Center for Quality of Care Research, Baystate Medical Center, Springfield, MA, USA.
Pharmacoepidemiol Drug Saf. 2012 May;21 Suppl 2:44-52. doi: 10.1002/pds.3229.
Mortality prediction models can be used to adjust for presenting severity of illness in observational studies of treatment effectiveness. We aimed to determine the incremental benefit of adding information about critical care services to a sepsis mortality prediction model.
In a retrospective cohort of 166 931 eligible sepsis patients at 309 hospitals, we developed nested logistic regression models to predict mortality at the patient level. Our initial model included only demographic information. We then added progressively more detailed information such as comorbidities and initial treatments. We calculated each model's area under the receiver operating characteristic curve (AUROC) and also used a sheaf coefficient analysis to determine the relative effect of each additional group of variables.
Model discrimination increased as more detailed patient information was added. With demographics alone, the AUROC was 0.59; adding comorbidities increased the AUROC to 0.67. The final model, which took into account mixed (hierarchical) effects at the hospital level as well as initial treatments administered within the first two hospital days, resulted in an AUROC of 0.78. The standardized sheaf coefficient for the initial treatments was approximately 30% greater than that for demographics or infection source.
A sepsis disease risk score that incorporates information about the use of mechanical ventilation and vasopressors is superior to models that rely only on demographic information and comorbidities. Until administrative datasets include clinical information (such as vital signs and laboratory results), models such as this one could allow researchers to conduct observational studies of treatment effectiveness in sepsis patients.
死亡率预测模型可用于调整观察性研究中治疗效果的疾病严重程度。我们旨在确定将关于重症监护服务的信息添加到脓毒症死亡率预测模型中是否会带来额外的益处。
在 309 家医院的 166931 名符合条件的脓毒症患者的回顾性队列中,我们开发了嵌套逻辑回归模型来预测患者水平的死亡率。我们的初始模型仅包含人口统计学信息。然后,我们逐步添加更详细的信息,如合并症和初始治疗。我们计算了每个模型的接收者操作特征曲线下的面积(AUROC),并使用束系数分析来确定每个额外变量组的相对影响。
随着更详细的患者信息的添加,模型的区分度增加。仅使用人口统计学信息,AUROC 为 0.59;添加合并症后,AUROC 增加到 0.67。最终模型考虑了医院层面的混合(分层)效应以及前两天内给予的初始治疗,AUROC 为 0.78。初始治疗的标准化束系数比人口统计学或感染源的标准化束系数高约 30%。
纳入机械通气和血管加压素使用信息的脓毒症疾病风险评分优于仅依赖人口统计学信息和合并症的模型。在行政数据集包含临床信息(如生命体征和实验室结果)之前,此类模型可以使研究人员能够对脓毒症患者的治疗效果进行观察性研究。