Clinical Nursing Teaching Department, The Second Affiliated Hospital of Harbin Medical University, Harbin, China,
Office of General Affairs, School of Nursing, Harbin Medical University, Harbin, China,
Blood Purif. 2024;53(10):813-823. doi: 10.1159/000540543. Epub 2024 Aug 1.
Autogenous arteriovenous fistula (AVF) is the preferred vascular access in patients undergoing maintenance hemodialysis (MHD). However, complications such as thrombosis may occur. This study aimed to construct and validate a machine learning-based risk-prediction model for AVF thrombosis, hypothesizing that such a model can effectively predict occurrences, providing a foundation for early clinical intervention.
The retrospective longitudinal study included a total of 270 patients who underwent MHD at the Hemodialysis Center of the Second Affiliated Hospital of Harbin Medical University between March 2021 and December 2022. During this study, baseline data and scale information of patients between March 2020 and December 2021 were collected. We recorded outcome indicators between March 2021 and December 2022 for subsequent analyses. Five machine learning models were developed (artificial neural network, logistic regression, ridge classification, random forest, and adaptive boosting). The sensitivity (recall), specificity, accuracy, and precision of each model were evaluated. The effect size of each variable was analyzed and ranked. Models were assessed using the area under the receiver-operating characteristic (AUROC) curve.
Among the 270 included patients, 105 had AVF thrombosis (55 male and 50 female patients; age range, 29-79 years; mean age, 56.72 years; standard deviation [SDs], ±13.10 years). Conversely, 165 patients did not have AVF thrombosis (99 male and 66 female patients; age range, 23-79 years; mean age, 53.58 years; SD, ± 13.33 years). During the observation period, approximately 52.6% of patients with AVF experienced long-term complications. The most common complications associated with AVF were thrombosis (105; 38.9%), aneurysm formation (27; 10%), and excessively high output flow (10; 3.7%). Fifty-four (20%) patients with AVF required intervention because of complications associated with vascular access. The AUROC curve of the testing set was between 0.858 and 0.903.
In this study, we developed five machine learning models to predict the risk of AVF thrombosis, providing a reference for early clinical intervention.
自体动静脉瘘(AVF)是维持性血液透析(MHD)患者首选的血管通路。然而,可能会发生血栓等并发症。本研究旨在构建和验证基于机器学习的 AVF 血栓形成风险预测模型,假设该模型可以有效地预测发生情况,为早期临床干预提供基础。
本回顾性纵向研究共纳入 2021 年 3 月至 2022 年 12 月在哈尔滨医科大学第二附属医院血液透析中心接受 MHD 的 270 例患者。在此期间,收集了 2020 年 3 月至 2021 年 12 月期间患者的基线数据和量表信息。我们记录了 2021 年 3 月至 2022 年 12 月的后续分析结果指标。构建了 5 种机器学习模型(人工神经网络、逻辑回归、岭分类、随机森林和自适应增强)。评估了每个模型的灵敏度(召回率)、特异性、准确性和精度。分析了每个变量的效应量并进行了排序。使用接收器操作特征(AUROC)曲线评估模型。
在纳入的 270 例患者中,105 例发生 AVF 血栓形成(55 例男性和 50 例女性患者;年龄范围 29-79 岁;平均年龄 56.72 岁;标准差 [SDs],±13.10 岁)。相反,165 例患者没有发生 AVF 血栓形成(99 例男性和 66 例女性患者;年龄范围 23-79 岁;平均年龄 53.58 岁;SD ± 13.33 岁)。在观察期间,大约 52.6%的 AVF 患者发生长期并发症。与 AVF 相关的最常见并发症是血栓形成(105 例;38.9%)、动脉瘤形成(27 例;10%)和输出流量过高(10 例;3.7%)。由于血管通路相关并发症,54 例(20%)AVF 患者需要介入治疗。测试集的 AUROC 曲线在 0.858 到 0.903 之间。
在这项研究中,我们开发了五种机器学习模型来预测 AVF 血栓形成的风险,为早期临床干预提供了参考。