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research article

Causal inference with recurrent and competing events

Janvin, Matias  
•
Young, Jessica G. G.
•
Ryalen, Pal C.
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May 12, 2023
Lifetime Data Analysis

Many research questions concern treatment effects on outcomes that can recur several times in the same individual. For example, medical researchers are interested in treatment effects on hospitalizations in heart failure patients and sports injuries in athletes. Competing events, such as death, complicate causal inference in studies of recurrent events because once a competing event occurs, an individual cannot have more recurrent events. Several statistical estimands have been studied in recurrent event settings, with and without competing events. However, the causal interpretations of these estimands, and the conditions that are required to identify these estimands from observed data, have yet to be formalized. Here we use a formal framework for causal inference to formulate several causal estimands in recurrent event settings, with and without competing events. When competing events exist, we clarify when commonly used classical statistical estimands can be interpreted as causal quantities from the causal mediation literature, such as (controlled) direct effects and total effects. Furthermore, we show that recent results on interventionist mediation estimands allow us to define new causal estimands with recurrent and competing events that may be of particular clinical relevance in many subject matter settings. We use causal directed acyclic graphs and single world intervention graphs to illustrate how to reason about identification conditions for the various causal estimands based on subject matter knowledge. Furthermore, using results on counting processes, we show that our causal estimands and their identification conditions, which are articulated in discrete time, converge to classical continuous time counterparts in the limit of fine discretizations of time. We propose estimators and establish their consistency for the various identifying functionals. Finally, we use the proposed estimators to compute the effect of blood pressure lowering treatment on the recurrence of acute kidney injury using data from the Systolic Blood Pressure Intervention Trial.

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Type
research article
DOI
10.1007/s10985-023-09594-8
Web of Science ID

WOS:000986392200001

Author(s)
Janvin, Matias  
•
Young, Jessica G. G.
•
Ryalen, Pal C.
•
Stensrud, Mats J. J.
Date Issued

2023-05-12

Publisher

SPRINGER

Published in
Lifetime Data Analysis
Subjects

Mathematics, Interdisciplinary Applications

•

Statistics & Probability

•

Mathematics

•

causal inference

•

separable effects

•

recurrent events

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competing events

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event history analysis

•

principal stratification

•

survival

•

models

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
BIOSTAT  
Available on Infoscience
June 5, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/198066
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