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G-computation, propensity score-based methods, and targeted maximum likelihood estimator for causal inference with different covariates sets: a comparative simulation study

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  • معلومة اضافية
    • Contributors:
      MethodS in Patients-centered outcomes and HEalth ResEarch (SPHERE); Université de Tours (UT)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Université de Nantes - UFR des Sciences Pharmaceutiques et Biologiques; Université de Nantes (UN)-Université de Nantes (UN); London School of Hygiene and Tropical Medicine (LSHTM); Centre d'Investigation Clinique Rennes (CIC); Université de Rennes (UR)-Centre Hospitalier Universitaire de Rennes CHU Rennes = Rennes University Hospital Ponchaillou -Institut National de la Santé et de la Recherche Médicale (INSERM); Centre d’Investigation Clinique de Nantes (CIC Nantes); Université de Nantes (UN)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Centre Hospitalier Universitaire de Nantes = Nantes University Hospital (CHU Nantes); Centre de Recherche en Transplantation et Immunologie (U1064 Inserm - CRTI); Institut National de la Santé et de la Recherche Médicale (INSERM)-Université de Nantes - UFR de Médecine et des Techniques Médicales (UFR MEDECINE); Centre Hospitalier Universitaire d'Angers (CHU Angers); PRES Université Nantes Angers Le Mans (UNAM); ANR-16-LCV1-0003-01, Agence Nationale de la Recherche; ANR-16-LCV1-0003,RISCA,Recherche en Informatique et en Statistique pour l'Analyse de Cohortes(2016)
    • بيانات النشر:
      HAL CCSD
      Nature Publishing Group
    • الموضوع:
      2020
    • Collection:
      Université de Nantes: HAL-UNIV-NANTES
    • نبذة مختصرة :
      International audience ; Controlling for confounding bias is crucial in causal inference. Distinct methods are currently employed to mitigate the effects of confounding bias. Each requires the introduction of a set of covariates, which remains difficult to choose, especially regarding the different methods. We conduct a simulation study to compare the relative performance results obtained by using four different sets of covariates (those causing the outcome, those causing the treatment allocation, those causing both the outcome and the treatment allocation, and all the covariates) and four methods: g-computation, inverse probability of treatment weighting, full matching and targeted maximum likelihood estimator. Our simulations are in the context of a binary treatment, a binary outcome and baseline confounders. The simulations suggest that considering all the covariates causing the outcome led to the lowest bias and variance, particularly for g-computation. The consideration of all the covariates did not decrease the bias but significantly reduced the power. We apply these methods to two real-world examples that have clinical relevance, thereby illustrating the real-world importance of using these methods. We propose an R package RISCA to encourage the use of g-computation in causal inference.
    • Relation:
      info:eu-repo/semantics/altIdentifier/pmid/32514028; hal-02884657; https://hal.science/hal-02884657; https://hal.science/hal-02884657/document; https://hal.science/hal-02884657/file/s41598-020-65917-x.pdf; PUBMED: 32514028
    • الرقم المعرف:
      10.1038/s41598-020-65917-x
    • Rights:
      info:eu-repo/semantics/OpenAccess
    • الرقم المعرف:
      edsbas.990CCEFA