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INDIVIDUAL PARTICIPANT DATA META-ANALYSIS OF ANTIDEPRESSANT TRIALS FOR MAJOR DEPRESSION IN JAPAN
Proposal
1819
Title of Proposed Research
INDIVIDUAL PARTICIPANT DATA META-ANALYSIS OF ANTIDEPRESSANT TRIALS FOR MAJOR DEPRESSION IN JAPAN
Lead Researcher
Shigeto Yamawaki
Affiliation
Hiroshima University
Funding Source
Strategic Research Program for Brain Sciences by Ministry of Education, Culture, Sports, Science and Technology, Japan
Japan Agency for Medical Research and Development
Japanese Society of Neuropsychopharmacology
Potential Conflicts of Interest
SY has received lecture fee from Mochida Pharmaceutical, Japan Eli Lilly, Pfizer, MSD, Sumitomo Dainippon Pharma, Meiji Seika Pharma, Eisai Pharmaceutical. He has received consultation fee from Lundbeck Japan, Takeda Pharmaceuticals and Brain Science Foundation.JI has received presentation and writing fees: Otsuka Pharmaceutical Co., Ltd.; Sumitomo Dainippon Pharma Co., Ltd.; Shionogi & Co., Ltd.; Takeda Pharmaceutical Company Limited; Eli Lilly Japan K.K.; Novartis Pharma K.K.; Pfizer Japan Inc.; Janssen Pharmaceutical K.K.; and MSD K.K, and scholarship grants: Sumitomo Dainippon Pharma Co., Ltd. and Takeda Pharmaceutical Company Limited.TAF has received lecture fees from Eli Lilly, Janssen, Meiji, MSD, Otsuka, Pfizer and Tanabe-Mitsubishi, and consultancy fees from Sekisui Chemicals and Takeda Science Foundation. He has received royalties from Igaku-Shoin and Nihon Bunka Kagaku-sha publishers. He has received research support from Mochida and Tanabe-Mitsubishi.ST has received lecture fee from Kobe City, Astra-Zeneca, Taiho Pharmaceutical, and Ono Pharmaceutical. He has received consultation fee from Pharmaceuticals and Medical Devices Agency, DeNA Life Science, and CanBus. He has received outsourcing fee from Public Health Research Foundation, Japan Breast Cancer Research Group, Satt, and Asahi Kasei Pharma. His wife has engaged in a research project of Bayer Yakuhin.NW has also received royalties from Sogensha, Paquet and Akatsuki. HN has received lecture and writing fee from Iwanami Shoten, Kyowa Kirin, Life Science Publishing, Yodosha, Yakuji Nippo and the Japanese Society of Clinical Pharmacology and Therapeutics. He has received consultation fee Kyowa Kirin. He has received grants from GlaxoSmithKline.
Data Sharing Agreement Date
18 May 2017
Lay Summary
CINP (The International College of Neuropsychopharmacology) and JSNP (Japanese Society of Neuropsychopharmacology) have set up a public private partnership (PPP) taskforce to promote drug developments in the central nervous system domains in Japan. Within this larger framework, we have started a project to utilize the existing clinical trial data (individual participant data) from placebo-controlled antidepressant trials for depression conducted in Japan to explore new leads in CNS drug development.
We are aiming at conducting the analyses as detailed in the statistical analysis plan with individual participant data from eight Phase II or III clinical trials of venlafaxine ER, bupropion SR, paroxetine CR, escitalopram (2 trials), desvenlafaxine, duloxetine and mirtazapine conducted in Japan.
The main purposes of the present study are two:
A) Identify subgroups of patients that show greater differentiation between antidepressants and placebo, in order to contribute to the planning of more efficient trials in the future
B) Identify subgroups of patients that show smaller differentiation between antidepressants and placebo, in order to identify unmet medical needs
and we will conduct the independent participant data meta-analyses to address these questions.
The findings will be communicated to the public via scientific publications.
