Score: 1

Predictiveness Curve Assessment under Competing Risks for Risk Prediction Models

Published: July 31, 2025 | arXiv ID: 2508.00216v1

By: Wei Tao , Jing Ning , Wen Li and more

Potential Business Impact:

Shows how likely patients are to get sick.

The predictiveness curve is a valuable tool for predictive evaluation, risk stratification, and threshold selection in a target population, given a single biomarker or a prediction model. In the presence of competing risks, regression models are often used to generate predictive risk scores or probabilistic predictions targeting the cumulative incidence function--distinct from the cumulative distribution function used in conventional predictiveness curve analyses. We propose estimation and inference procedures for the predictiveness curve with a competing risks regression model, to display the relationship between the cumulative incidence probability and the quantiles of model-based predictions. The estimation procedure combines cross-validation with a flexible regression model for tau-year event risk given the model-based risk score, with corresponding inference procedures via perturbation resampling. The proposed methods perform satisfactorily in simulation studies and are implemented through an R package. We apply the proposed methods to a cirrhosis study to depict the predictiveness curve with model-based predictions for liver-related mortality.

Repos / Data Links

Page Count
21 pages

Category
Statistics:
Methodology