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首页> 外文期刊>Statistics in medicine >Variable selection in covariate dependent random partition models: an application to urinary tract infection
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Variable selection in covariate dependent random partition models: an application to urinary tract infection

机译:协变量相关随机分区模型中的变量选择:在尿路感染中的应用

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摘要

Lower urinary tract symptoms can indicate the presence of urinary tract infection (UTI), a condition that if it becomes chronic requires expensive and time consuming care as well as leading to reduced quality of life. Detecting the presence and gravity of an infection from the earliest symptoms is then highly valuable. Typically, white blood cell (WBC) count measured in a sample of urine is used to assess UTI. We consider clinical data from 1341 patients in their first visit in which UTI (i.e. WBC ) is diagnosed. In addition, for each patient, a clinical profile of 34 symptoms was recorded. In this paper, we propose a Bayesian nonparametric regression model based on the Dirichlet process prior aimed at providing the clinicians with a meaningful clustering of the patients based on both the WBC (response variable) and possible patterns within the symptoms profiles (covariates). This is achieved by assuming a probability model for the symptoms as well as for the response variable. To identify the symptoms most associated to UTI, we specify a spike and slab base measure for the regression coefficients: this induces dependence of symptoms selection on cluster assignment. Posterior inference is performed through Markov Chain Monte Carlo methods. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:下尿路症状可表明存在尿路感染(UTI),这种情况如果变为慢性,则需要昂贵且费时的护理,并导致生活质量下降。因此,从最早的症状中检测出感染的存在和严重性非常有价值。通常,在尿液样本中测量的白细胞(WBC)计数用于评估UTI。我们考虑了1341例首次诊断为UTI(即WBC)的患者的临床数据。另外,对于每位患者,记录了34种症状的临床资料。在本文中,我们提出了一种基于Dirichlet过程的贝叶斯非参数回归模型,旨在基于WBC(响应变量)和症状谱内的可能模式(协变量)为临床医生提供有意义的患者聚类。这可以通过假设症状和响应变量的概率模型来实现。为了确定与UTI最相关的症状,我们为回归系数指定了尖峰和平板基本度量:这会导致症状选择依赖于聚类分配。通过马尔可夫链蒙特卡洛方法进行后验推断。版权所有(c)2015 John Wiley&Sons,Ltd.

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