b...
Expression-based classification of tumors requires stable, reliable and variance re-duction methods,...
Abstract: Problem statement: The objective of this study is, to find the smallest set of genes that ...