Study Data Provided
[{ "PostingID": 3705, "Title": "GSK-AK1113351", "Description": "Study AK1113351, a fixed dose study of 323U66 SR in the treatment of Major Depressive Disorder (MDD) - a multi-center, placebo-controlled, randomized, double-blind, parallel-comparison study" },{ "PostingID": 4238, "Title": "GSK-PCR112810", "Description": "A Randomized, Double-blind, Placebo Controlled Trial to Evaluate the Clinical Effects of Controlled Release Paroxetine in the Treatment of Major Depressive Disorder" }]
Statistical Analysis Plan
1 All arms within the licensed dose range (by FDA in USA, EMA in Europe, or PMDA in Japan) will be treated as effective dose. Arms using dosages outside these ranges will be excluded.2 The literature suggests many candidates for effect predictors (variables associated with response regardless of the treatment) and for effect modifiers (variables associated with differential response depending on the treatment) in the treatment of depression [2]. We have listed the possible candidate variables for effect predictors and effect modifiers based on the literature in the following. The variables to be actually examined will first be limited by their availability in the included original studies but when several variables that measure similar concepts are available, the research team will discuss which ones we believe are the most important predictors and which should be included in the model.Demographics1) Age [3]Life and social history2) Childhood maltreatment [4]3) Education [5]4) Employment [6, 7]5) Marital status [6-8]6) Recent life events and difficulties [6, 7]7) Social adjustment/function [9]History of present illness8) Age at onset [10]9) Chronicity [3]10) No of previous episodes [5, 11]11) Prior treatments with antidepressants [7]Present illness: symptomatology12) Baseline severity [12-14]13) Baseline psychomotor symptoms [9, 15]14) Baseline anxiety symptoms [15, 16]15) Comorbid personality disorder [7]16) Comorbid substance use/abuse [15]Therapeutic process17) Early response [17]18) Co-prescriptions other than antidepressants3 We will conduct IPD-MA to examine the relationship between each independent variable and the differences in change scores between the drugs and placebo using a mixed-effects model with maximum likelihood or restricted maximum likelihood estimation [18, 19]. The between-studies and between-drugs heterogeneities will be modelled by random effects. The effect modifications will be evaluated by involving treatment-by-covariates interaction terms in the mixed-effects model analysis. The strategy of modeling variables will be determined explanatorily because there have been only limited prior information what variables have predictive abilities and how these variables should be modeled in the statistical models. We expect to assemble 4000 participants' individual data from the eight trials which will provide enough power to examine the available variables. 4 In addition, we would attempt other data-driven subgroup identification methods which might detect predictive factors and responder subgroups more efficiently, if necessary. We will adopt the SIDES (subgroup identification based differential effect search) procedure and its companion methods [20-22] that effectively identify responder subgroups. The SIDES and its companion procedures are flexible searching algorithms that split the patient population for exploring the subpopulations that the treatment effects would be particularly different. These algorithms can also control the random errors effectively in the comprehensive explanatory analyses. The candidate variables and the analysis statistical models will be limited as above.5 The obtained model will then be used to build subgroups of those who are likely to respond on drug but not on placebo, those who are likely to respond both on drug and on placebo, and those who are likely not to respond to drug or placebo.1. Carmody TJ, Rush AJ, Bernstein I, Warden D, Brannan S, Burnham D, et al. The Montgomery Asberg and the Hamilton ratings of depression: a comparison of measures. Eur Neuropsychopharmacol. 