Estimating causal effects of time-dependent exposures on a binary endpoint in a high-dimensional setting

03/28/2018
by   Vahé Asvatourian, et al.
0

Recently, the intervention calculus when the DAG is absent (IDA) method was developed to estimate lower bounds of causal effects from observational high-dimensional data. Originally it was introduced to assess the effect of baseline biomarkers which do not vary over time. However, in many clinical settings, measurements of biomarkers are repeated at fixed time points during treatment exposure and, therefore, this method need to be extended. The purpose of this paper is then to extend the first step of the IDA, the Peter Clarks (PC)-algorithm, to a time-dependent exposure in the context of a binary outcome. We generalised the PC-algorithm for taking into account the chronological order of repeated measurements of the exposure and propose to apply the IDA with our new version, the chronologically ordered PC-algorithm (COPC-algorithm). A simulation study has been performed before applying the method for estimating causal effects of time-dependent immunological biomarkers on toxicity, death and progression in patients with metastatic melanoma. The simulation study showed that the completed partially directed acyclic graphs (CPDAGs) obtained using COPC-algorithm were structurally closer to the true CPDAG than CPDAGs obtained using PC-algorithm. Also, causal effects were more accurate when they were estimated based on CPDAGs obtained using COPC-algorithm. Moreover, CPDAGs obtained by COPC-algorithm allowed removing non-chronologic arrows with a variable measured at a time t pointing to a variable measured at a time t' where t'< t. Bidirected edges were less present in CPDAGs obtained with the COPC-algorithm, supporting the fact that there was less variability in causal effects estimated from these CPDAGs. The COPC-algorithm provided CPDAGs that keep the chronological structure present in the data, thus allowed to estimate lower bounds of the causal effect of time-dependent biomarkers.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/13/2012

The Evaluation of Causal Effects in Studies with an Unobserved Exposure/Outcome Variable: Bounds and Identification

This paper deals with the problem of evaluating the causal effect using ...
research
07/05/2019

Analyses of 'change scores' do not estimate causal effects in observational data

Background: In longitudinal data, it is common to create 'change scores'...
research
06/24/2023

Instrumental Variable Approach to Estimating Individual Causal Effects in N-of-1 Trials: Application to ISTOP Study

An N-of-1 trial is a multiple crossover trial conducted in a single indi...
research
06/05/2019

Measurement errors in the binary instrumental variable model

Instrumental variable methods can identify causal effects even when the ...
research
06/23/2021

Bounds on Causal Effects and Application to High Dimensional Data

This paper addresses the problem of estimating causal effects when adjus...
research
06/04/2018

Optimal Balancing of Time-Dependent Confounders for Marginal Structural Models

Marginal structural models (MSMs) estimate the causal effect of a time-v...
research
06/30/2019

Bounding Causes of Effects with Mediators

Suppose X and Y are binary exposure and outcome variables, and we have f...

Please sign up or login with your details

Forgot password? Click here to reset