Division of Nephrology, Department of Internal Medicine, MacKay Memorial Hospital, Taipei, Taiwan.
Department of Medicine, Mackay Medical College, New Taipei, Taiwan.
Blood Purif. 2023;52(4):323-331. doi: 10.1159/000527723. Epub 2023 Mar 8.
Cardiovascular (CV) events are the major cause of morbidity and mortality associated with blood pressure (BP) in hemodialysis (HD) patients. BP varies significantly during HD treatment, and the dramatic variation in BP is a well-recognized risk factor for increased mortality. The development of an intelligent system capable of predicting BP profiles for real-time monitoring is important. Our aim was to build a web-based system to predict changes in systolic BP (SBP) during HD.
In this study, dialysis equipment connected to the Vital Info Portal gateway collected HD parameters that were linked to demographic data stored in the hospital information system. There were 3 types of patients: training, test, and new. A multiple linear regression model was built using the training group with SBP change as the dependent variable and dialysis parameters as the independent variables. We tested the model's performance on test and new patient groups using coverage rates with different thresholds. The model's performance was visualized using a web-based interactive system.
A total of 542,424 BP records were used for model building. The accuracy was greater than 80% in the prediction error range of 15%, and 20 mm Hg of true SBP in the test and new patient groups for the model of SBP changes suggested the good performance of our prediction model. In the analysis of absolute SBP values (5, 10, 15, 20, and 25 mm Hg), the accuracy of the SBP prediction increased as the threshold value increased.
This databae supported our prediction model in reducing the frequency of intradialytic SBP variability, which may help in clinical decision-making when a new patient receives HD treatment. Further investigations are needed to determine whether the introduction of the intelligent SBP prediction system decreases the incidence of CV events in HD patients.
心血管(CV)事件是与血液透析(HD)患者血压(BP)相关的发病率和死亡率的主要原因。HD 治疗过程中 BP 变化很大,BP 的剧烈变化是公认的死亡率增加的危险因素。开发能够实时监测预测 BP 谱的智能系统非常重要。我们的目的是构建一个基于网络的系统,以预测 HD 期间的收缩压(SBP)变化。
在这项研究中,与 Vital Info Portal 网关连接的透析设备收集了与存储在医院信息系统中的人口统计学数据相关的 HD 参数。有 3 种类型的患者:训练、测试和新患者。使用训练组的 SBP 变化作为因变量和透析参数作为自变量构建多元线性回归模型。我们使用不同阈值的覆盖率测试模型在测试和新患者组中的性能。使用基于网络的交互式系统可视化模型的性能。
共使用了 542,424 个 BP 记录进行模型构建。在测试和新患者组中,SBP 变化模型的预测误差范围为 15%和 20mm Hg 的预测准确率大于 80%,表明我们的预测模型性能良好。在分析绝对 SBP 值(5、10、15、20 和 25mm Hg)时,随着阈值的增加,SBP 预测的准确性增加。
该数据库支持我们的预测模型减少透析期间 SBP 变异性的频率,这可能有助于新患者接受 HD 治疗时的临床决策。需要进一步研究以确定智能 SBP 预测系统的引入是否会降低 HD 患者的 CV 事件发生率。