Center for Addiction and Mental Health, Toronto, Ontario, Canada.
Int J Methods Psychiatr Res. 2013 Jun;22(2):144-54. doi: 10.1002/mpr.1383. Epub 2013 May 28.
To determine valid and reliable disability weights for a U.S. burden of disease study, a convenience sample of 68 clinical experts was recruited, including representatives from over 20 NIH institutes and Centers for Disease Control and Prevention. Experts were given various health state valuation tasks including pairwise comparison, ranking, and Person Trade Off. Materials consisted of standardized descriptions of 11 attributes per health state (Classification and Measurement System of Functional Health, CLAMES). Attributes comprised up to 5 ordinal levels of disability. All states were displayed either with or without health state labels. Health state descriptions were taken from an existing comprehensive Canadian system. Conditional Logistic (CLR) and Probit Regression (PR) were used to derive disability weights. CLR and PR converged in yielding stable regression weights to construct disability weights, with a correlation of 0.816. The overall test-retest reliability amounted to 92.5% identical decisions. No significant difference was found for the presentation of health states with or without labels. A comparison of the expert valuations from our study with a standard gamble based valuation in the general population resulted in agreement of r = 0.61. The chosen methodology yielded valid and reliable and disability weights. As it is based on a modularized set of attributes, this methodology will allow derivation of disability weights on the basis of existing descriptions using the CLAMES.
为了确定美国疾病负担研究中有效的和可靠的失能权重,招募了一个方便的 68 名临床专家样本,包括来自 20 多个 NIH 研究所和疾病控制与预防中心的代表。专家们接受了各种健康状态评估任务,包括成对比较、排序和个人权衡。材料包括每个健康状态的 11 个属性的标准化描述(功能健康的分类和测量系统,CLAMES)。属性最多包含 5 个有序残疾水平。所有状态都显示有或没有健康状态标签。健康状态描述取自现有的全面的加拿大系统。条件逻辑回归(CLR)和概率回归(PR)用于导出失能权重。CLR 和 PR 在构建失能权重时收敛产生稳定的回归权重,相关系数为 0.816。总体测试-重测可靠性达到 92.5%的相同决策率。有或没有标签的健康状态呈现没有发现显著差异。对我们的研究中专家评估与一般人群中基于标准博弈的评估进行比较,结果一致,r = 0.61。所选方法产生了有效的和可靠的失能权重。由于它基于一组模块化的属性,因此这种方法将允许基于现有的 CLAMES 描述来推导失能权重。