Suppr超能文献

多变量联合建模以确定与生长和肺功能下降相关的标志物,这些标志物可预测囊性纤维化肺部恶化的发生。

Multivariate joint modeling to identify markers of growth and lung function decline that predict cystic fibrosis pulmonary exacerbation onset.

机构信息

Department of Biostatistics, Erasmus MC, Rotterdam, The Netherlands.

Cystic Fibrosis Foundation, Bethesda, MD, USA.

出版信息

BMC Pulm Med. 2020 May 19;20(1):142. doi: 10.1186/s12890-020-1177-z.

Abstract

BACKGROUND

Attenuated decreases in lung function can signal the onset of acute respiratory events known as pulmonary exacerbations (PEs) in children and adolescents with cystic fibrosis (CF). Univariate joint modeling facilitates dynamic risk prediction of PE onset and accounts for measurement error of the lung function marker. However, CF is a multi-system disease and the extent to which simultaneously modeling growth and nutrition markers improves PE predictive accuracy is unknown. Furthermore, it is unclear which routinely collected clinical indicators of growth and nutrition in early life predict PE onset in CF.

METHODS

Using a longitudinal cohort of 17,100 patients aged 6-20 years (US Cystic Fibrosis Foundation Patient Registry; 2003-2015), we fit a univariate joint model of lung-function decline and PE onset and contrasted its predictive performance with a class of multivariate joint models that included combinations of growth markers as additional submodels. Outcomes were longitudinal lung function (forced expiratory volume in 1 s of % predicted), percentiles of body mass index, weight-for-age and height-for-age and PE onset. Relevant demographic/clinical covariates were included in submodels. We implemented a univariate joint model of lung function and time-to-PE and four multivariate joint models including growth outcomes.

RESULTS

All five joint models showed that declining lung function corresponded to slightly increased risk of PE onset (hazard ratio from univariate joint model: 0.97, P < 0.0001), and all had reasonable predictive accuracy (cross-validated area under the receiver-operator characteristic curve > 0.70). None of the growth markers alongside lung function as outcomes in multivariate joint modeling appeared to have an association with hazard of PE. Jointly modeling only lung function and PE onset yielded the most accurate (area under the receiver-operator characteristic curve = 0.75) and precise (narrowest interquartile range) predictions. Dynamic predictions were accurate across forecast horizons (0.5, 1 and 2 years) and precision improved with age.

CONCLUSIONS

Including growth markers via multivariate joint models did not yield gains in prediction performance, compared to a univariate joint model with lung function. Individualized dynamic predictions from joint modeling could enhance physician monitoring of CF disease progression by providing PE risk assessment over a patient's clinical course.

摘要

背景

在患有囊性纤维化(CF)的儿童和青少年中,肺功能的减弱可以预示急性呼吸道事件(称为肺部恶化)的发生。单变量联合建模有助于动态预测 PE 的发生,并考虑到肺功能标志物的测量误差。然而,CF 是一种多系统疾病,同时建模生长和营养标志物在多大程度上提高 PE 预测准确性尚不清楚。此外,目前尚不清楚哪些常规收集的生长和营养临床指标可以预测 CF 中 PE 的发生。

方法

使用年龄在 6-20 岁的 17100 例患者的纵向队列(美国囊性纤维化基金会患者登记处;2003-2015 年),我们拟合了肺功能下降和 PE 发病的单变量联合模型,并将其预测性能与一类包含生长标志物的多变量联合模型进行了对比,后者作为附加子模型。结果是纵向肺功能(预测值的 1 秒用力呼气量的百分比)、体重指数的百分位数、体重与年龄的比值和身高与年龄的比值以及 PE 的发病情况。相关的人口统计学/临床协变量被包含在子模型中。我们实施了肺功能和 PE 发病时间的单变量联合模型,以及包含生长结果的四个多变量联合模型。

结果

所有五个联合模型都表明,肺功能下降对应于 PE 发病风险略有增加(单变量联合模型的危险比:0.97,P<0.0001),并且所有模型都具有合理的预测准确性(交叉验证的接受者操作特征曲线下面积>0.70)。在多变量联合建模中,将生长标志物与肺功能作为结果之一,并没有显示出与 PE 发病风险的关联。仅对肺功能和 PE 发病进行联合建模可得出最准确(接受者操作特征曲线下面积=0.75)和最精确(最窄的四分位间距)的预测结果。动态预测在预测期(0.5、1 和 2 年)内都是准确的,并且随着年龄的增长而提高精度。

结论

与包含肺功能的单变量联合模型相比,通过多变量联合模型纳入生长标志物并没有提高预测性能。联合建模的个体化动态预测可以通过在患者的临床过程中提供 PE 风险评估,从而增强医生对 CF 疾病进展的监测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d807/7236487/68d61cb52803/12890_2020_1177_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验