Assessing the Robustness of Mediation Analysis in the Presence of Outliers: A Simulation Study

Abstract Number:

3768 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Paper 

Participants:

Evrim Oral (1)

Institutions:

(1) LSUHSC School of Public Health, N/A

Co-Author:

Evrim Oral  
LSUHSC School of Public Health

Presenting Author:

Evrim Oral  
LSUHSC School of Public Health

Abstract Text:

Causal inference is an analytical framework used to identify and understand cause-and-effect relationships between variables in observational studies. In health sciences, where controlled experiments are often difficult or unethical to conduct, causal inference plays a crucial role in drawing conclusions about the impact of various factors on outcomes. Most existing causal inference methods rely on the hypothesis that the distributional properties needed to run the models are not violated. However, outliers may violate the assumptions of statistical models, such as normality or linearity. If causal inference methods depend on these assumptions, the presence of outliers can lead to model misspecification and biased results. Outliers might significantly impact inference, as they have the potential to distort the estimation of causal relationships between variables and influence the sensitivity of causal inference analyses. Thus, in this study, we evaluate the effect of outliers on mediation analysis using an extensive simulation study, demonstrating how they pose challenges by distorting estimates, introducing bias, and affecting the generalizability of results.

Keywords:

Causal inference|Outliers|Robustness| | |

Sponsors:

Section on Statistical Computing

Tracks:

Monte Carlo Methods & Simulation

Can this be considered for alternate subtype?

Yes

Are you interested in volunteering to serve as a session chair?

Yes

I have read and understand that JSM participants must abide by the Participant Guidelines.

Yes

I understand that JSM participants must register and pay the appropriate registration fee by June 1, 2024. The registration fee is non-refundable.

I understand