Competing Risks: Impact on Risk Estimation and Algorithmic Fairness
Vincent Jeanselme, Brian Tom, Jessica Barrett

TL;DR
This paper reveals that treating competing risks as censoring in survival analysis causes bias and disparities, emphasizing the need to properly model competing risks for fairer and more accurate risk predictions.
Contribution
It provides a theoretical framework to quantify errors from misclassifying competing risks and demonstrates the fairness implications through empirical analysis.
Findings
Ignoring competing risks biases survival estimates
Misclassification amplifies disparities across demographic groups
Proper modeling of competing risks improves fairness and accuracy
Abstract
Accurate time-to-event prediction is integral to decision-making, informing medical guidelines, hiring decisions, and resource allocation. Survival analysis, the quantitative framework used to model time-to-event data, accounts for patients who do not experience the event of interest during the study period, known as censored patients. However, many patients experience events that prevent the observation of the outcome of interest. These competing risks are often treated as censoring, a practice frequently overlooked due to a limited understanding of its consequences. Our work theoretically demonstrates why treating competing risks as censoring introduces substantial bias in survival estimates, leading to systematic overestimation of risk and, critically, amplifying disparities. First, we formalize the problem of misclassifying competing risks as censoring and quantify the resulting…
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