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Mapping Functions in Health-Related Quality of Life: Mapping from Two Cancer-Specific Health-Related Quality-of-Life Instruments to EQ-5D-3L

机译:健康相关生活质量中的映射函数:从两种癌症特定的健康相关生活质量仪器到EQ-5D-3L的映射

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摘要

Background. Clinical trials in cancer frequently include cancer-specific measures of health but not preference-based measures such as the EQ-5D that are suitable for economic evaluation. Mapping functions have been developed to predict EQ-5D values from these measures, but there is considerable uncertainty about the most appropriate model to use, and many existing models are poor at predicting EQ-5D values. This study aims to investigate a range of potential models to develop mapping functions from 2 widely used cancer-specific measures (FACT-G and EORTC-QLQ-C30) and to identify the best model. ududMethods. Mapping models are fitted to predict EQ-5D-3L values using ordinary least squares (OLS), tobit, 2-part models, splining, and to EQ-5D item-level responses using response mapping from the FACT-G and QLQ-C30. A variety of model specifications are estimated. Model performance and predictive ability are compared. Analysis is based on 530 patients with various cancers for the FACT-G and 771 patients with multiple myeloma, breast cancer, and lung cancer for the QLQ-C30. ududResults. For FACT-G, OLS models most accurately predict mean EQ-5D values with the best predicting model using FACT-G items with similar results using tobit. Response mapping has low predictive ability. In contrast, for the QLQ-C30, response mapping has the most accurate predictions using QLQ-C30 dimensions. The QLQ-C30 has better predicted EQ-5D values across the range of possible values; however, few respondents in the FACT-G data set have low EQ-5D values, which reduces the accuracy at the severe end. ududConclusions. OLS and tobit mapping functions perform well for both instruments. Response mapping gives the best model predictions for QLQ-C30. The generalizability of the FACT-G mapping function is limited to populations in moderate to good health.
机译:背景。癌症的临床试验通常包括针对癌症的健康措施,但不包括适合经济评估的基于偏好的措施,例如EQ-5D。已经开发了映射功能来通过这些度量来预测EQ-5D值,但是对于要使用的最合适的模型存在很大的不确定性,并且许多现有模型都无法预测EQ-5D值。这项研究旨在调查一系列潜在的模型,以从2种广泛使用的癌症特异性指标(FACT-G和EORTC-QLQ-C30)开发出作图功能,并确定最佳模型。 ud udMethods。映射模型适用于使用普通最小二乘法(OLS),轨道,两部分模型,样条线以及使用FACT-G和QLQ-C30的响应映射来预测EQ-5D项目级响应的EQ-5D-3L值。估计了各种型号规格。比较模型性能和预测能力。分析基于530名FACT-G患有各种癌症的患者和771名QLQ-C30患有多发性骨髓瘤,乳腺癌和肺癌的患者。 ud ud结果。对于FACT-G,OLS模型使用FACT-G项目的最佳预测模型可以最准确地预测平均EQ-5D值,而使用tobit可以得到相似的结果。响应映射具有较低的预测能力。相反,对于QLQ-C30,响应映射使用QLQ-C30尺寸具有最准确的预测。 QLQ-C30在可能的值范围内具有更好的EQ-5D预测值。但是,FACT-G数据集中很少有被调查者具有较低的EQ-5D值,这降低了精确度的准确性。 ud ud结论。 OLS和位图映射功能对于这两种仪器都表现良好。响应映射可为QLQ-C30提供最佳的模型预测。 FACT-G映射功能的可推广性仅限于健康状况良好的人群。

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