Publication | Closed Access
Sample Size Requirements for Multivariate Models to Predict Between-Patient Differences in Best Treatments of Major Depressive Disorder
142
Citations
43
References
2019
Year
Patient SelectionTreatment EffectMental HealthTreatment Plan EvaluationDepression Treatment ResponseSample Size RequirementsMood SymptomClinical TrialsResponse PredictionComorbid Psychiatric DisorderBiostatisticsStatisticsHealth SciencesPsychiatryTreatment ResponseDepressionTreatment OptionPsychiatric DisorderTreatment PlanningMajor Depressive DisorderTime-varying ConfoundingMultivariate ModelsMedicinePsychopathology
Clinical trials have documented numerous clinical features, social characteristics, and biomarkers that are “prescriptive” predictors of depression treatment response, that is, predictors of which types of treatments are best for which patients. On the basis of these results, research is actively under way to develop multivariate prescriptive prediction models to guide precision depression treatment planning. However, the sample size requirements for such models have not been analyzed. We present such an analysis here. Simulations using realistic parameter values and a state-of-the-art cross-validated targeted minimum loss-based prescription treatment response estimator show that at least 300 patients per treatment arm are needed to have adequate statistical power to detect clinically significant underlying marginal improvements in treatment response because of precision treatment selection. This is a considerably larger sample size than in most existing studies. We close with a discussion of practical study design options to address the need for larger sample sizes in future studies.
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