A framework for leveraging machine learning tools to estimate personalized survival curves

11/06/2022
by   Charles J. Wolock, et al.
0

The conditional survival function of a time-to-event outcome subject to censoring and truncation is a common target of estimation in survival analysis. This parameter may be of scientific interest and also often appears as a nuisance in nonparametric and semiparametric problems. In addition to classical parametric and semiparametric methods (e.g., based on the Cox proportional hazards model), flexible machine learning approaches have been developed to estimate the conditional survival function. However, many of these methods are either implicitly or explicitly targeted toward risk stratification rather than overall survival function estimation. Others apply only to discrete-time settings or require inverse probability of censoring weights, which can be as difficult to estimate as the outcome survival function itself. Here, we propose a decomposition of the conditional survival function in terms of observable regression models in which censoring and truncation play no role. This allows application of an array of flexible regression and classification methods rather than only approaches that explicitly handle the complexities inherent to survival data. We outline estimation procedures based on this decomposition, assess their performance via numerical simulations, and demonstrate their use on data from an HIV vaccine trial.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2021

Inference for treatment-specific survival curves using machine learning

In the absence of data from a randomized trial, researchers often aim to...
research
07/27/2021

Individual Survival Curves with Conditional Normalizing Flows

Survival analysis, or time-to-event modelling, is a classical statistica...
research
03/18/2023

Neural Frailty Machine: Beyond proportional hazard assumption in neural survival regressions

We present neural frailty machine (NFM), a powerful and flexible neural ...
research
09/24/2011

Bias Plus Variance Decomposition for Survival Analysis Problems

Bias - variance decomposition of the expected error defined for regressi...
research
07/25/2023

Reinterpreting survival analysis in the universal approximator age

Survival analysis is an integral part of the statistical toolbox. Howeve...
research
01/16/2021

Deep Cox Mixtures for Survival Regression

Survival analysis is a challenging variation of regression modeling beca...
research
11/06/2020

Inhomogeneous Markov Survival Regression Models

We propose new regression models in survival analysis based on homogeneo...

Please sign up or login with your details

Forgot password? Click here to reset