利用图像处理技术增强MRI膝关节图像

Justin Bernard A. Carlos, Francisco Emmanuel T. Munsayac, N. Bugtai, R. Baldovino
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引用次数: 1

摘要

在生物医学领域,磁共振成像(MRI)是一种广泛用于产生人体各部位内部图像的方法。对这个过程并不陌生的一个常见的身体部位是膝盖。尽管它产生了清晰的图像,但它仍然容易受到称为技术工件的缺陷的影响。在各种类型的技术伪影中,运动伪影是MRI图像中常见的缺陷之一。这些缺陷在膝关节MRI图像上的存在可能导致诊断和治疗患者膝盖受伤的错误。这可能会导致患者膝盖状况的恶化,这将使他们付出更多的代价。在本研究中,开发了一种图像增强程序,可以最大限度地减少技术伪影,特别是运动伪影对膝关节MRI图像的影响。这利用了计算机视觉技术,如灰度转换、边缘检测和形态变换。使用含有运动伪影的MRI膝关节图像作为输入。对于程序的输出,它是与相应的原始版本相比显示的图像的增强版本。此外,Python是用于开发程序的平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI Knee Image Enhancement using Image Processing
In the biomedical field, magnetic resonance imaging (MRI) is a process widely used to produce images of internal parts of various parts of the body. One common part of the body that is no stranger to this process is the knee. Despite the clear images that it produces, it is still vulnerable to defects known as technical artifacts. Among the various types of technical artifacts, motion artifacts are one of the many common defects encountered in MRI images. The presence of such defects in knee MRI images could lead to errors in diagnosing and treating a patient’s knee in case that it is injured. This could result into the worsening of the condition of the patient’s knee which would cost them even more. In this research, an image enhancement program was developed that could minimize the effects of technical artifacts, particularly motion artifacts, on knee MRI images. This utilized computer vision techniques like grayscale conversion, edge detection, and morphological transformation. MRI knee images containing motion artifacts were used as input. For the output of the program, it was the enhanced versions of the images displayed against their corresponding original versions. Moreover, Python was the platform used in developing the program.
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