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M G Kenward

Showing results (11-20 of 40) with videos related to

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Statistics in Medicine|July 19, 2012
Multivariate meta-analysis for non-linear and other multi-parameter associationsA Gasparrini, B Armstrong, M G Kenward
Statistics in Medicine|September 3, 2010
Distributed lag non-linear modelsA Gasparrini, B Armstrong, M G Kenward
Biometrics|December 1, 1994
An application of maximum likelihood and generalized estimating equations to the analysis of ordinal data from a longitudinal study with cases missing at randomM G Kenward, E Lesaffre, G Molenberghs
Biostatistics (Oxford, England)|August 23, 2003
Bayesian discrimination with longitudinal dataP J Brown, M G Kenward, E E Bassett
Revue D'Epidemiologie Et De Sante Publique|February 16, 2000
Analysis of incomplete public health dataG Molenberghs, T Burzykowski, B Michiels, et al.
Statistics in Medicine|March 19, 2016
Multiple imputation methods for bivariate outcomes in cluster randomised trialsK DiazOrdaz, M G Kenward, M Gomes, et al.
BMJ (Clinical Research Ed.)|November 3, 2001
Prenatal growth and risk of occlusive and haemorrhagic stroke in Swedish men and women born 1915-29: historical cohort studyE Hyppönen, D A Leon, M G Kenward, et al.
Journal of Biopharmaceutical Statistics|September 13, 2014
Response to comments by Seaman et al. on "Analysis of longitudinal trials with protocol deviation: a framework for relevant, accessible assumptions, and inference via multiple imputation," Journal of Biopharmaceutical Statistics 23:1352-1371J R Carpenter, J H Roger, S Cro, et al.
European Journal of Pediatrics|April 1, 1997
Assessment of late results of surgery in talipes equino-varus: a reliability studyN Maffulli, M G Kenward, A S Irwin, et al.
Biometrics|March 17, 2001
Sensitivity analysis for nonrandom dropout: a local influence approachG Verbeke, G Molenberghs, H Thijs, et al.
Pageof 4

Showing results (11-20 of 40) with videos related to

Sort By:
Pageof 4
Statistics in Medicine|July 19, 2012
Multivariate meta-analysis for non-linear and other multi-parameter associationsA Gasparrini, B Armstrong, M G Kenward
Statistics in Medicine|September 3, 2010
Distributed lag non-linear modelsA Gasparrini, B Armstrong, M G Kenward
Biometrics|December 1, 1994
An application of maximum likelihood and generalized estimating equations to the analysis of ordinal data from a longitudinal study with cases missing at randomM G Kenward, E Lesaffre, G Molenberghs
Biostatistics (Oxford, England)|August 23, 2003
Bayesian discrimination with longitudinal dataP J Brown, M G Kenward, E E Bassett
Revue D'Epidemiologie Et De Sante Publique|February 16, 2000
Analysis of incomplete public health dataG Molenberghs, T Burzykowski, B Michiels, et al.
Statistics in Medicine|March 19, 2016
Multiple imputation methods for bivariate outcomes in cluster randomised trialsK DiazOrdaz, M G Kenward, M Gomes, et al.
BMJ (Clinical Research Ed.)|November 3, 2001
Prenatal growth and risk of occlusive and haemorrhagic stroke in Swedish men and women born 1915-29: historical cohort studyE Hyppönen, D A Leon, M G Kenward, et al.
Journal of Biopharmaceutical Statistics|September 13, 2014
Response to comments by Seaman et al. on "Analysis of longitudinal trials with protocol deviation: a framework for relevant, accessible assumptions, and inference via multiple imputation," Journal of Biopharmaceutical Statistics 23:1352-1371J R Carpenter, J H Roger, S Cro, et al.
European Journal of Pediatrics|April 1, 1997
Assessment of late results of surgery in talipes equino-varus: a reliability studyN Maffulli, M G Kenward, A S Irwin, et al.
Biometrics|March 17, 2001
Sensitivity analysis for nonrandom dropout: a local influence approachG Verbeke, G Molenberghs, H Thijs, et al.
Pageof 4