Estimating the causal effect of treatment in observational studies with survival time end points and unmeasured confounding

被引:4
|
作者
Choi, Jaeun [1 ]
O'Malley, A. James [2 ]
机构
[1] Albert Einstein Coll Med, New York, NY USA
[2] Dartmouth Coll, 1 Med Ctr Dr, Lebanon, NH 03756 USA
基金
美国国家卫生研究院;
关键词
Comparative effectiveness research; Instrumental variable; Observational study; Simultaneous equations model; Survival analysis; DATA TREATMENT MODELS; RANDOMIZED-TRIAL; IDENTIFICATION; DISTRIBUTIONS; INFERENCE; VARIABLES; CANCER; BIAS; CARE;
D O I
10.1111/rssc.12158
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Estimation of the effect of a treatment in the presence of unmeasured confounding is a common objective in observational studies. The two-stage least squares instrumental variables procedure is frequently used but is not applicable to time-to-event data if some observations are censored. We develop a simultaneous equations model to account for unmeasured confounding of the effect of treatment on survival time subject to censoring. The identification of the treatment effect is assisted by instrumental variables (variables related to treatment but conditional on treatment, not to the outcome) and the assumed bivariate distribution underlying the data-generating process. The methodology is illustrated on data from an observational study of time to death following endovascular or open repair of ruptured abdominal aortic aneurysms. As the instrumental variable and the distributional assumptions cannot be jointly assessed from the observed data, we evaluate the sensitivity of the results to these assumptions.
引用
收藏
页码:159 / 185
页数:27
相关论文
共 50 条
  • [21] Measurement error, time lag, unmeasured confounding: Considerations for longitudinal estimation of the effect of a mediator in randomised clinical trials
    Goldsmith, K. A.
    Chalder, T.
    White, P. D.
    Sharpe, M.
    Pickles, A.
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2018, 27 (06) : 1615 - 1633
  • [22] G-Computation Demonstration in Estimating Causal Effects with Time-Dependent Confounding
    Liu, Fuhao
    Shuai, Yongmin
    Zhang, Xin
    Xiong, Yunfei
    Zeng, Yong
    2022 2ND IEEE INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING AND ARTIFICIAL INTELLIGENCE (SEAI 2022), 2022, : 151 - 154
  • [23] Real Effect or Bias? Good Practices for Evaluating the Robustness of Evidence From Comparative Observational Studies Through Quantitative Sensitivity Analysis for Unmeasured Confounding
    Faries, Douglas
    Gao, Chenyin
    Zhang, Xiang
    Hazlett, Chad
    Stamey, James
    Yang, Shu
    Ding, Peng
    Shan, Mingyang
    Sheffield, Kristin
    Dreyer, Nancy
    PHARMACEUTICAL STATISTICS, 2025, 24 (02)
  • [24] A sequential Cox approach for estimating the causal effect of treatment in the presence of time-dependent confounding applied to data from the Swiss HIV Cohort Study
    Gran, Jon Michael
    Roysland, Kjetil
    Wolbers, Marcel
    Didelez, Vanessa
    Sterne, Jonathan A. C.
    Ledergerber, Bruno
    Furrer, Hansjakob
    von Wyl, Viktor
    Aalen, Odd O.
    STATISTICS IN MEDICINE, 2010, 29 (26) : 2757 - 2768
  • [25] Estimating heterogeneous treatment effects for latent subgroups in observational studies
    Kim, Hang J.
    Lu, Bo
    Nehus, Edward J.
    Kim, Mi-Ok
    STATISTICS IN MEDICINE, 2019, 38 (03) : 339 - 353
  • [26] Estimating the Causal Treatment Effect of Unproductive Persistence
    Leon, Amelia
    Nie, Allen
    Chandak, Yash
    Brunskill, Emma
    FOURTEENTH INTERNATIONAL CONFERENCE ON LEARNING ANALYTICS & KNOWLEDGE, LAK 2024, 2024, : 843 - 849
  • [27] Moving towards best practice when using inverse probability of treatment weighting (IPTW) using the propensity score to estimate causal treatment effects in observational studies
    Austin, Peter C.
    Stuart, Elizabeth A.
    STATISTICS IN MEDICINE, 2015, 34 (28) : 3661 - 3679
  • [28] Survival causal rule ensemble method considering the main effect for estimating heterogeneous treatment effects
    Wan, Ke
    Tanioka, Kensuke
    Shimokawa, Toshio
    STATISTICS IN MEDICINE, 2024, 43 (27) : 5234 - 5271
  • [29] Estimating heterogeneous causal effects in observational studies using small area predictors
    Ranjbar, Setareh
    Salvati, Nicola
    Pacini, Barbara
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2023, 184
  • [30] Causal inference for observational longitudinal studies using deep survival models
    Zhu, Jie
    Gallego, Blanca
    JOURNAL OF BIOMEDICAL INFORMATICS, 2022, 131