An IoT eHealth framework using a U-net backbone with a pretrained SeResNet34 encoder effectively segmented stent structs in intravascular optical coherence tomography and intravenous ultrasound images.
An IoT-based eHealth framework utilizing a deep segmentation network can effectively segment stent structs in intravascular imaging to support remote cardiovascular monitoring and telesurgery.
The Internet of Things (IoT) technology has been widely introduced to the existing medical system. An eHealth system based on IoT devices has gained widespread popularity. In this article, we propose an IoT eHealth framework to provide an autonomous solution for patients with interventional cardiovascular diseases. In this framework, wearable sensors are used to collect a patient's health data, which is daily monitored by a remote doctor. When the monitoring data is abnormal, the remote doctor will ask for image acquisition of the patient's cardiovascular internal conditions. We leverage edge computing to classify these training images by the local base classifier; thereafter, pseudo-labels are generated according to its output. Moreover, a deep segmentation network is leveraged for the segmentation of stent structs in intravascular optical coherence tomography and intravenous ultrasound images of patients. The experimental results demonstrate that remote and local doctors perform real-time visual communication to complete telesurgery. In the experiments, we adopt the U-net backbone with a pretrained SeResNet34 as the encoder to segment the stent structs. Meanwhile, a series of comparative experiments have been conducted to demonstrate the effectiveness of our method based on accuracy, sensitivity, Jaccard, and dice.
Huang et al. (Tue,) conducted a other in Interventional cardiovascular diseases. IoT eHealth framework and deep segmentation network (U-net with SeResNet34) was evaluated on Segmentation accuracy, sensitivity, Jaccard, and dice. An IoT eHealth framework using a U-net backbone with a pretrained SeResNet34 encoder effectively segmented stent structs in intravascular optical coherence tomography and intravenous ultrasound images.