一种机器学习方法用于识别血液透析患者使用光容积脉搏波的血管通路通畅:一项试点研究。

IF 1.6 3区 医学 Q3 PERIPHERAL VASCULAR DISEASE Journal of Vascular Access Pub Date : 2024-12-26 DOI:10.1177/11297298241304467
Po-Kai Yang, Danyal Shahmirzadi, Hong-Xu Zhuo, Chuan-Yu Chang, Chin-Chung Tseng, Ming-Long Yeh, Wen-Fong Wang
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引用次数: 0

摘要

导读:血管通路(VA)对血液透析患者至关重要,其功能障碍是降低生活质量甚至威胁生命的主要并发症。室内外动脉通畅程度不仅难以预测,而且难以实时预测。为了克服这一挑战,本研究旨在开发一种机器学习方法,利用从两个食指指尖获取的光容积脉搏波(PPG)信号来预测6个月的原发性通畅(PP)。材料和方法:从2023年4月至2023年12月在单一中心接受动静脉瘘或动静脉移植作为原发性VA的血液透析患者中获得PPG信号。针对PPG可穿戴设备,我们提出了一种高效、快速生成PPG信号形态特征的方法,以识别不同的患者群体。对于生成的特征,使用独立样本t检验来评估其对机器学习的有效性。然后,利用k近邻(kNN)和支持向量机(SVM)两种监督学习算法,进一步对VA通畅度进行提前识别。结果:该研究涉及31例患者,其中14例有6个月的PP, 17例没有。使用kNN算法,机器学习基于PPG信号将患者分为两组,准确率为82%,而SVM算法的准确率为82%。结论:我们的方法可以提供可靠的室间隔通畅分类。利用提出的PPG信号特征预测VA 6个月PP是有效的。
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A machine learning approach for identification of vascular access patency in hemodialysis patients using photoplethysmography: A pilot study.

Introduction: Vascular access (VA) is essential for patients with hemodialysis, and its dysfunction is a major complication that can reduce quality of life or even threaten life. VA patency is not only difficult to predict on an individual basis, but also challenging to predict in real-time. To overcome this challenge, this study aimed to develop a machine learning approach to predict 6-month primary patency (PP) using photoplethysmography (PPG) signals acquired from the tips of both index fingers.

Materials and methods: PPG signals were obtained from hemodialysis patients who received an arteriovenous fistula or an arteriovenous graft as primary VA in a single center from April 2023 to December 2023. With PPG wearables, we propose a method that can efficiently and quickly generate the morphological features of the PPG signal to recognize different groups of patients. For the generated features, an independent sample t-test was used to evaluate their effectiveness for machine learning. Then, two supervised learning algorithms, k-nearest neighbors (kNN) and support vector machine (SVM), are used further to identify VA patency in advance.

Results: The study involved 31 patients, of whom 14 had 6-month PP, while 17 did not. Using the kNN algorithm, machine learning classified patients into two groups with 82% precision based on PPG signals, while the SVM algorithm showed a precision of 82%.

Conclusions: Our approach can provide reliable classifications for VA patency. It is effective to use the proposed PPG signal features to predict 6-month PP of VA.

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来源期刊
Journal of Vascular Access
Journal of Vascular Access 医学-外周血管病
CiteScore
3.40
自引率
31.60%
发文量
181
审稿时长
6-12 weeks
期刊介绍: The Journal of Vascular Access (JVA) is issued six times per year; it considers the publication of original manuscripts dealing with clinical and laboratory investigations in the fast growing field of vascular access. In addition reviews, case reports and clinical trials are welcome, as well as papers dedicated to more practical aspects covering new devices and techniques. All contributions, coming from all over the world, undergo the peer-review process. The Journal of Vascular Access is divided into independent sections, each led by Editors of the highest scientific level: • Dialysis • Oncology • Interventional radiology • Nutrition • Nursing • Intensive care Correspondence related to published papers is also welcome.
期刊最新文献
Retraction: Novel electrospun polyurethane grafts for vascular access in rats. Feasibility and Safety of bedside placement of tunneled dialysis catheters: A systematic review and meta-analysis of prevalence. Retained foreign body in radial artery: Endovascular retrieval and salvage of a hemodialysis arteriovenous fistula. Role of renal vascular coordinator on access flow dysfunction: A quality improvement initiative on improving patency rate. Ultrasound and fluoroscopy co-guided removal of extravascular stripped central line guidewire fragments.
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