Journal ArticleOpen Access
Robust Feature Selection Approach for Patient Classification using Gene Expression Data
Authors
Author Affiliations
Begum Rokeya University, Bangabandhu Sheikh Mujibur Rahman Science and Technology University, University of Rajshahi
Published InBioinformation
Year2017
Citations10
Abstract
Patient classification through feature selection (FS) based on gene expression data (GED) has already become popular to the research communities. T-test is the well-known statistical FS method in GED analysis. However, it produces higher false positives and lower accuracies for small sample sizes or in presence of outliers. To get rid from the shortcomings of t-test with small sample sizes, SAM has been applied in GED. But, it is highly sensitive to outliers. Recently, robust SAM using the minimum β-divergence estimators has overcome all the problems of classical t-test & SAM and it has been successfully applied for identification of differentially expressed (DE) genes. But, it was not applied in classification. Therefore, in this paper, we employ robust SAM as…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.