Описание:  This monograph discusses statistics and risk estimates applied to radiation damage under the presence of measurement errors. The first part covers nonlinear measurement error models, with a particular emphasis on efficiency of regression parameter estimators. In the second part, risk estimation in models with measurement errors is considered. Efficiency of the methods presented is verified using data from radio-epidemiological studies. Contents:  
  Part I - Estimation in regression models with errors in covariates 
 Measurement error models 
 Linear models with classical error 
 Polynomial regression with known variance of classical error 
 Nonlinear and generalized linear models 
  Part II Radiation risk estimation under uncertainty in exposure doses 
 Overview of risk models realized in program package EPICURE 
 Estimation of radiation risk under classical or Berkson multiplicative error in exposure doses 
 Radiation risk estimation for persons exposed by radioiodine as a result of the Chornobyl accident 
  Elements of estimating equations theory 
 Consistency of efficient methods 
 Efficient SIMEX method as a combination of the SIMEX method and the corrected score method 
 Application of regression calibration in the model with additive error in exposure doses