Current spatiotemporal deep learning approaches to Magnetic Resonance Fingerprinting (MRF) build artefact-removal models customised to a particular k-space subsampling pattern which is used for fast (compressed) acquisition. This may not be useful when the acquisition process is unknown during training of the deep learning model and/or changes during testing time. This paper proposes an iterative deep learning plug-and-play reconstruction approach to MRF which is adaptive to the forward acquisition process. Spatiotemporal image priors are learned by an image denoiser i.e. a Convolutional Neural Network (CNN), trained to remove generic white gaussian noise (not a particular subsampling artefact) from data. This CNN denoiser is then used as a data-driven shrinkage operator within the iterative reconstruction algorithm. This algorithm with the same denoiser model is then tested on two simulated acquisition processes with distinct subsampling patterns. The results show consistent de-aliasing performance against both acquisition schemes and accurate mapping of tissues' quantitative bio-properties. Software available: https://github.com/ketanfatania/QMRI-PnP-Recon-POC
翻译:磁共振指纹(MRF)目前对磁共振指纹(MRF)的深度深层学习方法(MRF)正在建立定制为特定K-空间子抽样模式的动画除尘模型,用于快速(压缩)获取(压缩)获取。当在深层学习模型和(或)测试期间的变化培训过程中未知的获取过程时,这也许没有用处。本文建议对MRF采取一种适应前方获取过程的迭接深深学习插头和游戏重建方法。 SpatiototePoporal图像前方通过图像解析器(即:Convolual Neural Neural网络(CNN)学习,经过培训可以从数据中去除通用的白色双层伽辛噪音(而不是特定的子取样亚麻黄)。该CNNy Denoiser随后在迭接合的重建算法中作为数据驱动的缩缩算器使用。随后在两个模拟的获取过程上用不同的子取样模式进行测试。结果显示,对采购计划和组织定量生物丙基图的准确绘图的反射效果。软件:http://MA/Retastaphan-MuketQQ。