Radiation Risk Estimation : : Based on Measurement Error Models / / Sergii Masiuk, Alexander Kukush, Sergiy Shklyar, Mykola Chepurny, Illya Likhtarov.

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 m...

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Superior document:Title is part of eBook package: De Gruyter DG Plus DeG Package 2017 Part 1
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Place / Publishing House:Berlin ;, Boston : : De Gruyter, , [2017]
©2017
Year of Publication:2017
Language:English
Series:De Gruyter Series in Mathematics and Life Sciences , 5
Online Access:
Physical Description:1 online resource (XXX, 240 p.)
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Other title:Frontmatter --
List of authors --
Editor’s Foreword --
Preface --
In memoriam Illya Likhtarov (1935–2017) --
Contents --
List of symbols, abbreviations, units, and terms --
Part I. Estimation in regression models with errors in covariates --
1. Measurement error models --
2. Linear models with classical error --
3. Polynomial regression with known variance of classical error --
4. Nonlinear and generalized linear models --
Part II. Radiation risk estimation under uncertainty in exposure doses --
5. Overview of risk models realized in program package EPICURE --
6. Estimation of radiation risk under classical or Berkson multiplicative error in exposure doses --
7. Radiation risk estimation for persons exposed by radioiodine as a result of the Chornobyl accident --
A Elements of estimating equations theory --
B. Consistency of efficient methods --
C. Efficient SIMEX method as a combination of the SIMEX method and the corrected score method --
D. Application of regression calibration in the model with additive error in exposure doses --
Bibliography --
Index --
Also of Interest
Summary: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 covariatesMeasurement error modelsLinear models with classical errorPolynomial regression with known variance of classical errorNonlinear and generalized linear models Part II Radiation risk estimation under uncertainty in exposure dosesOverview of risk models realized in program package EPICUREEstimation of radiation risk under classical or Berkson multiplicative error in exposure dosesRadiation risk estimation for persons exposed by radioiodine as a result of the Chornobyl accidentElements of estimating equations theoryConsistency of efficient methodsEfficient SIMEX method as a combination of the SIMEX method and the corrected score methodApplication of regression calibration in the model with additive error in exposure doses
Format:Mode of access: Internet via World Wide Web.
ISBN:9783110433661
9783110762495
9783110719543
9783110540550
9783110625264
9783110548204
ISSN:2195-5530 ;
DOI:10.1515/9783110433661
Access:restricted access
Hierarchical level:Monograph
Statement of Responsibility: Sergii Masiuk, Alexander Kukush, Sergiy Shklyar, Mykola Chepurny, Illya Likhtarov.