Duke Clinical Research Institute, Durham, NC, USA.
Circ Heart Fail. 2012 Jan;5(1):63-71. doi: 10.1161/CIRCHEARTFAILURE.111.963462. Epub 2011 Nov 23.
We aimed to develop a multivariable statistical model for risk stratification in patients with chronic heart failure with systolic dysfunction, using patient data that are routinely collected and easily obtained at the time of initial presentation.
In a cohort of 2331 patients enrolled in the HF-ACTION (Heart Failure: A Controlled Trial Investigating Outcomes of Exercise TraiNing) study (New York Heart Association class II-IV, left ventricular ejection fraction ≤0.35, randomized to exercise training and usual care versus usual care alone, median follow-up of 2.5 years), we performed risk modeling using Cox proportional hazards models and analyzed the relationship between baseline clinical factors and the primary composite end point of death or all-cause hospitalization and the secondary end point of all-cause death alone. Prognostic relationships for continuous variables were examined using restricted cubic spline functions, and key predictors were identified using a backward variable selection process and bootstrapping methods. For ease of use in clinical practice, point-based risk scores were developed from the risk models. Exercise duration on the baseline cardiopulmonary exercise test was the most important predictor of both the primary end point and all-cause death. Additional important predictors for the primary end point risk model (in descending strength) were Kansas City Cardiomyopathy Questionnaire symptom stability score, higher serum urea nitrogen, and male sex (all P<0.0001). Important additional predictors for the mortality risk model were higher serum urea nitrogen, male sex, and lower body mass index (all P<0.0001).
Risk models using simple, readily obtainable clinical characteristics can provide important prognostic information in ambulatory patients with chronic heart failure with systolic dysfunction.
URL: http://www.clinicaltrials.gov. Unique identifier: NCT00047437.
我们旨在使用在初始就诊时常规收集且易于获得的患者数据,为有收缩功能障碍的慢性心力衰竭患者建立一种用于风险分层的多变量统计模型。
在 HF-ACTION(心力衰竭:一项锻炼训练对照试验)研究的 2331 例患者队列中(纽约心脏协会心功能分级 II-IV 级,左心室射血分数≤0.35,随机分为锻炼训练和常规治疗组与单纯常规治疗组,中位随访时间 2.5 年),我们使用 Cox 比例风险模型进行风险建模,并分析了基线临床因素与主要复合终点(死亡或全因住院)和次要终点(全因死亡)之间的关系。使用限制性立方样条函数分析连续变量的预后关系,并使用向后变量选择过程和自举方法确定关键预测因子。为便于在临床实践中使用,我们从风险模型中开发了基于点的风险评分。基线心肺运动试验中的运动时间是主要终点和全因死亡的最重要预测因子。主要终点风险模型的其他重要预测因子(按强度降序排列)包括堪萨斯城心肌病问卷症状稳定性评分、较高的血清尿素氮和男性(均 P<0.0001)。死亡率风险模型的其他重要预测因子为较高的血清尿素氮、男性和较低的体重指数(均 P<0.0001)。
使用简单、易于获得的临床特征的风险模型可为有收缩功能障碍的慢性心力衰竭门诊患者提供重要的预后信息。