Biological heterogeneity is common in many diseases and it is often the reason for therapeutic failures. Thus, there is great interest in classifying a disease into subtypes that have clinical significance in terms of prognosis or therapy response. One of the most popular methods to uncover unrecognized subtypes is cluster analysis. However, classical clustering methods such as k-means clustering or hierarchical clustering are not guaranteed to produce clinically interesting subtypes. This could be because the main statistical variability—the basis of cluster generation—is dominated by genes not associated with the clinical phenotype of interest. Furthermore, a strong prognostic factor might be relevant for a certain subgroup but not for th...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
IntroductionSignificant differences in outcome are observed among lung cancer patients belonging to ...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
In cancer research, as in all of medicine, it is important to classify patients into etiologically a...
In cancer research, as in all of medicine, it is important to classify patients into etiologically a...
BACKGROUND:Clustering of gene expression data is widely used to identify novel subtypes of cancer. P...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
The task of the presented study is to find different disease phenotypes of cancer (breast cancer, ca...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
IntroductionSignificant differences in outcome are observed among lung cancer patients belonging to ...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
In cancer research, as in all of medicine, it is important to classify patients into etiologically a...
In cancer research, as in all of medicine, it is important to classify patients into etiologically a...
BACKGROUND:Clustering of gene expression data is widely used to identify novel subtypes of cancer. P...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
The task of the presented study is to find different disease phenotypes of cancer (breast cancer, ca...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
Identification and prediction of cancer subtypes are important parts in the development towards pers...
IntroductionSignificant differences in outcome are observed among lung cancer patients belonging to ...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...