• RecordNumber
    3963
  • Author

    Rastiny, Azam

  • Crop_Body
    Azam Rastiny, Mohammad Reza Faridrohaniy and Davoud Khalili
  • Title of Article

    A Method for Analyzing Censored Survival Data with Application to Coronary Heart Disease

  • Title Of Journal
    Statistical Research and Training (مجله پژوهش هاي آماري ايران)
  • PublishInfo
    تهران :پژوهشكده آمار ايران
  • Publication Year
    2019
  • Volum
    16
  • Issue Number
    2
  • Page
    379-396
  • Keywords
    Censored data , sufficient dimension reduction , central subspace , sliced inverse regression , variable selection , corronary heart disease
  • Abstract
    An objective of analyzing survival data via regression is to develop a predictive model given predictors. However, due to the censoring in response variables and the high dimensionality of predictors, information needed for an appropriate model specification is often inadequate. We propose a method for an integrated study of survival time and predictors. At first, variable selection methods are employed for finding the correct subset of predictors with significantly higher probability. This is based on the Lasso approach. Then, the dimension of the predictors is further reduced using sufficient dimension reduction methods. This is based on the Sliced inverse regression for censored data (DSIRII) . In particular we use the popular Cox proportional hazards model to build a predictive model for survival data. An application to Coronary heart disease (CHD) data from the Tehran Lipid and Glucose (TGLS) study further illustrates the usefulness of the work