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Modeling the rate of HIV testing from repeated binary data amidst potential never-testers

机译:在潜在的永不-Testers中模拟重复二进制数据的HIV测试率

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Many longitudinal studies with a binary outcome measure involve a fraction of subjects with a homogeneous response profile. In our motivating data set, a study on the rate of human immunodeficiency virus (HIV) self-testing in a population of men who have sex with men (MSM), a substantial proportion of the subjects did not self-test during the follow-up study. The observed data in this context consist of a binary sequence for each subject indicating whether or not that subject experienced any events between consecutive observation time points, so subjects who never self-tested were observed to have a response vector consisting entirely of zeros. Conventional longitudinal analysis is not equipped to handle questions regarding the rate of events (as opposed to the odds, as in the classical logistic regression model). With the exception of discrete mixture models, such methods are also not equipped to handle settings in which there may exist a group of subjects for whom no events will ever occur, i.e. a so-called never-responder group. In this article, we model the observed data assuming that events occur according to some unobserved continuous-time stochastic process. In particular, we consider the underlying subject-specific processes to be Poisson conditional on some unobserved frailty, leading to a natural focus on modeling event rates. Specifically, we propose to use the power variance function (PVF) family of frailty distributions, which contains both the gamma and inverse Gaussian distributions as special cases and allows for the existence of a class of subjects having zero frailty. We generalize a computational algorithm developed for a log-gamma random intercept model (Conaway, 1990. A random effects model for binary data. Biometrics46, 317-328) to compute the exact marginal likelihood, which is then maximized to obtain estimates of model parameters. We conduct simulation studies, exploring the performance of the proposed method in comparison with competitors. Applying the PVF as well as a Gaussian random intercept model and a corresponding discrete mixture model to our motivating data set, we conclude that the group assigned to receive follow-up messages via SMS was self-testing at a significantly lower rate than the control group, but that there is no evidence to support the existence of a group of never-testers.
机译:许多具有二元结果测量的纵向研究涉及具有均匀反应曲线的次数。在我们的激励数据集中,对人口免疫缺陷病毒(艾滋病毒)自我测试的研究在与男性(MSM)发生性关系的人群中,大量比例在后续期间没有自检 - 学习。在此上下文中观察到的数据包括指示该受试者是否经历了连续观察时间点之间的任何事件的每个拍摄对象的二进制序列组成,因此观察到从未进行自检的受试者具有完全由零的响应载体。传统的纵向分析不配备关于事件速率的问题(与常规逻辑回归模型相反)。除了离散混合模型之外,这些方法也没有配备处理其中可能存在一个可能存在的一个受试者的设置,即没有发生事件,即所谓的永不响应者组。在本文中,我们假设事件发生根据一些不观察到的连续时间随机过程来模拟观察到的数据。特别是,我们认为潜在的主题特定流程是在一些不观察到的脆弱中成为泊松条件,导致自然关注建模事件率。具体地,我们建议使用Freairty分布的电力方差函数(PVF)系列,其包含伽马和逆高斯分布作为特殊情况,并且允许存在一类具有零脆弱的受试者。我们概括了为Log-Gamma随机拦截模型(Conaway,1990)开发的计算算法。我们进行仿真研究,探索与竞争对手相比的提出方法的性能。应用PVF以及高斯随机拦截模型和相应的离散混合模型到我们的激励数据集,我们得出得出结论,分配给通过SMS接收后续消息的组以比对照组的速率显着更低的自检,但没有证据表明存在一群从未测试者的存在。

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