Literature DB >> 26993982

Generalized accelerated failure time spatial frailty model for arbitrarily censored data.

Haiming Zhou1, Timothy Hanson2, Jiajia Zhang3.   

Abstract

Flexible incorporation of both geographical patterning and risk effects in cancer survival models is becoming increasingly important, due in part to the recent availability of large cancer registries. Most spatial survival models stochastically order survival curves from different subpopulations. However, it is common for survival curves from two subpopulations to cross in epidemiological cancer studies and thus interpretable standard survival models can not be used without some modification. Common fixes are the inclusion of time-varying regression effects in the proportional hazards model or fully nonparametric modeling, either of which destroys any easy interpretability from the fitted model. To address this issue, we develop a generalized accelerated failure time model which allows stratification on continuous or categorical covariates, as well as providing per-variable tests for whether stratification is necessary via novel approximate Bayes factors. The model is interpretable in terms of how median survival changes and is able to capture crossing survival curves in the presence of spatial correlation. A detailed Markov chain Monte Carlo algorithm is presented for posterior inference and a freely available function frailtyGAFT is provided to fit the model in the R package spBayesSurv. We apply our approach to a subset of the prostate cancer data gathered for Louisiana by the surveillance, epidemiology, and end results program of the National Cancer Institute.

Entities:  

Keywords:  Heteroscedastic survival; Interval-censored data; Linear dependent tailfree process; Spatial data; Stratified AFT model

Mesh:

Year:  2016        PMID: 26993982      PMCID: PMC5352560          DOI: 10.1007/s10985-016-9361-4

Source DB:  PubMed          Journal:  Lifetime Data Anal        ISSN: 1380-7870            Impact factor:   1.588


  15 in total

1.  A Bayesian semiparametric accelerated failure time model.

Authors:  S Walker; B K Mallick
Journal:  Biometrics       Date:  1999-06       Impact factor: 2.571

2.  Modeling spatial survival data using semiparametric frailty models.

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Journal:  Biometrics       Date:  2002-06       Impact factor: 2.571

3.  Frailty modeling for spatially correlated survival data, with application to infant mortality in Minnesota.

Authors:  Sudipto Banerjee; Melanie M Wall; Bradley P Carlin
Journal:  Biostatistics       Date:  2003-01       Impact factor: 5.899

4.  Semiparametric proportional odds models for spatially correlated survival data.

Authors:  Sudipto Banerjee; Dipak K Dey
Journal:  Lifetime Data Anal       Date:  2005-06       Impact factor: 1.588

5.  A class of mixtures of dependent tail-free processes.

Authors:  A Jara; T E Hanson
Journal:  Biometrika       Date:  2011-09       Impact factor: 2.445

6.  A Bayesian Semiparametric Temporally-Stratified Proportional Hazards Model with Spatial Frailties.

Authors:  Timothy E Hanson; Alejandro Jara; Luping Zhao
Journal:  Bayesian Anal       Date:  2011       Impact factor: 3.728

7.  Spatially dependent polya tree modeling for survival data.

Authors:  Luping Zhao; Timothy E Hanson
Journal:  Biometrics       Date:  2010-08-19       Impact factor: 2.571

8.  Bayesian Parametric Accelerated Failure Time Spatial Model and its Application to Prostate Cancer.

Authors:  Jiajia Zhang; Andrew B Lawson
Journal:  J Appl Stat       Date:  2011-03       Impact factor: 1.404

9.  MODELLING COUNTY LEVEL BREAST CANCER SURVIVAL DATA USING A COVARIATE-ADJUSTED FRAILTY PROPORTIONAL HAZARDS MODEL.

Authors:  Haiming Zhou; Timothy Hanson; Alejandro Jara; Jiajia Zhang
Journal:  Ann Appl Stat       Date:  2015-03       Impact factor: 2.083

10.  A Bayesian normal mixture accelerated failure time spatial model and its application to prostate cancer.

Authors:  Songfeng Wang; Jiajia Zhang; Andrew B Lawson
Journal:  Stat Methods Med Res       Date:  2012-11-01       Impact factor: 3.021

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  2 in total

1.  Bayes factors for choosing among six common survival models.

Authors:  Jiajia Zhang; Timothy Hanson; Haiming Zhou
Journal:  Lifetime Data Anal       Date:  2018-03-30       Impact factor: 1.588

2.  SSR marker-assisted screening of commercial tomato genotypes under salt stress.

Authors:  Charfeddine Gharsallah; Ahmed Ben Abdelkrim; Hatem Fakhfakh; Amel Salhi-Hannachi; Faten Gorsane
Journal:  Breed Sci       Date:  2016-12-06       Impact factor: 2.086

  2 in total

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