Application of Causal Inference Methods in the Analysis of Observational Neurosurgical Data: G-Formula and Marginal Structural Model

被引:0
作者
Kawahara, Takuya [1 ]
Shiba, Koichiro [2 ,3 ]
Tsuchiya, Asuka [4 ,5 ]
机构
[1] Univ Tokyo Hosp, Clin Res Promot Ctr, Tokyo, Japan
[2] Harvard TH Chan Sch Publ Hlth, Dept Epidemiol, Boston, MA USA
[3] Harvard TH Chan Sch Publ Hlth, Dept Social & Behav Sci, Boston, MA USA
[4] Tokai Univ, Sch Med, Dept Emergency & Crit Care Med, Tokyo, Japan
[5] Univ Tokyo, Sch Publ Hlth, Grad Sch Med, Dept Clin Epidemiol & Hlth Econ, Tokyo, Japan
基金
日本学术振兴会;
关键词
Causal inference; G-formula; Inverse probability weighting; Marginal structural model; Observational data; DELAYED CEREBRAL-ISCHEMIA; RISK;
D O I
10.1016/j.wneu.2021.09.141
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
OBJECTIVE: When using observational data to estimate the causal effects of a treatment on clinical outcomes, we need to adjust for confounding. In the presence of time-dependent confounders that are affected by previous treatment, adjustments cannot be made via the conventional regression approach or propensity scoreebased methods, but requires sophisticated methods called g-methods. We aimed to introduce g-methods to estimate the causal effects of treatment strategies defined by treatment at multiple time points, such as treat 2 days versus treat only day 1 versus never-treat. METHODS: Two g-methods were introduced: the g-formula and inverse probabilityeweighted marginal structural models. Under exchangeability, consistency, and positivity assumptions, they provide a consistent estimate of the causal effects of the treatment strategy. RESULTS: Using a numeric example that mimics the observational study data, we presented how the g-formula and inverse probabilityeweighted marginal structural models can estimate the effect of the treatment strategy. CONCLUSIONS: Both g-formula and inverse probability-e weighted marginal structural models can correctly estimate the effect of the treatment strategy under 3 identifiability assumptions, which conventional regression analysis cannot. G-methods may assist in estimating the effect of treatment strategy defined by treatment at multiple time points.
引用
收藏
页码:310 / 315
页数:6
相关论文
共 32 条
[21]   Automated versus Do-It-Yourself Methods for Causal Inference: Lessons Learned from a Data Analysis Competition [J].
Dorie, Vincent ;
Hill, Jennifer ;
Shalit, Uri ;
Scott, Marc ;
Cervone, Dan .
STATISTICAL SCIENCE, 2019, 34 (01) :43-68
[22]   Optimizing Dynamic Antibiotic Treatment Strategies against Invasive Methicillin-Resistant Staphylococcus Aureus Infections using Causal Survival Forests and G-Formula on Statewide Electronic Health Record Data [J].
Jun, Inyoung ;
Cohen, Scott A. ;
Ser, Sarah E. ;
Marini, Simone ;
Lucero, Robert J. ;
Bian, Jiang ;
Prosperi, Mattia .
KDD'23 WORKSHOP ON CAUSAL DISCOVERY, PREDICTION AND DECISION, VOL 218, 2023, 218 :98-114
[23]   Causal Inference for Meta-Analysis and Multi-Level Data Structures, with Application to Randomized Studies of Vioxx [J].
Michael Sobel ;
David Madigan ;
Wei Wang .
Psychometrika, 2017, 82 :459-474
[24]   Federated causal inference based on real-world observational data sources: application to a SARS-CoV-2 vaccine effectiveness assessment [J].
Meurisse, Marjan ;
Estupinan-Romero, Francisco ;
Gonzalez-Galindo, Javier ;
Martinez-Lizaga, Natalia ;
Royo-Sierra, Santiago ;
Saldner, Simon ;
Dolanski-Aghamanoukjan, Lorenz ;
Degelsegger-Marquez, Alexander ;
Soiland-Reyes, Stian ;
Van Goethem, Nina ;
Bernal-Delgado, Enrique .
BMC MEDICAL RESEARCH METHODOLOGY, 2023, 23 (01)
[25]   Federated causal inference based on real-world observational data sources: application to a SARS-CoV-2 vaccine effectiveness assessment [J].
Marjan Meurisse ;
Francisco Estupiñán-Romero ;
Javier González-Galindo ;
Natalia Martínez-Lizaga ;
Santiago Royo-Sierra ;
Simon Saldner ;
Lorenz Dolanski-Aghamanoukjan ;
Alexander Degelsegger-Marquez ;
Stian Soiland-Reyes ;
Nina Van Goethem ;
Enrique Bernal-Delgado .
BMC Medical Research Methodology, 23
[26]   Comment on "Automated Versus Do-It-Yourself Methods for Causal Inference: Lessons Learned from a Data Analysis Competition" [J].
Gruber, Susan ;
van der Laan, Mark J. .
STATISTICAL SCIENCE, 2019, 34 (01) :82-85
[27]   An Extreme Weather-Related Risk Analysis Model for Embankment Dam: Causal Inference in Historic Data Statistics [J].
Wang, Fang ;
Li, Hongen ;
Pan, Yuxuan ;
Zhao, Jianguo .
GEO-RISK 2023: DEVELOPMENTS IN RELIABILITY, RISK, AND RESILIENCE, 2023, 346 :164-172
[28]   A comparison of full model specification and backward elimination of potential confounders when estimating marginal and conditional causal effects on binary outcomes from observational data [J].
Luijken, Kim ;
Groenwold, Rolf H. H. ;
van Smeden, Maarten ;
Strohmaier, Susanne ;
Heinze, Georg .
BIOMETRICAL JOURNAL, 2024, 66 (01)
[29]   Hypothetical intervention of targeted systolic blood pressure control of < 120 mmHg on renal prognosis for persons with stage 3-4 chronic kidney disease: an application of parametric g-formula using health checkup data in Japan [J].
Takeuchi, Masato ;
Shinkawa, Kanna ;
Yanagita, Motoko ;
Kawakami, Koji .
CLINICAL AND EXPERIMENTAL NEPHROLOGY, 2023, 27 (06) :542-547
[30]   Simple methods for the estimation and sensitivity analysis of principal strata effects using marginal structural models: Application to a bone fracture prevention trial [J].
Uemura, Yukari ;
Taguri, Masataka ;
Kawahara, Takuya ;
Chiba, Yasutaka .
BIOMETRICAL JOURNAL, 2019, 61 (06) :1448-1461