Literature DB >> 29398354

A Machine Learning Approach to Identifying Placebo Responders in Late-Life Depression Trials.

Sigal Zilcha-Mano1, Steven P Roose2, Patrick J Brown2, Bret R Rutherford2.   

Abstract

OBJECTIVE: Despite efforts to identify characteristics associated with medication-placebo differences in antidepressant trials, few consistent findings have emerged to guide participant selection in drug development settings and differential therapeutics in clinical practice. Limitations in the methodologies used, particularly searching for a single moderator while treating all other variables as noise, may partially explain the failure to generate consistent results. The present study tested whether interactions between pretreatment patient characteristics, rather than a single-variable solution, may better predict who is most likely to benefit from placebo versus medication.
METHODS: Data were analyzed from 174 patients aged 75 years and older with unipolar depression who were randomly assigned to citalopram or placebo. Model-based recursive partitioning analysis was conducted to identify the most robust significant moderators of placebo versus citalopram response.
RESULTS: The greatest signal detection between medication and placebo in favor of medication was among patients with fewer years of education (≤12) who suffered from a longer duration of depression since their first episode (>3.47 years) (B = 2.53, t(32) = 3.01, p = 0.004). Compared with medication, placebo had the greatest response for those who were more educated (>12 years), to the point where placebo almost outperformed medication (B = -0.57, t(96) = -1.90, p = 0.06).
CONCLUSION: Machine learning approaches capable of evaluating the contributions of multiple predictor variables may be a promising methodology for identifying placebo versus medication responders. Duration of depression and education should be considered in the efforts to modulate placebo magnitude in drug development settings and in clinical practice.
Copyright © 2018 American Association for Geriatric Psychiatry. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Placebo effect; depression; personalized medicine; placebo responders; treatment moderators

Mesh:

Substances:

Year:  2018        PMID: 29398354      PMCID: PMC5993576          DOI: 10.1016/j.jagp.2018.01.001

Source DB:  PubMed          Journal:  Am J Geriatr Psychiatry        ISSN: 1064-7481            Impact factor:   4.105


  40 in total

1.  Why has the antidepressant-placebo difference in antidepressant clinical trials diminished over the past three decades?

Authors:  Arif Khan; Amritha Bhat; Russell Kolts; Michael E Thase; Walter Brown
Journal:  CNS Neurosci Ther       Date:  2010-04-16       Impact factor: 5.243

2.  Reducing Dropout in Treatment for Depression: Translating Dropout Predictors Into Individualized Treatment Recommendations.

Authors:  Sigal Zilcha-Mano; John R Keefe; Harold Chui; Avinadav Rubin; Marna S Barrett; Jacques P Barber
Journal:  J Clin Psychiatry       Date:  2016-12       Impact factor: 4.384

3.  An examination of the efficiency of the sequential parallel design in psychiatric clinical trials.

Authors:  Roy N Tamura; Xiaohong Huang
Journal:  Clin Trials       Date:  2007       Impact factor: 2.486

4.  Clinical features of depressed patients who do and do not improve with placebo.

Authors:  W A Brown; M F Johnson; M G Chen
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5.  Discovering, comparing, and combining moderators of treatment on outcome after randomized clinical trials: a parametric approach.

Authors:  Helena Chmura Kraemer
Journal:  Stat Med       Date:  2013-01-10       Impact factor: 2.373

6.  Predictors of placebo response in adults with attention-deficit/hyperactivity disorder: data from 2 randomized trials of osmotic-release oral system methylphenidate.

Authors:  Jan K Buitelaar; Esther Sobanski; Rolf-Dieter Stieglitz; Joachim Dejonckheere; Sandra Waechter; Barbara Schäuble
Journal:  J Clin Psychiatry       Date:  2012-06-12       Impact factor: 4.384

Review 7.  Predictors of placebo response in randomized controlled trials of psychotropic drugs for children and adolescents with internalizing disorders.

Authors:  David Cohen; Angèle Consoli; Nicolas Bodeau; Diane Purper-Ouakil; Emmanuelle Deniau; Jean-Marc Guile; Craig Donnelly
Journal:  J Child Adolesc Psychopharmacol       Date:  2010-02       Impact factor: 2.576

Review 8.  Does the probability of receiving placebo influence clinical trial outcome? A meta-regression of double-blind, randomized clinical trials in MDD.

Authors:  George I Papakostas; Maurizio Fava
Journal:  Eur Neuropsychopharmacol       Date:  2008-09-26       Impact factor: 4.600

Review 9.  Placebo response in randomized controlled trials of antidepressants for pediatric major depressive disorder.

Authors:  Jeffrey A Bridge; Boris Birmaher; Satish Iyengar; Rémy P Barbe; David A Brent
Journal:  Am J Psychiatry       Date:  2008-12-01       Impact factor: 18.112

Review 10.  A model of placebo response in antidepressant clinical trials.

Authors:  Bret R Rutherford; Steven P Roose
Journal:  Am J Psychiatry       Date:  2013-07       Impact factor: 18.112

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  6 in total

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Journal:  Am J Geriatr Psychiatry       Date:  2019-05-23       Impact factor: 4.105

Review 3.  Using Artificial Intelligence-based Methods to Address the Placebo Response in Clinical Trials.

Authors:  Erica A Smith; William P Horan; Dominique Demolle; Peter Schueler; Dong-Jing Fu; Ariana E Anderson; Joseph Geraci; Florence Butlen-Ducuing; Jasmine Link; Ni A Khin; Robert Morlock; Larry D Alphs
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4.  Who benefits most from expectancy effects? A combined neuroimaging and antidepressant trial in depressed older adults.

Authors:  Sigal Zilcha-Mano; Meredith L Wallace; Patrick J Brown; Joel Sneed; Steven P Roose; Bret R Rutherford
Journal:  Transl Psychiatry       Date:  2021-09-15       Impact factor: 7.989

5.  Promise and Challenges of Using Combined Moderator Methods to Personalize Mental Health Treatment.

Authors:  Meredith L Wallace; Stephen F Smagula
Journal:  Am J Geriatr Psychiatry       Date:  2018-04-24       Impact factor: 4.105

6.  Development of a Machine Learning-Based Predictive Model for Lung Metastasis in Patients With Ewing Sarcoma.

Authors:  Wenle Li; Tao Hong; Wencai Liu; Shengtao Dong; Haosheng Wang; Zhi-Ri Tang; Wanying Li; Bing Wang; Zhaohui Hu; Qiang Liu; Yong Qin; Chengliang Yin
Journal:  Front Med (Lausanne)       Date:  2022-04-01
  6 in total

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