Power Analysis of Trials with Multilevel Data

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A01=Mirjam Moerbeek
A01=Steven Teerenstra
advanced statistical inference
ANOVA Model
Author_Mirjam Moerbeek
Author_Steven Teerenstra
Average School SES
Biostatistics
calculations
Category=JMB
Category=PBT
cluster
Cluster Randomized
Cluster Randomized Trial
Cluster randomized trials
Cluster Size
Clustering
Clusters
Correlated data
desired
Desired Power Level
educational research statistics
effect
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
error
estimator
Experimental design
experimental design methods
health science trials
Hierarchical data
hierarchical statistical modeling
Intraclass Correlation
Longitudinal Intervention Study
Mathematical Expressions
Measurement Occasions
Mixed Effect ANOVA
Multilevel analysis
Multilevel data
Multilevel Data Structure
Multilevel models
multilevel power analysis for researchers
Multilevel trials
Multisite Trials
nested data analysis
Non-centrality Parameter
Noncentrality Parameter
Optimal Allocation Ratio
Optimal Cluster Size
Optimal design
Power analysis
Power calculations
Randomized trials
sample
Sample Size Calculations
Sample Size Formulae
Sample Size Re-estimation
Si Te
size
Small Sample Correction Factor
standard
Statistical analysis
Statistical theory and methods
Statistics
Stepped Wedge Design
treatment
Treatment Effect Estimator
Trial design
Vice Versa

Product details

  • ISBN 9780367783440
  • Weight: 417g
  • Dimensions: 156 x 234mm
  • Publication Date: 31 Mar 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Power Analysis of Trials with Multilevel Data covers using power and sample size calculations to design trials that involve nested data structures. The book gives a thorough overview of power analysis that details terminology and notation, outlines key concepts of statistical power and power analysis, and explains why they are necessary in trial design. It guides you in performing power calculations with hierarchical data, which enables more effective trial design.

The authors are leading experts in the field who recognize that power analysis has attracted attention from applied statisticians in social, behavioral, medical, and health science. Their book supplies formulae that allow statisticians and researchers in these fields to perform calculations that enable them to plan cost-efficient trials. The formulae can also be applied to other sciences.

Using power analysis in trial design is increasingly important in a scientific community where experimentation is often expensive, competition for funding among researchers is intense, and agencies that finance research require proposals to give thorough justification for funding. This handbook shows how power analysis shapes trial designs that have high statistical power and low cost, using real-life examples.

The book covers multiple types of trials, including cluster randomized trials, multisite trials, individually randomized group treatment trials, and longitudinal intervention studies. It also offers insight on choosing which trial is best suited to a given project. Power Analysis of Trials with Multilevel Data helps you craft an optimal research design and anticipate the necessary sample size of data to collect to give your research maximum effectiveness and efficiency.

Mirjam Moerbeek is an associate professor at Utrecht University, the Netherlands. She obtained her master’s degree (cum laude) in biometrics from Wageningen Agricultural University in 1996 and her PhD in applied statistics from Maastricht University in 2000. She has received prestigious research grants from the Netherlands’ Organisation for Scientific Research (NWO) as well as grants to hire PhD students. Her research interests are statistical power analysis and optimal experimental design, especially for hierarchical and survival data. She was involved in organizing a colloquium and class on cost-efficient and optimal designs for the Royal Netherlands Academy of Arts and Sciences (KNAW) and is a joint organizer of the biennial International Conference on Multilevel Analysis.

Steven Teerenstra received his MSc and PhD in mathematics at Radboud University in 1996 and 2004, respectively, as well as his MSc in theoretical physics in 2006. He is currently a biostatistician at Radboud University Nijmegen Medical Center, involved in research, consultation and conduct of cluster randomized trials. He is appointed assessor of statistics and methodology at the Dutch Medicines Evaluation Board and a member of the Biostatistics Working Party at the European Medicines Agency.

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