E-Book, Englisch, 212 Seiten, E-Book
Reihe: Statistics in Practice
Lui Statistical Estimation of Epidemiological Risk
1. Auflage 2004
ISBN: 978-0-470-09407-5
Verlag: John Wiley & Sons
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
E-Book, Englisch, 212 Seiten, E-Book
Reihe: Statistics in Practice
ISBN: 978-0-470-09407-5
Verlag: John Wiley & Sons
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
Statistical Estimation of Epidemiological Risk providescoverage of the most important epidemiological indices, andincludes recent developments in the field. A usefulreference source for biostatisticians and epidemiologists workingin disease prevention, as the chapters are self-contained andfeature numerous real examples. It has been written at a levelsuitable for public health professionals with a limited knowledgeof statistics.
Other key features include:
* Provides comprehensive coverage of the key epidemiologicalindices.
* Includes coverage of various sampling methods, and pointers towhere each should be used.
* Includes up-to-date references and recent developments in thefield.
* Features many real examples, emphasising the practical natureof the book.
* Each chapter is self-contained, allowing the book to be used asa useful reference source.
* Includes exercises, enabling use as a course text.
Autoren/Hrsg.
Weitere Infos & Material
About the author.
Preface.
1 Population Proportion or Prevalence.
1.1 Binomial sampling.
1.2 Cluster sampling.
1.3 Inverse sampling.
Exercises.
References.
2 Risk Difference.
2.1 Independent binomial sampling.
2.2 A series of independent binomial sampling procedures.
2.2.1 Summary interval estimators.
2.2.2 Test for the homogeneity of risk difference.
2.3 Independent cluster sampling.
2.4 Paired-sample data.
2.5 Independent negative binomial sampling (inversesampling).
2.6 Independent poisson sampling.
2.7 Stratified poisson sampling.
Exercises.
References.
3 Relative Difference.
3.1 Independent binomial sampling.
3.2 A series of independent binomial sampling procedures.
3.2.1 Asymptotic interval estimators.
3.2.2 Test for the homogeneity of relative difference.
3.3 Independent cluster sampling.
3.4 Paired-sample data.
3.5 Independent inverse sampling.
Exercises.
References.
4 Relative Risk.
4.1 Independent binomial sampling.
4.2 A series of independent binomial sampling procedures.
4.2.1 Asymptotic interval estimators.
4.2.2 Test for the homogeneity of risk ratio.
4.3 Independent cluster sampling.
4.4 Paired-sample data.
4.5 Independent inverse sampling.
4.5.1 Uniformly minimum variance unbiased estimator of relativerisk.
4.5.2 Interval estimators of relative risk.
4.6 Independent poisson sampling.
4.7 Stratified poisson sampling.
Exercises.
References.
5 Odds Ratio.
5.1 Independent binomial sampling.
5.1.1 Asymptotic interval estimators.
5.1.2 Exact confidence interval.
5.2 A series of independent binomial sampling procedures.
5.2.1 Asymptotic interval estimators.
5.2.2 Exact confidence interval.
5.2.3 Test for homogeneity of the odds ratio.
5.3 Independent cluster sampling.
5.4 One-to-one matched sampling.
5.5 Logistic modeling.
5.5.1 Estimation under multinomial or independent binomialsampling.
5.5.2 Estimation in the case of paired-sample data.
5.6 Independent inverse sampling.
5.7 Negative multinomial sampling for paired-sample data.
Exercises.
References.
6 Generalized Odds Ratio.
6.1 Independent multinomial sampling.
6.2 Data with repeated measurements (or under clustersampling).
6.3 Paired-sample data.
6.4 Mixed negative multinomial and multinomial sampling.
Exercises.
References.
7 Attributable Risk.
7.1 Study designs with no confounders.
7.1.1 Cross-sectional sampling.
7.1.2 Case-control studies.
7.2 Study designs with confounders.
7.2.1 Cross-sectional sampling.
7.2.2 Case-control studies.
7.3 Case-control studies with matched pairs.
7.4 Multiple levels of exposure in case-controlstudies.
7.5 Logistic modeling in case-control studies.
7.5.1 Logistic model containing only the exposure variables ofinterest.
7.5.2 Logistic regression model containing both exposure andconfounding variables.
7.6 Case-control studies under inverse sampling.
Exercises.
References.
8 Number Needed to Treat.
8.1 Independent binomial sampling.
8.2 A series of independent binomial sampling procedures.
8.3 Independent cluster sampling.
8.4 Paired-sample data.
Exercises.
References.
Appendix Maximum Likelihood Estimator and Large-SampleTheory.
A.1: The maximum likelihood estimator, Wald's test, thescore test, and the asymptotic likelihood ratio test.
A.2: The delta method and its applications.
References.
Answers to Selected Exercises.
Index.




