School of Health of Related Research, University of Sheffield, Sheffield, UK.
School of Health of Related Research, University of Sheffield, Sheffield, UK.
Value Health. 2021 Feb;24(2):281-290. doi: 10.1016/j.jval.2020.10.012. Epub 2020 Nov 27.
There are increasing concerns about the appropriateness of generic preference-based measures to capture health benefits in the area of mental health.
The aim of this study is to estimate preference weights for a new measure, Recovering Quality of Life (ReQoL-10), to better capture the benefits of mental healthcare.
Psychometric analyses of a larger sample of mental health service users (n = 4266) using confirmatory factor analyses and item response theory were used to derive a health state classification system and inform the selection of health states for utility assessment. A valuation survey with members of the UK public representative in terms of age, sex, and region was conducted using face-to-face interviewer administered time-trade-off with props. A series of regression models were fitted to the data and the best performing model selected for the scoring algorithm.
The ReQoL-Utility Index (UI) classification system comprises 6 mental health items and 1 physical health item. Sixty-four health states were valued by 305 participants. The preferred model was a random effects model, with significant and consistent coefficients and best model fit. Estimated utilities modeled for all health states ranged from -0.195 (state worse than dead) to 1 (best possible state).
The development of the ReQoL-UI is based on a novel application of item response theory methods for generating the classification system and selecting health states for valuation. Conventional time-trade-off was used to elicit utility values that are modeled to enable the generation of QALYs for use in cost-utility analysis of mental health interventions.
人们越来越关注通用偏好量表在心理健康领域衡量健康效益的适宜性。
本研究旨在评估一种新的测量工具——恢复生活质量量表(ReQoL-10)的偏好权重,以更好地捕捉精神卫生保健的效益。
使用验证性因子分析和项目反应理论对更大的精神卫生服务使用者样本(n=4266)进行心理测量分析,以确定健康状况分类系统,并为效用评估选择健康状况提供信息。使用具有代表性的年龄、性别和地区的英国公众成员进行了一项估值调查,采用面对面访谈者管理时间权衡与道具。对数据进行了一系列回归模型拟合,并选择最佳表现模型用于评分算法。
ReQoL-效用指数(UI)分类系统包括 6 个心理健康项目和 1 个身体健康项目。64 个健康状况由 305 名参与者进行了评估。首选模型是随机效应模型,具有显著和一致的系数和最佳模型拟合。对所有健康状况进行建模的估计效用范围从-0.195(比死亡状态更差)到 1(最佳状态)。
ReQoL-UI 的开发基于项目反应理论方法的新应用,用于生成分类系统和选择用于估值的健康状况。常规时间权衡法用于获取效用值,这些值可用于建模,以生成用于精神卫生干预成本效益分析的 QALY。