Literature DB >> 33639940

Propensity score matching for multilevel spatial data: accounting for geographic confounding in health disparity studies.

Melanie L Davis1, Brian Neelon2,3, Paul J Nietert3, Lane F Burgette4, Kelly J Hunt2,3, Andrew B Lawson3, Leonard E Egede5.   

Abstract

BACKGROUND: Diabetes is a public health burden that disproportionately affects military veterans and racial minorities. Studies of racial disparities are inherently observational, and thus may require the use of methods such as Propensity Score Analysis (PSA). While traditional PSA accounts for patient-level factors, this may not be sufficient when patients are clustered at the geographic level and thus important confounders, whether observed or unobserved, vary by geographic location.
METHODS: We employ a spatial propensity score matching method to account for "geographic confounding", which occurs when the confounding factors, whether observed or unobserved, vary by geographic region. We augment the propensity score and outcome models with spatial random effects, which are assigned scaled Besag-York-Mollié priors to address spatial clustering and improve inferences by borrowing information across neighboring geographic regions. We apply this approach to a study exploring racial disparities in diabetes specialty care between non-Hispanic black and non-Hispanic white veterans. We construct multiple global estimates of the risk difference in diabetes care: a crude unadjusted estimate, an estimate based solely on patient-level matching, and an estimate that incorporates both patient and spatial information.
RESULTS: In simulation we show that in the presence of an unmeasured geographic confounder, ignoring spatial heterogeneity results in increased relative bias and mean squared error, whereas incorporating spatial random effects improves inferences. In our study of racial disparities in diabetes specialty care, the crude unadjusted estimate suggests that specialty care is more prevalent among non-Hispanic blacks, while patient-level matching indicates that it is less prevalent. Hierarchical spatial matching supports the latter conclusion, with a further increase in the magnitude of the disparity.
CONCLUSIONS: These results highlight the importance of accounting for spatial heterogeneity in propensity score analysis, and suggest the need for clinical care and management strategies that are culturally sensitive and racially inclusive.

Entities:  

Keywords:  Average treatment effect among treated (ATT); Causal inference; Health disparities; Propensity score matching; Spatial data analysis

Mesh:

Year:  2021        PMID: 33639940      PMCID: PMC7913404          DOI: 10.1186/s12942-021-00265-1

Source DB:  PubMed          Journal:  Int J Health Geogr        ISSN: 1476-072X            Impact factor:   3.918


  38 in total

1.  Matching methods for causal inference: A review and a look forward.

Authors:  Elizabeth A Stuart
Journal:  Stat Sci       Date:  2010-02-01       Impact factor: 2.901

2.  The relative ability of different propensity score methods to balance measured covariates between treated and untreated subjects in observational studies.

Authors:  Peter C Austin
Journal:  Med Decis Making       Date:  2009-08-14       Impact factor: 2.583

3.  Racial and ethnic differences in health care access and health outcomes for adults with type 2 diabetes.

Authors:  M I Harris
Journal:  Diabetes Care       Date:  2001-03       Impact factor: 19.112

4.  Clinical inertia contributes to poor diabetes control in a primary care setting.

Authors:  David C Ziemer; Christopher D Miller; Mary K Rhee; Joyce P Doyle; Clyde Watkins; Curtiss B Cook; Daniel L Gallina; Imad M El-Kebbi; Catherine S Barnes; Virginia G Dunbar; William T Branch; Lawrence S Phillips
Journal:  Diabetes Educ       Date:  2005 Jul-Aug       Impact factor: 2.140

5.  Propensity score weighting with multilevel data.

Authors:  Fan Li; Alan M Zaslavsky; Mary Beth Landrum
Journal:  Stat Med       Date:  2013-03-24       Impact factor: 2.373

6.  Who has diabetes? Best estimates of diabetes prevalence in the Department of Veterans Affairs based on computerized patient data.

Authors:  Donald R Miller; Monika M Safford; Leonard M Pogach
Journal:  Diabetes Care       Date:  2004-05       Impact factor: 19.112

7.  Mortality in adults with and without diabetes in a national cohort of the U.S. population, 1971-1993.

Authors:  K Gu; C C Cowie; M I Harris
Journal:  Diabetes Care       Date:  1998-07       Impact factor: 19.112

8.  Translating the Diabetes Prevention Program into the community. The DEPLOY Pilot Study.

Authors:  Ronald T Ackermann; Emily A Finch; Edward Brizendine; Honghong Zhou; David G Marrero
Journal:  Am J Prev Med       Date:  2008-10       Impact factor: 5.043

9.  An Introduction to Propensity Score Methods for Reducing the Effects of Confounding in Observational Studies.

Authors:  Peter C Austin
Journal:  Multivariate Behav Res       Date:  2011-06-08       Impact factor: 5.923

10.  Veterans and risk of heart disease in the United States: a cohort with 20 years of follow up.

Authors:  Shervin Assari
Journal:  Int J Prev Med       Date:  2014-06
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.