Additive-Multiplicative Rates Model for Recurrent Event Data with Intermittently Observed Time-Dependent Covariates.

Journal of data science : JDS Pub Date : 2021-10-01 Epub Date: 2021-11-04 DOI:10.6339/21-jds1027
Tianmeng Lyu, Xianghua Luo, Yifei Sun
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引用次数: 1

Abstract

Regression methods, including the proportional rates model and additive rates model, have been proposed to evaluate the effect of covariates on the risk of recurrent events. These two models have different assumptions on the form of the covariate effects. A more flexible model, the additive-multiplicative rates model, is considered to allow the covariates to have both additive and multiplicative effects on the marginal rate of recurrent event process. However, its use is limited to the cases where the time-dependent covariates are monitored continuously throughout the follow-up time. In practice, time-dependent covariates are often only measured intermittently, which renders the current estimation method for the additive-multiplicative rates model inapplicable. In this paper, we propose a semiparametric estimator for the regression coefficients of the additive-multiplicative rates model to allow intermittently observed time-dependent covariates. We present the simulation results for the comparison between the proposed method and the simple methods, including last covariate carried forward and linear interpolation, and apply the proposed method to an epidemiologic study aiming to evaluate the effect of time-varying streptococcal infections on the risk of pharyngitis among school children. The R package implementing the proposed method is available at www.github.com/TianmengL/rectime.

具有间断性观测时变协变量的重复事件数据的加乘率模型。
已经提出了包括比例率模型和加性率模型在内的回归方法来评估协变量对复发事件风险的影响。这两个模型对协变量效应的形式有不同的假设。一个更灵活的模型,即加乘率模型,被认为允许协变量对重复事件过程的边际率具有加性和乘性作用。然而,它的使用仅限于在整个随访时间内连续监测与时间相关的协变量的情况。在实际应用中,时变协变量往往是间歇性测量的,这使得目前加乘率模型的估计方法不适用。在本文中,我们提出了一个半参数估计的回归系数的加乘率模型,以允许间歇观测时变协变量。我们给出了模拟结果,比较了所提出的方法和简单方法,包括最后的协变量结转和线性插值,并将所提出的方法应用于一项流行病学研究,旨在评估时变链球菌感染对学龄儿童咽炎风险的影响。实现该方法的R包可在www.github.com/TianmengL/rectime获得。
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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