Stable Survival Extrapolation via Transfer Learning
Anastasios Apsemidis, Nikolaos Demiris

TL;DR
This paper introduces a Bayesian transfer learning approach with flexible parametric models for stable and interpretable survival extrapolation, improving estimates in health economics and medical applications.
Contribution
It proposes a novel combination of Bayesian mortality modeling and polyhazard extrapolation methods to enhance stability and flexibility in survival analysis.
Findings
Effective in breast cancer, melanoma, and cardiac arrhythmia cases.
Handles non-proportional hazards and crossing survival curves.
Provides robust and interpretable survival estimates.
Abstract
The mean survival is the key ingredient of the decision process in several applications, notably in health economic evaluations. It is defined as the area under the complete survival curve, thus necessitating extrapolation of the observed data. This may be achieved in a more stable manner by borrowing long term evidence from registry and demographic data. Such borrowing can be seen as an implicit bias-variance trade-off in unseen data. In this article we employ a Bayesian mortality model and transfer its projections in order to construct the baseline population that acts as an anchor of the survival model. We then propose extrapolation methods based on flexible parametric polyhazard models which can naturally accommodate diverse shapes, including non-proportional hazards and crossing survival curves, while typically maintaining a natural interpretation. We estimate the mean survival and…
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Taxonomy
TopicsFault Detection and Control Systems · Neural Networks and Applications
