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Regression-Based Network Estimation for High-Dimensional Genetic Data

Authors
Lee, Kyu MinLee, MinhyeokSeok, JunheeHan, Sung Won
Issue Date
1-Apr-2019
Publisher
MARY ANN LIEBERT, INC
Keywords
adaptive elastic-net; gene network estimation; graphical model; regression-based approach
Citation
JOURNAL OF COMPUTATIONAL BIOLOGY, v.26, no.4, pp.336 - 349
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF COMPUTATIONAL BIOLOGY
Volume
26
Number
4
Start Page
336
End Page
349
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/66086
DOI
10.1089/cmb.2018.0225
ISSN
1066-5277
Abstract
Given the continuous advancement in genome sequencing technology, large volumes of gene expression data can be easily obtained. However, the corresponding increase in genetic information necessitates adoption of a new approach for network estimation. Data dimensions increase with the progress in genome sequencing technology, thereby making it difficult to estimate gene networks by causing multicollinearity. Furthermore, such a problem also occurs when hub nodes exist, where gene networks are known to have regulator genes that can be interpreted as hub nodes. This study aims at developing methods that demonstrate good performance when handling high-dimensional data with hub nodes. We propose regression-based approaches as feasible solutions in this article. Elastic-net and adaptive elastic-net penalty regressions were applied to compensate for the disadvantages of existing regression-based approaches employing LASSO or adaptive LASSO. Experiments were performed to compare the proposed regression-based approaches with other conventional methods. We confirmed the superior performance of the regression-based approaches and applied it to actual genetic data to verify the suitability to estimate gene networks. As results, robustness of the proposed methods was demonstrated with respect to high-dimensional gene expression data.
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공과대학 (School of Industrial and Management Engineering)
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