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使用非局部均值降噪方法提高超声图像质量,以实现甲状腺结节的精确质量控制和准确诊断。

Improvement of Ultrasound Image Quality Using Non-Local Means Noise-Reduction Approach for Precise Quality Control and Accurate Diagnosis of Thyroid Nodules.

机构信息

Department of Integrative Medicine, Major in Digital Healthcare, Yonsei University College of Medicine, Unju-ro, Gangman-gu, Seoul 06229, Korea.

Woori Yonsei Internal Medicine, 370, Anyang-ro, Manan-gu, Anyang-si 13991, Korea.

出版信息

Int J Environ Res Public Health. 2022 Oct 22;19(21):13743. doi: 10.3390/ijerph192113743.

Abstract

This study aimed to improve the quality of ultrasound images by modeling an algorithm using a non-local means (NLM) noise-reduction approach to achieve precise quality control and accurate diagnosis of thyroid nodules. An ATS-539 multipurpose phantom was used to scan the dynamic range and gray-scale measurement regions, which are most closely related to the noise level. A convex-type 3.5-MHz frequency probe is used for scanning according to ATS regulations. In addition, ultrasound images of human thyroid nodules were obtained using a linear probe. An algorithm based on the NLM noise-reduction approach was modeled based on the intensity and relative distance of adjacent pixels in the image, and conventional filtering methods for image quality improvement were designed as a comparison group. When the NLM algorithm was applied to the image, the contrast-to-noise ratio and coefficient of variation values improved by 28.62% and 19.54 times, respectively, compared with those of the noisy images. In addition, the image improvement efficiency of the NLM algorithm was superior to that of conventional filtering methods. Finally, the applicability of the NLM algorithm to human thyroid images using a high-frequency linear probe was validated. We demonstrated the efficiency of the proposed algorithm in ultrasound images and the possibility of capturing improved images in the dynamic range and gray-scale region for quality control parameters.

摘要

本研究旨在通过建模一种算法来提高超声图像的质量,该算法使用非局部均值(NLM)降噪方法来实现甲状腺结节的精确质量控制和准确诊断。使用 ATS-539 多功能体模扫描与噪声水平最密切相关的动态范围和灰度测量区域。根据 ATS 规定,使用凸型 3.5MHz 频率探头进行扫描。此外,还使用线性探头获得了人甲状腺结节的超声图像。基于图像中相邻像素的强度和相对距离,基于 NLM 降噪方法的算法被建模,并设计了用于图像质量改进的传统滤波方法作为对照组。当将 NLM 算法应用于图像时,与噪声图像相比,对比度噪声比和变异系数值分别提高了 28.62%和 19.54 倍。此外,NLM 算法的图像改进效率优于传统滤波方法。最后,验证了 NLM 算法在使用高频线性探头的人甲状腺图像中的适用性。我们证明了所提出的算法在超声图像中的效率,并展示了在质量控制参数的动态范围和灰度区域中捕获改进图像的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/973b/9654012/07baeef673db/ijerph-19-13743-g001.jpg

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