2006 Dec;16(8):601-11. PMID: 16769204. doi: 10.1016/j.euroneuro.2006.04.008.2. Kessler RC, Bossarte R, Brenner L, Ebert D, de Junge P, Nierenberg A, et al. Using patient self-reports to study heterogeneity of treatment effects in major depressive disorder. Epidemiology and Psychiatric Sciences. in press.3. Cuijpers P, Reynolds CF, 3rd, Donker T, Li J, Andersson G, Beekman A. Personalized treatment of adult depression: medication, psychotherapy, or both? A systematic review. Depress Anxiety. 2012 Oct;29(10):855-64. PMID: 22815247. doi: 10.1002/da.21985.4. Nemeroff CB, Heim CM, Thase ME, Klein DN, Rush AJ, Schatzberg AF, et al. Differential responses to psychotherapy versus pharmacotherapy in patients with chronic forms of major depression and childhood trauma. Proc Natl Acad Sci U S A. 2003 Nov 25;100(24):14293-6. PMID: 14615578.5. Perlis RH. A clinical risk stratification tool for predicting treatment resistance in major depressive disorder. Biol Psychiatry. 2013 Jul 1;74(1):7-14. PMID: 23380715. doi: 10.1016/j.biopsych.2012.12.007.6. Fournier JC, DeRubeis RJ, Shelton RC, Hollon SD, Amsterdam JD, Gallop R. Prediction of response to medication and cognitive therapy in the treatment of moderate to severe depression. J Consult Clin Psychol. 2009 Aug;77(4):775-87. PMID: 19634969. doi: 10.1037/a0015401.7. DeRubeis RJ, Cohen ZD, Forand NR, Fournier JC, Gelfand LA, Lorenzo-Luaces L. The Personalized Advantage Index: translating research on prediction into individualized treatment recommendations. A demonstration. PLoS ONE. 2014;9(1):e83875. PMID: 24416178. doi: 10.1371/journal.pone.0083875.8. Barber JP, Muenz LR. The role of avoidance and obsessiveness in matching patients to cognitive and interpersonal psychotherapy: empirical findings from the treatment for depression collaborative research program. J Consult Clin Psychol. 1996 Oct;64(5):951-8. PMID: 8916624.9. Frank E, Cassano GB, Rucci P, Thompson WK, Kraemer HC, Fagiolini A, et al. Predictors and moderators of time to remission of major depression with interpersonal psychotherapy and SSRI pharmacotherapy. Psychol Med. 2011 Jan;41(1):151-62. PMID: 20380782. doi: 10.1017/S0033291710000553.10. Andreescu C, Mulsant BH, Houck PR, Whyte EM, Mazumdar S, Dombrovski AY, et al. Empirically derived decision trees for the treatment of late-life depression. Am J Psychiatry. 2008 Jul;165(7):855-62. PMID: 18450930. doi: 10.1176/appi.ajp.2008.07081340.11. Jarrett RB, Minhajuddin A, Kangas JL, Friedman ES, Callan JA, Thase ME. Acute phase cognitive therapy for recurrent major depressive disorder: who drops out and how much do patient skills influence response? Behav Res Ther. 2013 May;51(4-5):221-30. PMID: 23485420. doi: 10.1016/j.brat.2013.01.006.12. Fournier JC, DeRubeis RJ, Hollon SD, Dimidjian S, Amsterdam JD, Shelton RC, et al. Antidepressant drug effects and depression severity: a patient-level meta-analysis. JAMA. 2010 Jan 6;303(1):47-53. PMID: 20051569. doi: 303/1/47 [pii]10.1001/jama.2009.1943.13. Driessen E, Cuijpers P, Hollon SD, Dekker JJ. Does pretreatment severity moderate the efficacy of psychological treatment of adult outpatient depression? A meta-analysis. J Consult Clin Psychol. 2010 Oct;78(5):668-80. PMID: 20873902. doi: 10.1037/a0020570.14. Weitz ES, Hollon SD, Twisk J, van Straten A, Huibers MJ, David D, et al. Baseline depression severity as moderator of depression outcomes between cognitive behavioral therapy vs pharmacotherapy: An individual patient data meta-analysis. JAMA psychiatry. 