论文标题
XQSM:具有八度卷积和噪声正则神经网络的定量敏感性映射
xQSM: Quantitative Susceptibility Mapping with Octave Convolutional and Noise Regularized Neural Networks
论文作者
论文摘要
定量敏感性映射(QSM)是一种有价值的磁共振成像(MRI)对比机制,已显示出广泛的临床应用。但是,由于QSM的图像重建是由于其替代偶极倒置过程而具有挑战性的。在这项研究中,通过将改进的最新八度卷积层引入U-NET主链的新的QSM重建方法,即XQSM。使用峰信号与噪声比(PSNR),结构相似性(SSIM)和利益区域测量值将XQSM方法与最近在U-NET的最近基于U-NET和基于常规化的方法进行了比较。来自数值幻影,模拟的人脑,四个体内健康的人类受试者,一个多发性硬化患者,胶质母细胞瘤患者以及健康的小鼠脑的结果表明,XQSM导致了抑制的伪像,而不是传统的敏感性对比,尤其是在Ironrich Deep Gray Matter Inarive的情况下,尤其是Ironrich Deep Gray Matter Inaria。 XQSM方法还大大缩短了使用常规迭代方法的几分钟的重建时间,仅几秒钟。
Quantitative susceptibility mapping (QSM) is a valuable magnetic resonance imaging (MRI) contrast mechanism that has demonstrated broad clinical applications. However, the image reconstruction of QSM is challenging due to its ill-posed dipole inversion process. In this study, a new deep learning method for QSM reconstruction, namely xQSM, was designed by introducing modified state-of-the-art octave convolutional layers into the U-net backbone. The xQSM method was compared with recentlyproposed U-net-based and conventional regularizationbased methods, using peak signal to noise ratio (PSNR), structural similarity (SSIM), and region-of-interest measurements. The results from a numerical phantom, a simulated human brain, four in vivo healthy human subjects, a multiple sclerosis patient, a glioblastoma patient, as well as a healthy mouse brain showed that the xQSM led to suppressed artifacts than the conventional methods, and enhanced susceptibility contrast, particularly in the ironrich deep grey matter region, than the original U-net, consistently. The xQSM method also substantially shortened the reconstruction time from minutes using conventional iterative methods to only a few seconds.