首页> 外文期刊>Journal of critical care >Modeling in-hospital patient survival during the first 28 days after intensive care unit admission: a prognostic model for clinical trials in general critically ill patients.
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Modeling in-hospital patient survival during the first 28 days after intensive care unit admission: a prognostic model for clinical trials in general critically ill patients.

机译:重症监护病房入院后头28天内住院患者的生存模型:这是一般危重患者临床试验的预后模型。

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OBJECTIVE: The objective of the study was to develop a model for estimating patient 28-day in-hospital mortality using 2 different statistical approaches. DESIGN: The study was designed to develop an outcome prediction model for 28-day in-hospital mortality using (a) logistic regression with random effects and (b) a multilevel Cox proportional hazards model. SETTING: The study involved 305 intensive care units (ICUs) from the basic Simplified Acute Physiology Score (SAPS) 3 cohort. PATIENTS AND PARTICIPANTS: Patients (n = 17138) were from the SAPS 3 database with follow-up data pertaining to the first 28 days in hospital after ICU admission. INTERVENTIONS: None. MEASUREMENTS AND RESULTS: The database was divided randomly into 5 roughly equal-sized parts (at the ICU level). It was thus possible to run the model-building procedure 5 times, each time taking four fifths of the sample as a development set and the remaining fifth as the validation set. At 28 days after ICU admission, 19.98% of the patients were still in the hospital. Because of the different sampling space and outcome variables, both models presented a better fit in this sample than did the SAPS 3 admission score calibrated to vital status at hospital discharge, both on the general population and in major subgroups. CONCLUSIONS: Both statistical methods can be used to model the 28-day in-hospital mortality better than the SAPS 3 admission model. However, because the logistic regression approach is specifically designed to forecast 28-day mortality, and given the high uncertainty associated with the assumption of the proportionality of risks in the Cox model, the logistic regression approach proved to be superior.
机译:目的:本研究的目的是建立一种使用两种不同的统计方法估算患者28天住院死亡率的模型。设计:本研究旨在使用(a)具有随机效应的logistic回归和(b)多层次Cox比例风险模型开发医院28天死亡率的结果预测模型。地点:该研究涉及基本简化急性生理评分(SAPS)3队列中的305个重症监护病房(ICU)。患者和参加者:患者(n = 17138)来自SAPS 3数据库,其随访数据涉及入ICU后住院的前28天。干预措施:无。测量和结果:数据库随机分为5个大小大致相等的部分(在ICU级别)。因此,有可能运行5次模型构建过程,每次将样本的五分之四作为开发集,将其余的五分之一作为验证集。重症监护病房(ICU)入院28天后,仍有19.98%的患者仍在医院。由于样本空间和结果变量的不同,无论是在一般人群还是在主要亚组中,这两个模型都比根据出院时的生命状态校准的SAPS 3入学评分更适合该样本。结论:两种统计方法均可以比SAPS 3入院模型更好地模拟28天住院死亡率。但是,由于逻辑回归方法是专门设计用来预测28天死亡率,并且考虑到Cox模型中风险比例假设的高度不确定性,因此逻辑回归方法被证明是更好的方法。

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