Faculty of Medicine and Health Sciences, Ghent University, Ghent, Belgium; Department of Intensive Care, Ghent University Hospital, De Pintelaan 185, 9000 Ghent, Belgium.
Faculty of Bioscience Engineering, Department of Mathematical Modelling, Statistics and Bioinformatics, Ghent University, Coupure Links 653, 9000 Ghent, Belgium.
J Crit Care. 2018 Feb;43:133-138. doi: 10.1016/j.jcrc.2017.09.006. Epub 2017 Sep 6.
We developed a prediction model for quality of life (QOL) 1 year after intensive care unit (ICU) discharge based upon data available at the first ICU day to improve decision-making.
The database of a 1-year prospective study concerning long-term outcome and QOL (assessed by EuroQol-5D) in critically ill adult patients consecutively admitted to the ICU of a university hospital was used. Cases with missing data were excluded. Utility indices at baseline (UIb) and at 1 year (UI1y) were surrogates for QOL. For 1-year non-survivors UI1y was set at zero. The grouped lasso technique selected the most important variables in the prediction model. R and adjusted R were calculated.
1831 of 1953 cases (93.8%) were complete. UI1y depended significantly on: UIb (P<0.001); solid tumor (P<0.001); age (P<0.001); activity of daily living (P<0.001); imaging (P<0.001); APACHE II-score (P=0.001); ≥80 years (P=0.001); mechanical ventilation (P=0.006); hematological patient (P=0.007); SOFA-score (P=0.008); tracheotomy (P=0.018); admission diagnosis surgical P<0.001 (versus medical); and comorbidity (P=0.049). Only baseline health status and surgical patients were positively associated with UI1y. R was 0.3875 and adjusted R 0.3807.
Although only 40% of variability in long-term QOL could be explained, this prediction model can be helpful in decision-making.
我们基于 ICU 第一天的数据开发了一种 ICU 出院后 1 年生活质量(QOL)预测模型,以改善决策。
使用了一项关于重症成年患者长期预后和 QOL(通过 EuroQol-5D 评估)的 1 年前瞻性研究的数据库,这些患者连续入住大学医院的 ICU。排除了缺失数据的病例。基线时的效用指数(UIb)和 1 年时的效用指数(UI1y)是 QOL 的替代指标。对于 1 年非幸存者,UI1y 设定为零。分组套索技术选择预测模型中最重要的变量。计算了 R 和调整 R。
1953 例病例中有 1831 例(93.8%)完整。UI1y 显著依赖于:UIb(P<0.001);实体瘤(P<0.001);年龄(P<0.001);日常生活活动(P<0.001);影像学(P<0.001);APACHE II 评分(P=0.001);≥80 岁(P=0.001);机械通气(P=0.006);血液病患者(P=0.007);SOFA 评分(P=0.008);气管切开术(P=0.018);入院诊断为外科(P<0.001,与内科相对);和合并症(P=0.049)。只有基线健康状况和外科患者与 UI1y 呈正相关。R 为 0.3875,调整 R 为 0.3807。
尽管长期 QOL 的 40%的可变性可以解释,但该预测模型可以帮助决策。