Searched for: subject%3A%22Missing%255C%2Bdata%22
(1 - 18 of 18)
document
Austin, P.C. (author), Giardiello, D. (author), van Buuren, S. (author)
We examined the setting in which a variable that is subject to missingness is used both as an inclusion/exclusion criterion for creating the analytic sample and subsequently as the primary exposure in the analysis model that is of scientific interest. An example is cancer stage, where patients with stage IV cancer are often excluded from the...
article 2023
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Kavelaars, X.M. (author), van Buuren, S. (author), van Ginkel, J.R. (author)
Multiple imputation is a highly recommended technique to deal with missing data, but the application to longitudinal datasets can be done in multiple ways. When a new wave of longitudinal data arrives, we can treat the combined data of multiple waves as a new missing data problem and overwrite existing imputations with new values (re-imputation)...
article 2022
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Cai, M. (author), van Buuren, S. (author), Vink, G. (author)
Missing data are often dealt with multiple imputation. A crucial part of the multiple imputation process is selecting sensible models to generate plausible values for incomplete data. A method based on posterior predictive checking is proposed to diagnose imputation models based on posterior predictive checking. To assess the congeniality of...
article 2022
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Austin, P.C. (author), van Buuren, S. (author)
Background: Multiple imputation is frequently used to address missing data when conducting statistical analyses. There is a paucity of research into the performance of multiple imputation when the prevalence of missing data is very high. Our objective was to assess the performance of multiple imputation when estimating a logistic regression...
article 2022
document
Kavelaars, X.M. (author), van Ginkel, J.R. (author), van Buuren, S. (author)
Multiple imputation is a recommended technique to deal with missing data. We study the problem where the investigator has already created imputations before the arrival of the next wave of data. The newly arriving data contain missing values that need to be imputed. The standard method (RE-IMPUTE) is to combine the new and old data before...
article 2021
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Austin, P.C. (author), White, I.R. (author), Lee, D.S. (author), van Buuren, S. (author)
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the variables of interest are not measured or recorded for all subjects in the sample. Common approaches to addressing the presence of missing data include complete-case analyses, in which subjects with missing data are excluded, or mean-value...
article 2021
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Gorter, R. (author), Fox, J.P. (author), Eekhout, I. (author), Heymans, M.W. (author), Twisk, J. (author)
In medical research, repeated questionnaire data is often used to measure and model latent variables across time. Through a novel imputation method, a direct comparison is made between latent growth analysis under classical test theory and item response theory, while also including effects of missing item responses. For classical test theory and...
article 2020
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Pereira Barata, A. (author), Takes, F.W. (author), van den Herik, H.J. (author), Veenman, C.J. (author)
conference paper 2019
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Eekhout, I. (author), de Vet, H.C. (author), de Boer, M.R. (author), Twisk, J.W. (author), Heymans, M.W. (author)
Previous studies showed that missing data in multi-item scales can best be handled by multiple imputation of item scores. However, when many scales are used, the number of items will become too large for the imputation model to reliably estimate imputations. A solution is to use passive imputation or a parcel summary score that combine and...
article 2018
document
Audigier, V. (author), White, I.R. (author), Jolani, S. (author), Debray, T.P.A. (author), Quartagno, M. (author), Carpenter, J. (author), van Buuren, S. (author), Resche-Rigon, M. (author)
We present and compare multiple imputation methods for multilevel continuous and binary data where variables are systematically and sporadically missing. The methods are compared from a theoretical point of view and through an extensive simulation study motivated by a real dataset comprising multiple studies. The comparisons show that these...
article 2018
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Audigier, V. (author), White, I.R. (author), Jolani, S. (author), Debray, T.P.A. (author), Quartagno, M. (author), Carpenter, J. (author), van Buuren, S. (author), Resche-Rigon, (author)
We present and compare multiple imputation methods for multilevel continuous and binary data where variables are systematically and sporadically missing. The methods are compared from a theoretical point of view and through an extensive simulation study motivated by a real dataset comprising multiple studies. Simulations are reproducible. The...
article 2017
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Jolani, S. (author), Debray, T.P.A. (author), Koffijberg, H. (author), van Buuren, S. (author), Moons, K.G.M. (author)
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validating multivariable (diagnostic or prognostic) risk prediction models. Unfortunately, some predictors or even outcomes may not have been measured in each study and are thus systematically missing in some individual studies of the IPD-MA. As a...
article 2015
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Jolani, S. (author), Frank, L.E. (author), van Buuren, S. (author)
Missing values are a practical issue in the analysis of longitudinal data. Multiple imputation (MI) is a well-known likelihood-based method that has optimal properties in terms of efficiency and consistency if the imputation model is correctly specified. Doubly robust (DR) weighing-based methods protect against misspecification bias if one of...
article 2014
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Vink, G. (author), van Buuren, S. (author)
Current pooling rules for multiply imputed data assume infinite populations. In some situations this assumption is not feasible as every unit in the population has been observed, potentially leading to over-covered population estimates. We simplify the existing pooling rules for situations where the sampling variance is not of interest. We...
article 2014
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van Buuren, S. (author), Brand, J.P.L. (author), Groothuis-Oudshoorn, C.G.M. (author), Rubin, D.B. (author), TNO Kwaliteit van Leven (author)
The use of the Gibbs sampler with fully conditionally specified models, where the distribution of each variable given the other variables is the starting point, has become a popular method to create imputations in incomplete multivariate data. The theoretical weakness of this approach is that the specified conditional densities can be...
article 2006
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van Buuren, S. (author), Eisinga, R. (author)
article 2003
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Brand, J.P.L. (author), van Buuren, S. (author), Groothuis-Oudshoorn, K. (author), Gelsema, E.S. (author)
This paper outlines a strategy to validate multiple imputation methods. Rubin's criteria for proper multiple imputation are the point of departure. We describe a simulation method that yields insight into various aspects of bias and efficiency of the imputation process. We propose a new method for creating incomplete data under a general Missing...
article 2003
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van Buuren, S. (author), van Rijckevorsel, J.L.A. (author), Nederlands Instituut voor Praeventieve Gezondheidszorg TNO (author)
This paper suggests a method to supplant missing categorical data by "reasonable" replacements. These replacements will maximize the consistency of the completed data as measured by Guttman's squared correlation ratio. The text outlines a solution of the optimization problem, describes relationships with the relevant psychometric theory, and...
article 1992
Searched for: subject%3A%22Missing%255C%2Bdata%22
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