IEEE Trans Med Imaging. 2020 Apr;39(4):1170-1183. doi: 10.1109/TMI.2019.2945521. Epub 2019 Oct 4.
Magnetic resonance imaging (MRI) is being increasingly utilized to assess, diagnose, and plan treatment for a variety of diseases. The ability to visualize tissue in varied contrasts in the form of MR pulse sequences in a single scan provides valuable insights to physicians, as well as enabling automated systems performing downstream analysis. However, many issues like prohibitive scan time, image corruption, different acquisition protocols, or allergies to certain contrast materials may hinder the process of acquiring multiple sequences for a patient. This poses challenges to both physicians and automated systems since complementary information provided by the missing sequences is lost. In this paper, we propose a variant of generative adversarial network (GAN) capable of leveraging redundant information contained within multiple available sequences in order to generate one or more missing sequences for a patient scan. The proposed network is designed as a multi-input, multi-output network which combines information from all the available pulse sequences and synthesizes the missing ones in a single forward pass. We demonstrate and validate our method on two brain MRI datasets each with four sequences, and show the applicability of the proposed method in simultaneously synthesizing all missing sequences in any possible scenario where either one, two, or three of the four sequences may be missing. We compare our approach with competing unimodal and multi-modal methods, and show that we outperform both quantitatively and qualitatively.
磁共振成像(MRI)正被越来越多地用于评估、诊断和规划各种疾病的治疗。在单次扫描中以 MR 脉冲序列的形式呈现的不同对比度的组织可视化能力为医生提供了有价值的见解,同时还使执行下游分析的自动化系统成为可能。然而,许多问题,如扫描时间过长、图像损坏、不同的采集协议,或对某些对比材料的过敏,可能会阻碍为患者获取多个序列的过程。这对医生和自动化系统都提出了挑战,因为缺失序列提供的互补信息丢失了。在本文中,我们提出了一种生成对抗网络(GAN)的变体,它能够利用多个可用序列中包含的冗余信息,为患者扫描生成一个或多个缺失的序列。所提出的网络被设计为一个多输入、多输出网络,它结合了所有可用脉冲序列的信息,并在单个前向传递中合成缺失的信息。我们在两个具有四个序列的脑 MRI 数据集上演示和验证了我们的方法,并展示了所提出的方法在任何可能的情况下同时合成所有缺失序列的适用性,在这些情况下,四个序列中可能缺失一个、两个或三个。我们将我们的方法与竞争的单模态和多模态方法进行了比较,并表明我们在定量和定性方面都表现出色。