School of Medical Technology, Beijing Institute of Technology, Beijing, China.
Center for Biomedical Imaging Research, Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing, China.
Magn Reson Med. 2023 Nov;90(5):1979-1989. doi: 10.1002/mrm.29782. Epub 2023 Jul 6.
To develop and evaluate a deep neural network (DeepFittingNet) for T /T estimation of the most commonly used cardiovascular MR mapping sequences to simplify data processing and improve robustness.
DeepFittingNet is a 1D neural network composed of a recurrent neural network (RNN) and a fully connected (FCNN) neural network, in which RNN adapts to the different number of input signals from various sequences and FCNN subsequently predicts A, B, and T of a three-parameter model. DeepFittingNet was trained using Bloch-equation simulations of MOLLI and saturation-recovery single-shot acquisition (SASHA) T mapping sequences, and T -prepared balanced SSFP (T -prep bSSFP) T mapping sequence, with reference values from the curve-fitting method. Several imaging confounders were simulated to improve robustness. The trained DeepFittingNet was tested using phantom and in-vivo signals, and compared to the curve-fitting algorithm.
In testing, DeepFittingNet performed T /T estimation of four sequences with improved robustness in inversion-recovery T estimation. The mean bias in phantom T and T between the curve-fitting and DeepFittingNet was smaller than 30 and 1 ms, respectively. Excellent agreements between both methods was found in the left ventricle and septum T /T with a mean bias <6 ms. There was no significant difference in the SD of both the left ventricle and septum T /T between the two methods.
DeepFittingNet trained with simulations of MOLLI, SASHA, and T -prep bSSFP performed T /T estimation tasks for all these most used sequences. Compared with the curve-fitting algorithm, DeepFittingNet improved the robustness for inversion-recovery T estimation and had comparable performance in terms of accuracy and precision.
开发并评估一种用于最常用心血管 MR 映射序列的 T/T 估计的深度神经网络(DeepFittingNet),以简化数据处理并提高稳健性。
DeepFittingNet 是一种由递归神经网络(RNN)和全连接(FCNN)神经网络组成的 1D 神经网络,其中 RNN 适应于来自各种序列的不同数量的输入信号,而 FCNN 随后预测三参数模型的 A、B 和 T。DeepFittingNet 使用 Bloch 方程模拟 MOLLI 和饱和恢复单次采集(SASHA)T 映射序列以及 T 准备平衡稳态自由进动(T-prep bSSFP)T 映射序列进行训练,并参考曲线拟合方法的参考值。模拟了几种成像混杂因素以提高稳健性。使用 Phantom 和体内信号测试训练有素的 DeepFittingNet,并与曲线拟合算法进行比较。
在测试中,DeepFittingNet 对四种序列进行了 T/T 估计,在反转恢复 T 估计中具有提高的稳健性。 Phantom 和 DeepFittingNet 之间的 T 和 T 的平均偏差分别小于 30 和 1 ms。在左心室和室间隔 T/T 中,两种方法之间的一致性非常好,平均偏差<6 ms。两种方法的左心室和室间隔 T/T 的 SD 之间没有显着差异。
使用 MOLLI、SASHA 和 T-prep bSSFP 的模拟训练的 DeepFittingNet 为所有这些最常用的序列执行 T/T 估计任务。与曲线拟合算法相比,DeepFittingNet 提高了反转恢复 T 估计的稳健性,并且在准确性和精度方面具有可比的性能。