首页> 外文期刊>Medical decision making: An international journal of the Society for Medical Decision Making >Underestimation of uncertainties in health utilities derived from mapping algorithms involving health-related quality-of-life measures: Statistical explanations and potential remedies
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Underestimation of uncertainties in health utilities derived from mapping algorithms involving health-related quality-of-life measures: Statistical explanations and potential remedies

机译:从涉及与健康有关的生活质量衡量指标的映射算法得出的卫生事业中不确定性的低估:统计解释和可能的补救措施

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Objectives. Mapping algorithms are being developed in increasing numbers to derive health utilities (HUs) from health-related quality-of-life (HRQOL) data. However, the variances of the mapping-derived HUs are observed to be smaller than those of the actual HUs.Methods. Two reasons are proposed: 1) the presence of important unmeasured predictors leading to a high degree of unexplained variance and 2) ignoring that the regression coefficients are random variables themselves. We derive 3 variance estimators of HUs to account for these causes: 1) R2-adjusted estimator, 2) parametric estimator, and 3) nonparametric estimator. We tested these estimators using a simulated dataset and a real dataset involving the EQ-5D-3L and University of Washington Quality of Life questionnaire for patients with head and neck cancers.Results. The R2-adjusted estimator can be used in ordinary least squares (OLS)-based mapping algorithms and requires only the R2 from the derivation study. The parametric estimator can be used in OLS-based mapping algorithms and requires the mean square error (MSE) and design matrix from the derivation study. The nonparametric estimator can be used in any mapping algorithm and requires leave-one-out cross-validation MSE from the derivation study. In the simulated dataset, all 3 estimators are within 1% of the variance of the actual HUs. In the real dataset, the unadjusted variance was 45% less than the actual variance, while all 3 estimators are within 10% of the actual variance.Conclusions. When conducting cost-utility analyses (CUA) based on mapping algorithms, the variances of derived HUs should be properly adjusted using one of the proposed methods so that the results of the CUAs will correctly characterize uncertainty.
机译:目标。正在开发越来越多的映射算法,以从与健康相关的生活质量(HRQOL)数据中得出健康效用(HU)。但是,观察到映射的HU的方差小于实际HU的方差。提出两个原因:1)存在重要的无法测量的预测变量,导致高度无法解释的方差; 2)忽略回归系数本身就是随机变量。我们得出了HU的3个方差估计量,以说明这些原因:1)R2调整后的估计量,2)参数估计量,以及3)非参数估计量。我们使用模拟数据集和包含EQ-5D-3L的真实数据集和华盛顿大学生活质量调查表对头颈癌患者进行了测试,评估了这些估计量。经R2调整的估计量可用于基于普通最小二乘(OLS)的映射算法中,并且仅需要派生研究中的R2。参数估计器可用于基于OLS的映射算法,并且需要均方误差(MSE)和派生研究得出的设计矩阵。非参数估计器可用于任何映射算法中,并且需要衍生研究中的留一法交叉验证MSE。在模拟数据集中,所有3个估计量均在实际HUs的方差的1%以内。在真实数据集中,未经调整的方差比实际方差小45%,而所有3个估计量均在实际方差的10%以内。在基于映射算法进行成本效用分析(CUA)时,应使用建议的方法之一适当调整派生HU的方差,以使CUA的结果正确地表征不确定性。

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