A Geo-Additive Bayesian Discrete-Time Survival Model and its Application to Spatial Analysis of Childhood Mortality in Malawi

2006 ◽  
Vol 40 (6) ◽  
pp. 935-957 ◽  
Author(s):  
Ngianga-Bakwin Kandala ◽  
Gebrenegus Ghilagaber
Methodology ◽  
2018 ◽  
Vol 14 (2) ◽  
pp. 45-55 ◽  
Author(s):  
Mirjam Moerbeek ◽  
Lieke Hesen

Abstract. In a discrete-time survival model the occurrence of some event is measured by the end of each time interval. In practice it is not always possible to measure all subjects at the same point in time. In this study the consequences of varying measurement occasions are investigated by means of a simulation study and the analysis of data from an empirical study. The results of the simulation study suggest that the effects of varying measurement occasions are negligible, at least for the scenarios that were covered in the simulation. The empirical example shows varying measurement occasions have minor effects on parameter estimates, standard errors, and significance levels.


2004 ◽  
Vol 10 (3) ◽  
pp. 175-216 ◽  
Author(s):  
Deborah Balk ◽  
Thomas Pullum ◽  
Adam Storeygard ◽  
Fern Greenwell ◽  
Melissa Neuman

PeerJ ◽  
2019 ◽  
Vol 7 ◽  
pp. e6257 ◽  
Author(s):  
Michael F. Gensheimer ◽  
Balasubramanian Narasimhan

There is currently great interest in applying neural networks to prediction tasks in medicine. It is important for predictive models to be able to use survival data, where each patient has a known follow-up time and event/censoring indicator. This avoids information loss when training the model and enables generation of predicted survival curves. In this paper, we describe a discrete-time survival model that is designed to be used with neural networks, which we refer to as Nnet-survival. The model is trained with the maximum likelihood method using mini-batch stochastic gradient descent (SGD). The use of SGD enables rapid convergence and application to large datasets that do not fit in memory. The model is flexible, so that the baseline hazard rate and the effect of the input data on hazard probability can vary with follow-up time. It has been implemented in the Keras deep learning framework, and source code for the model and several examples is available online. We demonstrate the performance of the model on both simulated and real data and compare it to existing models Cox-nnet and Deepsurv.


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