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Probabilistic mapping of descriptive health status responses onto health state utilities using Bayesian networks: an empirical analysis converting SF-12 into EQ-5D utility index in a national US sample.

机译:使用贝叶斯网络的描述性健康状况响应到健康状况效用的概率映射:一项在美国国家样本中将SF-12转换为EQ-5D效用指数的经验分析。

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摘要

BACKGROUND: As quality-adjusted life years have become the standard metric in health economic evaluations, mapping health-profile or disease-specific measures onto preference-based measures to obtain quality-adjusted life years has become a solution when health utilities are not directly available. However, current mapping methods are limited due to their predictive validity, reliability, and/or other methodological issues. OBJECTIVES: We employ probability theory together with a graphical model, called a Bayesian network, to convert health-profile measures into preference-based measures and to compare the results to those estimated with current mapping methods. METHODS: A sample of 19,678 adults who completed both the 12-item Short Form Health Survey (SF-12v2) and EuroQoL 5D (EQ-5D) questionnaires from the 2003 Medical Expenditure Panel Survey was split into training and validation sets. Bayesian networks were constructed to explore the probabilistic relationships between each EQ-5D domain and 12 items of the SF-12v2. The EQ-5D utility scores were estimated on the basis of the predicted probability of each response level of the 5 EQ-5D domains obtained from the Bayesian inference process using the following methods: Monte Carlo simulation, expected utility, and most-likely probability. Results were then compared with current mapping methods including multinomial logistic regression, ordinary least squares, and censored least absolute deviations. RESULTS: The Bayesian networks consistently outperformed other mapping models in the overall sample (mean absolute error=0.077, mean square error=0.013, and R overall=0.802), in different age groups, number of chronic conditions, and ranges of the EQ-5D index. CONCLUSION: Bayesian networks provide a new robust and natural approach to map health status responses into health utility measures for health economic evaluations.
机译:背景:由于质量调整生命年已成为卫生经济评估中的标准指标,因此在无法直接获得卫生事业的情况下,将健康状况或针对疾病的措施映射到基于偏爱的措施上以获得质量调整生命年已成为解决方案。但是,当前的映射方法由于其预测有效性,可靠性和/或其他方法问题而受到限制。目的:我们将概率论与一个称为贝叶斯网络的图形模型一起使用,将健康状况测度转换为基于偏好的测度,并将其结果与采用当前映射方法估算的结果进行比较。方法:将2003年医疗支出小组调查中完成12项简短形式健康调查(SF-12v2)和EuroQoL 5D(EQ-5D)问卷的19,678名成年人的样本分为培训和验证集。构造贝叶斯网络以探索每个EQ-5D域与SF-12v2的12个项目之间的概率关系。根据使用以下方法从贝叶斯推理过程中获得的5个EQ-5D域的每个响应水平的预测概率,估算EQ-5D效用分数:蒙特卡罗模拟,期望效用和最有可能的概率。然后将结果与当前的映射方法(包括多项逻辑回归,普通最小二乘法和删失的最小绝对偏差)进行比较。结果:在不同年龄组,慢性病数量和EQ-范围内,贝叶斯网络在总体样本中均始终优于其他映射模型(平均绝对误差= 0.077,均方误差= 0.013,R总误差= 0.802)。 5D索引。结论:贝叶斯网络提供了一种新的健壮和自然的方法,将健康状况响应映射到用于卫生经济评估的卫生效用度量中。

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  • 来源
    《Medical care》 |2011年第5期|共10页
  • 作者

    Le QA; Doctor JN;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 护理学;
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  • 入库时间 2022-08-18 11:36:19

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