Literature DB >> 30880853

Covariance-Insured Screening.

Kevin He1, Jian Kang1, Hyokyoung G Hong2, Ji Zhu3, Yanming Li1, Huazhen Lin4, Han Xu3, Yi Li1.   

Abstract

Modern bio-technologies have produced a vast amount of high-throughput data with the number of predictors far greater than the sample size. In order to identify more novel biomarkers and understand biological mechanisms, it is vital to detect signals weakly associated with outcomes among ultrahigh-dimensional predictors. However, existing screening methods, which typically ignore correlation information, are likely to miss weak signals. By incorporating the inter-feature dependence, a covariance-insured screening approach is proposed to identify predictors that are jointly informative but marginally weakly associated with outcomes. The validity of the method is examined via extensive simulations and a real data study for selecting potential genetic factors related to the onset of multiple myeloma.

Entities:  

Keywords:  Covariance-insured screening; Dimensionality reduction; High-dimensional data; Variable selection

Year:  2018        PMID: 30880853      PMCID: PMC6414211          DOI: 10.1016/j.csda.2018.09.001

Source DB:  PubMed          Journal:  Comput Stat Data Anal        ISSN: 0167-9473            Impact factor:   1.681


  2 in total

1.  High-dimension to high-dimension screening for detecting genome-wide epigenetic and noncoding RNA regulators of gene expression.

Authors:  Hongjie Ke; Zhao Ren; Jianfei Qi; Shuo Chen; George C Tseng; Zhenyao Ye; Tianzhou Ma
Journal:  Bioinformatics       Date:  2022-07-20       Impact factor: 6.931

2.  Prior Knowledge Guided Ultra-high Dimensional Variable Screening with Application to Neuroimaging Data.

Authors:  Jie He; Jian Kang
Journal:  Stat Sin       Date:  2022-10       Impact factor: 1.330

  2 in total

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