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Joint analysis of longitudinal and survival data measured on nested timescales by using shared parameter models: an application to fecundity data

机译:使用共享参数模型对嵌套时间尺度上测得的纵向和生存数据进行联合分析:对繁殖力数据的应用

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摘要

We consider the joint modelling, analysis and prediction of a longitudinal binary process and a discrete time-to-event outcome. We consider data from a prospective pregnancy study, which provides day level information regarding the behaviour of couples attempting to conceive. Reproductive epidemiologists are particularly interested in developing a model for individualized predictions of time to pregnancy (TTP). A couple's intercourse behaviour should be an integral part of such a model and is one of the main focuses of the paper. In our motivating data, the intercourse observations are a long series of binary data with a periodic probability of success and the amount of available intercourse data is a function of both the menstrual cycle length and TTP. Moreover, these variables are dependent and observed on different, and nested, timescales (TTP is measured in menstrual cycles whereas intercourse is measured on days within a menstrual cycle) further complicating its analysis. Here, we propose a semiparametric shared parameter model for the joint modelling of the binary longitudinal data (intercourse behaviour) and the discrete survival outcome (TTP). Further, we develop couple-based dynamic predictions for the intercourse profiles, which in turn are used to assess the risk for subfertility (i.e. TTP longer than six menstrual cycles).
机译:我们考虑纵向二元过程和离散事件发生时间的联合建模,分析和预测。我们考虑了一项前瞻性妊娠研究的数据,该研究提供了有关试图受孕的夫妇的行为的日间信息。生殖流行病学家对开发用于个体预测怀孕时间(TTP)的模型特别感兴趣。夫妻的性交行为应成为该模型不可或缺的一部分,并且是本文的主要重点之一。在我们的激励数据中,性交观察是一系列具有周期性成功概率的二进制数据,并且可用性交数据的数量是月经周期长度和TTP的函数。而且,这些变量是相互依存的,并且是在不同的嵌套时间尺度上观察到的(TTP在月经周期中进行测量,而性交在月经周期中的某天进行测量)进一步使分析变得复杂。在这里,我们提出了一个半参数共享参数模型,用于对二进制纵向数据(性行为)和离散生存结果(TTP)进行联合建模。此外,我们针对性交概况开发了基于夫妻的动态预测,进而将其用于评估不育的风险(即,TTP超过六个月经周期)。

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