Please use this identifier to cite or link to this item: http://thuvienso.dut.udn.vn/handle/DUT/5565
Title: MRI synthesis using Deep Learning models
Authors: Le, Hoang Ngoc Han
Keywords: MRI data;Deep Learning;networks (GANs)
Issue Date: 2023
Publisher: Trường Đại học Bách khoa - Đại học Đà Nẵng
Abstract: 
In this report, I introduce the project “MRI Synthesis Using Deep Learning Models” - a
GANs-based generative network synthesizing multiple MRI images from a given single
one. In fact, MRI data acquisition can be time-consuming, prone to motion artifacts, and
limited by hardware constraints. The proposed method leverages the power of generative
adversarial networks (GANs) to generate multi-domain MRI images from a single input
MRI image. Experimental results on IXI and BraTS2020 datasets demonstrate the
effectiveness of the proposed method compared to an existing method in metrics SSIM,
PSNR and NMAE. The synthesized images can serve as valuable resources for medical
professionals in research, education, and clinical applications.
Description: 
69 pages.
URI: http://thuvienso.dut.udn.vn/handle/DUT/5565
Appears in Collections:DA.Công nghệ phần mềm

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