Yuehua Cui
Affiliations: | Statistics | Michigan State University, East Lansing, MI |
Area:
Statistics, Psychometrics Psychology, GeneticsGoogle:
"Yuehua Cui"Children
Sign in to add traineeGengxin Li | grad student | 2010 | Michigan State |
Shaoyu Li | grad student | 2011 | Michigan State |
Cen Wu | grad student | 2013 | Michigan State |
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Publications
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Fang R, Yang H, Gao Y, et al. (2020) Gene-based mediation analysis in epigenetic studies. Briefings in Bioinformatics |
Deng Y, He T, Fang R, et al. (2020) Genome-Wide Gene-Based Multi-Trait Analysis. Frontiers in Genetics. 11: 437 |
Gao B, Liu X, Li H, et al. (2019) Integrative analysis of genetical genomics data incorporating network structures. Biometrics |
He T, Li S, Zhong PS, et al. (2018) An optimal kernel-based U-statistic method for quantitative gene-set association analysis. Genetic Epidemiology |
Wu C, Zhong PS, Cui Y. (2018) Additive varying-coefficient model for nonlinear gene-environment interactions. Statistical Applications in Genetics and Molecular Biology |
Zhao D, Hamilton JP, Vaillancourt B, et al. (2018) The unique epigenetic features of Pack-MULEs and their impact on chromosomal base composition and expression spectrum. Nucleic Acids Research |
Wu C, Jiang Y, Ren J, et al. (2017) Dissecting gene-environment interactions: A penalized robust approach accounting for hierarchical structures. Statistics in Medicine |
Cao H, Li Z, Yang H, et al. (2017) Longitudinal data analysis for rare variants detection with penalized quadratic inference function. Scientific Reports. 7: 650 |
Liu X, Wang H, Cui Y. (2016) Statistical Identification of Gene-gene Interactions Triggered By Nonlinear Environmental Modulation. Current Genomics. 17: 388-395 |
Liu X, Gao B, Cui Y. (2016) Generalized partial linear varying multi-index coefficient model for gene-environment interactions. Statistical Applications in Genetics and Molecular Biology |