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Bladder volume estimation deep learning algorithm using depth dependent coefficients of ultrasound signals
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- Title
- Bladder volume estimation deep learning algorithm using depth dependent coefficients of ultrasound signals
- Issued Date
- 2022-10-27
- Citation
- 24th International Congress on Acoustics, ICA 2022, pp.1 - 4
- Type
- Conference Paper
- ISSN
- 2226-7808
- Abstract
-
Bladder volume estimation in patients with dysuria is performed through ultrasound imaging. Estimation of bladder volume with bladder ultrasound images differs from the actual volume by an average of 18% when the bladder is assumed to have a spherical shape without considering the difference in a bladder shape along a bladder volume. To overcome this issue, we demonstrate a deep learning-based bladder volume estimation network that is capable of reducing volume estimation errors as the shape of the bladder changes. The proposed network synthesizes a few scanline images into an ultrasound image with a large number of scanlines using the combination of GAN(Pix2Pix) and U-Net architectures. The network shows an accuracy of 93% in terms of IoU, demonstrating the applicability of the bladder ultrasound wearable system for the segmentation of bladder regions with a few scanlines. © ICA 2022.All rights reserved
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- Publisher
- International Commission for Acoustics (ICA)
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Related Researcher
- Hwang, Jae Youn황재윤
-
Department of Electrical Engineering and Computer Science
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