Institute for Women and Children's Health, King's Health Partners, London, UK.
Department of Women's and Children's Health, School of Life Course and Population Sciences, King's College London, London, UK.
Qual Life Res. 2023 Jul;32(7):1909-1923. doi: 10.1007/s11136-023-03359-4. Epub 2023 Feb 23.
The Child Health Utility-9 Dimensions (CHU9D) is a patient-reported outcome measure to generate Quality-Adjusted Life Years (QALYs), recommended for economic evaluations of interventions to inform funding decisions. When the CHU9D is not available, mapping algorithms offer an opportunity to convert other paediatric instruments, such as the Paediatric Quality of Life Inventory™ (PedsQL), onto the CHU9D scores. This study aims to validate current PedsQL to CHU9D mappings in a sample of children and young people of a wide age range (0 to 16 years of age) and with chronic conditions. New algorithms with improved predictive accuracy are also developed.
Data from the Children and Young People's Health Partnership (CYPHP) were used (N = 1735). Four regression models were estimated: ordinal least squared, generalized linear model, beta-binomial and censored least absolute deviations. Standard goodness of fit measures were used for validation and to assess new algorithms.
While previous algorithms perform well, performance can be enhanced. OLS was the best estimation method for the final equations at the total, dimension and item PedsQL scores levels. The CYPHP mapping algorithms include age as an important predictor and more non-linear terms compared with previous work.
The new CYPHP mappings are particularly relevant for samples with children and young people with chronic conditions living in deprived and urban settings. Further validation in an external sample is required. Trial registration number NCT03461848; pre-results.
儿童健康效用-9 维度(CHU9D)是一种患者报告的结果测量工具,用于生成质量调整生命年(QALYs),建议用于干预措施的经济评估,以告知资金决策。当 CHU9D 不可用时,映射算法为将其他儿科仪器(如儿科生活质量量表™(PedsQL))转换为 CHU9D 评分提供了机会。本研究旨在验证当前 PedsQL 与 CHU9D 映射在广泛年龄范围(0 至 16 岁)和患有慢性病的儿童和青少年样本中的适用性,并开发新的预测准确性更高的算法。
使用儿童和年轻人健康伙伴关系(CYPHP)的数据(N=1735)。估计了四种回归模型:有序最小二乘、广义线性模型、β二项式和删失最小绝对偏差。使用标准拟合优度度量来验证和评估新算法。
虽然以前的算法表现良好,但性能可以提高。OLS 是总、维度和项目 PedsQL 评分水平的最终方程的最佳估计方法。CYPHP 映射算法包括年龄作为一个重要的预测因素,并且与以前的工作相比,具有更多的非线性项。
新的 CYPHP 映射特别适用于患有慢性病的儿童和青少年生活在贫困和城市环境中的样本。需要在外部样本中进一步验证。试验注册号 NCT03461848;预结果。