Structural Models Describing Placebo Treatment Effects in Schizophrenia and Other Neuropsychiatric Disorders

Large variation in placebo response within and among clinical trials can substantially affect conclusions about the efficacy of new medications in psychiatry. Developing a robust placebo model to describe the placebo response is important to facilitate quantification of drug effects, and eventually to guide the design of clinical trials for psychiatric treatment via a model-based simulation approach. In addition, high dropout rates are very common in the placebo arm of psychiatric clinical trials. While developing models to evaluate the effect of placebo response, the data from patients who drop out of the trial should be considered for accurate interpretation of the results.The objective of this paper is to review the various empirical and semi-mechanistic models that have been used to quantify the placebo response in schizophrenia trials. Pros and cons of each placebo model are discussed. Additionally, placebo models used in other neuropsychiatric disorders like depression, Alzheimer’s disease and Parkinson’s disease are also reviewed with the objective of finding those placebo models that could be useful for clinical studies of both acute and chronic schizophrenic disease conditions. Better understanding of the patterns of dropout and the factors leading to dropouts are crucial in identifying the true placebo response. We therefore also review dropout models that are used in the development of models for treatment effects and in the optimization of clinical trials by simulation approaches.The use of an appropriate modelling strategy that is capable of identifying the potential sources of variable placebo responses and dropout rates is recommended for improving the sensitivity in discriminating between the effects of active treatment and placebo.

[1]  Robert O'Neill,et al.  MMRM vs. LOCF: A Comprehensive Comparison Based on Simulation Study and 25 NDA Datasets , 2009, Journal of biopharmaceutical statistics.

[2]  N. Cutler,et al.  Ethnicity and Antipsychotic Response , 1997, The Annals of pharmacotherapy.

[3]  M. Danhof,et al.  Comparative analysis of the sensitivity of the individual items of the Montgomery Asberg depression rating scale to response and its consequences for the assessment of efficacy , 2008 .

[4]  K E Peace,et al.  Results and validation of a population pharmacodynamic model for cognitive effects in Alzheimer patients treated with tacrine. , 1992, Proceedings of the National Academy of Sciences of the United States of America.

[5]  Matthew M. Hutmacher,et al.  Joint modeling of dizziness, drowsiness, and dropout associated with pregabalin and placebo treatment of generalized anxiety disorder , 2009, Journal of Pharmacokinetics and Pharmacodynamics.

[6]  N H Holford,et al.  Drug treatment effects on disease progression. , 2001, Annual review of pharmacology and toxicology.

[7]  B. Corrigan,et al.  How Modeling and Simulation Have Enhanced Decision Making in New Drug Development , 2005, Journal of Pharmacokinetics and Pharmacodynamics.

[8]  Geert Molenberghs,et al.  Assessing and interpreting treatment effects in longitudinal clinical trials with missing data , 2003, Biological Psychiatry.

[9]  Ohidul Siddiqui,et al.  Endpoints and Analyses to Discern Disease-Modifying Drug Effects in Early Parkinson’s Disease , 2009, The AAPS Journal.

[10]  J. Kane,et al.  Methodological issues in current antipsychotic drug trials. , 2007, Schizophrenia bulletin.

[11]  A. Vermeulen,et al.  Population Pharmacokinetics of Intramuscular Paliperidone Palmitate in Patients with Schizophrenia , 2009, Clinical pharmacokinetics.

[12]  Alexander L. Miller,et al.  Drug Adherence: Effects of Decreased Visit Frequency on Adherence to Clozapine Therapy , 2005, Pharmacotherapy.

[13]  L B Sheiner,et al.  Pharmacokinetic/pharmacodynamic modeling in drug development. , 2000, Annual review of pharmacology and toxicology.

[14]  P. Hougaard,et al.  Fundamentals of Survival Data , 1999, Biometrics.

[15]  Walter W. Piegorsch,et al.  Proportional Hazards Model , 2006 .

[16]  J. Kane,et al.  Definitions of response and remission in schizophrenia: recommendations for their use and their presentation , 2009, Acta psychiatrica Scandinavica. Supplementum.

