HIDDEN MARKOV MODELS FOR ALCOHOLISM TREATMENT TRIAL DATA

In a clinical trial of a treatment for alcoholism, a common response vari able of interest is the number of alcoholic drinks consumed by each subject each day, or an ordinal version of this response, with levels corresponding to abstinence, light drinking and heavy drinking. In these trials, within-subject drinking patterns are often characterized by alternating periods of heavy drinking and abstinence. For this reason, many statistical models for time series that assume steady behavior over time and white noise errors do not fit alcohol data well. In this paper we propose to describe subjects' drinking behavior using Markov models and hidden Markov models (HMMs), which are better suited to describe processes that make sudden, rather than gradual, changes over time. We incorporate random effects into these models using a hierarchical Bayes structure to account for correlated responses within sub jects over time, and we estimate the effects of covariates, including a random ized treatment, on the outcome in a novel way. We illustrate the models by fitting them to a large data set from a clinical trial of the drug Naltrexone. The HMM, in particular, fits this data well and also contains unique features that allow for useful clinical interpretations of alcohol consumption behavior.

[1]  P S Albert,et al.  A Transitional Model for Longitudinal Binary Data Subject to Nonignorable Missing Data , 2000, Biometrics.

[2]  James R McKay,et al.  Conceptual, methodological, and analytical issues in the study of relapse. , 2006, Clinical psychology review.

[3]  Haikady N. Nagaraja,et al.  Inference in Hidden Markov Models , 2006, Technometrics.

[4]  Paul S Albert,et al.  A Latent Autoregressive Model for Longitudinal Binary Data Subject to Informative Missingness , 2002, Biometrics.

[5]  Howard Seltman,et al.  Hidden Markov Models for Analysis of Biological Rhythm Data , 2002 .

[6]  Richard J Cook,et al.  A generalized mover-stayer model for panel data. , 2002, Biostatistics.

[7]  Nicholas T. Longford,et al.  Handling missing data in diaries of alcohol consumption , 2000 .

[8]  Alex Bateman,et al.  An introduction to hidden Markov models. , 2007, Current protocols in bioinformatics.

[9]  K. N. Dollman,et al.  - 1 , 1743 .

[10]  S. Chib,et al.  Bayes inference via Gibbs sampling of autoregressive time series subject to Markov mean and variance shifts , 1993 .

[11]  Katie Witkiewitz,et al.  Relapse Prevention for Alcohol and Drug Problems. , 2005 .

[12]  Robert T O'Neill,et al.  Short of complete abstinence: an analysis exploration of multiple drinking episodes in alcoholism treatment trials. , 2002, Alcoholism, clinical and experimental research.

[13]  Lain L. MacDonald,et al.  Hidden Markov and Other Models for Discrete- valued Time Series , 1997 .

[14]  Ames,et al.  Hidden Markov Models for Longitudinal Comparisons , 2004 .

[15]  Kevin G Lynch,et al.  A placebo-controlled randomized clinical trial of naltrexone in the context of different levels of psychosocial intervention. , 2008, Alcoholism, clinical and experimental research.

[16]  W F Velicer,et al.  Latent transition analysis for longitudinal data. , 1996, Addiction.

[17]  P S Albert,et al.  A Mover–Stayer Model for Longitudinal Marker Data , 1999, Biometrics.

[18]  A. Raftery,et al.  The Mixture Transition Distribution Model for High-Order Markov Chains and Non-Gaussian Time Series , 2002 .

[19]  K. Witkiewitz,et al.  Relapse prevention for alcohol and drug problems: that was Zen, this is Tao. , 2004, The American psychologist.

[20]  Joseph Hilbe,et al.  Data Analysis Using Regression and Multilevel/Hierarchical Models , 2009 .

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

[22]  Eric Moulines,et al.  Inference in hidden Markov models , 2010, Springer series in statistics.

[23]  Dennis M. Donovan,et al.  Relapse prevention: Maintenance strategies in the treatment of addictive behaviors, 2nd ed. , 2005 .

[24]  A. Raftery A model for high-order Markov chains , 1985 .

[25]  A. Raftery,et al.  Modeling flat stretches, bursts, and outliers in time series using mixture transition distribution models , 1996 .

[26]  Bradley P. Carlin,et al.  Bayesian measures of model complexity and fit , 2002 .

[27]  K. Lynch,et al.  Alcohol relapse as a function of relapse definition in a clinical sample of adolescents. , 2003, Addictive behaviors.

[28]  R. Altman Mixed Hidden Markov Models , 2007 .

[29]  David B. Dunson,et al.  Bayesian Data Analysis , 2010 .

[30]  Keith Humphreys,et al.  The Latent Markov Chain with Multivariate Random Effects , 1998 .

[31]  S. L. Scott Bayesian Methods for Hidden Markov Models , 2002 .

[32]  A. Washton,et al.  Relapse Prevention: Maintenance Strategies in the Treatment of Addictive Behaviors , 1986 .

[33]  Rachel J. Mackay,et al.  Estimating the order of a hidden markov model , 2002 .