论文标题
HACA3:多站点MR图像协调的统一方法
HACA3: A Unified Approach for Multi-site MR Image Harmonization
论文作者
论文摘要
缺乏标准化是磁共振成像(MR)成像中的一个突出问题。由于硬件和采集参数的差异,这通常会导致获取图像的不希望对比度变化。近年来,已经提出了基于图像合成的MR协调,以补偿不希望的对比变化。尽管现有方法取得了成功,但我们认为可以做出三个重大改进。首先,大多数现有的方法是基于以下假设:同一主题的多对比度MR图像共享相同的解剖结构。该假设值得怀疑,因为不同的MR对比度专门强调不同的解剖特征。其次,这些方法通常需要固定的MR对比度进行训练(例如T1加权和T2加权图像),从而限制了它们的适用性。最后,现有方法通常对成像伪影敏感。在本文中,我们介绍了基于注意力的对比,解剖学和人工制品意识(HACA3)的协调,这是一种解决这三个问题的新方法。 HACA3结合了一个解剖融合模块,该模块解释了MR对比之间固有的解剖学差异。此外,HACA3对成像伪像也很强,可以训练并应用于任何一组MR对比度。 HACA3是从21个具有不同现场优势,扫描仪平台和采集协议的21个站点获得的不同MR数据集开发和评估的。实验表明,HACA3在多个图像质量指标下实现最先进的性能。我们还证明了HACA3在下游任务上的适用性和多功能性,包括白质病变分割和纵向体积分析。
The lack of standardization is a prominent issue in magnetic resonance (MR) imaging. This often causes undesired contrast variations in the acquired images due to differences in hardware and acquisition parameters. In recent years, image synthesis-based MR harmonization with disentanglement has been proposed to compensate for the undesired contrast variations. Despite the success of existing methods, we argue that three major improvements can be made. First, most existing methods are built upon the assumption that multi-contrast MR images of the same subject share the same anatomy. This assumption is questionable, since different MR contrasts are specialized to highlight different anatomical features. Second, these methods often require a fixed set of MR contrasts for training (e.g., both T1-weighted and T2-weighted images), limiting their applicability. Lastly, existing methods are generally sensitive to imaging artifacts. In this paper, we present Harmonization with Attention-based Contrast, Anatomy, and Artifact Awareness (HACA3), a novel approach to address these three issues. HACA3 incorporates an anatomy fusion module that accounts for the inherent anatomical differences between MR contrasts. Furthermore, HACA3 is also robust to imaging artifacts and can be trained and applied to any set of MR contrasts. HACA3 is developed and evaluated on diverse MR datasets acquired from 21 sites with varying field strengths, scanner platforms, and acquisition protocols. Experiments show that HACA3 achieves state-of-the-art performance under multiple image quality metrics. We also demonstrate the applicability and versatility of HACA3 on downstream tasks including white matter lesion segmentation and longitudinal volumetric analyses.