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数据驱动的压缩感知重建对乳腺 DCE-MRI 定量药代动力学分析的影响。

The Influence of Data-Driven Compressed Sensing Reconstruction on Quantitative Pharmacokinetic Analysis in Breast DCE MRI.

机构信息

Department of Medical Physics, University of Wisconsin-Madison, 1111 Highland Avenue, Madison, WI 53705, USA.

Department of Radiology, University of Wisconsin-Madison, 600 Highland Avenue, Madison, WI 53792, USA.

出版信息

Tomography. 2022 Jun 14;8(3):1552-1569. doi: 10.3390/tomography8030128.

Abstract

Radial acquisition with MOCCO reconstruction has been previously proposed for high spatial and temporal resolution breast DCE imaging. In this work, we characterize MOCCO across a wide range of temporal contrast enhancement in a digital reference object (DRO). Time-resolved radial data was simulated using a DRO with lesions in different PK parameters. The under sampled data were reconstructed at 5 s temporal resolution using the data-driven low-rank temporal model for MOCCO, compressed sensing with temporal total variation (CS-TV) and more conventional low-rank reconstruction (PCB). Our results demonstrated that MOCCO was able to recover curves with K values ranging from 0.01 to 0.8 min and fixed V = 0.3, where the fitted results are within a 10% bias error range. MOCCO reconstruction showed less impact on the selection of different temporal models than conventional low-rank reconstruction and the greater error was observed with PCB. CS-TV showed overall underestimation in both K and V. For the Monte-Carlo simulations, MOCCO was found to provide the most accurate reconstruction results for curves with intermediate lesion kinetics in the presence of noise. Initial in vivo experiences are reported in one patient volunteer. Overall, MOCCO was able to provide reconstructed time-series data that resulted in a more accurate measurement of PK parameters than PCB and CS-TV.

摘要

MOCCO 重建的径向采集先前已被提出用于高空间和时间分辨率的乳腺 DCE 成像。在这项工作中,我们在数字参考对象 (DRO) 中对广泛的时间对比增强进行了 MOCCO 特征描述。使用具有不同 PK 参数的病变的 DRO 模拟了时分辨率的径向数据。使用数据驱动的低秩时间模型对欠采样数据进行 MOCCO 重建,该模型的时间分辨率为 5s,压缩感知的时间全变差 (CS-TV) 和更传统的低秩重建 (PCB)。我们的结果表明,MOCCO 能够恢复 K 值范围从 0.01 到 0.8 分钟且固定 V = 0.3 的曲线,拟合结果在 10%偏差误差范围内。与传统的低秩重建相比,MOCCO 重建对不同时间模型的选择影响较小,而 PCB 则观察到更大的误差。CS-TV 对 K 和 V 的总体低估。对于蒙特卡罗模拟,在存在噪声的情况下,MOCCO 被发现对于中等病变动力学的曲线提供了最准确的重建结果。在一名志愿者中报告了初步的体内经验。总体而言,MOCCO 能够提供重建的时间序列数据,比 PCB 和 CS-TV 更能准确地测量 PK 参数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f5e9/9227412/09ca73fe4609/tomography-08-00128-g001.jpg

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