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热带地区急性肾衰竭死亡率的预测。

Prediction of mortality in acute renal failure in the tropics.

作者信息

Dharan Kishore S, John George T, Antonisamy B, Kirubakaran Meshach G, Jacob Chakko K

机构信息

Department of Nephrology, Christian Medical College, Vellore, India.

出版信息

Ren Fail. 2005;27(3):289-96.

Abstract

Despite significant improvements in medical care, acute renal failure (ARF) remains a high risk for mortality. It is important to be able to predict the outcome in these patients in view of the emotional and ethical needs of the patients and to address questions of efficiency and quality of care. We analyzed the risk factors predicting mortality prospectively in a group of 265 patients using univariate and multiple logistic regression analysis. A prognostic model was evolved that included 10 variables. The model showed good discrimination [(receiver operating characteristic (ROC) area=0.91) and correctly classified 88.30% of patients. The variables significantly associated with mortality were coma odds ratio (OR)=9.8], oliguria (OR=4.9), jaundice (OR=3.7), hypotension (OR=3.1), assisted ventilation (OR=2.3), hospital acquired ARF (OR=2.3), sepsis (OR=2.2), and hypoalbuminemia (OR=1.7). Age and male gender were included in the model as they are clinically important. The score was validated in the same sample by boot strapping. It was also validated in a prospective sample of 194 patients. The model was calibrated by the Hosmer-Lemeshow goodness-of-fit test. It was compared with two generic illness scores and one specific ARF score and was found to be superior to them. The model was verified in different subgroups of ARF like hospital acquired, community acquired, intensive care settings, nonintensive care settings, due to sepsis, due to nonsepsis etiologies, and showed good predictability and discrimination.

摘要

尽管医疗护理有了显著改善,但急性肾衰竭(ARF)仍然是高死亡风险疾病。鉴于患者的情感和伦理需求,以及解决医疗效率和质量问题,能够预测这些患者的预后非常重要。我们使用单变量和多因素逻辑回归分析,对一组265例患者的死亡预测风险因素进行了前瞻性分析。建立了一个包含10个变量的预后模型。该模型显示出良好的区分度(受试者工作特征曲线(ROC)面积 = 0.91),并正确分类了88.30%的患者。与死亡率显著相关的变量有昏迷(比值比(OR)= 9.8)、少尿(OR = 4.9)、黄疸(OR = 3.7)、低血压(OR = 3.1)、辅助通气(OR = 2.3)、医院获得性ARF(OR =  2.3)、脓毒症(OR = 2.2)和低白蛋白血症(OR = 1.7)。年龄和男性性别因其临床重要性被纳入模型。通过自抽样在同一样本中对该评分进行了验证。还在194例患者的前瞻性样本中进行了验证。通过Hosmer-Lemeshow拟合优度检验对模型进行了校准。将其与两个通用疾病评分和一个特定的ARF评分进行比较,发现该模型优于它们。该模型在ARF的不同亚组中得到验证,如医院获得性、社区获得性、重症监护环境、非重症监护环境、由脓毒症引起、由非脓毒症病因引起,显示出良好的预测性和区分度。

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