Tumor is one of the deadly diseases which is frequently to be found in animals. However, identifying whether an animal has a tumor still becomes a big challenge. Classification of tumor disease can be done through gene expression, which consists of hundreds of genes, but only a small number of samples is taken. This data structure is called microarray data having the characteristic of high-dimensional data. The choice of a single model can be a problem for high-dimensional data because it ignores model uncertainty. This research proposed to use Bayesian Model Averaging (BMA) to model the uncertainty model by averaging the posterior distribution of all best models, weighted by their posterior model probabilities. Selecting relevant genes to ...
This ready reference discusses different methods for statistically analyzing and validating data cre...
Motivation: One important application of gene expresssion microarray data is classification of sampl...
Hypothesis testing using Bayesian networks has been proven time and again to be very useful for vari...
Tumor is one of the deadly diseases which is frequently to be found in animals. However, identifying...
AbstractIn microarray-based cancer classification and prediction, gene selection is an important res...
Microarray technology is increasingly used to identify potential biomarkers for cancer prognostics a...
Recent findings reveal that various cancer types can be diagnosed using non-clinical approach which ...
Precise classification of tumours is critical for the diagnosis and treatment of cancer. Diagnostic ...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
High-throughput microarray technology is here to stay, e.g. in oncology for tumour classification an...
An important use of data obtained from microarray measurements is the classification of tumor types ...
Survival analysis is a supervised learning technique that in the context of microarray data is most ...
Microarray data has an important role in detecting and classifying all types of cancer tissues. In c...
Microarray experiments are a very promising tool for early diagnosis and disease treatment. The data...
Background: In high density arrays, the identification of relevant genes for disease classification ...
This ready reference discusses different methods for statistically analyzing and validating data cre...
Motivation: One important application of gene expresssion microarray data is classification of sampl...
Hypothesis testing using Bayesian networks has been proven time and again to be very useful for vari...
Tumor is one of the deadly diseases which is frequently to be found in animals. However, identifying...
AbstractIn microarray-based cancer classification and prediction, gene selection is an important res...
Microarray technology is increasingly used to identify potential biomarkers for cancer prognostics a...
Recent findings reveal that various cancer types can be diagnosed using non-clinical approach which ...
Precise classification of tumours is critical for the diagnosis and treatment of cancer. Diagnostic ...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
High-throughput microarray technology is here to stay, e.g. in oncology for tumour classification an...
An important use of data obtained from microarray measurements is the classification of tumor types ...
Survival analysis is a supervised learning technique that in the context of microarray data is most ...
Microarray data has an important role in detecting and classifying all types of cancer tissues. In c...
Microarray experiments are a very promising tool for early diagnosis and disease treatment. The data...
Background: In high density arrays, the identification of relevant genes for disease classification ...
This ready reference discusses different methods for statistically analyzing and validating data cre...
Motivation: One important application of gene expresssion microarray data is classification of sampl...
Hypothesis testing using Bayesian networks has been proven time and again to be very useful for vari...