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A latent variable approach in simultaneous modeling of longitudinal and dropout data in schizophrenia trials
Authors:Navin Goyal  Roberto Gomeni
Affiliation:1. Clinical Pharmacology Modeling and Simulation, GlaxoSmithKline, King of Prussia, PA, USA;2. Pharmacometrica, Longcol, La Fouillade, France;1. Département de psychiatrie, Université de Montréal, Montréal, Québec, Canada H3C 3J7;2. FRSQ Research Group in Behavioral Neurobiology, Concordia University, Montréal, Québec, Canada H4B 1R6;1. Department of Radiation Oncology, Fox Chase Cancer Center, Philadelphia, PA, United States;2. Department of Medical Oncology, Fox Chase Cancer Center, Philadelphia, PA, United States;3. Department of Surgical Oncology, Fox Chase Cancer Center, Philadelphia, PA, United States;4. Department of Biostatistics, Fox Chase Cancer Center, Philadelphia, PA, United States;1. Institut de Recherches Internationales Servier, Clinical Pharmacokinetics, Suresnes, France;2. Institut de Recherches Internationales Servier, Oncology R&D Unit, Suresnes, France;3. Pharmacyclics, Sunnyvale, CA, USA;4. Institut Gustave Roussy, Villejuif, France
Abstract:Dropouts impact clinical trial outcome analyses. Ignoring missing data is not an acceptable option when planning, conducting or interpreting the analysis of a clinical trial. Treatment related efficacy and safety data observed in the trial may not always be sufficient in explaining the dropouts' mechanism. Nevertheless, these dropout data may carry important treatment-related information and present as an outcome by itself. Traditional analyses involve the use of the time-to-event approach assuming that the dropouts' hazard is solely related to the efficacy or safety profiles observed in a study. A latent variable approach was developed to generalize this approach and to implement a more flexible dropout hazard function in a schizophrenia trial. This unobserved latent variable was used to jointly model the longitudinal efficacy data and dropout profiles across treatments. The analysis provides a framework to model informative dropouts simultaneously with primary efficacy outcomes and make intelligent decisions in drug development.
Keywords:Dropout analysis  Latent Variable  Clinical Trial Simulation  Schizophrenia  PANSS  NONMEM
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