BayesSPsurv: An R Package to Estimate Bayesian (Spatial) Split-Population Survival Models

R J. Pub Date : 2021-01-01 DOI:10.32614/rj-2021-068
Brandon Bolte, N. Schmidt, Sergio Béjar, N. Huynh, Bumba Mukherjee
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引用次数: 1

Abstract

Survival data often include a fraction of units that are susceptible to an event of interest as well as a fraction of “immune” units. In many applications, spatial clustering in unobserved risk factors across nearby units can also affect their survival rates and odds of becoming immune. To address these methodological challenges, this article introduces our BayesSPsurv R-package, which fits parametric Bayesian Spatial split-population survival (cure) models that can account for spatial autocorrelation in both subpopulations of the user’s time-to-event data. Spatial autocorrelation is modeled with spatially weighted frailties, which are estimated using a conditionally autoregressive prior. The user can also fit parametric cure models with or without non-spatial i.i.d. frailties, and each model can incorporate time-varying covariates. BayesSPsurv also includes various functions to conduct pre-estimation spatial autocorrelation tests, visualize results, and assess model performance, all of which are illustrated using data on post-civil war peace survival.
BayesSPsurv:一个估计贝叶斯(空间)分裂种群生存模型的R包
生存数据通常包括一小部分易受感兴趣事件影响的单位以及一小部分“免疫”单位。在许多应用中,未观察到的风险因素在附近单位的空间聚类也会影响它们的存活率和免疫几率。为了解决这些方法上的挑战,本文介绍了我们的BayesSPsurv r包,它适合参数贝叶斯空间分裂种群生存(cure)模型,该模型可以解释用户时间到事件数据的两个子种群中的空间自相关性。空间自相关用空间加权脆弱性建模,利用条件自回归先验估计空间加权脆弱性。用户还可以拟合具有或不具有非空间i.i.d脆弱性的参数化治愈模型,并且每个模型都可以包含时变协变量。BayesSPsurv还包括各种功能,用于进行预估计空间自相关测试,可视化结果和评估模型性能,所有这些都使用内战后和平生存的数据进行说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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