Missing data occur in nearly every study carried out to evaluate the effectiveness of proposed treatments for substance abuse. The problem is very apparent when the study is carried out over a period of time. Patients often miss clinic visits, fail to give urine samples when required, or simply drop out of the study. Until recently, missing data were handled by deletion or various methods of data imputation. Each of which has known problems, such as producing biased results (Rovine and Delaney, 1990). Beginning in the late 1970's and early 1980's, several researchers (Dempster, et al, 1977; Little and Rubin, 1987; Marini, et al, 1980; and others) began summarizing and extending the theoretical foundations for calculating maximum likelihood estimates under conditions of missing data. The formulations for these general linear model analyses are based on population distribution theory. Evaluation of the validity and robustness of these new methods, for small sample data, is essentially nil. This project will evaluate two approaches to handling missing data (Complete cases/List-wise deletion and a Random Regression Model, which implements EM estimation of covariance matrix and model parameters) using Monte Carlo techniques. Several variables will be assessed for their effects on Type I error rate (when no true treatment effect is present), power (in the presence of a true treatment effect), and bias in estimating model parameters. These include: the pattern and degree of missing observations, the number of repeated observations, the sample size, and the size of true treatment effect. The final purpose of this project is to describe how data, collected as part of substance abuse research, can be appropriately analyzed using Random Regression methods. As part of this description is a planned re-analysis of several previously collected data sets. These will be used to demonstrate the utility and interpretation of predicting treatment outcome with this analysis method.

Agency
National Institute of Health (NIH)
Institute
National Institute on Drug Abuse (NIDA)
Type
Specialized Center (P50)
Project #
5P50DA009262-04
Application #
6238021
Study Section
Project Start
1997-09-01
Project End
1998-06-30
Budget Start
1996-10-01
Budget End
1997-09-30
Support Year
4
Fiscal Year
1997
Total Cost
Indirect Cost
City
Houston
State
TX
Country
United States
Zip Code
77225
D'Souza MA, Johann M; Wardle PhD, Margaret; Green PhD, Charles E et al. (2018) Resting Heart Rate Variability: Exploring Associations With Symptom Severity in Adults With Substance Use Disorders and Posttraumatic Stress. J Dual Diagn :1-6
Vujanovic, Anka A; Wardle, Margaret C; Bakhshaie, Jafar et al. (2018) Distress tolerance: Associations with trauma and substance cue reactivity in low-income, inner-city adults with substance use disorders and posttraumatic stress. Psychol Addict Behav 32:264-276
Miller, William R; Fox, Robert G; Stutz, Sonja J et al. (2018) PPAR? agonism attenuates cocaine cue reactivity. Addict Biol 23:55-68
Vujanovic, Anka A; Smith, Lia J; Green, Charles E et al. (2018) Development of a novel, integrated cognitive-behavioral therapy for co-occurring posttraumatic stress and substance use disorders: A pilot randomized clinical trial. Contemp Clin Trials 65:123-129
Ma, Liangsuo; Steinberg, Joel L; Wang, Qin et al. (2017) A preliminary longitudinal study of white matter alteration in cocaine use disorder subjects. Drug Alcohol Depend 173:39-46
Schmitz, Joy M; Green, Charles E; Hasan, Khader M et al. (2017) PPAR-gamma agonist pioglitazone modifies craving intensity and brain white matter integrity in patients with primary cocaine use disorder: a double-blind randomized controlled pilot trial. Addiction 112:1861-1868
Wardle, Margaret C; Vincent, Jessica N; Suchting, Robert et al. (2017) Anhedonia Is Associated with Poorer Outcomes in Contingency Management for Cocaine Use Disorder. J Subst Abuse Treat 72:32-39
Vujanovic, Anka A; Rathnayaka, Nuvan; Amador, Christina D et al. (2016) Distress Tolerance: Associations With Posttraumatic Stress Disorder Symptoms Among Trauma-Exposed, Cocaine-Dependent Adults. Behav Modif 40:120-43
Vujanovic, Anka A; Wardle, Margaret C; Liu, Shijing et al. (2016) Attentional bias in adults with cannabis use disorders. J Addict Dis 35:144-53
Ahn, Woo-Young; Ramesh, Divya; Moeller, Frederick Gerard et al. (2016) Utility of Machine-Learning Approaches to Identify Behavioral Markers for Substance Use Disorders: Impulsivity Dimensions as Predictors of Current Cocaine Dependence. Front Psychiatry 7:34

Showing the most recent 10 out of 88 publications