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危重症老年幸存者 6 个月死亡率的预测模型。

A prognostic model for 6-month mortality in elderly survivors of critical illness.

机构信息

Division of Pulmonary, Allergy, and Critical Care, Columbia University, New York, NY.

Data Analytics Group, New York-Presbyterian Hospital, New York, NY.

出版信息

Chest. 2013 Apr;143(4):910-919. doi: 10.1378/chest.12-1668.

Abstract

BACKGROUND

Although 1.4 million elderly Americans survive hospitalization involving intensive care annually, many are at risk for early mortality following discharge. No models that predict the likelihood of death after discharge exist explicitly for this population. Therefore, we derived and externally validated a 6-month postdischarge mortality prediction model for elderly ICU survivors.

METHODS

We derived the model from medical record and claims data for 1,526 consecutive patients aged ≥ 65 years who had their first medical ICU admission in 2006 to 2009 at a tertiary-care hospital and survived to discharge (excluding those patients discharged to hospice). We then validated the model in 1,010 patients from a different tertiary-care hospital.

RESULTS

Six-month mortality was 27.3% and 30.2% in the derivation and validation cohorts, respectively. Independent predictors of mortality (in descending order of contribution to the model's predictive power) were a do-not-resuscitate order, older age, burden of comorbidity, admission from or discharge to a skilled-care facility, hospital length of stay, principal diagnoses of sepsis and hematologic malignancy, and male sex. For the derivation and external validation cohorts, the area under the receiver operating characteristic curve was 0.80 (SE, 0.01) and 0.71 (SE, 0.02), respectively, with good calibration for both (P = 0.31 and 0.43).

CONCLUSIONS

Clinical variables available at hospital discharge can help predict 6-month mortality for elderly ICU survivors. Variables that capture elements of frailty, disability, the burden of comorbidity, and patient preferences regarding resuscitation during the hospitalization contribute most to this model's predictive power. The model could aid providers in counseling elderly ICU survivors at high risk of death and their families.

摘要

背景

尽管每年有 140 万美国老年人在涉及重症监护的住院治疗中幸存下来,但许多人在出院后仍有早期死亡的风险。目前没有专门针对这一人群的明确预测出院后死亡可能性的模型。因此,我们为老年 ICU 幸存者推导并外部验证了一个 6 个月的出院后死亡率预测模型。

方法

我们从一家三级保健医院 2006 年至 2009 年连续收治的 1526 例年龄≥65 岁的连续患者的病历和索赔数据中推导了该模型,这些患者在 ICU 首次入院并存活至出院(不包括出院至临终关怀的患者)。然后,我们在另一家三级保健医院的 1010 例患者中验证了该模型。

结果

在推导队列和验证队列中,6 个月死亡率分别为 27.3%和 30.2%。死亡率的独立预测因素(按对模型预测能力的贡献降序排列)包括不复苏医嘱、年龄较大、共病负担、从熟练护理机构入院或出院、住院时间、败血症和血液恶性肿瘤的主要诊断以及男性。对于推导队列和外部验证队列,接收者操作特征曲线下的面积分别为 0.80(SE,0.01)和 0.71(SE,0.02),两者的校准都很好(P=0.31 和 0.43)。

结论

出院时可获得的临床变量可帮助预测老年 ICU 幸存者 6 个月的死亡率。该模型的预测能力主要来自于能够捕捉衰弱、残疾、共病负担以及患者在住院期间对复苏的偏好等方面的变量。该模型可以帮助高死亡风险的老年 ICU 幸存者及其家属的医护人员进行咨询。

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