학술논문

Thrombus Segmentation in Ultrasound Deep Vein Thrombosis (DVT) Images using VGG16 and UNet based on Denoising Filters
Document Type
Conference
Source
2023 IEEE International Biomedical Instrumentation and Technology Conference (IBITeC) Biomedical Instrumentation and Technology Conference (IBITeC), 2023 IEEE International. :129-134 Nov, 2023
Subject
Bioengineering
Communication, Networking and Broadcast Technologies
Computing and Processing
Engineering Profession
General Topics for Engineers
Signal Processing and Analysis
Image segmentation
Ultrasonic imaging
Image analysis
Veins
Noise reduction
Manuals
Medical services
deep vein thrombosis
ultrasound image
segmentation
pre-trained VGG16 and UNet
denoising filter
Language
Abstract
Deep Vein Thrombosis (DVT) is a disease that occurs when a thrombus forms within the deep veins. This thrombus can disrupt normal blood flow and lead to severe issues if left untreated. The dataset used in this research consists of 2D ultrasound images of thrombus from 5 patients with DVT. Medical specialists used ultrasound equipment to gather and document the dataset. A medical practitioner performed the manual labeling of ultrasound thrombus images. Manual thrombus diagnosis requires a considerable amount of time, and the accuracy of thrombus image analysis relies on specialized doctors. Hence, an automatic thrombus diagnosis is needed for DVT patients to shorten the time and enhance the accuracy of thrombus image analysis. This research proposes thrombus segmentation in ultrasound images using pre-trained VGG16 and UNet model based on denoising filters. The encoder for the UNet model in this segmentation model is a pre-trained VGG16 model. In this study, five denoising filters are utilized. Based on the conducted experiments, the Gaussian filter yielded the most optimal results for thrombus segmentation with an accuracy of 99.166% and a loss value of 0.0269 for the UNet model. Furthermore, the pre-trained VGG16 and UNet model’s accuracy was 99.222%, and the loss value was 0.284. Thrombus prediction tests using the UNet model resulted in a mean IoU of 77.087%, a mean Dice coefficient of 0.8608, and a mean Hausdorff distance of 3.44. Meanwhile, thrombus prediction tests using the pre-trained VGG16 and UNet model produced a mean IoU of 88.298%, a mean Dice coefficient of 0.8784, and a mean Hausdorff distance of 3.07. As a result, utilizing VGG16 as the encoder in the UNet architecture may enhance accuracy when segmenting.