Madabhushi Anant, Udupa Jayaram K
Department of Biomedical Engineering, Rutgers University, 617 Bowser Road, Rm. 102, BME Bldg., Piscataway, NJ 08854, USA.
IEEE Trans Med Imaging. 2005 May;24(5):561-76. doi: 10.1109/TMI.2004.843256.
Image intensity standardization is a postprocessing method designed for correcting acquisition-to-acquisition signal intensity variations (nonstandardness) inherent in magnetic resonance (MR) images. Inhomogeneity correction is a process used to suppress the low frequency background nonuniformities (inhomogeneities) of the image domain that exist in MR images. Both these procedures have important implications in MR image analysis. The effects of these postprocessing operations on improvement of image quality in isolation has been well documented. However, the combined effects of these two processes on MR images and how the processes influence each other have not been studied thus far. In this paper, we evaluate the effect of inhomogeneity correction followed by standardization and vice-versa on MR images in order to determine the best sequence to follow for enhancing image quality. We conducted experiments on several clinical and phantom data sets (nearly 4000 three-dimensional MR images were analyzed) corresponding to four different MRI protocols. Different levels of artificial nonstandardness, and different models and levels of artificial background inhomogeneity were used in these experiments. Our results indicate that improved standardization can be achieved by preceding it with inhomogeneity correction. There is no statistically significant difference in image quality obtained between the results of standardization followed by correction and that of correction followed by standardization from the perspective of inhomogeneity correction. The correction operation is found to bias the effect of standardization. We demonstrate this bias both qualitatively and quantitatively by using two different methods of inhomogeneity correction. We also show that this bias in standardization is independent of the specific inhomogeneity correction method used. The effect of this bias due to correction was also seen in magnetization transfer ratio (MTR) images, which are naturally endowed with the standardness property. Standardization, on the other hand, does not seem to influence the correction operation. It is also found that longer sequences of repeated correction and standardization operations do not considerably improve image quality. These results were found to hold for the clinical and the phantom data sets, for different MRI protocols, for different levels of artificial nonstandardness, for different models and levels of artificial inhomogeneity, for different correction methods, and for images that were endowed with inherent standardness as well as for those that were standardized by using the intensity standardization method. Overall, we conclude that inhomogeneity correction followed by intensity standardization is the best sequence to follow from the perspective of both image quality and computational efficiency.
图像强度标准化是一种后处理方法,旨在校正磁共振(MR)图像中固有的采集间信号强度变化(非标准化)。不均匀性校正是一种用于抑制MR图像中存在的图像域低频背景不均匀性(不均匀性)的过程。这两个过程在MR图像分析中都具有重要意义。这些后处理操作对单独改善图像质量的影响已有充分记录。然而,到目前为止,这两个过程对MR图像的综合影响以及它们如何相互影响尚未得到研究。在本文中,我们评估了先进行不均匀性校正然后进行标准化以及反之对MR图像的影响,以确定增强图像质量的最佳顺序。我们对对应于四种不同MRI协议的几个临床和体模数据集进行了实验(分析了近4000幅三维MR图像)。这些实验中使用了不同程度的人为非标准化以及不同模型和程度的人为背景不均匀性。我们的结果表明,在进行强度标准化之前先进行不均匀性校正可以实现更好的标准化。从不均匀性校正的角度来看,先标准化后校正和先校正后标准化的结果在图像质量上没有统计学上的显著差异。发现校正操作会使标准化的效果产生偏差。我们通过使用两种不同的不均匀性校正方法从定性和定量两方面证明了这种偏差。我们还表明,这种标准化偏差与所使用的特定不均匀性校正方法无关。在自然具有标准化特性的磁化传递比(MTR)图像中也可以看到这种由校正引起的偏差。另一方面,标准化似乎不会影响校正操作。还发现,重复进行校正和标准化操作的较长序列并不能显著提高图像质量。这些结果在临床和体模数据集中、对于不同的MRI协议、对于不同程度的人为非标准化、对于不同模型和程度的人为不均匀性、对于不同的校正方法以及对于具有固有标准化的图像以及通过强度标准化方法进行标准化的图像均成立。总体而言,我们得出结论,从图像质量和计算效率两方面来看,先进行不均匀性校正然后进行强度标准化是最佳顺序。