Applied longitudinal data analysis for epidemiology : a practical guide / / Jos W.R. Twisk, Department of Epidemiology and Biostatistics, Medical Centre and the Department of Health Sciences of the Vrije Universteit, Amsterdam.

"The emphasis of this book lies more on the application of statistical techniques for longitudinal data analysis and not so much on the mathematical background. In most other books on the topic of longitudinal data analysis, the mathematical background is the major issue, which may not be surpr...

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Year of Publication:2013
Edition:2nd ed.
Language:English
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Physical Description:xiv, 321 p. :; ill.
Notes:First published 2003.
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spelling Twisk, Jos W. R., 1962-
Applied longitudinal data analysis for epidemiology [electronic resource] : a practical guide / Jos W.R. Twisk, Department of Epidemiology and Biostatistics, Medical Centre and the Department of Health Sciences of the Vrije Universteit, Amsterdam.
2nd ed.
Cambridge : Cambridge University Press, 2013.
xiv, 321 p. : ill.
First published 2003.
Includes bibliographical references and index.
Machine generated contents note: Preface; Acknowledgements; 1. Introduction; 2. Study design; 3. Continuous outcome variables; 4. Continuous outcome variables - relationships with other variables; 5. The modelling of time; 6. Other possibilities for modelling longitudinal data; 7. Dichotomous outcome variables; 8. Categorical and 'count' outcome variables; 9. Analysis data from experimental studies; 10. Missing data in longitudinal studies; 11. Sample size calculations; 12. Software for longitudinal data analysis; 13. One step further; References; Index.
"The emphasis of this book lies more on the application of statistical techniques for longitudinal data analysis and not so much on the mathematical background. In most other books on the topic of longitudinal data analysis, the mathematical background is the major issue, which may not be surprising since (nearly) all the books on this topic have been written by statisticians. Although statisticians fully understand the difficult mathematical material underlying longitudinal data analysis, they often have difficulty in explaining this complex material in a way that is understandable for the researchers who have to use the technique or interpret the results. Therefore, this book is not written by a statistician, but by an epidemiologist. In fact, an epidemiologist is not primarily interested in the basic (difficult) mathematical background of the statistical methods, but in finding the answer to a specific research question; the epidemiologist wants to know how to apply a statistical technique and how to interpret the results. Owing to their different basic interests and different level of thinking, communication problems between statisticians and epidemiologists are quite common. This, in addition to the growing interest in longitudinal studies, initiated the writing of this book: a book on longitudinal data analysis, which is especially suitable for the "non-statistical" researcher (e.g. the epidemiologist). The aim of this book is to provide a practical guide on how to handle epidemiological data from longitudinal studies"-- Provided by publisher.
Electronic reproduction. Ann Arbor, MI : ProQuest, 2015. Available via World Wide Web. Access may be limited to ProQuest affiliated libraries.
Epidemiology Research Statistical methods.
Epidemiology Longitudinal studies.
Epidemiology Statistical methods.
Electronic books.
ProQuest (Firm)
https://ebookcentral.proquest.com/lib/oeawat/detail.action?docID=1182964 Click to View
language English
format Electronic
eBook
author Twisk, Jos W. R., 1962-
spellingShingle Twisk, Jos W. R., 1962-
Applied longitudinal data analysis for epidemiology a practical guide /
Machine generated contents note: Preface; Acknowledgements; 1. Introduction; 2. Study design; 3. Continuous outcome variables; 4. Continuous outcome variables - relationships with other variables; 5. The modelling of time; 6. Other possibilities for modelling longitudinal data; 7. Dichotomous outcome variables; 8. Categorical and 'count' outcome variables; 9. Analysis data from experimental studies; 10. Missing data in longitudinal studies; 11. Sample size calculations; 12. Software for longitudinal data analysis; 13. One step further; References; Index.
author_facet Twisk, Jos W. R., 1962-
ProQuest (Firm)
ProQuest (Firm)
author_variant j w r t jwr jwrt
author2 ProQuest (Firm)
author2_role TeilnehmendeR
author_corporate ProQuest (Firm)
author_sort Twisk, Jos W. R., 1962-
title Applied longitudinal data analysis for epidemiology a practical guide /
title_sub a practical guide /
title_full Applied longitudinal data analysis for epidemiology [electronic resource] : a practical guide / Jos W.R. Twisk, Department of Epidemiology and Biostatistics, Medical Centre and the Department of Health Sciences of the Vrije Universteit, Amsterdam.
title_fullStr Applied longitudinal data analysis for epidemiology [electronic resource] : a practical guide / Jos W.R. Twisk, Department of Epidemiology and Biostatistics, Medical Centre and the Department of Health Sciences of the Vrije Universteit, Amsterdam.
title_full_unstemmed Applied longitudinal data analysis for epidemiology [electronic resource] : a practical guide / Jos W.R. Twisk, Department of Epidemiology and Biostatistics, Medical Centre and the Department of Health Sciences of the Vrije Universteit, Amsterdam.
title_auth Applied longitudinal data analysis for epidemiology a practical guide /
title_new Applied longitudinal data analysis for epidemiology
title_sort applied longitudinal data analysis for epidemiology a practical guide /
publisher Cambridge University Press,
publishDate 2013
physical xiv, 321 p. : ill.
edition 2nd ed.
contents Machine generated contents note: Preface; Acknowledgements; 1. Introduction; 2. Study design; 3. Continuous outcome variables; 4. Continuous outcome variables - relationships with other variables; 5. The modelling of time; 6. Other possibilities for modelling longitudinal data; 7. Dichotomous outcome variables; 8. Categorical and 'count' outcome variables; 9. Analysis data from experimental studies; 10. Missing data in longitudinal studies; 11. Sample size calculations; 12. Software for longitudinal data analysis; 13. One step further; References; Index.
isbn 9781107058040 (electronic bk.)
callnumber-first R - Medicine
callnumber-subject RA - Public Medicine
callnumber-label RA652
callnumber-sort RA 3652.2 M3 T95 42013
genre Electronic books.
genre_facet Longitudinal studies.
Electronic books.
url https://ebookcentral.proquest.com/lib/oeawat/detail.action?docID=1182964
illustrated Illustrated
dewey-hundreds 600 - Technology
dewey-tens 610 - Medicine & health
dewey-ones 614 - Incidence & prevention of disease
dewey-full 614.4
dewey-sort 3614.4
dewey-raw 614.4
dewey-search 614.4
oclc_num 843187582
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is_hierarchy_title Applied longitudinal data analysis for epidemiology a practical guide /
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