Department of CS and IT, University of Malakand, Chakdara 18800, Pakistan.
Department of Software Engineering, University of Malakand, Chakdara 18800, Pakistan.
Sensors (Basel). 2024 Sep 9;24(17):5840. doi: 10.3390/s24175840.
Conventional patient monitoring methods require skin-to-skin contact, continuous observation, and long working shifts, causing physical and mental stress for medical professionals. Remote patient monitoring (RPM) assists healthcare workers in monitoring patients distantly using various wearable sensors, reducing stress and infection risk. RPM can be enabled by using the Digital Twins (DTs)-based Internet of Robotic Things (IoRT) that merges robotics with the Internet of Things (IoT) and creates a virtual twin (VT) that acquires sensor data from the physical twin (PT) during operation to reflect its behavior. However, manual navigation of PT causes cognitive fatigue for the operator, affecting trust dynamics, satisfaction, and task performance. Also, operating manual systems requires proper training and long-term experience. This research implements autonomous control in the DTs-based IoRT to remotely monitor patients with chronic or contagious diseases. This work extends our previous paper that required the user to manually operate the PT using its VT to collect patient data for medical inspection. The proposed decision-making algorithm enables the PT to autonomously navigate towards the patient's room, collect and transmit health data, and return to the base station while avoiding various obstacles. Rather than manually navigating, the medical personnel direct the PT to a specific target position using the Menu buttons. The medical staff can monitor the PT and the received sensor information in the pre-built virtual environment (VE). Based on the operator's preference, manual control of the PT is also achievable. The experimental outcomes and comparative analysis verify the efficiency of the proposed system.
传统的患者监测方法需要皮肤接触、持续观察和长时间轮班工作,这会给医疗专业人员带来身体和精神上的压力。远程患者监测(RPM)使用各种可穿戴传感器帮助医疗保健工作者远程监测患者,从而降低压力和感染风险。通过使用基于数字孪生(DT)的机器人物联网(IoRT)可以实现 RPM,该技术将机器人技术与物联网(IoT)融合,创建一个虚拟孪生体(VT),在操作过程中从物理孪生体(PT)获取传感器数据,以反映其行为。然而,手动导航 PT 会导致操作员认知疲劳,影响信任动态、满意度和任务绩效。此外,操作手动系统需要适当的培训和长期经验。本研究在基于 DT 的 IoRT 中实现了自主控制,以远程监测患有慢性或传染性疾病的患者。这项工作扩展了我们之前的论文,该论文要求用户使用其 VT 手动操作 PT 来收集患者数据进行医疗检查。所提出的决策算法使 PT 能够自主导航到患者房间,收集和传输健康数据,并在避免各种障碍物的情况下返回基站。医务人员使用“菜单”按钮将 PT 引导至特定目标位置,而不是手动导航。医务人员可以在预构建的虚拟环境(VE)中监测 PT 和接收的传感器信息。根据操作员的偏好,也可以实现对 PT 的手动控制。实验结果和比较分析验证了所提出系统的效率。