Comparison of clustering algorithms on generalized propensity score in observational studies: a simulation study

被引:5
|
作者
Tu, Chunhao [1 ]
Jiao, Shuo [2 ]
Koh, Woon Yuen [3 ]
机构
[1] Univ New England, Coll Pharm, Portland, ME 04103 USA
[2] Fred Hutchinson Canc Res Ctr, Div Publ Hlth, Seattle, WA 98109 USA
[3] Univ New England, Dept Math Sci, Biddeford, ME 04005 USA
关键词
fuzzy c-means clustering algorithm; generalized propensity score; k-means clustering algorithm; model-based clustering algorithm; observational studies; partitioning around medoids algorithm; BIAS; SUBCLASSIFICATION;
D O I
10.1080/00949655.2012.685169
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In observational studies, unbalanced observed covariates between treatment groups often cause biased inferences on the estimation of treatment effects. Recently, generalized propensity score (GPS) has been proposed to overcome this problem; however, a practical technique to apply the GPS is lacking. This study demonstrates how clustering algorithms can be used to group similar subjects based on transformed GPS. We compare four popular clustering algorithms: k-means clustering (KMC), model-based clustering, fuzzy c-means clustering and partitioning around medoids based on the following three criteria: average dissimilarity between subjects within clusters, average Dunn index and average silhouette width under four various covariate scenarios. Simulation studies show that the KMC algorithm has overall better performance compared with the other three clustering algorithms. Therefore, we recommend using the KMC algorithm to group similar subjects based on the transformed GPS.
引用
收藏
页码:2206 / 2218
页数:13
相关论文
共 50 条
  • [41] Propensity score models in observational comparative effectiveness studies: cornerstone of design or statistical afterthought?
    Robinson, John W.
    [J]. JOURNAL OF COMPARATIVE EFFECTIVENESS RESEARCH, 2012, 1 (02) : 129 - 135
  • [42] A comparison study of clustering algorithms for microblog posts
    Lin Li
    Jingjing Ye
    Fang Deng
    Shengwu Xiong
    Luo Zhong
    [J]. Cluster Computing, 2016, 19 : 1333 - 1345
  • [43] Comparison of Placebos and Propensity Score Adjustment in Multiple Sclerosis Nonrandomized Studies
    Signori, Alessio
    Pellegrini, Fabio
    Bovis, Francesca
    Carmisciano, Luca
    de Moor, Carl
    Sormani, Maria Pia
    [J]. JAMA NEUROLOGY, 2020, 77 (07) : 902 - 903
  • [44] Generalizing Observational Study Results: Applying Propensity Score Methods to Complex Surveys
    DuGoff, Eva H.
    Schuler, Megan
    Stuart, Elizabeth A.
    [J]. HEALTH SERVICES RESEARCH, 2014, 49 (01) : 284 - 303
  • [45] A comparison of machine learning algorithms and covariate balance measures for propensity score matching and weighting
    Cannas, Massimo
    Arpino, Bruno
    [J]. BIOMETRICAL JOURNAL, 2019, 61 (04) : 1049 - 1072
  • [46] Association of atherosclerotic plaque and prediabetes. Observational study with propensity score matching
    Bozzo, Raul
    Rey, Ricardo
    Manente, Diego
    Zeballos, Cecilia
    Rostan, Maria
    Vitagliano, Laura
    Calabria, Fabiana
    Mollerach, Julio
    [J]. CLINICA E INVESTIGACION EN ARTERIOSCLEROSIS, 2022, 34 (03): : 122 - 129
  • [47] Value of Propensity Score Matching for Equalizing Comparator Groups in Observational Database Studies: A Case Study in Anti-infectives
    Mullins, C. Daniel
    Ernst, Frank R.
    Krukas, Michelle R.
    Solomkin, Joseph
    Eckmann, Christian
    Shelbaya, Ahmed
    Quintana, Alvaro
    Reisman, Arlene
    [J]. CLINICAL THERAPEUTICS, 2016, 38 (12) : 2676 - 2681
  • [48] Using propensity score matching with doses in observational studies: An example from a child physical abuse and sleep quality study
    Ji, Xiaopeng
    Cui, Naixue
    Liu, Jianghong
    [J]. RESEARCH IN NURSING & HEALTH, 2019, 42 (06) : 436 - 445
  • [49] Population-level and individual-level explainers for propensity score matching in observational studies
    Ghosh, Debashis
    Amini, Arya
    Jones, Bernard L.
    Karam, Sana D.
    [J]. FRONTIERS IN ONCOLOGY, 2022, 12
  • [50] Propensity score matching mitigates risk of faulty inferences in observational studies of effectiveness of restoration trials
    Kluender, Chad R.
    Germino, Matthew J.
    Anthony, Christopher R.
    [J]. JOURNAL OF APPLIED ECOLOGY, 2024, 61 (05) : 1127 - 1137