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Latent variable models with nonparametric interaction effects of latent variables

机译:具有潜在变量的非参数交互作用的潜在变量模型

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Renal disease is one of the common complications of diabetes, especially for Asian populations. Moreover, cardiovascular and renal diseases share common risk factors. This paper proposes a latent variable model with nonparametric interaction effects of latent variables for a study based on the Hong Kong Diabetes Registry, which was established in 1995 as part of a continuous quality improvement program at the Prince of Wales Hospital in Hong Kong. Renal outcome (outcome latent variable) is regressed in terms of cardiac function and diabetes (explanatory latent variables) through an additive structural equation formulated using a series of unspecified univariate and bivariate smooth functions. The Bayesian P-splines approach, along with a Markov chain Monte Carlo algorithm, is proposed to estimate smooth functions, unknown parameters, and latent variables in the model. The performance of the developed methodology is demonstrated via a simulation study. The effect of the nonparametric interaction of cardiac function and diabetes on renal outcome is investigated using the proposed methodology.
机译:肾脏疾病是糖尿病的常见并发症之一,尤其是对于亚洲人群。此外,心血管和肾脏疾病具有共同的危险因素。本文提出了一个具有潜在变量非参数交互作用的潜在变量模型,用于基于香港糖尿病注册机构的研究,该模型于1995年成立,是香港威尔斯亲王医院持续质量改进计划的一部分。通过使用一系列未指定的单变量和双变量平滑函数制定的累加结构方程,可以根据心功能和糖尿病(解释性潜在变量)对肾脏结局(结果潜在变量)进行回归。提出了贝叶斯P样条方法以及Markov链蒙特卡罗算法,以估计模型中的平滑函数,未知参数和潜在变量。通过仿真研究证明了所开发方法的性能。使用所提出的方法研究了心功能和糖尿病的非参数相互作用对肾脏预后的影响。

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