Pan Telung
Department of Information Management, National Yunlin University of Science and Technology, Yunlin, Taiwan.
J Multidiscip Healthc. 2025 Aug 29;18:5313-5326. doi: 10.2147/JMDH.S531248. eCollection 2025.
Arteriovenous fistulas are critical for maintaining effective blood circulation during hemodialysis. Undetected fistula dysfunction can lead to severe complications or death. Existing monitoring approaches rely heavily on hospital-based assessment, creating challenges for early intervention in home care settings.
This study developed an AIoT-based home care device that enables patients to monitor their fistula function at home. The device captures vascular sound signals through a microphone and analyses them using a convolutional neural network model trained on 245 labelled audio samples. The device provides real-time alerts using LED and audio indicators and transmits data to the hospital information system via LoRa wireless communication. Additionally, user feedback was gathered through qualitative interviews based on the Technology Acceptance Model (TAM).
The neural network achieved an F1-score of 1.00 for detecting blockages (n=33), 0.93 for slight blockages (n=54), and 1.00 for normal conditions (n=158). Wireless signal transmission was reliable over distances ranging from 6.17 to 8.68 km with RSSI values between -107.2 dBm and -97.2 dBm. TAM-based interviews showed that patients found the device easy to operate and were willing to recommend its use to others.
The proposed system offers a reliable, non-invasive, and user-friendly solution for early detection of fistula dysfunction. It enhances patient safety and facilitates real-time communication with medical institutions, making it a promising tool for remote hemodialysis management.
动静脉内瘘对于维持血液透析期间的有效血液循环至关重要。未被检测到的内瘘功能障碍可能导致严重并发症或死亡。现有的监测方法严重依赖基于医院的评估,给家庭护理环境中的早期干预带来了挑战。
本研究开发了一种基于物联网的家庭护理设备,使患者能够在家中监测其内瘘功能。该设备通过麦克风捕捉血管声音信号,并使用在245个标记音频样本上训练的卷积神经网络模型对其进行分析。该设备使用LED和音频指示器提供实时警报,并通过LoRa无线通信将数据传输到医院信息系统。此外,基于技术接受模型(TAM)通过定性访谈收集了用户反馈。
神经网络在检测堵塞(n = 33)时的F1分数为1.00,在检测轻微堵塞(n = 54)时为0.93,在正常情况(n = 158)时为1.00。在距离范围为6.17至8.68公里、RSSI值在-107.2 dBm至-97.2 dBm之间时,无线信号传输可靠。基于TAM的访谈表明,患者发现该设备易于操作,并愿意向他人推荐使用。
所提出的系统为早期检测内瘘功能障碍提供了一种可靠、无创且用户友好的解决方案。它提高了患者安全性,并促进了与医疗机构的实时通信,使其成为远程血液透析管理的一个有前途的工具。