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首页> 外文期刊>Value in health: the journal of the International Society for Pharmacoeconomics and Outcomes Research >Modeling a preference-based index for two condition-specific measures (asthma and overactive bladder) using a nonparametric bayesian method
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Modeling a preference-based index for two condition-specific measures (asthma and overactive bladder) using a nonparametric bayesian method

机译:使用非参数贝叶斯方法为两种特定于疾病的测量(哮喘和膀胱过度活动症)建模基于偏好的指数

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Background Conventionally, parametric models were used for health state valuation data. Recently, researchers started to explore the use of nonparametric Bayesian methods in this area. Objectives We present a nonparametric Bayesian model to estimate a preference-based index for two condition-specific five-dimensional health state classifications, one for asthma (five-dimensional Asthma Quality of Life Utility Index) and the other for overactive bladder (five-dimensional Overactive Bladder Quality of Life-Utility Index). Methods Samples of 307 and 311 members of the UK general population valued 99 health states selected from a total of 3125 health states defined by each of the measures using the time trade-off technique. The article presents the results of the nonparametric model and compares it with the original model estimated using a conventional parametric random-effects model. The different methods are compared theoretically and in terms of empirical performance across the two data sets. It also reports the effect of respondent characteristics on health state valuations. Results The nonparametric models were found to be better at predicting health state values within the estimation sample than without in terms of root mean square error and the patterns of standardized residuals. Some respondent characteristics were found to explain variation in health state values, but these did not have a significant effect on the health states values when estimates were adjusted for sample differences with the general population. Conclusions The nonparametric Bayesian models are theoretically more appropriate than previously used parametric models and provide better utility estimates from the two condition-specific measures. Furthermore, the model is more flexible in estimating the effect of covariates.
机译:背景技术常规上,参数模型用于健康状态评估数据。最近,研究人员开始探索在该领域使用非参数贝叶斯方法。目的我们提出了一种非参数贝叶斯模型,用于评估针对两种特定于病情的五维健康状态分类的偏好指数,一种针对哮喘(五维哮喘生活质量效用指数),另一种针对膀胱过度活动症(五维)膀胱过度活动症生活质量指数)。方法英国的总人口中的307位和311位成员的样本评估了99种健康状态,这些状态是通过时间权衡技术从每种方法定义的3125种健康状态中选择的。本文介绍了非参数模型的结果,并将其与使用常规参数随机效应模型估算的原始模型进行了比较。从理论上和在两个数据集的经验性能方面比较了不同的方法。它还报告了受访者特征对健康状态评估的影响。结果发现非参数模型在估计均方根样本中的健康状态值方面比没有均方根误差和标准化残差模式方面具有更好的预测能力。发现一些受访者特征可以解释健康状态值的变化,但是当调整估计值以消除与一般人群的样本差异时,这些特性对健康状态值没有显着影响。结论非参数贝叶斯模型在理论上比以前使用的参数模型更合适,并且可以根据这两个条件特定的度量提供更好的效用估计。此外,该模型在估计协变量的效果方面更为灵活。

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