• Title of article

    Statistical properties on semiparametric regression for evaluating pathway effects

  • Author/Authors

    Kim، نويسنده , , Inyoung and Pang، نويسنده , , Herbert and Zhao، نويسنده , , Hongyu، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2013
  • Pages
    19
  • From page
    745
  • To page
    763
  • Abstract
    Most statistical methods for microarray data analysis consider one gene at a time, and they may miss subtle changes at the single gene level. This limitation may be overcome by considering a set of genes simultaneously where the gene sets are derived from prior biological knowledge. We call a pathway as a predefined set of genes that serve a particular cellular or physiological function. Limited work has been done in the regression settings to study the effects of clinical covariates and expression levels of genes in a pathway on a continuous clinical outcome. A semiparametric regression approach for identifying pathways related to a continuous outcome was proposed by Liu et al. (2007), who demonstrated the connection between a least squares kernel machine for nonparametric pathway effect and a restricted maximum likelihood (REML) for variance components. However, the asymptotic properties on a semiparametric regression for identifying pathway have never been studied. In this paper, we study the asymptotic properties of the parameter estimates on semiparametric regression and compare Liu et al.ʹs REML with our REML obtained from a profile likelihood. We prove that both approaches provide consistent estimators, have n convergence rate under regularity conditions, and have either an asymptotically normal distribution or a mixture of normal distributions. However, the estimators based on our REML obtained from a profile likelihood have a theoretically smaller mean squared error than those of Liu et al.ʹs REML. Simulation study supports this theoretical result. A profile restricted likelihood ratio test is also provided for the non-standard testing problem. We apply our approach to a type II diabetes data set (Mootha et al., 2003).
  • Keywords
    Gaussian random process , Kernel machine , Pathway analysis , Restricted maximum likelihood , Mixed model , profile likelihood
  • Journal title
    Journal of Statistical Planning and Inference
  • Serial Year
    2013
  • Journal title
    Journal of Statistical Planning and Inference
  • Record number

    2222284