首页> 外文期刊>Value in health: the journal of the International Society for Pharmacoeconomics and Outcomes Research >Deriving an algorithm to convert the eight mean SF-36 dimension scores into a mean EQ-5D preference-based score from published studies (where patient level data are not available).
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Deriving an algorithm to convert the eight mean SF-36 dimension scores into a mean EQ-5D preference-based score from published studies (where patient level data are not available).

机译:从已发表的研究(无法获得患者水平数据)推导将SF-36维度的八个平均得分转换为基于EQ-5D偏好的平均得分的算法。

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OBJECTIVE: The objective of the study was to derive a method to predict a mean cohort EQ-5D preference-based index score using published mean statistics of the eight dimension scores describing the SF-36 health profile. METHODS: Ordinary least square regressions models are derived using patient level data (n = 6350) collected during 12 clinical studies. The models were compared for goodness of fit using standard techniques such as variance explained, the magnitude of errors in predicted values, and the proportion of values within the minimal important difference of the EQ-5D. Predictive abilities were also compared using summary statistics from both within-sample subgroups and published studies. RESULTS: The models obtained explained more than 56% of the variance in the EQ-5D scores. The mean predicted EQ-5D score was correct to within two decimal places for all models and the absolute error for the individual predicted values was approximately 0.13. Using summary statistics to predict within-sample subgroup mean EQ-5D scores, the mean errors (mean absolute errors) ranged from 0.021 to 0.077 (0.045-0.083). These statistics for the out-of-sample published data sets ranged from 0.048 to 0.099 (0.064-0.010). CONCLUSIONS: The models provided researchers with a mechanism to estimate EQ-5D utility data from published mean dimension scores. This research is unique in that it uses mean statistics from published studies to validate the results. While further research is required to validate the results in additional health conditions, the algorithms can be used to derive additional preference-based measures for use in economic analyses.
机译:目的:本研究的目的是使用已公布的描述SF-36健康状况的8个维度评分的均值统计数据,得出一种预测基于队列平均EQ-5D偏好的平均评分的方法。方法:使用在12个临床研究中收集的患者水平数据(n = 6350)得出普通最小二乘回归模型。使用标准技术(例如,解释的方差,预测值的误差的大小以及EQ-5D的最小重要差异内的值的比例)对模型的拟合优度进行了比较。还使用样本内亚组和已发表研究的汇总统计数据比较了预测能力。结果:所获得的模型解释了EQ-5D得分方差的56%以上。对于所有模型,平均预测EQ-5D分数均正确到两位小数位以内,单个预测值的绝对误差约为0.13。使用汇总统计量预测样本内亚组的平均EQ-5D得分,平均误差(平均绝对误差)的范围为0.021至0.077(0.045-0.083)。样本外已发布数据集的这些统计信息的范围从0.048到0.099(0.064-0.010)。结论:这些模型为研究人员提供了一种机制,可以根据已发布的平均维数得分估算EQ-5D实用数据。这项研究的独特之处在于它使用已发表研究的均值统计数据来验证结果。虽然需要进一步的研究来验证其他健康状况下的结果,但该算法可用于导出用于经济分析的其他基于偏好的度量。

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