| Literature DB >> 26719835 |
Ying-Lin Hsu1, Po-Yu Huang1, Dung-Tsa Chen2.
Abstract
A critical challenging component in analyzing high-dimensional data in cancer research is how to reduce the dimension of data and how to extract relevant features. Sparse principal component analysis (PCA) is a powerful statistical tool that could help reduce data dimension and select important variables simultaneously. In this paper, we review several approaches for sparse PCA, including variance maximization (VM), reconstruction error minimization (REM), singular value decomposition (SVD), and probabilistic modeling (PM) approaches. A simulation study is conducted to compare PCA and the sparse PCAs. An example using a published gene signature in a lung cancer dataset is used to illustrate the potential application of sparse PCAs in cancer research.Entities:
Keywords: Sparse principal component analysis (sparse PCA)
Year: 2014 PMID: 26719835 PMCID: PMC4692276 DOI: 10.3978/j.issn.2218-676X.2014.05.06
Source DB: PubMed Journal: Transl Cancer Res ISSN: 2218-676X Impact factor: 1.241