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基于两个频率参数的超声图像ResNet深度学习模型去噪性能评估

Evaluation of Denoising Performance of ResNet Deep Learning Model for Ultrasound Images Corresponding to Two Frequency Parameters.

作者信息

Kang Hyekyoung, Park Chanrok, Yang Hyungjin

机构信息

Department of Radiological Science, College of Health & Medical, Shingu University, 377, Gwangmyeong-ro, Jungwon-gu, Seongnam-si 13174, Republic of Korea.

Department of Radiological Science, College of Health Science, Eulji University, 553, Sanseong-daero, Sujeong-gu, Seongnam-si 13135, Republic of Korea.

出版信息

Bioengineering (Basel). 2024 Jul 16;11(7):723. doi: 10.3390/bioengineering11070723.

Abstract

Ultrasound imaging is widely used for accurate diagnosis due to its noninvasive nature and the absence of radiation exposure, which is achieved by controlling the scan frequency. In addition, Gaussian and speckle noises degrade image quality. To address this issue, filtering techniques are typically used in the spatial domain. Recently, deep learning models have been increasingly applied in the field of medical imaging. In this study, we evaluated the effectiveness of a convolutional neural network-based residual network (ResNet) deep learning model for noise reduction when Gaussian and speckle noises were present. We compared the results with those obtained from conventional filtering techniques. A dataset of 500 images was prepared, and Gaussian and speckle noises were added to create noisy input images. The dataset was divided into training, validation, and test sets in an 8:1:1 ratio. The ResNet deep learning model, comprising 16 residual blocks, was trained using optimized hyperparameters, including the learning rate, optimization function, and loss function. For quantitative analysis, we calculated the normalized noise power spectrum, peak signal-to-noise ratio, and root mean square error. Our findings showed that the ResNet deep learning model exhibited superior noise reduction performance to median, Wiener, and median-modified Wiener filter algorithms.

摘要

超声成像因其无创性和无辐射暴露的特点而被广泛用于准确诊断,这是通过控制扫描频率实现的。此外,高斯噪声和斑点噪声会降低图像质量。为了解决这个问题,通常在空间域中使用滤波技术。最近,深度学习模型在医学成像领域的应用越来越多。在本研究中,我们评估了基于卷积神经网络的残差网络(ResNet)深度学习模型在存在高斯噪声和斑点噪声时的降噪效果。我们将结果与传统滤波技术的结果进行了比较。准备了一个包含500张图像的数据集,并添加高斯噪声和斑点噪声以创建有噪声的输入图像。数据集按照8:1:1的比例分为训练集、验证集和测试集。由16个残差块组成的ResNet深度学习模型使用优化的超参数进行训练,包括学习率、优化函数和损失函数。为了进行定量分析,我们计算了归一化噪声功率谱、峰值信噪比和均方根误差。我们的研究结果表明,ResNet深度学习模型在降噪性能上优于中值滤波、维纳滤波和中值修正维纳滤波算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e28/11274249/09216eebfe50/bioengineering-11-00723-g001.jpg

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