[17]  Michael Krams,et al.  Evaluation of structural models to describe the effect of placebo upon the time course of major depressive disorder , 2009, Journal of Pharmacokinetics and Pharmacodynamics.

[18]  D. Collet Modelling Survival Data in Medical Research , 2004 .

[19]  S. Potkin,et al.  What Is Causing the Reduced Drug-Placebo Difference in Recent Schizophrenia Clinical Trials and What Can be Done About It? , 2008, Schizophrenia bulletin.

[20]  Mark E. Sale,et al.  A Joint Model for Nonlinear Longitudinal Data with Informative Dropout , 2003, Journal of Pharmacokinetics and Pharmacodynamics.

[21]  M. Danhof,et al.  The missing link between clinical endpoints and drug targets in depression. , 2010, Trends in pharmacological sciences.

[22]  Jill Fiedler‐Kelly PK/PD Analysis of Binary (Logistic) Outcome Data , 2006 .

[23]  M. Hamilton A RATING SCALE FOR DEPRESSION , 1960, Journal of neurology, neurosurgery, and psychiatry.

[24]  A. Elferink,et al.  Schizophrenia: Do we really need placebo-controlled studies? , 1998, European Neuropsychopharmacology.

[25]  N. Holford,et al.  Washout and delayed start designs for identifying disease modifying effects in slowly progressive diseases using disease progression analysis , 2009, Pharmaceutical statistics.

[26]  R. Gomeni,et al.  Bayesian modelling and ROC analysis to predict placebo responders using clinical score measured in the initial weeks of treatment in depression trials. , 2007, British journal of clinical pharmacology.

[27]  C. Peck,et al.  Prediction of the outcome of a phase 3 clinical trial of an antischizophrenic agent (quetiapine fumarate) by simulation with a population pharmacokinetic and pharmacodynamic model , 2000, Clinical pharmacology and therapeutics.

[28]  R. Gieschke,et al.  Pharmacometrics: modelling and simulation tools to improve decision making in clinical drug development , 2010, European Journal of Drug Metabolism and Pharmacokinetics.

[29]  K. Melkersson Prolactin elevation of the antipsychotic risperidone is predominantly related to its 9-hydroxy metabolite , 2006, European Neuropsychopharmacology.

[30]  J. Calabrese,et al.  Efficacy of Quetiapine Monotherapy in Bipolar I and II Depression: A Double-blind, Placebo-controlled Study (The BOLDER II Study) , 2006, Journal of clinical psychopharmacology.

[31]  A. Ward,et al.  Describing Cognitive Decline of Patients at the Mild or Moderate Stages of Alzheimer's Disease Using the Standardized MMSE , 2002, International Psychogeriatrics.

[32]  L. Balant,et al.  Time course of clinical response to venlafaxine: relevance of plasma level and chirality , 2004, European Journal of Clinical Pharmacology.

[33]  Mats O. Karlsson,et al.  Automated Covariate Model Building Within NONMEM , 1998, Pharmaceutical Research.

[34]  S. Fahn Unified Parkinson's Disease Rating Scale , 1987 .

[35]  Mats O. Karlsson,et al.  Three new residual error models for population PK/PD analyses , 1995, Journal of Pharmacokinetics and Biopharmaceutics.

[36]  S. Cremers,et al.  Bone Physiology, Disease and Treatment , 2010, Clinical pharmacokinetics.

[37]  C. Mallinckrodt,et al.  The impact of analytic method on interpretation of outcomes in longitudinal clinical trials , 2008, International journal of clinical practice.

[38]  D. Rubin,et al.  Statistical Analysis with Missing Data , 1988 .

[39]  J. Rabinowitz,et al.  The association of dropout and outcome in trials of antipsychotic medication and its implications for dealing with missing data. , 2007, Schizophrenia bulletin.

[40]  R. Carroll,et al.  Comparing onset of antidepressant action using a repeated measures approach and a traditional assessment schedule , 2006, Statistics in medicine.

