Motivation: Microarray experiments generate large datasets with expression values for thousands of genes but not more than a few dozens of samples. Accurate supervised classification of tissue samples in such high-dimensional problems is difficult but often crucial for successful diagnosis and treatment. A promising way to meet this challenge is by using boosting in conjunction with decision trees. Results: We demonstrate that the generic boosting algorithm needs some modification to become an accurate classifier in the context of gene expression data. In particular, we present a feature preselection method, a more robust boosting procedure and a new approach for multi-categorical problems. This allows for slight to drastic increase in perf...
Microarray data analysis has been shown to provide an effective tool for studying cancer and genetic...
An important use of data obtained from microarray measurements is the classification of tumor types ...
BACKGROUND: One intractable problem with using microarray data analysis for cancer classification is...
Erworben im Rahmen der Schweizer Nationallizenzen (http://www.nationallizenzen.ch
Motivation: Microarray experiments generate large datasets with expression values for thousands of g...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
AbstractOne of the major challenges in microarray analysis, especially in cancer gene expression pro...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
One of the major challenges in microarray analysis, especially in cancer gene expression profiles, i...
Motivation: The increasing use of DNA microarray-based tumor gene expression profiles for cancer dia...
Abstract Background Gene expression profiles based on microarray data are recognized as potential di...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
Microarray technology has provided benefits for cancer diagnosis and classification. However, classi...
Cancer can be considered as one of the leading causes of death widely. One of the most effective too...
Background: Even though the classification of cancer tissue samples based on gene expression data ha...
Microarray data analysis has been shown to provide an effective tool for studying cancer and genetic...
An important use of data obtained from microarray measurements is the classification of tumor types ...
BACKGROUND: One intractable problem with using microarray data analysis for cancer classification is...
Erworben im Rahmen der Schweizer Nationallizenzen (http://www.nationallizenzen.ch
Motivation: Microarray experiments generate large datasets with expression values for thousands of g...
Motivation: Microarray experiments are expected to contribute significantly to the progress in cance...
AbstractOne of the major challenges in microarray analysis, especially in cancer gene expression pro...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
One of the major challenges in microarray analysis, especially in cancer gene expression profiles, i...
Motivation: The increasing use of DNA microarray-based tumor gene expression profiles for cancer dia...
Abstract Background Gene expression profiles based on microarray data are recognized as potential di...
AbstractThe DNA microarray technology has capability to determine the levels of thousands of gene si...
Microarray technology has provided benefits for cancer diagnosis and classification. However, classi...
Cancer can be considered as one of the leading causes of death widely. One of the most effective too...
Background: Even though the classification of cancer tissue samples based on gene expression data ha...
Microarray data analysis has been shown to provide an effective tool for studying cancer and genetic...
An important use of data obtained from microarray measurements is the classification of tumor types ...
BACKGROUND: One intractable problem with using microarray data analysis for cancer classification is...