首页> 外文OA文献 >Can mapping algorithms based on raw scores overestimate QALYs gained by treatment? A comparison of mappings between the Roland–Morris Disability Questionnaire and the EQ-5D-3L based on raw and Differenced Score Data
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Can mapping algorithms based on raw scores overestimate QALYs gained by treatment? A comparison of mappings between the Roland–Morris Disability Questionnaire and the EQ-5D-3L based on raw and Differenced Score Data

机译:基于原始分数的映射算法是否可以高估通过治疗获得的QALY?罗兰·莫里斯残疾问卷与EQ-5D-3L之间基于原始和差异分数数据的映射比较

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摘要

Introduction\ud\udMapping algorithms are increasingly being used to predict health-utility values based on responses or scores from non-preference-based measures, thereby informing economic evaluations.\ud\udObjectives\ud\udWe explored whether predictions in the EuroQol 5-dimension 3-level instrument (EQ-5D-3L) health-utility gains from mapping algorithms might differ if estimated using differenced versus raw scores, using the Roland–Morris Disability Questionnaire (RMQ), a widely used health status measure for low back pain, as an example.\ud\udMethods\ud\udWe estimated algorithms mapping within-person changes in RMQ scores to changes in EQ-5D-3L health utilities using data from two clinical trials with repeated observations. We also used logistic regression models to estimate response mapping algorithms from these data to predict within-person changes in responses to each EQ-5D-3L dimension from changes in RMQ scores. Predicted health-utility gains from these mappings were compared with predictions based on raw RMQ data.\ud\udResults\ud\udUsing differenced scores reduced the predicted health-utility gain from a unit decrease in RMQ score from 0.037 (standard error [SE] 0.001) to 0.020 (SE 0.002). Analysis of response mapping data suggests that the use of differenced data reduces the predicted impact of reducing RMQ scores across EQ-5D-3L dimensions and that patients can experience health-utility gains on the EQ-5D-3L ‘usual activity’ dimension independent from improvements captured by the RMQ.\ud\udConclusion\ud\udMappings based on raw RMQ data overestimate the EQ-5D-3L health utility gains from interventions that reduce RMQ scores. Where possible, mapping algorithms should reflect within-person changes in health outcome and be estimated from datasets containing repeated observations if they are to be used to estimate incremental health-utility gains.
机译:简介\ ud \ ud映射算法越来越多地用于基于非基于偏好的措施的响应或得分来预测健康效用值,从而为经济评估提供依据。\ ud \ udObjectives \ ud \ ud我们探讨了EuroQol 5中的预测是否如果使用Roland-Morris残疾问卷(RMQ)(一种广泛使用的下腰痛健康状况测量方法)使用原始评分与差异评分进行估算,则映射算法产生的3维水平仪器(EQ-5D-3L)的健康-效用收益可能会有所不同\ ud \ udMethods \ ud \ ud我们使用两次重复观察的临床试验数据估计了将RMQ分数的人内变化映射到EQ-5D-3L健康效用变化的算法。我们还使用逻辑回归模型从这些数据中估计响应映射算法,以根据RMQ得分的变化预测每个EQ-5D-3L维度的响应中的人员内变化。将这些映射的预测健康效用收益与基于原始RMQ数据的预测进行比较。\ ud \ udResults \ ud \ ud使用差异分数会使RMQ分数从0.037的单位降低降低了预测的卫生效益,标准误差[SE] 0.001)至0.020(SE 0.002)。对响应映射数据的分析表明,使用差异数据可以降低EQ-5D-3L各个维度上降低RMQ得分的预期影响,并且患者可以独立于EQ-5D-3L“日常活动”维度而体验到有益于健康的效用基于原始RMQ数据的RMQ。\ ud \ udConclusion \ ud \ udMappings捕获的改进高估了通过降低RMQ分数的干预措施所获得的EQ-5D-3L健康效用。在可能的情况下,映射算法应反映个人健康状况的变化,如果要用于估计增量的健康效用收益,则应从包含重复观察结果的数据集中进行估算。

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