[41]  J. Pérez-Ruixo,et al.  Modeling the Effectiveness of Paliperidone ER and Olanzapine in Schizophrenia: Meta‐Analysis of 3 Randomized, Controlled Clinical Trials , 2010, Journal of clinical pharmacology.

[42]  J. Kane,et al.  Unanswered questions in schizophrenia clinical trials. , 2007, Schizophrenia bulletin.

[43]  S. Leucht,et al.  Dropout rates in randomised antipsychotic drug trials , 2001, Psychopharmacology.

[44]  Lawrence J Lesko,et al.  Quantitative disease, drug, and trial models. , 2009, Annual review of pharmacology and toxicology.

[45]  D. Malaspina,et al.  Age, sex and first treatment of schizophrenia in a population cohort. , 2011, Journal of psychiatric research.

[46]  David A. Schoenfeld,et al.  The Problem of the Placebo Response in Clinical Trials for Psychiatric Disorders: Culprits, Possible Remedies, and a Novel Study Design Approach , 2003, Psychotherapy and Psychosomatics.

[47]  Stefan Leucht,et al.  What does the PANSS mean? , 2005, Schizophrenia Research.

[48]  L. Citrome,et al.  Differential Rates of Treatment Discontinuation in Clinical Trials as a Measure of Treatment Effectiveness for Olanzapine and Comparator Atypical Antipsychotics for Schizophrenia , 2006, Journal of clinical psychopharmacology.

[49]  Meindert Danhof,et al.  Mechanism-based pharmacokinetic-pharmacodynamic modeling: biophase distribution, receptor theory, and dynamical systems analysis. , 2007, Annual review of pharmacology and toxicology.

[50]  David Collett Modelling Survival Data in Medical Research , 1994 .

[51]  Craig H Mallinckrodt,et al.  The impact of missing data and how it is handled on the rate of false‐positive results in drug development , 2008, Pharmaceutical statistics.

[52]  R. Gomeni,et al.  Modelling placebo response in depression trials using a longitudinal model with informative dropout. , 2009, European journal of pharmaceutical sciences : official journal of the European Federation for Pharmaceutical Sciences.

[53]  M. Lader Rating Scales in Schizophrenia , 2000 .

[54]  Yahong Peng,et al.  Recommendations for the Primary Analysis of Continuous Endpoints in Longitudinal Clinical Trials , 2008 .

[55]  S. Leucht,et al.  How effective are second-generation antipsychotic drugs? A meta-analysis of placebo-controlled trials , 2009, Molecular Psychiatry.

[56]  Meindert Danhof,et al.  Sensitivity of the individual items of the Hamilton depression rating scale to response and its consequences for the assessment of efficacy. , 2008, Journal of psychiatric research.

[57]  D. Rubin,et al.  Statistical Analysis with Missing Data. , 1989 .

[58]  Timothy Goggin,et al.  A semimechanistic and mechanistic population PK-PD model for biomarker response to ibandronate, a new bisphosphonate for the treatment of osteoporosis. , 2004, British journal of clinical pharmacology.

[59]  F. Benedetti Mechanisms of placebo and placebo-related effects across diseases and treatments. , 2008 .

[60]  P. Lane Handling drop‐out in longitudinal clinical trials: a comparison of the LOCF and MMRM approaches , 2008, Pharmaceutical statistics.

[61]  I. Rajman PK/PD modelling and simulations: utility in drug development. , 2008, Drug discovery today.

[62]  M. Åsberg,et al.  A New Depression Scale Designed to be Sensitive to Change , 1979, British Journal of Psychiatry.

[63]  Italo Poggesi,et al.  Model-based approaches to increase efficiency of drug development in schizophrenia: a can't miss opportunity , 2009, Expert opinion on drug discovery.

[64]  D. Kelly,et al.  Feasibility of reducing the duration of placebo-controlled trials in schizophrenia research. , 2008, Schizophrenia bulletin.

[65]  T. Lehr,et al.  Quantitative Pharmacology Approach in Alzheimer’s Disease: Efficacy Modeling of Early Clinical Data to Predict Clinical Outcome of Tesofensine , 2010, The AAPS Journal.

