Jung Soozy, Lee Hongpyo, Ryu Kanghyun, Song Jae Eun, Park Mina, Moon Won-Jin, Kim Dong-Hyun
Department of Electrical and Electronic Engineering, Yonsei University, Seoul, Republic of Korea.
Department of Radiology, Gangnam Severance Hospital, Yonsei University College of Medicine, Seoul, Republic of Korea.
Magn Reson Med. 2021 Jan;85(1):380-389. doi: 10.1002/mrm.28407. Epub 2020 Jul 19.
To demonstrate robust myelin water fraction (MWF) mapping using an artificial neural network (ANN) with multi-echo gradient-echo (GRE) signal.
Multi-echo gradient-echo signals simulated with a three-pool exponential model were used to generate the training data set for the ANN, which was designed to yield the MWF. We investigated the performance of our proposed ANN for various conditions using both numerical simulations and in vivo data. Simulations were conducted with various SNRs to investigate the performance of the ANN. In vivo data with high spatial resolutions were applied in the analyses, and results were compared with MWFs derived by the nonlinear least-squares algorithm using a complex three-pool exponential model.
The network results for the simulations show high accuracies against noise compared with nonlinear least-squares MWFs: RMS-error value of 5.46 for the nonlinear least-squares MWF and 3.56 for the ANN MWF at an SNR of 150 (relative gain = 34.80%). These effects were also found in the in vivo data, with reduced SDs in the region-of-interest analyses. These effects of the ANN demonstrate the feasibility of acquiring high-resolution myelin water images.
The simulation results and in vivo data suggest that the ANN facilitates more robust MWF mapping in multi-echo gradient-echo sequences compared with the conventional nonlinear least-squares method.
利用具有多回波梯度回波(GRE)信号的人工神经网络(ANN)来展示稳健的髓磷脂水分数(MWF)成像。
用三池指数模型模拟的多回波梯度回波信号用于生成ANN的训练数据集,该数据集旨在得出MWF。我们使用数值模拟和体内数据研究了所提出的ANN在各种条件下的性能。通过各种信噪比进行模拟以研究ANN的性能。将具有高空间分辨率的体内数据应用于分析,并将结果与使用复杂三池指数模型的非线性最小二乘法得出的MWF进行比较。
模拟的网络结果显示,与非线性最小二乘MWF相比,对噪声具有较高的准确性:在信噪比为150时,非线性最小二乘MWF的均方根误差值为5.46,ANN MWF为3.56(相对增益 = 34.80%)。在体内数据中也发现了这些效果,在感兴趣区域分析中标准差降低。ANN的这些效果证明了获取高分辨率髓磷脂水图像的可行性。
模拟结果和体内数据表明,与传统的非线性最小二乘法相比,ANN在多回波梯度回波序列中有助于更稳健的MWF成像。