2015 Nov 1;72(11):1102-9. PMID: 26397232. doi: 10.1001/jamapsychiatry.2015.1516.15. Rush AJ, Wisniewski SR, Warden D, Luther JF, Davis LL, Fava M, et al. Selecting among second-step antidepressant medication monotherapies: predictive value of clinical, demographic, or first-step treatment features. Arch Gen Psychiatry. 2008 Aug;65(8):870-80. PMID: 18678792. doi: 10.1001/archpsyc.65.8.870.16. Ninan PT, Rush AJ, Crits-Christoph P, Kornstein SG, Manber R, Thase ME, et al. Symptomatic and syndromal anxiety in chronic forms of major depression: effect of nefazodone, cognitive behavioral analysis system of psychotherapy, and their combination. J Clin Psychiatry. 2002 May;63(5):434-41. PMID: 12025827.17. Steidtmann D, Manber R, Blasey C, Markowitz JC, Klein DN, Rothbaum BO, et al. Detecting critical decision points in psychotherapy and psychotherapy + medication for chronic depression. J Consult Clin Psychol. 2013 Oct;81(5):783-92. PMID: 23750462. doi: 10.1037/a0033250.18. Hedeker D, Gibbons RD. Longitudinal Data Analysis. Hoboken, New Jersey: John Wiley & Sons, Inc.; 2006.19. Gibbons RD, Hur K, Brown CH, Davis JM, Mann JJ. Benefits from antidepressants: Synthesis of 6-week patient-level outcomes from double-blind placebo-controlled randomized trials of fluoxetine and venlafaxine. Arch Gen Psychiatry. 2012 Mar 5. PMID: 22393205. doi: 10.1001/archgenpsychiatry.2011.2044.20. Lipkovich I, Dmitrienko A, Denne J, Enas G. Subgroup identification based on differential effect search--a recursive partitioning method for establishing response to treatment in patient subpopulations. Stat Med. 2011 Sep 20;30(21):2601-21. PMID: 21786278. doi: 10.1002/sim.4289.21. Lipkovich I, Dmitrienko A. Strategies for identifying predictive biomarkers and subgroups with enhanced treatment effect in clinical trials using SIDES. J Biopharm Stat. 2014;24(1):130-53. PMID: 24392982. doi: 10.1080/10543406.2013.856024.22. Lipkovich I, Dmitrienko A, B. R. D' Agostino S. Tutorial in biostatistics: data-driven subgroup identification and analysis in clinical trials. Stat Med. 2017 Jan 15;36(1):136-96. PMID: 27488683. doi: 10.1002/sim.7064.
Publication Citation
Norio Watanabe, Kazushi Maruo, Hissei Imai, Kazutaka Ikeda, Shigeto Yamawaki, Toshi A. Furukawa. Predicting antidepressant response through early improvement of individual symptoms of depression incorporating baseline characteristics of patients: An individual patient data meta-analysis, Journal of Psychiatric Research, Volume 125, 2020, Pages 85-90
https://doi.org/10.1016/j.jpsychires.2020.03.009
Furukawa, TA, Maruo, K, Noma, H, Tanaka, S, Imai, H, Shinohara, K, Ikeda, K, Yamawaki, S, Levine, SZ, Goldberg, Y, Leucht, S, Cipriani, A. Initial severity of major depression and efficacy of new generation antidepressants: individual‐participant data meta‐analysis
https://doi.org/10.1111/acps.12886
Hisashi Noma, Toshi A. Furukawa, Kazushi Maruo, Hissei Imai, Kiyomi Shinohara, Shiro Tanaka, Kazutaka Ikeda, Shigeto Yamawaki, Andrea Cipriani. Exploratory analyses of effect modifiers in the antidepressant treatment of major depression: Individual-participant data meta-analysis of 2803 participants in seven placebo-controlled randomized trials,
Journal of Affective Disorders, Volume 250, 2019, Pages 419-424.
https://doi.org/10.1016/j.jad.2019.03.031
Noma, H., Maruo, K., Gosho, M. et al. Efficient two-step multivariate random effects meta-analysis of individual participant data for longitudinal clinical trials using mixed effects models. BMC Med Res Methodol 19, 33 (2019).
https://doi.org/10.1186/s12874-019-0676-1
Shinohara K, Tanaka S, Imai H, et alDevelopment and validation of a prediction model for the probability of responding to placebo in antidepressant trials: a pooled analysis of individual patient dataEvidence-Based Mental Health 2019;22:10-16.
https://doi.org/10.1136/ebmental-2018-300073
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