Literature DB >> 19731223

Estimating drug effects in the presence of placebo response: causal inference using growth mixture modeling.

Bengt Muthén1, Hendricks C Brown.   

Abstract

Placebo-controlled randomized trials for antidepressants and other drugs often show a response for a sizeable percentage of the subjects in the placebo group. Potential placebo responders can be assumed to exist also in the drug treatment group, making it difficult to assess the drug effect. A key drug research focus should be to estimate the percentage of individuals among those who responded to the drug who would not have responded to the placebo ('Drug Only Responders'). This paper investigates a finite mixture model approach to uncover percentages of up to four potential mixture components: Never Responders, Drug Only Responders, Placebo Only Responders, and Always Responders. Two examples are used to illustrate the modeling, a 12-week antidepressant trial with a continuous outcome (Hamilton D score) and a 7-week schizophrenia trial with a binary outcome (illness level). The approach is formulated in causal modeling terms using potential outcomes and principal stratification. Growth mixture modeling (GMM) with maximum-likelihood estimation is used to uncover the different mixture components. The results point to the limitations of the conventional approach of comparing marginal response rates for drug and placebo groups. It is useful to augment such reporting with the GMM-estimated prevalences for the four classes of subjects and the Drug Only Responder drug effect estimate.

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Year:  2009        PMID: 19731223      PMCID: PMC2818509          DOI: 10.1002/sim.3721

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  12 in total

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5.  A latent-class mixture model for incomplete longitudinal Gaussian data.

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6.  Predicting potential placebo effect in drug treated subjects.

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7.  Random regression models: a comprehensive approach to the analysis of longitudinal psychiatric data.

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9.  Identification of true drug response to antidepressants. Use of pattern analysis.

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Journal:  Arch Gen Psychiatry       Date:  1984-08

10.  Mediation analysis with principal stratification.

Authors:  Robert Gallop; Dylan S Small; Julia Y Lin; Michael R Elliott; Marshall Joffe; Thomas R Ten Have
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  34 in total

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2.  Suicidal thoughts and behavior with antidepressant treatment: reanalysis of the randomized placebo-controlled studies of fluoxetine and venlafaxine.

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Review 5.  [Placebo response: in studies on pain and under other clinical conditions].

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Review 6.  The placebo response in clinical trials: more questions than answers.

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7.  Early Symptom Trajectories as Predictors of Treatment Outcome for Citalopram Versus Placebo.

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8.  Addressing Methodologic Challenges and Minimizing Threats to Validity in Synthesizing Findings from Individual-Level Data Across Longitudinal Randomized Trials.

Authors:  Ahnalee Brincks; Samantha Montag; George W Howe; Shi Huang; Juned Siddique; Soyeon Ahn; Irwin N Sandler; Hilda Pantin; C Hendricks Brown
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Review 9.  Personalized cardiovascular medicine: concepts and methodological considerations.

Authors:  Henry Völzke; Carsten O Schmidt; Sebastian E Baumeister; Till Ittermann; Glenn Fung; Janina Krafczyk-Korth; Wolfgang Hoffmann; Matthias Schwab; Henriette E Meyer zu Schwabedissen; Marcus Dörr; Stephan B Felix; Wolfgang Lieb; Heyo K Kroemer
Journal:  Nat Rev Cardiol       Date:  2013-03-26       Impact factor: 32.419

10.  Causal inference in longitudinal comparative effectiveness studies with repeated measures of a continuous intermediate variable.

Authors:  Chen-Pin Wang; Booil Jo; C Hendricks Brown
Journal:  Stat Med       Date:  2014-02-27       Impact factor: 2.373

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