Zhang Zhongheng, Ni Hongying
Department of Critical Care Medicine, Jinhua Municipal Central Hospital, Jinhua Hospital of Zhejiang University, Zhejiang, P.R. China.
PLoS One. 2015 Mar 30;10(3):e0120641. doi: 10.1371/journal.pone.0120641. eCollection 2015.
Acute respiratory distress syndrome (ARDS) is a major cause respiratory failure in intensive care unit (ICU). Early recognition of patients at high risk of death is of vital importance in managing them. The aim of the study was to establish a prediction model by using variables that were readily available in routine clinical practice.
The study was a secondary analysis of data obtained from the NHLBI Biologic Specimen and Data Repository Information Coordinating Center. Patients were enrolled between August 2007 and July 2008 from 33 hospitals. Demographics and laboratory findings were extracted from dataset. Univariate analyses were performed to screen variables with p<0.3. Then these variables were subject to automatic stepwise forward selection with significance level of 0.1. Interaction terms and fractional polynomials were examined for variables in the main effect model. Multiple imputations and bootstraps procedures were used to obtain estimations of coefficients with better external validation. Overall model fit and logistic regression diagnostics were explored.
A total of 282 ARDS patients were included for model development. The final model included eight variables without interaction terms and non-linear functions. Because the variable coefficients changed substantially after exclusion of most poorly fitted and influential subjects, we estimated the coefficient after exclusion of these outliers. The equation for the fitted model was: g(Χ)=0.06×age(in years)+2.23(if on vasopressor)+1.37×potassium (mmol/l)-0.007×platelet count (×109)+0.03×heart rate (/min)-0.29×Hb(g/dl)-0.67×T(°C)+0.01×PaO_2+13, and the probability of death π(Χ)=eg(Χ)/(1+eg(Χ)).
The study established a prediction model for ARDS patients requiring mechanical ventilation. The model was examined with rigorous methodology and can be used for risk stratification in ARDS patients.
急性呼吸窘迫综合征(ARDS)是重症监护病房(ICU)中呼吸衰竭的主要原因。早期识别死亡风险高的患者对其治疗至关重要。本研究的目的是利用常规临床实践中容易获得的变量建立一个预测模型。
本研究是对从美国国立心肺血液研究所生物标本和数据存储库信息协调中心获得的数据进行的二次分析。2007年8月至2008年7月期间,从33家医院招募患者。从数据集中提取人口统计学和实验室检查结果。进行单变量分析以筛选p<0.3的变量。然后对这些变量进行自动逐步向前选择,显著性水平为0.1。检查主效应模型中变量的交互项和分数多项式。使用多重插补和自助法程序获得具有更好外部验证的系数估计值。探索总体模型拟合和逻辑回归诊断。
共纳入282例ARDS患者进行模型开发。最终模型包括8个无交互项和非线性函数的变量。由于在排除大多数拟合不佳和有影响的受试者后变量系数发生了很大变化,我们在排除这些异常值后估计了系数。拟合模型的方程为:g(Χ)=0.06×年龄(岁)+2.23(如果使用血管升压药)+1.37×钾(mmol/l)-0.007×血小板计数(×109)+0.03×心率(/分钟)-0.29×血红蛋白(g/dl)-0.67×体温(°C)+0.01×动脉血氧分压+13,死亡概率π(Χ)=eg(Χ)/(1+eg(Χ))。
本研究建立了一个针对需要机械通气的ARDS患者的预测模型。该模型采用了严格的方法进行检验,可用于ARDS患者的风险分层。