Magnetic resonance imaging (MRI) is one of the noninvasive imaging modalities that can produce high-quality images. However, the scan procedure is relatively slow, which causes patient discomfort and motion artifacts in images. Accelerating MRI hardware is constrained by physical and physiological limitations. A popular alternative approach to accelerated MRI is to undersample the k-space data. While undersampling speeds up the scan procedure, it generates artifacts in the images, and advanced reconstruction algorithms are needed to produce artifact-free images. Recently deep learning has emerged as a promising MRI reconstruction method to address this problem. However, straightforward adoption of the existing deep learning neural network architectures in MRI reconstructions is not usually optimal in terms of efficiency and reconstruction quality. In this work, MRI reconstruction from undersampled data was carried out using an optimized neural network using a novel evolutionary neural architecture search algorithm. Brain and knee MRI datasets show that the proposed algorithm outperforms manually designed neural network-based MR reconstruction models.
翻译:磁共振成像(MRI)是能够产生高质量图像的非侵入成像模式之一。然而,扫描程序相对缓慢,导致患者不适和图像中的运动人工制品。加速磁共振硬件受到物理和生理限制的制约。加速磁共振成像(MRI)的流行替代方法是对K-空间数据进行低温取样。在低温取样程序加快扫描程序的同时,它生成图像中的文物,需要先进的重建算法来制作无文物图像。最近,深刻的学习已经成为一种很有希望的MRI重建方法来解决这一问题。然而,在MRI重建中直接采用现有的深层学习神经网络结构,通常不是效率和重建质量的最佳办法。在这项工作中,利用一个最优化的神经网络,利用一种新型的进化神经结构搜索算法,对未充分抽样的数据进行了重建。脑和膝部磁共振动数据集显示,拟议的算法超越了人工设计的神经网络重建模型。