T2 prime mapping from highly undersampled data using compressed sensing with patch based low rank penalty

Dongwook Lee, E. Kim, Huisu Yoon, Sunghong Park, J. C. Ye
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引用次数: 2

Abstract

In magnetic resonance (MR) imaging, T2 and T2 star (T2*) relaxation times represent tissue properties, which can be quantified by specific imaging sequences. Especially, T2 prime (T2') that can be derived from T2 and T2* are clinically valuable for delineation of areas with increased oxygen extraction fraction in acute stroke. However, there are limitations in this method because it requires acquisition of many images for the generation of T2 and T2* relaxation time maps. In particular, time saving is the most important factor in acquisition of MRI in acute ischemic stroke because therapy should be given to patients as soon as possible. Therefore, to reduce the acquisition time of MR data, we use a compressed sensing algorithm using patch based low rank penalty for the reconstruction of T2 and T2* weighted images to obtain the T2 prime map. Our results showed that significant acceleration in T2' image acquisition is possible using the proposed method.
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利用基于补丁的低秩惩罚压缩感知从高度欠采样数据中映射T2素数
在磁共振(MR)成像中,T2和T2星(T2*)弛豫时间代表组织性质,可以通过特定的成像序列来量化。特别是,T2' (T2')可以由T2和T2*衍生,在临床上对急性脑卒中中氧提取分数增加的区域的描绘有价值。然而,由于该方法需要获取许多图像来生成T2和T2*松弛时间图,因此存在局限性。特别是,节省时间是获得急性缺血性脑卒中MRI最重要的因素,因为应该尽快给予患者治疗。因此,为了减少MR数据的采集时间,我们采用基于patch的低秩惩罚压缩感知算法对T2和T2*加权图像进行重构,得到T2素数图。我们的结果表明,使用所提出的方法可以显著加速T2的图像采集。
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