论文标题

用深度学习相关的MR指纹识别的脑转移的快速3D多参数映射

Rapid 3D Multiparametric Mapping of Brain Metastases with Deep Learning-Based Phase-Sensitive MR Fingerprinting

论文作者

Yu, Victoria Y., Tringale, Kathryn R., Otazo, Ricardo, Cohen, Ouri

论文摘要

在MR指纹(MRF)重建中,测量的数据与模拟信号进行了模拟以提取定量组织参数。这种方法的关键缺点是指数增加了计算时间用于映射多个参数的时间。以前,证明了一种称为无人机的深度学习(DL)重建方法通过将幅度序列信号映射到基础组织参数来克服此约束。然而,来自幅度图像的松弛计易于信号零交叉或非零噪声均值中的歧义引起的错误。这项研究的目的是开发快速获取和定量方法,以使能够从复杂数据中准确地绘制准确的多参数组织映射。开发了基于优化的EPI的MRF序列以及新型的平稳敏感性定量,从而允许使用实评估的神经网络重建复合物测量的数据并提供该相的附加定量图。幻影实验证明了所提出的方法的准确性。在健康受试者中,与以前的无人机方法的比较表明,对于相位敏感的方法,对已知T1和T2值的保真度提高了。通过使用常规定量易感映射算法处理估计的相位图,我们证明了质子密度,T1,T2,发射机B1+场和定量敏感性图的同时定量的可行性。健康志愿者和转移性脑癌受试者的体内实验用于说明该技术在治疗反应评估和肿瘤表征中的潜在应用。

In MR fingerprinting (MRF) reconstruction, measured data is pattern-matched to simulated signals to extract quantitative tissue parameters. A critical drawback to this approach is the exponentially increasing compute time for mapping of multiple parameters. Previously, a deep learning (DL) reconstruction method called DRONE was shown to overcome this constraint by mapping the magnitude time-series signal to the underlying tissue parameters. However, relaxometry from magnitude images is susceptible to errors arising from ambiguities in the zero crossing of the signal or the non-zero noise mean. The aim of this study is to develop rapid acquisition and quantification methods to enable accurate multiparametric tissue mapping from complex data. An optimized EPI based MRF sequence is developed along with a novel phasesensitive DL quantification allowing the use of real-valued neural networks to reconstruct complex measured data and providing an additional quantitative map of the phase. Phantom experiments demonstrate the accuracy of the proposed approach. A comparison to previous DRONE methods in a healthy subject shows improved fidelity to known T1 and T2 values for the phase-sensitive approach. By processing the estimated phase map with conventional quantitative susceptibility mapping algorithms, we demonstrate the feasibility of simultaneous quantification of proton density, T1, T2, transmitter B1+ field and the quantitative susceptibility maps. In vivo experiments in a healthy volunteer and a subject with metastatic brain cancer are used to illustrate potential applications of this technology for treatment response assessment and tumor characterization.

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