评估澳大利亚的龋齿实用指数。

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Medical Decision Making Pub Date : 2023-10-01 Epub Date: 2023-09-19 DOI:10.1177/0272989X231197149
Ruvini M Hettiarachchi, Sanjeewa Kularatna, Joshua Byrnes, Brendan Mulhern, Gang Chen, Paul A Scuffham
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引用次数: 0

摘要

简介:龋齿实用指数(DCUI)是一个新的针对青少年口腔健康的健康状态分类系统,由5个领域组成:疼痛/不适、进食/饮水困难、担忧、参与活动的能力和外表。每个域有4个响应级别。本研究旨在为DCUI生成一个澳大利亚特有的效用算法。方法:使用澳大利亚成年普通人群的代表性样本进行在线调查。离散选择实验(DCE)用于引出对5个领域的偏好。然后,使用视觉模拟量表(VAS)将潜在效用锚定在全健康死亡量表上。DCE数据使用条件logit建模,并考虑了2个锚定过程:基于最坏健康状态的锚定和映射方法。基于模型简约性和平均绝对误差(MAE)选择了最佳锚固程序。结果:共有995名来自澳大利亚普通人群的成年人完成了调查。除“担忧”和“外表”领域的第二层次外,5个维度和层次上的条件logit估计是单调的,具有统计学意义。标测方法是基于两个锚定程序之间较小的MAE选择的。DCUI的澳大利亚比关税在0.1681到1之间。结论:本研究开发了一种DCUI的实用算法。在针对青少年的龋齿干预措施的经济评估中,该值集将有助于从参与者对DCUI的反应中计算效用值。亮点:基于偏好的生活质量指标(PBM)由健康状态分类系统和一组效用值(评分算法)组成,用于生成经济评估的效用权重。这项研究首次为龋齿效用指数(DCUI)开发了一个澳大利亚效用值集,这是一个新的针对青少年口腔健康的分类系统。实用价值集的可用性将使DCUI能够用于针对青少年的口腔健康干预措施的经济评估,并可能最终导致口腔健康护理服务的更有效规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Valuing the Dental Caries Utility Index in Australia.

Valuing the Dental Caries Utility Index in Australia.

Valuing the Dental Caries Utility Index in Australia.

Valuing the Dental Caries Utility Index in Australia.

Introduction: The Dental Caries Utility Index (DCUI) is a new oral health-specific health state classification system for adolescents, consisting of 5 domains: pain/discomfort, difficulty eating food/drinking, worried, ability to participate in activities, and appearance. Each domain has 4 response levels. This study aims to generate an Australian-specific utility algorithm for the DCUI.

Methods: An online survey was conducted using a representative sample of the adult Australian general population. The discrete choice experiment (DCE) was used to elicit the preferences on 5 domains. Then, the latent utilities were anchored onto the full health-dead scale using the visual analogue scale (VAS). DCE data were modeled using conditional logit, and 2 anchoring procedures were considered: anchor based on the worst health state and a mapping approach. The optimal anchoring procedure was selected based on the model parsimony and the mean absolute error (MAE).

Results: A total of 995 adults from the Australian general population completed the survey. The conditional logit estimates on 5 dimensions and levels were monotonic and statistically significant, except for the second level of the "worried" and "appearance" domains. The mapping approach was selected based on a smaller MAE between the 2 anchoring procedures. The Australian-specific tariff of DCUI ranges from 0.1681 to 1.

Conclusion: This study developed a utility algorithm for the DCUI. This value set will facilitate utility value calculations from the participants' responses for DCUI in economic evaluations of dental caries interventions targeted for adolescents.

Highlights: Preference-based quality-of-life measures (PBMs), which consist of a health state classification system and a set of utility values (a scoring algorithm), are used to generate utility weights for economic evaluations.This study is the first to develop an Australian utility value set for the Dental Caries Utility Index (DCUI), a new oral health-specific classification system for adolescents.The availability of a utility value set will enable using DCUI in economic evaluations of oral health interventions targeted for adolescents and may ultimately lead to more effective and efficient planning of oral health care services.

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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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