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Modeling Dropout From Adverse Event Data: Impact of Dosing Regimens Across Pregabalin Trials in the Treatment of Generalized Anxiety Disorder
Author(s) -
Lalovic Bojan,
Hutmacher Matt,
Frame Bill,
Miller Raymond
Publication year - 2011
Publication title -
the journal of clinical pharmacology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.92
H-Index - 116
eISSN - 1552-4604
pISSN - 0091-2700
DOI - 10.1177/0091270010370973
Subject(s) - dropout (neural networks) , dosing , clinical trial , anxiety , generalized anxiety disorder , censoring (clinical trials) , medicine , adverse effect , pregabalin , hazard ratio , psychiatry , computer science , machine learning , confidence interval , pathology
Dizziness represents a major determinant of dropout in the treatment of generalized anxiety disorder with pregabalin. Titration (dose escalation) regimens based on clinical judgment were implemented to mitigate this adverse event and reduce patient dropout across clinical trials. Dropout is an important treatment failure endpoint, which can be analyzed using time‐to‐event models that incorporate daily dosing or other time‐varying information. A parametric discrete‐time dropout model with daily dizziness severity score as a covariate afforded a systematic, model‐based assessment of titration dosing strategies, with model predictions evaluated against corresponding nonparametric estimates. A Gompertz hazard function adequately described the decreasing dropout hazard over time for individuals with severe or moderate dizziness and a lower, constant hazard for individuals reporting no dizziness or mild dizziness. Predictive performance of the model was adequate based on external validation with an independent trial and other goodness‐of‐fit criteria. Prospective simulations highlight the utility of this approach in reducing dropout based on examination of untested titration scenarios for future generalized anxiety disorder or other trials.

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