Literature DB >> 18003234

Continuous and discrete time survival analysis: neural network approaches.

A Eleuteri1, M S H Aung, A F G Taktak, B Damato, P J G Lisboa.   

Abstract

In this paper we describe and compare two neural network models aimed at survival analysis modeling, based on formulations in continuous and discrete time. Learning in both models is approached in a Bayesian inference framework. We test the models on a real survival analysis problem, and we show that both models exhibit good discrimination and calibration capabilities. The C index of discrimination varied from 0.8 (SE=0.093) at year 1, to 0.75 (SE=0.034) at year 7 for the continuous time model; from 0.81 (SE=0.07) at year 1, to 0.75 (SE=0.033) at year 7 for the discrete time model. For both models the calibration was good (p<0.05) up to 7 years.

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Year:  2007        PMID: 18003234     DOI: 10.1109/IEMBS.2007.4353568

Source DB:  PubMed          Journal:  Conf Proc IEEE Eng Med Biol Soc        ISSN: 1557-170X


  3 in total

1.  Empirical Comparison of Continuous and Discrete-time Representations for Survival Prediction.

Authors:  Michael Sloma; Fayeq Jeelani Syed; Mohammadreza Nemati; Kevin S Xu
Journal:  Proc Mach Learn Res       Date:  2021-03

2.  Improving Gastric Cancer Outcome Prediction Using Single Time-Point Artificial Neural Network Models.

Authors:  Hamid Nilsaz-Dezfouli; Mohd Rizam Abu-Bakar; Jayanthi Arasan; Mohd Bakri Adam; Mohamad Amin Pourhoseingholi
Journal:  Cancer Inform       Date:  2017-02-16

3.  Five Years Survival of Patients After Liver Transplantation and Its Effective Factors by Neural Network and Cox Poroportional Hazard Regression Models.

Authors:  Bahareh Khosravi; Saeedeh Pourahmad; Amin Bahreini; Saman Nikeghbalian; Goli Mehrdad
Journal:  Hepat Mon       Date:  2015-09-01       Impact factor: 0.660

  3 in total

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