Cooper Mitchell A, Nguyen Thanh D, Xu Bo, Prince Martin R, Elad Michael, Wang Yi, Spincemaille Pascal
Department of Biomedical Engineering, Cornell University, Ithaca, New York, USA.
Department of Radiology, Weill Cornell Medical College, New York, New York, USA.
Magn Reson Med. 2015 Dec;74(6):1587-97. doi: 10.1002/mrm.25551. Epub 2014 Dec 6.
High spatial-temporal four-dimensional imaging with large volume coverage is necessary to accurately capture and characterize liver lesions. Traditionally, parallel imaging and adapted sampling are used toward this goal, but they typically result in a loss of signal to noise. Furthermore, residual under-sampling artifacts can be temporally varying and complicate the quantitative analysis of contrast enhancement curves needed for pharmacokinetic modeling. We propose to overcome these problems using a novel patch-based regularization approach called Patch-based Reconstruction Of Under-sampled Data (PROUD).
PROUD produces high frame rate image reconstructions by exploiting the strong similarities in spatial patches between successive time frames to overcome the severe k-space under-sampling. To validate PROUD, a numerical liver perfusion phantom was developed to characterize contrast-to-noise ratio (CNR) performance compared with a previously proposed method, TRACER. A second numerical phantom was constructed to evaluate the temporal footprint and lag of PROUD and TRACER reconstructions. Finally, PROUD and TRACER were evaluated in a cohort of five liver donors.
In the CNR phantom, PROUD, compared with TRACER, improved peak CNR by 3.66 times while maintaining or improving temporal fidelity. In vivo, PROUD demonstrated an average increase in CNR of 60% compared with TRACER.
The results presented in this work demonstrate the feasibility of using a combination of patch based image constraints with temporal regularization to provide high SNR, high temporal frame rate and spatial resolution four dimensional imaging.
为了准确捕捉和表征肝脏病变,需要具有大体积覆盖的高时空四维成像。传统上,为实现这一目标采用并行成像和自适应采样,但它们通常会导致信噪比降低。此外,残余的欠采样伪影可能随时间变化,使药代动力学建模所需的对比增强曲线的定量分析变得复杂。我们建议使用一种名为基于补丁的欠采样数据重建(PROUD)的新型基于补丁的正则化方法来克服这些问题。
PROUD通过利用连续时间帧之间空间补丁的强相似性来克服严重的k空间欠采样,从而产生高帧率图像重建。为了验证PROUD,开发了一个数值肝脏灌注模型,以与先前提出的方法TRACER相比,表征对比噪声比(CNR)性能。构建了第二个数值模型,以评估PROUD和TRACER重建的时间足迹和延迟。最后,在一组五名肝脏供体中对PROUD和TRACER进行了评估。
在CNR模型中,与TRACER相比,PROUD将峰值CNR提高了3.66倍,同时保持或提高了时间保真度。在体内,与TRACER相比,PROUD的CNR平均提高了60%。
这项工作中呈现的结果证明了将基于补丁的图像约束与时间正则化相结合以提供高信噪比、高时间帧率和空间分辨率的四维成像的可行性。