Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Neural Fine-Gray: Monotonic neural networks for competing risks

About

Time-to-event modelling, known as survival analysis, differs from standard regression as it addresses censoring in patients who do not experience the event of interest. Despite competitive performances in tackling this problem, machine learning methods often ignore other competing risks that preclude the event of interest. This practice biases the survival estimation. Extensions to address this challenge often rely on parametric assumptions or numerical estimations leading to sub-optimal survival approximations. This paper leverages constrained monotonic neural networks to model each competing survival distribution. This modelling choice ensures the exact likelihood maximisation at a reduced computational cost by using automatic differentiation. The effectiveness of the solution is demonstrated on one synthetic and three medical datasets. Finally, we discuss the implications of considering competing risks when developing risk scores for medical practice.

Vincent Jeanselme, Chang Ho Yoon, Brian Tom, Jessica Barrett• 2023

Related benchmarks

TaskDatasetResultRank
Survival AnalysisSEER (test)
IBS (Primary)0.0608
18
Survival AnalysisPBC (test)
IBS (Primary)0.1055
18
Survival AnalysisFramingham (test)
IBS Primary0.088
18
Competing Risks Survival AnalysisSynthetic (test)
IBS (Primary)0.1634
9
Survival AnalysisSynthetic (test)
IBS (Primary)16.31
9
Showing 5 of 5 rows

Other info

Follow for update