Gudmundson Aaron T, Davies-Jenkins Christopher W, Özdemir İpek, Murali-Manohar Saipavitra, Zöllner Helge J, Song Yulu, Hupfeld Kathleen E, Schnitzler Alfons, Oeltzschner Georg, Stark Craig E L, Edden Richard A E
Russell H. Morgan Department of Radiology and Radiological Science, Johns Hopkins School of Medicine.
F. M. Kirby Research Center for Functional Brain Imaging, Kennedy Krieger Institute.
bioRxiv. 2023 Sep 1:2023.05.08.539813. doi: 10.1101/2023.05.08.539813.
Neural networks are potentially valuable for many of the challenges associated with MRS data. The purpose of this manuscript is to describe the AGNOSTIC dataset, which contains 259,200 synthetic H MRS examples for training and testing neural networks. AGNOSTIC was created using 270 basis sets that were simulated across 18 field strengths and 15 echo times. The synthetic examples were produced to resemble brain data with combinations of metabolite, macromolecule, residual water signals, and noise. To demonstrate the utility, we apply AGNOSTIC to train two Convolutional Neural Networks (CNNs) to address out-of-voxel (OOV) echoes. A Detection Network was trained to identify the point-wise presence of OOV echoes, providing proof of concept for real-time detection. A Prediction Network was trained to reconstruct OOV echoes, allowing subtraction during post-processing. Complex OOV signals were mixed into 85% of synthetic examples to train two separate CNNs for the detection and prediction of OOV signals. AGNOSTIC is available through Dryad and all Python 3 code is available through GitHub. The Detection network was shown to perform well, identifying 95% of OOV echoes. Traditional modeling of these detected OOV signals was evaluated and may prove to be an effective method during linear-combination modeling. The Prediction Network greatly reduces OOV echoes within FIDs and achieved a median log normed-MSE of -1.79, an improvement of almost two orders of magnitude.
神经网络对于许多与磁共振波谱(MRS)数据相关的挑战可能具有重要价值。本手稿的目的是描述AGNOSTIC数据集,该数据集包含259,200个用于训练和测试神经网络的合成氢MRS示例。AGNOSTIC是使用270个基集创建的,这些基集在18种场强和15个回波时间上进行了模拟。合成示例是通过代谢物、大分子、残余水信号和噪声的组合生成的,以类似于脑数据。为了证明其效用,我们应用AGNOSTIC训练两个卷积神经网络(CNN)来处理体素外(OOV)回波。一个检测网络被训练用于识别OOV回波的逐点存在,为实时检测提供概念验证。一个预测网络被训练用于重建OOV回波,以便在后期处理中进行减法运算。复杂的OOV信号被混入85%的合成示例中,以训练两个单独的CNN用于检测和预测OOV信号。AGNOSTIC可通过Dryad获取,所有Python 3代码可通过GitHub获取。检测网络表现良好,能识别95%的OOV回波。对这些检测到的OOV信号的传统建模进行了评估,并且在进行线性组合建模时可能被证明是一种有效的方法。预测网络大大减少了自由感应衰减(FID)内的OOV回波,实现了中位数对数归一化均方误差为-1.79,提高了近两个数量级。