[66]  K. Davis,et al.  A new rating scale for Alzheimer's disease. , 1984, The American journal of psychiatry.

[67]  L E Friberg,et al.  An Agonist–Antagonist Interaction Model for Prolactin Release Following Risperidone and Paliperidone Treatment , 2009, Clinical pharmacology and therapeutics.

[68]  Robyn M Leventhal,et al.  Severity of Depression and Response to Antidepressants and Placebo: An Analysis of the Food and Drug Administration Database , 2002, Journal of clinical psychopharmacology.

[69]  W. Winter,et al.  A Mechanism-based Disease Progression Model for Comparison of Long-term Effects of Pioglitazone, Metformin and Gliclazide on Disease Processes Underlying Type 2 Diabetes Mellitus , 2006, Journal of Pharmacokinetics and Pharmacodynamics.

[70]  K E Peace,et al.  Methodologic aspects of a population pharmacodynamic model for cognitive effects in Alzheimer patients treated with tacrine. , 1992, Proceedings of the National Academy of Sciences of the United States of America.

[71]  D. Mould Developing Models of Disease Progression , 2006 .

[72]  Raymond J. Carroll,et al.  Estimation and comparison of changes in the presence of informative right censoring by modeling the censoring process , 1988 .

[73]  S. Fahn Members of the UPDRS Development Committee. Unified Parkinson's Disease Rating Scale , 1987 .

[74]  J. Overall,et al.  The Brief Psychiatric Rating Scale , 1962 .

[75]  Meindert Danhof,et al.  Disease System Analysis: Basic Disease Progression Models in Degenerative Disease , 2005, Pharmaceutical Research.

[76]  Ene I. Ette,et al.  Pharmacometrics : the science of quantitative pharmacology , 2007 .

[77]  D R Mould,et al.  Using Disease Progression Models as a Tool to Detect Drug Effect , 2007, Clinical pharmacology and therapeutics.

[78]  S. Kay,et al.  The positive and negative syndrome scale (PANSS) for schizophrenia. , 1987, Schizophrenia bulletin.

[79]  Lewis B. Sheiner,et al.  Building population pharmacokineticpharmacodynamic models. I. Models for covariate effects , 1992, Journal of Pharmacokinetics and Biopharmaceutics.

[80]  F. Amenta,et al.  Sensitivity to ageing of the limbic dopaminergic system: a review , 1998, Mechanisms of Ageing and Development.

[81]  Jon Wakefield,et al.  Population modelling in drug development , 1999, Statistical methods in medical research.

[82]  Yaning Wang,et al.  Impact of pharmacometrics on drug approval and labeling decisions: A survey of 42 new drug applications , 2005, The AAPS Journal.

[83]  Geert Molenberghs,et al.  The effect of correlation structure on treatment contrasts estimated from incomplete clinical trial data with likelihood-based repeated measures compared with last observation carried forward ANOVA , 2004, Clinical trials.

[84]  R. Obenchain,et al.  Item response analysis of the Positive and Negative Syndrome Scale , 2007, BMC Psychiatry.

[85]  MO Karlsson,et al.  Modeling and Simulation of the Time Course of Asenapine Exposure Response and Dropout Patterns in Acute Schizophrenia , 2009, Clinical pharmacology and therapeutics.

[86]  A. David,et al.  Psychological Predictors of Insight and Compliance in Psychotic Patients , 1996, British Journal of Psychiatry.

[87]  A Heyting,et al.  Statistical handling of drop-outs in longitudinal clinical trials. , 1992, Statistics in medicine.

[88]  L. Schneider,et al.  Sex, Race, and Smoking Impact Olanzapine Exposure , 2008, Journal of clinical pharmacology.

[89]  B. Pollock,et al.  Predicting Age‐Specific Dosing of Antipsychotics , 2009, Clinical pharmacology and therapeutics.

[90]  P. Chue,et al.  Sex differences in schizophrenia, a review of the literature. , 2000, Acta psychiatrica Scandinavica. Supplementum.