A Novel Strategy to Identify Placebo Responders: Prediction Index of Clinical and Biological Markers in the EMBARC Trial

Madhukar H Trivedi, Charles South, Manish K Jha, A John Rush, Jing Cao, Benji Kurian, Mary Phillips, Diego A Pizzagalli, Joseph M Trombello, Maria A Oquendo, Crystal Cooper, Daniel G Dillon, Christian Webb, Bruce D Grannemann, Gerard Bruder, Patrick J McGrath, Ramin Parsey, Myrna Weissman, Maurizio Fava, Madhukar H Trivedi, Charles South, Manish K Jha, A John Rush, Jing Cao, Benji Kurian, Mary Phillips, Diego A Pizzagalli, Joseph M Trombello, Maria A Oquendo, Crystal Cooper, Daniel G Dillon, Christian Webb, Bruce D Grannemann, Gerard Bruder, Patrick J McGrath, Ramin Parsey, Myrna Weissman, Maurizio Fava

Abstract

Background: One in three clinical trial patients with major depressive disorder report symptomatic improvement with placebo. Strategies to mitigate the effect of placebo responses have focused on modifying study design with variable success. Identifying and excluding or controlling for individuals with a high likelihood of responding to placebo may improve clinical trial efficiency and avoid unnecessary medication trials.

Methods: Participants included those assigned to the placebo arm (n = 141) of the Establishing Moderators and Biosignatures for Antidepressant Response in Clinical Care (EMBARC) trial. The elastic net was used to evaluate 283 baseline clinical, behavioral, imaging, and electrophysiological variables to identify the most robust yet parsimonious features that predicted depression severity at the end of the double-blind 8-week trial. Variables retained in at least 50% of the 100 imputed data sets were used in a Bayesian multiple linear regression model to simultaneously predict the probabilities of response and remission.

Results: Lower baseline depression severity, younger age, absence of melancholic features or history of physical abuse, less anxious arousal, less anhedonia, less neuroticism, and higher average theta current density in the rostral anterior cingulate predicted a higher likelihood of improvement with placebo. The Bayesian model predicted remission and response with an actionable degree of accuracy (both AUC > 0.73). An interactive calculator was developed predicting the likelihood of placebo response at the individual level.

Conclusion: Easy-to-measure clinical, behavioral, and electrophysiological assessments can be used to identify placebo responders with a high degree of accuracy. Development of this calculator based on these findings can be used to identify potential placebo responders.

Keywords: EMBARC trial; Placebo responder; Prediction index.

© 2018 S. Karger AG, Basel.

Figures

Fig. 1.
Fig. 1.
Receiver operating characteristic curves for Bayesian model with an a priori threshold of 50% variable retention.
Fig. 2.
Fig. 2.
An interactive web-based calculator to predict the likelihood of placebo response.

Source: PubMed

3
订阅