Department of SurgeryChang-Hua HospitalMinistry of Health and Welfare Changhua 513007 Taiwan.
Institute of Information Management, National Yang Ming Chiao Tung University Hsinchu 300093 Taiwan.
IEEE J Transl Eng Health Med. 2023 Jan 5;11:375-383. doi: 10.1109/JTEHM.2023.3234207. eCollection 2023.
Intelligent models for predicting hemodialysis-related complications, i.e., hypotension and the deterioration of the quality or obstruction of the AV fistula, based on machine learning (ML) methods were established to offer early warnings to medical staff and give them enough time to provide pre-emptive treatment. A novel integration platform collected data from the Internet of Medical Things (IoMT) at a dialysis center and inspection results from electronic medical records (EMR) to train ML algorithms and build models. The selection of the feature parameters was implemented using Pearson's correlation method. Then, the eXtreme Gradient Boost (XGBoost) algorithm was chosen to create the predictive models and optimize the feature choice. 75% of collected data are used as a training dataset and the other 25% are used as a testing dataset. We adopted the prediction precision and recall rate of hypotension and AV fistula obstruction to measure the effectiveness of the predictive models. These rates were sufficiently high at approximately 71%-90%. In the context of hemodialysis, hypotension and the deterioration of the quality or obstruction of the arteriovenous (AV) fistula affect treatment quality and patient safety and may lead to a poor prognosis. Our prediction models with high accuracies can provide excellent references and signals for clinical healthcare service providers. -With the integrated dataset collected from IoMT and EMR, the superior predictive results of our models for complications of hemodialysis patients are demonstrated. We believe, after enough clinical tests are implemented as planned, these models can assist the healthcare team in making appropriate preparations in advance or adjusting the medical procedures to avoid these adverseevents.
基于机器学习 (ML) 方法,建立了预测与血液透析相关的并发症(如低血压和动静脉瘘质量恶化或阻塞)的智能模型,为医务人员提供预警,并为他们提供足够的时间进行预防性治疗。一个新颖的集成平台从透析中心的医疗物联网 (IoMT) 和电子病历 (EMR) 的检查结果中收集数据,以训练 ML 算法和构建模型。特征参数的选择是使用皮尔逊相关系数法实现的。然后,选择极端梯度提升 (XGBoost) 算法来创建预测模型并优化特征选择。收集数据的 75% 用于训练数据集,其余 25% 用于测试数据集。我们采用低血压和动静脉瘘阻塞的预测精度和召回率来衡量预测模型的有效性。这些比率高达 71%-90%。在血液透析中,低血压和动静脉瘘质量恶化或阻塞会影响治疗质量和患者安全,并可能导致预后不良。我们的预测模型具有较高的准确率,可以为临床医疗服务提供者提供极好的参考和信号。-通过从 IoMT 和 EMR 收集的集成数据集,展示了我们的模型对血液透析患者并发症的卓越预测结果。我们相信,在按计划进行足够的临床测试后,这些模型可以帮助医疗团队提前做好适当的准备,或调整医疗程序以避免这些不良事件。