Liver Ultrasound (US) or sonography is popularly used because of its real-time output, low-cost, ease-of-use, portability, and non-invasive nature. Segmentation of real-time liver US is essential for diagnosing and analyzing liver conditions (e.g., hepatocellular carcinoma (HCC)), assisting the surgeons/radiologists in therapeutic procedures. In this thesis, we propose a method using a Pyramid Scene Parsing (PSP) module in tuned neural network backbones to achieve real-time segmentation without compromising the segmentation accuracy. Considering widespread noise in US data and its impact on outcomes, we study the impact of pre-processing and the influence of loss functions on segmentation performance. We have tested our method after annotating a publicly available US dataset containing 2400 images of 8 healthy volunteers (link to the annotated dataset is provided); the results show that the Dense-PSP-UNet model achieves a high Dice coefficient of 0.913 ± 0.024 while delivering a real-time performance of 37 frames per second (FPS).
| Date of Award | 2022 |
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| Original language | American English |
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| Awarding Institution | - HBKU College of Science and Engineering
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- Deep Learning
- Liver Segmentation
- Neural Networks
- Real-time Segmentation
- Ultrasound Segmentation
Dense-PSP-UNet: Lightweight Neural Network for Real-time Liver Ultrasound Segmentation
Ansari, M. (Author). 2022
Student thesis: Master's Dissertation