School of Statistics, Renmin University of China, No. 59 Zhongguancun Street, Beijing 100872, China.
Center for Applied Statistics, School of Statistics, Renmin University of China, No. 59 Zhongguancun Street, Beijing 100872, China.
Genes (Basel). 2022 Apr 15;13(4):702. doi: 10.3390/genes13040702.
In high-throughput profiling studies, extensive efforts have been devoted to searching for the biomarkers associated with the development and progression of complex diseases. The heterogeneity of covariate effects associated with the outcomes across subjects has been noted in the literature. In this paper, we consider a scenario where the effects of covariates change smoothly across subjects, which are ordered by a known auxiliary variable. To this end, we develop a penalization-based approach, which applies a penalization technique to simultaneously select important covariates and estimate their unique effects on the outcome variables of each subject. We demonstrate that, under the appropriate conditions, our method shows selection and estimation consistency. Additional simulations demonstrate its superiority compared to several competing methods. Furthermore, applying the proposed approach to two The Cancer Genome Atlas datasets leads to better prediction performance and higher selection stability.
在高通量分析研究中,人们已经投入了大量的精力来寻找与复杂疾病的发展和进展相关的生物标志物。文献中已经注意到与受试者结局相关的协变量效应的异质性。在本文中,我们考虑了一种情况,其中协变量的效应在由已知辅助变量排序的受试者中平稳变化。为此,我们开发了一种基于惩罚的方法,该方法应用惩罚技术同时选择重要的协变量,并估计它们对每个受试者的结局变量的独特影响。我们证明,在适当的条件下,我们的方法具有选择和估计一致性。额外的模拟表明,与几种竞争方法相比,该方法具有优越性。此外,将所提出的方法应用于两个癌症基因组图谱数据集,可提高预测性能和选择稳定性。