Lately, deep learning has been extensively investigated for accelerating dynamic magnetic resonance (MR) imaging, with encouraging progresses achieved. However, without fully sampled reference data for training, current approaches may have limited abilities in recovering fine details or structures. To address this challenge, this paper proposes a self-supervised collaborative learning framework (SelfCoLearn) for accurate dynamic MR image reconstruction from undersampled k-space data. The proposed framework is equipped with three important components, namely, dual-network collaborative learning, reunderampling data augmentation and a specially designed co-training loss. The framework is flexible to be integrated with both data-driven networks and model-based iterative un-rolled networks. Our method has been evaluated on in-vivo dataset and compared it to four state-of-the-art methods. Results show that our method possesses strong capabilities in capturing essential and inherent representations for direct reconstructions from the undersampled k-space data and thus enables high-quality and fast dynamic MR imaging.
翻译:最近,为加速动态磁共振成像,对深层学习进行了广泛调查,取得了令人鼓舞的进展;然而,没有为培训充分抽样的参考数据,目前的方法在恢复细细细节或结构方面能力有限。为了应对这一挑战,本文件提议建立一个自监督的合作学习框架(自科学习框架),以便从未充分抽样的 k-空间数据中准确进行动态磁共振图像重建。拟议框架配备了三个重要组成部分,即双网络协作学习、数据扩增和专门设计的共同培训损失。框架灵活,可以与数据驱动网络和基于模型的迭代非滚动网络相结合。我们的方法已在虚拟数据集中进行了评估,并将其与四种最先进的方法进行了比较。结果显示,我们的方法拥有强大的能力,能够从未充分抽样的 k-空间数据中获取直接重建的基本和固有代表,从而能够实现高质量和快速动态的MR成像。