Smooth hazards with multiple time scales

05/16/2023
by   Angela Carollo, et al.
0

Hazard models are the most commonly used tool to analyse time-to-event data. If more than one time scale is relevant for the event under study, models are required that can incorporate the dependence of a hazard along two (or more) time scales. Such models should be flexible to capture the joint influence of several times scales and nonparametric smoothing techniques are obvious candidates. P-splines offer a flexible way to specify such hazard surfaces, and estimation is achieved by maximizing a penalized Poisson likelihood. Standard observations schemes, such as right-censoring and left-truncation, can be accommodated in a straightforward manner. The model can be extended to proportional hazards regression with a baseline hazard varying over two scales. Generalized linear array model (GLAM) algorithms allow efficient computations, which are implemented in a companion R-package.

READ FULL TEXT

page 13

page 14

page 16

page 18

page 21

research
12/15/2017

Modeling recurrent event times subject to right-censoring with D-vine copulas

In several time-to-event studies, the event of interest occurs more than...
research
04/15/2019

Proportional hazards model with partly interval censoring and its penalized likelihood estimation

This paper considers the problem of semi-parametric proportional hazards...
research
02/24/2020

Modified Cox regression with current status data

In survival analysis, the lifetime under study is not always observed. I...
research
01/19/2018

Penalised maximum likelihood estimation in multistate models for interval-censored data

Multistate models can be used to describe transitions over time across s...
research
10/06/2021

Joint models for the longitudinal analysis of measurement scales in the presence of informative dropout

In health cohort studies, repeated measures of markers are often used to...
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 ...

Please sign up or login with your details

Forgot password? Click here to reset