Semiparametric Regression for Misclassified Competing Risks Data
Theofanis Balanos, Constantin T. Yiannoutsos, Felix M. Pabon-Rodriguez, Hongmei Nan, Giorgos Bakoyannis

TL;DR
This paper introduces a semiparametric regression method for competing risks data with misclassification, utilizing external validation data to improve estimation accuracy without requiring internal validation samples.
Contribution
It develops a novel approach that adjusts for cause-of-failure misclassification using external validation data and B-spline-based pseudo-likelihood, enhancing estimation efficiency.
Findings
Method performs well with realistic sample sizes.
Provides more efficient estimates than previous approaches.
Applied successfully to HIV study data with misclassification issues.
Abstract
The analysis of competing risks data is often complicated by misclassification of the cause of failure. This issue can lead to seriously biased estimates and invalid conclusions. One way to deal with such misclassification is to use a gold-standard cause of failure ascertainment procedure in a subset of the non-right-censored participants (internal validation sample) along with methods for missing data to deal with the missing gold-standard ascertainments. However, this approach can be costly and time-consuming and, therefore, cannot be implemented in many studies. In this work, we propose a semiparametric regression analysis methodology for the case where no internal validation sample exists. Our approach leverages estimates of the misclassification probabilities from an external validation study to adjust for misclassification in the study at hand. These probabilities are incorporated…
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