Zhou Xinyuan, Zhu Fuxiang
Department of Nephrology, the First People's Hospital of Pinghu, Jiaxing, Zhejiang, People's Republic of China.
Jiaxing University Master Degree Cultivation Base, Zhejiang Chinese Medical University, Hangzhou, Zhejiang, People's Republic of China.
Risk Manag Healthc Policy. 2024 Sep 3;17:2111-2123. doi: 10.2147/RMHP.S456499. eCollection 2024.
Depression is a major concern in maintenance hemodialysis. However, given the elusive nature of its risk factors and the redundant nature of existing assessment forms for judging depression, further research is necessary. Therefore, this study was devoted to exploring the risk factors for depression in maintenance hemodialysis patients and to developing and validating a predictive model for assessing depression in maintenance hemodialysis patients.
This cross-sectional study was conducted from May 2022 to December 2022, and we recruited maintenance hemodialysis patients from a multicentre hemodialysis centre. Risk factors were identified by Lasso regression analysis and a Nomogram model was developed to predict depressed patients on maintenance hemodialysis. The predictive accuracy of the model was assessed by ROC curves, area under the ROC (AUC), consistency index (C-index), and calibration curves, and its applicability in clinical practice was evaluated using decision curves (DCA).
A total of 175 maintenance hemodialysis patients were included in this study, and cases were randomised into a training set of 148 and a validation set of 27 (split ratio 8.5:1.5), with a depression prevalence of 29.1%. Based on age, employment, albumin, and blood uric acid, a predictive map of depression was created, and in the training set, the nomogram had an AUC of 0.7918, a sensitivity of 61.9%, and a specificity of 89.2%. In the validation set, the nomogram had an AUC of 0.810, a sensitivity of 100%, and a specificity of 61.1%. The bootstrap-based internal validation showed a c-index of 0.792, while the calibration curve showed a strong correlation between actual and predicted depression risk. Decision curve analysis (DCA) results indicated that the predictive model was clinically useful.
The nomogram constructed in this study can be used to identify depression conditions in vulnerable groups quickly, practically and reliably.
抑郁症是维持性血液透析中的一个主要问题。然而,鉴于其危险因素难以捉摸,且现有抑郁症判断评估表存在冗余,有必要进行进一步研究。因此,本研究致力于探索维持性血液透析患者抑郁症的危险因素,并开发和验证一种用于评估维持性血液透析患者抑郁症的预测模型。
本横断面研究于2022年5月至2022年12月进行,我们从一个多中心血液透析中心招募维持性血液透析患者。通过Lasso回归分析确定危险因素,并开发列线图模型以预测维持性血液透析的抑郁症患者。通过受试者工作特征曲线(ROC曲线)、ROC曲线下面积(AUC)、一致性指数(C指数)和校准曲线评估模型的预测准确性,并使用决策曲线(DCA)评估其在临床实践中的适用性。
本研究共纳入175例维持性血液透析患者,病例随机分为148例的训练集和27例的验证集(分割比例8.5:1.5),抑郁症患病率为29.1%。基于年龄、就业情况、白蛋白和血尿酸,创建了抑郁症预测图,在训练集中,列线图的AUC为0.7918,灵敏度为61.9%,特异度为89.2%。在验证集中,列线图的AUC为0.810,灵敏度为100%,特异度为61.1%。基于自抽样的内部验证显示C指数为0.792,而校准曲线显示实际和预测的抑郁症风险之间存在强相关性。决策曲线分析(DCA)结果表明该预测模型具有临床实用性。
本研究构建的列线图可用于快速、实用且可靠地识别弱势群体中的抑郁症情况。