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Epidemiology (Cambridge, Mass.)
|
September 21, 2018
Dynamic Prediction of Survival in Cystic Fibrosis: A Landmarking Analysis Using UK Patient Registry Data
Ruth H Keogh, Shaun R Seaman, Jessica K Barrett, et al.
American Journal of Epidemiology
|
June 27, 2014
Correcting for optimistic prediction in small data sets
Gordon C S Smith, Shaun R Seaman, Angela M Wood, et al.
BMC Medical Research Methodology
|
July 10, 2024
An evaluation of sample size requirements for developing risk prediction models with binary outcomes
Menelaos Pavlou, Gareth Ambler, Chen Qu, et al.
Chiropractic & Osteopathy
|
September 2, 2008
How can chiropractic become a respected mainstream profession? The example of podiatry
Donald R Murphy, Michael J Schneider, David R Seaman, et al.
BMJ (Clinical Research Ed.)
|
August 13, 2015
How to develop a more accurate risk prediction model when there are few events
Menelaos Pavlou, Gareth Ambler, Shaun R Seaman, et al.
Statistical Methods in Medical Research
|
June 13, 2022
Adjusting for time of infection or positive test when estimating the risk of a post-infection outcome in an epidemic
Shaun R Seaman, Tommy Nyberg, Christopher E Overton, et al.
Statistical Methods in Medical Research
|
April 21, 2021
Estimation of required sample size for external validation of risk models for binary outcomes
Menelaos Pavlou, Chen Qu, Rumana Z Omar, et al.
BMC Medical Research Methodology
|
February 25, 2014
Joint modelling rationale for chained equations
Rachael A Hughes, Ian R White, Shaun R Seaman, et al.
Statistical Methods in Medical Research
|
July 15, 2022
A comparison of two frameworks for multi-state modelling, applied to outcomes after hospital admissions with COVID-19
Christopher H Jackson, Brian Dm Tom, Peter D Kirwan, et al.
Biostatistics (Oxford, England)
|
December 7, 2023
A Bayesian multivariate factor analysis model for causal inference using time-series observational data on mixed outcomes
Pantelis Samartsidis, Shaun R Seaman, Abbie Harrison, et al.
Page
of 11
Search research articles
Search
Showing results (81-90 of 104) with videos related to
Sort By:
Page
of 11
Epidemiology (Cambridge, Mass.)
|
September 21, 2018
Dynamic Prediction of Survival in Cystic Fibrosis: A Landmarking Analysis Using UK Patient Registry Data
Ruth H Keogh, Shaun R Seaman, Jessica K Barrett, et al.
American Journal of Epidemiology
|
June 27, 2014
Correcting for optimistic prediction in small data sets
Gordon C S Smith, Shaun R Seaman, Angela M Wood, et al.
BMC Medical Research Methodology
|
July 10, 2024
An evaluation of sample size requirements for developing risk prediction models with binary outcomes
Menelaos Pavlou, Gareth Ambler, Chen Qu, et al.
Chiropractic & Osteopathy
|
September 2, 2008
How can chiropractic become a respected mainstream profession? The example of podiatry
Donald R Murphy, Michael J Schneider, David R Seaman, et al.
BMJ (Clinical Research Ed.)
|
August 13, 2015
How to develop a more accurate risk prediction model when there are few events
Menelaos Pavlou, Gareth Ambler, Shaun R Seaman, et al.
Statistical Methods in Medical Research
|
June 13, 2022
Adjusting for time of infection or positive test when estimating the risk of a post-infection outcome in an epidemic
Shaun R Seaman, Tommy Nyberg, Christopher E Overton, et al.
Statistical Methods in Medical Research
|
April 21, 2021
Estimation of required sample size for external validation of risk models for binary outcomes
Menelaos Pavlou, Chen Qu, Rumana Z Omar, et al.
BMC Medical Research Methodology
|
February 25, 2014
Joint modelling rationale for chained equations
Rachael A Hughes, Ian R White, Shaun R Seaman, et al.
Statistical Methods in Medical Research
|
July 15, 2022
A comparison of two frameworks for multi-state modelling, applied to outcomes after hospital admissions with COVID-19
Christopher H Jackson, Brian Dm Tom, Peter D Kirwan, et al.
Biostatistics (Oxford, England)
|
December 7, 2023
A Bayesian multivariate factor analysis model for causal inference using time-series observational data on mixed outcomes
Pantelis Samartsidis, Shaun R Seaman, Abbie Harrison, et al.
Page
of 11