Bayesian methods for the analysis of small sample multilevel data with a complex variance structure.

Inferences from multilevel models can be complicated in small samples or complex data structures. When using (restricted) maximum likelihood methods to estimate multilevel models, standard errors and degrees of freedom often need to be adjusted to ensure that inferences for fixed effects are correct. These adjustments do not address problems in estimating variance/covariance components. An alternative to the adjusted likelihood method is to use Bayesian methods, which can produce accurate inferences about fixed effects and variance/covariance parameters. In this article, the authors contrast the benefits and limitations of likelihood and Bayesian methods in the estimation of multilevel models. The issues are discussed in the context of a partially clustered intervention study, a common intervention design that has been shown to require an adjusted likelihood analysis. The authors report a Monte Carlo study that compares the performance of an adjusted restricted maximum likelihood (REML) analysis to a Bayesian analysis. The results suggest that for fixed effects, the models perform equally well with respect to bias, efficiency, and coverage of interval estimates. Bayesian models with a carefully selected gamma prior for the variance components were more biased but also more efficient with respect to estimation of the variance components than the REML model. However, the results also show that the inferences about the variance components in partially clustered studies are sensitive to the prior distribution when sample sizes are small. Finally, the authors compare the results of a Bayesian and adjusted likelihood model using data from a partially clustered intervention trial.

[1]  Bradley P. Carlin,et al.  Bayesian Methods for Data Analysis , 2008 .

[2]  Eric Stice,et al.  Statistical analysis of group-administered intervention data: Reanalysis of two randomized trials , 2008, Psychotherapy research : journal of the Society for Psychotherapy Research.

[3]  M. Kenward,et al.  Small sample inference for fixed effects from restricted maximum likelihood. , 1997, Biometrics.

[4]  D. Spiegelhalter,et al.  Disease Mapping With WinBUGS and MLwiN, Bayesian Approaches to Clinical Trials and Health Care Evaluation , 2004 .

[5]  Zac E. Imel,et al.  Beyond the individual: Group effects in mindfulness-based stress reduction , 2008, Psychotherapy research : journal of the Society for Psychotherapy Research.

[6]  A. Brix Bayesian Data Analysis, 2nd edn , 2005 .

[7]  Ying Yuan,et al.  Bayesian mediation analysis. , 2009, Psychological methods.

[8]  S. Maxwell,et al.  The proof of the pudding: an illustration of the relative strengths of null hypothesis, meta-analysis, and Bayesian analysis. , 2000, Psychological methods.

[9]  Randall W. Potter,et al.  Confidence intervals on variance components , 1992 .

[10]  Andrew Gelman,et al.  Why We (Usually) Don't Have to Worry About Multiple Comparisons , 2009, 0907.2478.

[11]  S Greenland,et al.  Principles of multilevel modelling. , 2000, International journal of epidemiology.

[12]  David C. Atkins,et al.  Intraclass Correlation Associated with Therapists: Estimates and Applications in Planning Psychotherapy Research , 2011, Cognitive behaviour therapy.

[13]  William A. Link,et al.  On thinning of chains in MCMC , 2012 .

[14]  Chris Roberts,et al.  Design and analysis of clinical trials with clustering effects due to treatment , 2005, Clinical trials.

[15]  Martyn Plummer,et al.  JAGS: A program for analysis of Bayesian graphical models using Gibbs sampling , 2003 .

[16]  A. Gelman Prior distributions for variance parameters in hierarchical models (comment on article by Browne and Draper) , 2004 .

[17]  Xiao-Li Meng,et al.  Prevalence of mental illness in immigrant and non-immigrant U.S. Latino groups. , 2008, The American journal of psychiatry.

[18]  E. Stice,et al.  An effectiveness trial of a dissonance-based eating disorder prevention program for high-risk adolescent girls. , 2009, Journal of consulting and clinical psychology.

[19]  Daniel J Bauer,et al.  Evaluating Group-Based Interventions When Control Participants Are Ungrouped , 2008, Multivariate behavioral research.

[20]  Michael G. Kenward,et al.  An improved approximation to the precision of fixed effects from restricted maximum likelihood , 2009, Comput. Stat. Data Anal..

[21]  Gerald S. Rogers,et al.  Mathematical Statistics: A Decision Theoretic Approach , 1967 .

[22]  J. Kruschke Doing Bayesian Data Analysis: A Tutorial with R and BUGS , 2010 .

[23]  Scott M. Lynch,et al.  Introduction to Applied Bayesian Statistics and Estimation for Social Scientists , 2007 .

[24]  David J Spiegelhalter,et al.  Prior distributions for the intracluster correlation coefficient, based on multiple previous estimates, and their application in cluster randomized trials , 2005, Clinical trials.

[25]  Satterthwaite Fe An approximate distribution of estimates of variance components. , 1946 .

[26]  E. Stice,et al.  Dissonance and healthy weight eating disorder prevention programs: a randomized efficacy trial. , 2006, Journal of consulting and clinical psychology.

[27]  E. Stice,et al.  Healthy weight control and dissonance-based eating disorder prevention programs: results from a controlled trial. , 2003, The International journal of eating disorders.

[28]  Daniel J Bauer,et al.  Evaluating models for partially clustered designs. , 2011, Psychological methods.

[29]  Andrew Gelman,et al.  Data Analysis Using Regression and Multilevel/Hierarchical Models , 2006 .

[30]  David Huard,et al.  PyMC: Bayesian Stochastic Modelling in Python. , 2010, Journal of statistical software.

[31]  W. Shadish,et al.  Empirically supported treatments or type I errors? Problems with the analysis of data from group-administered treatments. , 2005, Journal of consulting and clinical psychology.

[32]  William J Browne,et al.  MCMC Estimation in MLwiN (Version 2.13) Centre for Multilevel Modelling, University of Bristol , 2009 .

[33]  Sander Greenland,et al.  Bayesian perspectives for epidemiological research: I. Foundations and basic methods. , 2006, International journal of epidemiology.

[34]  A. Bergin Some implications of psychotherapy research for therapeutic practice. , 1966, International journal of psychiatry.

[35]  P. Greenbaum,et al.  Testing for group membership effects during and after treatment: The example of group therapy for smoking cessation , 2002 .

[36]  E. Stice,et al.  A randomized trial of a dissonance-based eating disorder prevention program. , 2001, The International journal of eating disorders.

[37]  A. Beck,et al.  Meta‐Analysis of Therapist Effects in Psychotherapy Outcome Studies , 1991 .

[38]  Simon Jackman,et al.  Bayesian Analysis for the Social Sciences , 2009 .

[39]  John K Kruschke,et al.  Bayesian Assessment of Null Values Via Parameter Estimation and Model Comparison , 2011, Perspectives on psychological science : a journal of the Association for Psychological Science.