Login / Signup

A boosting first-hitting-time model for survival analysis in high-dimensional settings.

Riccardo de BinVegard Grødem Stikbakke
Published in: Lifetime data analysis (2022)
In this paper we propose a boosting algorithm to extend the applicability of a first hitting time model to high-dimensional frameworks. Based on an underlying stochastic process, first hitting time models do not require the proportional hazards assumption, hardly verifiable in the high-dimensional context, and represent a valid parametric alternative to the Cox model for modelling time-to-event responses. First hitting time models also offer a natural way to integrate low-dimensional clinical and high-dimensional molecular information in a prediction model, that avoids complicated weighting schemes typical of current methods. The performance of our novel boosting algorithm is illustrated in three real data examples.
Keyphrases
  • deep learning
  • healthcare
  • big data
  • single molecule