Flexible propensity score estimation strategies for clustered data in observational studies

被引:7
|
作者
Chang, Ting-Hsuan [1 ]
Trang Quynh Nguyen [2 ]
Lee, Youjin [3 ]
Jackson, John W. [1 ,2 ,4 ]
Stuart, Elizabeth A. [2 ,4 ,5 ]
机构
[1] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Epidemiol, Baltimore, MD 21205 USA
[2] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Mental Hlth, 624 N Broadway,Room 804, Baltimore, MD 21205 USA
[3] Brown Univ, Dept Biostat, Providence, RI 02912 USA
[4] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Biostat, Baltimore, MD 21205 USA
[5] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Hlth Policy & Management, Baltimore, MD 21205 USA
关键词
clustering; machine learning; observational studies; propensity score weighting; unmeasured confounder; BOOSTED REGRESSION; GUIDE; BIAS;
D O I
10.1002/sim.9551
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Existing studies have suggested superior performance of nonparametric machine learning over logistic regression for propensity score estimation. However, it is unclear whether the advantages of nonparametric propensity score modeling are carried to settings where there is clustering of individuals, especially when there is unmeasured cluster-level confounding. In this work we examined the performance of logistic regression (all main effects), Bayesian additive regression trees and generalized boosted modeling for propensity score weighting in clustered settings, with the clustering being accounted for by including either cluster indicators or random intercepts. We simulated data for three hypothetical observational studies of varying sample and cluster sizes. Confounders were generated at both levels, including a cluster-level confounder that is unobserved in the analyses. A binary treatment and a continuous outcome were generated based on seven scenarios with varying relationships between the treatment and confounders (linear and additive, nonlinear/nonadditive, nonadditive with the unobserved cluster-level confounder). Results suggest that when the sample and cluster sizes are large, nonparametric propensity score estimation may provide better covariate balance, bias reduction, and 95% confidence interval coverage, regardless of the degree of nonlinearity or nonadditivity in the true propensity score model. When the sample or cluster sizes are small, however, nonparametric approaches may become more vulnerable to unmeasured cluster-level confounding and thus may not be a better alternative to multilevel logistic regression. We applied the methods to the National Longitudinal Study of Adolescent to Adult Health data, estimating the effect of team sports participation during adolescence on adulthood depressive symptoms.
引用
收藏
页码:5016 / 5032
页数:17
相关论文
共 50 条
  • [31] COMPARISON OF PROPENSITY SCORE WITH ZIP MODELS IN ANALYZING ZERO-INFLATED COUNT DATA IN OBSERVATIONAL STUDIES
    Tu, C.
    Koh, W. Y.
    [J]. VALUE IN HEALTH, 2016, 19 (03) : A89 - A90
  • [32] Propensity Score Methods for Bias Reduction in Observational Studies of Treatment Effect
    Johnson, Sindhu R.
    Tomlinson, George A.
    Hawker, Gillian A.
    Granton, John T.
    Feldman, Brian M.
    [J]. RHEUMATIC DISEASE CLINICS OF NORTH AMERICA, 2018, 44 (02) : 203 - +
  • [33] Propensity score modelling in observational studies using dimension reduction methods
    Ghosh, Debashis
    [J]. STATISTICS & PROBABILITY LETTERS, 2011, 81 (07) : 813 - 820
  • [34] An Introduction to Propensity Score Methods for Reducing the Effects of Confounding in Observational Studies
    Austin, Peter C.
    [J]. MULTIVARIATE BEHAVIORAL RESEARCH, 2011, 46 (03) : 399 - 424
  • [35] EVALUATION OF DIFFERENT MISSING DATA STRATEGIES IN PROPENSITY SCORE ANALYSES
    Driessen, Johanna
    Williamson, Elizabeth
    Carpenter, James
    de Vries, Frank
    [J]. OSTEOPOROSIS INTERNATIONAL, 2016, 27 : 652 - 652
  • [36] Propensity score matching for treatment delay effects with observational survival data
    Hade, Erinn M.
    Nattino, Giovanni
    Frey, Heather A.
    Lu, Bo
    [J]. STATISTICAL METHODS IN MEDICAL RESEARCH, 2020, 29 (03) : 695 - 708
  • [37] Propensity Score Matching A Powerful Tool for Analyzing Observational Nonrandomized Data
    Badhiwala, Jetan H.
    Karmur, Brij S.
    Wilson, Jefferson R.
    [J]. CLINICAL SPINE SURGERY, 2021, 34 (01): : 22 - 24
  • [38] Evaluation Of Different Missing Data Strategies In Propensity Score Analyses
    Driessen, Johanna H. M.
    Williamson, Elizabeth J.
    Carpenter, James R.
    de Vries, Frank
    [J]. PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2016, 25 : 154 - 155
  • [39] Propensity Score Matching in Observational Research
    Schober, Patrick
    Vetter, Thomas R.
    [J]. ANESTHESIA AND ANALGESIA, 2020, 130 (06): : 1616 - 1617
  • [40] Addressing Disparities in the Propensity Score Distributions for Treatment Comparisons from Observational Studies
    Zhou, Tingting
    Elliott, Michael R.
    Little, Roderick J. A.
    [J]. STATS, 2022, 5 (04): : 1254 - 1270