Nursing Department, Sichuan Clinical Research Center for Cancer, Sichuan Cancer Hospital & Institute, Sichuan Cancer Center, Affiliated Cancer Hospital of University of Electronic Science and Technology of China, 610041, Chengdu, China.
School of Nursing, Chengdu Medical College, 610500, Chengdu, China.
Health Qual Life Outcomes. 2023 Nov 14;21(1):122. doi: 10.1186/s12955-023-02209-8.
To develop a mapping algorithm for generating the Short Form Six-Dimension (SF-6D) utility score based on the Functional Assessment of Cancer Therapy-Lung (FACT-L) of lung cancer patients.
Data were collected from 625 lung cancer patients in mainland China. The Spearman rank correlation coefficient and principal component analysis were used to evaluate the conceptual overlap between the FACT-L and SF-6D. Five model specifications and four statistical techniques were used to derive mapping algorithms, including ordinary least squares (OLS), Tobit and beta-mixture regression models, which were used to directly estimate health utility, and ordered probit regression was used to predict the response level. The prediction performance was evaluated using the correlations between the root mean square error (RMSE), mean absolute error (MAE), concordance correlation coefficient (CCC), Akaike information criterion (AIC) and Bayesian information criterion (BIC) and the observed and predicted SF-6D scores. A five-fold cross-validation method was used to test the universality of each model and select the best model.
The average FACT-L score was 103.024. The average SF-6D score was 0.774. A strong correlation was found between FACT-L and SF-6D scores (ρ = 0.797). The ordered probit regression model with the total score of each dimension and its square term, as well as age and sex as covariates, was most suitable for mapping FACT-L to SF-6D scores (5-fold cross-validation: RMSE = 0.0854; MAE = 0.0655; CCC = 0.8197; AEs > 0.1 (%) = 53.44; AEs > 0.05 (%) = 21.76), followed by beta-mixture regression for direct mapping. The Bland‒Altman plots showed that the ordered probit regression M5 had the lowest proportion of prediction scores outside the 95% agreement limit (-0.166, 0.163) at 4.96%.
The algorithm reported in this paper enables lung cancer data from the FACT-L to be mapped to the utility of the SF-6D. The algorithm allows the calculation of quality-adjusted life years for cost-utility analyses of lung cancer.
开发一种基于肺癌患者功能性评估癌症疗法-肺(FACT-L)的短式六维度(SF-6D)效用评分生成的映射算法。
本研究的数据来自中国大陆的 625 名肺癌患者。采用 Spearman 秩相关系数和主成分分析来评估 FACT-L 和 SF-6D 之间的概念重叠。使用了 5 种模型规范和 4 种统计技术来推导映射算法,包括普通最小二乘法(OLS)、Tobit 和β混合回归模型,这些模型用于直接估计健康效用,而有序概率回归用于预测反应水平。使用均方根误差(RMSE)、平均绝对误差(MAE)、一致性相关系数(CCC)、赤池信息量准则(AIC)和贝叶斯信息量准则(BIC)与观察到和预测的 SF-6D 得分之间的相关性来评估预测性能。使用五重交叉验证方法来测试每个模型的通用性并选择最佳模型。
FACT-L 平均得分为 103.024,SF-6D 平均得分为 0.774。FACT-L 和 SF-6D 得分之间存在很强的相关性(ρ=0.797)。以各维度总分及其平方项、年龄和性别为协变量的有序概率回归模型最适合映射 FACT-L 到 SF-6D 得分(5 重交叉验证:RMSE=0.0854;MAE=0.0655;CCC=0.8197;AE>0.1(%)=53.44;AE>0.05(%)=21.76),其次是直接映射的β混合回归。Bland-Altman 图显示,有序概率回归 M5 在 4.96%的情况下,预测得分超出 95%一致性限的比例最低(-0.166,0.163)。
本文报告的算法可将来自 FACT-L 的肺癌数据映射到 SF-6D 的效用上。该算法允许计算肺癌成本效用分析的质量调整生命年。