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Feasibility of similarity coefficient map in improving quality of magnetic resonance images of spleen

机译:提高脾脏磁共振图像质量的相似系数系数的可行性

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The purpose of this paper is to investigate the feasibility of similarity coefficient map (SCM) in improving the quality of MR images of spleen by improving signal to noise ratio (SNR) and contrast to noise ratio (CNR), revealing fine structures buried in noise, and integrating the information of each individual image in a series together into one image. To achieve these goals, in vivo experiments were conducted based on the data sets acquired using 12-echo T2∗ weighted imaging. Preliminary results have demonstrated that compared with the original images, SCM images can (1) improve SNR by 14.50% to 104.44% mainly depending on the SNR in original images, (2) improve CNR by 82.95% to 103.52%, mainly depending on the choice of reference tissue, (3) reveal fine structures hidden in the original images such as tiny veins, and (4) offer a new type of contrast by integrating information of all original images. Moreover, It suggests that the higher the SNR of the reference, the higher the CNR of the resulting SCM images. In conclusion, SCM is a powerful post processing technique for a series of MR images of spleen with varying acquisition parameters. It can improve SNR and CNR, increase the amount of anatomical information by revealing previous invisible fine structures, and produce images with a new type of contrast that integrates information of all original images together.
机译:本文的目的是探讨相似度系数图(SCM)通过提高信号到噪声比(SNR)和与噪声比对比(CNR)对比,揭示埋入噪声的细结构来改善脾脏MR图像质量的可行性,并将每个单独图像的信息一起集成到一个图像中。为了实现这些目标,在体内实验中基于使用12-echo T2 *加权成像所获得的数据集进行。初步结果表明,与原始图像相比,SCM图像可以(1)将SNR提高14.50%至104.44%,主要取决于原始图像中的SNR,(2)将CNR提高82.95%至103.52%,主要取决于参考组织的选择,(3)揭示隐藏在诸如Tiny Veins的原始图像中的细结构,(4)通过整合所有原始图像的信息提供新的对比度。此外,它表明参考的SNR越高,所得SCM图像的CNR越高。总之,SCM是具有不同采集参数的一系列脾脏MR图像的强大后处理技术。它可以改善SNR和CNR,通过揭示先前的隐形细结构来增加解剖信息的量,并产生具有新型对比度的图像,其将所有原始图像的信息集成在一起。

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