In mental health research, it is common for there to be numerous variables measured, many of which may have some missing values. When sample sizes are modest, existing strategies that address missing data using multivariate statistical models can easily have too many parameters for the available data to estimate. This R01 proposal-revises an earlier application, seeking support to evaluate a newly-developed factor-based multivariate statistical method for imputation of missing values, to extend the method to accommodate longitudinal factor-analysis models, to integrate software programs into a user-friendly Windows-based interface, and to snake the programs available to researchers over the world-wide web. Two applied problems motivate the present work, one from a suicide prevention study by Rotheram-Borus, Piacentini, Van Rossem, et al. (1996), where because of scattered missing values only 107 of 140 subjects for whom data were collected were available for model fitting, and another from an investigation of medication use and unmet need among children who live in foster care in Los Angeles County, where scattered missing values resulted in only 216 out of 302 subjects being available for model fitting (Zima, Bussing, Crecelius, Kaufman, Belin 1999). The proposed statistical methods offer the prospect of including all subjects in these analyses, of incorporating information from partially observed cases, and of accurately reflecting uncertainty. Ideas from factor analysis are central to the strategy.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH060213-03
Application #
6604106
Study Section
Special Emphasis Panel (ZMH1-SRV-C (01))
Program Officer
Hohmann, Ann A
Project Start
2001-09-18
Project End
2005-06-30
Budget Start
2003-07-01
Budget End
2004-06-30
Support Year
3
Fiscal Year
2003
Total Cost
$251,975
Indirect Cost
Name
University of California Los Angeles
Department
Psychiatry
Type
Schools of Medicine
DUNS #
092530369
City
Los Angeles
State
CA
Country
United States
Zip Code
90095
Siddique, Juned; Belin, Thomas R (2008) Using an Approximate Bayesian Bootstrap to Multiply Impute Nonignorable Missing Data. Comput Stat Data Anal 53:405-415
Zhang, Xiao; Boscardin, W John; Belin, Thomas R (2008) Bayesian Analysis of Multivariate Nominal Measures Using Multivariate Multinomial Probit Models. Comput Stat Data Anal 52:3697-3708
Comulada, W Scott; Weiss, Robert E (2007) On models for binomial data with random numbers of trials. Biometrics 63:610-7
Bernaards, Coen A; Belin, Thomas R; Schafer, Joseph L (2007) Robustness of a multivariate normal approximation for imputation of incomplete binary data. Stat Med 26:1368-82
Edlund, Mark J; Belin, Thomas R; Tang, Lingqi (2006) Geographic variation in alcohol, drug, and mental health services utilization: what are the sources of the variation? J Ment Health Policy Econ 9:123-32
Tang, Lingqi; Song, Juwon; Belin, Thomas R et al. (2005) A comparison of imputation methods in a longitudinal randomized clinical trial. Stat Med 24:2111-28
Yang, Xiaowei; Belin, Thomas R; Boscardin, W John (2005) Imputation and variable selection in linear regression models with missing covariates. Biometrics 61:498-506