The International Journal of Biostatistics Pattern Mixture Models and Latent Class Models for the Analysis of Multivariate Longitudinal Data with Informative Dropouts
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Cécile Proust-Lima | Etienne Dantan | H. Jacqmin-Gadda | L. Letenneur | C. Proust-Lima | Luc Letenneur | E. Dantan | Helene Jacqmin-Gadda
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