Multiplicative versus additive modelling of causal effects using instrumental variables for survival outcomes - a comparison

被引:0
作者
John, Eleanor R. [1 ]
Crowther, Michael J. [2 ]
Didelez, Vanessa [3 ,4 ]
Sheehan, Nuala A. [1 ]
机构
[1] Univ Leicester, Dept Hlth Sci, Univ Rd, Leicester LE1 7RH, England
[2] Red Door Analyt, Stockholm, Sweden
[3] Leibniz Inst Prevent Res & Epidemiol BIPS, Bremen, Germany
[4] Univ Bremen, Fac Math & Comp Sci, Bremen, Germany
关键词
Causal effects; instrumental variables; time-to-event outcomes; MENDELIAN-RANDOMIZATION; CARDIOVASCULAR-DISEASE; ODDS RATIO; BIAS; REGRESSION; HAZARDS; COX; RISK; COLLAPSIBILITY; ESTIMATORS;
D O I
10.1177/09622802241293765
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Instrumental variables (IVs) methods have recently gained popularity since, under certain assumptions, they may yield consistent causal effect estimators in the presence of unmeasured confounding. Existing simulation studies that evaluate the performance of IV approaches for time-to-event outcomes tend to consider either an additive or a multiplicative data-generating mechanism (DGM) and have been limited to an exponential constant baseline hazard model. In particular, the relative merits of additive versus multiplicative IV models have not been fully explored. All IV methods produce less biased estimators than na & iuml;ve estimators that ignore unmeasured confounding, unless the IV is very weak and there is very little unmeasured confounding. However, the mean squared error of IV estimators may be higher than that of the na & iuml;ve, biased but more stable estimators, especially when the IV is weak, the sample size is small to moderate, and the unmeasured confounding is strong. In addition, the sensitivity of IV methods to departures from their assumed DGMs differ substantially. Additive IV methods yield clearly biased effect estimators under a multiplicative DGM whereas multiplicative approaches appear less sensitive. All can be extremely variable. We would recommend that survival probabilities should always be reported alongside the relevant hazard contrasts as these can be more reliable and circumvent some of the known issues with causal interpretation of hazard contrasts. In summary, both additive IV and Cox IV methods can perform well in some circumstances but an awareness of their limitations is required in analyses of real data where the true underlying DGM is unknown.
引用
收藏
页码:3 / 25
页数:23
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