Comparison of preprocessing methods for diffusion tensor estimation in brain imaging

Andres Felipe Lopez Lopera, Hernán Darío Vargas Cardona, G. Daza-Santacoloma, Mauricio A Álvarez, Á. Orozco
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引用次数: 1

Abstract

The Magnetic Diffusion Images or Diffusion Weighted Images (DWIs) are based on Magnetic Resonance (MR) techniques to study water particles' diffusion in human brains. These images are used for determining which neuron pathways were used for the communication among the principal regions of the brain by estimating the diffusion tensors (DTs). DTs contain all the information of water diffusion for each individual voxel of the image. The filtering of these images is relevant to remove the level of noise of each image and improve the DTs estimation. Moreover, the smoothing methods may be used to reduce noise in medical images. However, certain smoothing filters may blur important features such as edges and also affect structures, so it is essential to preserve the fine features using anisotropic diffusion filtering. Therefore, we need to preprocess this type of brain images by removing noise, smoothing surfaces and enhancing edges, are necessary to improve the results of estimating the DTs. This paper formalizes and compares the advantages and disadvantages obtained by applying different kinds of preprocessing techniques for removing noise, smoothing surfaces and enhancing edges techniques include Median Filter (MF), Perona-Malik algorithm and Gaussian filter (GF). Then, in order to determine the potential benefits of the mentioned pre-processing, the DTs are estimated with and without using the filter stage. In addition, several metrics are used for the evaluation and comparison of the DWI preprocessing methods. Finally, we discuss the quality of these methods and we also define what are the appropriate conditions for each preprocessing method.
脑成像中弥散张量估计预处理方法的比较
磁扩散图像或扩散加权图像(dwi)是基于磁共振(MR)技术来研究水粒子在人脑中的扩散。通过估计扩散张量(DTs),这些图像用于确定哪些神经元通路用于大脑主要区域之间的通信。dt包含了图像中每个个体素的所有水扩散信息。这些图像的滤波是相关的,以消除每个图像的噪声水平,提高DTs估计。此外,平滑方法可用于降低医学图像中的噪声。然而,某些平滑滤波器可能会模糊重要的特征,如边缘,也会影响结构,因此必须使用各向异性扩散滤波来保留精细特征。因此,我们需要对这类脑图像进行预处理,去除噪声,平滑表面和增强边缘,以提高估计dt的结果。本文形式化并比较了采用中值滤波(MF)、Perona-Malik算法和高斯滤波(GF)等不同预处理技术去除噪声、平滑表面和增强边缘所获得的优缺点。然后,为了确定上述预处理的潜在好处,使用和不使用滤波阶段估计dt。此外,还使用了几个指标对DWI预处理方法进行了评价和比较。最后,我们讨论了这些方法的质量,并定义了每种预处理方法的适当条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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