Prediction of mortality among patients with chronic kidney disease: A systematic review.

Panupong Hansrivijit, Yi-Ju Chen, Kriti Lnu, Angkawipa Trongtorsak, Max M Puthenpura, Charat Thongprayoon, Tarun Bathini, Michael A Mao, Wisit Cheungpasitporn
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Abstract

Background: Chronic kidney disease (CKD) is a common medical condition that is increasing in prevalence. Existing published evidence has revealed through regression analyses that several clinical characteristics are associated with mortality in CKD patients. However, the predictive accuracies of these risk factors for mortality have not been clearly demonstrated.

Aim: To demonstrate the accuracy of mortality predictive factors in CKD patients by utilizing the area under the receiver operating characteristic (ROC) curve (AUC) analysis.

Methods: We searched Ovid MEDLINE, EMBASE, and the Cochrane Library for eligible articles through January 2021. Studies were included based on the following criteria: (1) Study nature was observational or conference abstract; (2) Study populations involved patients with non-transplant CKD at any CKD stage severity; and (3) Predictive factors for mortality were presented with AUC analysis and its associated 95% confidence interval (CI). AUC of 0.70-0.79 is considered acceptable, 0.80-0.89 is considered excellent, and more than 0.90 is considered outstanding.

Results: Of 1759 citations, a total of 18 studies (n = 14579) were included in this systematic review. Eight hundred thirty two patients had non-dialysis CKD, and 13747 patients had dialysis-dependent CKD (2160 patients on hemodialysis, 370 patients on peritoneal dialysis, and 11217 patients on non-differentiated dialysis modality). Of 24 mortality predictive factors, none were deemed outstanding for mortality prediction. A total of seven predictive factors [N-terminal pro-brain natriuretic peptide (NT-proBNP), BNP, soluble urokinase plasminogen activator receptor (suPAR), augmentation index, left atrial reservoir strain, C-reactive protein, and systolic pulmonary artery pressure] were identified as excellent. Seventeen predictive factors were in the acceptable range, which we classified into the following subgroups: predictors for the non-dialysis population, echocardiographic factors, comorbidities, and miscellaneous.

Conclusion: Several factors were found to predict mortality in CKD patients. Echocardiography is an important tool for mortality prognostication in CKD patients by evaluating left atrial reservoir strain, systolic pulmonary artery pressure, diastolic function, and left ventricular mass index.

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慢性肾脏病患者死亡率的预测:一项系统综述。
背景:慢性肾脏疾病(CKD)是一种常见的疾病,患病率正在上升。现有已发表的证据通过回归分析表明,CKD患者的几个临床特征与死亡率相关。然而,这些风险因素对死亡率的预测准确性尚未得到明确证明。目的:利用受试者操作特征面积(ROC)曲线(AUC)分析,证明CKD患者死亡率预测因素的准确性。方法:截至2021年1月,我们在Ovid MEDLINE、EMBASE和Cochrane图书馆搜索符合条件的文章。基于以下标准纳入研究:(1)研究性质为观察性或会议摘要;(2) 研究人群涉及任何CKD阶段严重程度的非移植性CKD患者;(3)死亡率的预测因素采用AUC分析及其相关的95%置信区间(CI)。AUC为0.70-0.79被认为是可接受的,0.80-0.89被认为是优秀的,大于0.90被认为是杰出的。结果:在1759篇引文中,共有18项研究(n=14579)被纳入本系统综述。八百三十二名患者患有非透析性CKD,13747名患者患有透析依赖性CKD(2160名患者接受血液透析,370名患者接受腹膜透析,11217名患者接受非分化透析)。在24个死亡率预测因素中,没有一个被认为是死亡率预测的突出因素。共有7个预测因素[N-末端脑钠素前体(NT-proBNP)、BNP、可溶性尿激酶纤溶酶原激活物受体(suPAR)、增强指数、左心房储层应变、C反应蛋白和收缩肺动脉压]被确定为优秀。17个预测因素在可接受范围内,我们将其分为以下亚组:非透析人群的预测因素、超声心动图因素、合并症和其他。结论:有几个因素可以预测CKD患者的死亡率。超声心动图是通过评估左心房储层应变、收缩肺动脉压、舒张功能和左心室质量指数来预测CKD患者死亡率的重要工具。
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