Deep Learning-Based Parameter Mapping with Uncertainty Estimation for Fat Quantification using Accelerated Free-Breathing Radial MRI.

Shu-Fu Shih, Sevgi Gokce Kafali, Tess Armstrong, Xiaodong Zhong, Kara L Calkins, Holden H Wu
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引用次数: 5

Abstract

Deep learning has been applied to remove artifacts from undersampled MRI and to replace time-consuming signal fitting in quantitative MRI, but these have usually been treated as separate tasks, which does not fully exploit the shared information. This work proposes a new two-stage framework that completes these two tasks in a concerted approach and also estimates the pixel-wise uncertainty levels. Results from accelerated free-breathing radial MRI for liver fat quantification demonstrate that the proposed framework can achieve high image quality from undersampled radial data, high accuracy for liver fat quantification, and detect uncertainty caused by noisy input data. The proposed framework achieved 3-fold acceleration to <1 min scan time and reduced the computational time for signal fitting to <100 ms/slice in free-breathing liver fat quantification.

基于深度学习的参数映射与不确定性估计,用于加速自由呼吸径向MRI脂肪量化。
深度学习已被应用于从欠采样MRI中去除伪影,并取代定量MRI中耗时的信号拟合,但这些通常被视为单独的任务,不能充分利用共享信息。这项工作提出了一个新的两阶段框架,以协调一致的方法完成这两项任务,并估计像素不确定性水平。加速自由呼吸径向MRI肝脏脂肪量化结果表明,该框架可以从欠采样的径向数据中获得高图像质量,肝脏脂肪量化精度高,并检测噪声输入数据引起的不确定性。提出的框架实现了3倍的加速
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