数据采集中可变随机欠采样概率模式的医学图像匹配

Jinseong Jang, Taejoon Eo, Min-Oh Kim, N. Choi, Dongyup Han, Donghyun Kim, D. Hwang
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引用次数: 12

摘要

本文提出了一种随机变概率模式的医学图像匹配欠采样采集方法,该方法可以对组织参数进行定量分析。对于组织参数的高速估计,需要k空间中小于奈奎斯特率的随机欠采样。本文提出了一种利用各种随机概率模式对欠采样数据进行精确参数映射的方法。与固定概率模式相比,该方法具有更好的估计效果,减少了欠采样方案引起的重影效应等伪影。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical image matching using variable randomized undersampling probability pattern in data acquisition
This paper proposes a randomized variable probability pattern in under-sampling acquisition for medical image matching which is a method that can perform the quantitative analysis of tissue parameters. For high-speed estimation of tissue parameters, random under-sampling with less than the Nyquist rate in k-space is required. This study presents an accurate parameter mapping method for under-sampled data by using various randomized probability pattern. In comparison to the fixed probability pattern, the proposed method shows improved estimation results with reduced artifacts such as ghosting effects due to the undersampling scheme.
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