Literature DB >> 24298197

Analyzing Propensity Matched Zero-Inflated Count Outcomes in Observational Studies.

Stacia M Desantis1, Christos Lazaridis, Shuang Ji, Francis G Spinale.   

Abstract

Determining the effectiveness of different treatments from observational data, which are characterized by imbalance between groups due to lack of randomization, is challenging. Propensity matching is often used to rectify imbalances among prognostic variables. However, there are no guidelines on how appropriately to analyze group matched data when the outcome is a zero inflated count. In addition, there is debate over whether to account for correlation of responses induced by matching, and/or whether to adjust for variables used in generating the propensity score in the final analysis. The aim of this research is to compare covariate unadjusted and adjusted zero-inflated Poisson models that do and do not account for the correlation. A simulation study is conducted, demonstrating that it is necessary to adjust for potential residual confounding, but that accounting for correlation is less important. The methods are applied to a biomedical research data set.

Entities:  

Keywords:  Poisson; count data; propensity matching; random effects; zero inflation

Year:  2014        PMID: 24298197      PMCID: PMC3843491          DOI: 10.1080/02664763.2013.834296

Source DB:  PubMed          Journal:  J Appl Stat        ISSN: 0266-4763            Impact factor:   1.404


  13 in total

1.  A zero-inflated Poisson mixed model to analyze diagnosis related groups with majority of same-day hospital stays.

Authors:  K Wang; Kelvin K W Yau; Andy H Lee
Journal:  Comput Methods Programs Biomed       Date:  2002-06       Impact factor: 5.428

2.  Comment: Analyzing propensity score matched count data.

Authors:  Liang Li
Journal:  Int J Biostat       Date:  2010       Impact factor: 0.968

3.  Type I error rates, coverage of confidence intervals, and variance estimation in propensity-score matched analyses.

Authors:  Peter C Austin
Journal:  Int J Biostat       Date:  2009-04-14       Impact factor: 0.968

4.  The risk associated with aprotinin in cardiac surgery.

Authors:  Dennis T Mangano; Iulia C Tudor; Cynthia Dietzel
Journal:  N Engl J Med       Date:  2006-01-26       Impact factor: 91.245

Review 5.  A critical appraisal of propensity-score matching in the medical literature between 1996 and 2003.

Authors:  Peter C Austin
Journal:  Stat Med       Date:  2008-05-30       Impact factor: 2.373

6.  Developing practical recommendations for the use of propensity scores: discussion of 'A critical appraisal of propensity score matching in the medical literature between 1996 and 2003' by Peter Austin, Statistics in Medicine.

Authors:  Elizabeth A Stuart
Journal:  Stat Med       Date:  2008-05-30       Impact factor: 2.373

7.  Discussion of research using propensity-score matching: comments on 'A critical appraisal of propensity-score matching in the medical literature between 1996 and 2003' by Peter Austin, Statistics in Medicine.

Authors:  Jennifer Hill
Journal:  Stat Med       Date:  2008-05-30       Impact factor: 2.373

8.  Early postoperative outcomes and blood product utilization in adult cardiac surgery: the post-aprotinin era.

Authors:  Stacia M DeSantis; J Matthew Toole; John M Kratz; Walter E Uber; Margaret J Wheat; Martha R Stroud; John S Ikonomidis; Francis G Spinale
Journal:  Circulation       Date:  2011-09-13       Impact factor: 29.690

9.  Aprotinin during coronary-artery bypass grafting and risk of death.

Authors:  Sebastian Schneeweiss; John D Seeger; Joan Landon; Alexander M Walker
Journal:  N Engl J Med       Date:  2008-02-21       Impact factor: 91.245

10.  Balance diagnostics for comparing the distribution of baseline covariates between treatment groups in propensity-score matched samples.

Authors:  Peter C Austin
Journal:  Stat Med       Date:  2009-11-10       Impact factor: 2.373

View more
  6 in total

1.  Aprotinin revisited.

Authors:  Stacia M DeSantis; Christos Lazaridis
Journal:  Intensive Care Med       Date:  2013-10-24       Impact factor: 17.440

2.  Joint modeling of recurrent events and a terminal event adjusted for zero inflation and a matched design.

Authors:  Cong Xu; Vernon M Chinchilli; Ming Wang
Journal:  Stat Med       Date:  2018-04-22       Impact factor: 2.373

3.  Zero-inflated count models for longitudinal measurements with heterogeneous random effects.

Authors:  Huirong Zhu; Sheng Luo; Stacia M DeSantis
Journal:  Stat Methods Med Res       Date:  2015-06-24       Impact factor: 3.021

4.  Joint modeling of longitudinal zero-inflated count and time-to-event data: A Bayesian perspective.

Authors:  Huirong Zhu; Stacia M DeSantis; Sheng Luo
Journal:  Stat Methods Med Res       Date:  2016-07-26       Impact factor: 3.021

5.  Aspirin Use and Respiratory Morbidity in COPD: A Propensity Score-Matched Analysis in Subpopulations and Intermediate Outcome Measures in COPD Study.

Authors:  Ashraf Fawzy; Nirupama Putcha; Carrie P Aaron; Russell P Bowler; Alejandro P Comellas; Christopher B Cooper; Mark T Dransfield; MeiLan K Han; Eric A Hoffman; Richard E Kanner; Jerry A Krishnan; Wassim W Labaki; Robert Paine; Laura M Paulin; Stephen P Peters; Robert Wise; R Graham Barr; Nadia N Hansel
Journal:  Chest       Date:  2018-12-26       Impact factor: 9.410

6.  Comparative effectiveness analysis of Medicare dialysis facility survey processes.

Authors:  Sehee Kim; Fan Wu; Claudia Dahlerus; Deanna Chyn; Yi Li; Joseph M Messana
Journal:  PLoS One       Date:  2019-04-26       Impact factor: 3.240

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.