A residuals-based transition model for longitudinal analysis with estimation in the presence of missing data |
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Authors: | Koru-Sengul Tulay Stoffer David S Day Nancy L |
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Affiliation: | Department of Clinical Epidemiology and Biostatistics, McMaster University, Hamilton, Ont., Canada L8N 3Z5. |
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Abstract: | We propose a transition model for analysing data from complex longitudinal studies. Because missing values are practically unavoidable in large longitudinal studies, we also present a two-stage imputation method for handling general patterns of missing values on both the outcome and the covariates by combining multiple imputation with stochastic regression imputation. Our model is a time-varying auto-regression on the past innovations (residuals), and it can be used in cases where general dynamics must be taken into account, and where the model selection is important. The entire estimation process was carried out using available procedures in statistical packages such as SAS and S-PLUS. To illustrate the viability of the proposed model and the two-stage imputation method, we analyse data collected in an epidemiological study that focused on various factors relating to childhood growth. Finally, we present a simulation study to investigate the behaviour of our two-stage imputation procedure. |
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Keywords: | incomplete data innovations sequence longitudinal analysis missing data multiple imputation stochastic regression imputation time‐varying autoregression |
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