Dzyubachyk Oleh, Khmelinskii Artem, Plenge Esben, Kok Peter, Snoeks Thomas J A, Poot Dirk H J, Löwik Clemens W G M, Botha Charl P, Niessen Wiro J, van der Weerd Louise, Meijering Erik, Lelieveldt Boudewijn P F
Department of Radiology, Leiden University Medical Center, Leiden, the Netherlands.
Department of Radiology, Leiden University Medical Center, Leiden, the Netherlands; Percuros B.V., Enschede, the Netherlands.
PLoS One. 2014 Sep 29;9(9):e108730. doi: 10.1371/journal.pone.0108730. eCollection 2014.
In small animal imaging studies, when the locations of the micro-structures of interest are unknown a priori, there is a simultaneous need for full-body coverage and high resolution. In MRI, additional requirements to image contrast and acquisition time will often make it impossible to acquire such images directly. Recently, a resolution enhancing post-processing technique called super-resolution reconstruction (SRR) has been demonstrated to improve visualization and localization of micro-structures in small animal MRI by combining multiple low-resolution acquisitions. However, when the field-of-view is large relative to the desired voxel size, solving the SRR problem becomes very expensive, in terms of both memory requirements and computation time. In this paper we introduce a novel local approach to SRR that aims to overcome the computational problems and allow researchers to efficiently explore both global and local characteristics in whole-body small animal MRI. The method integrates state-of-the-art image processing techniques from the areas of articulated atlas-based segmentation, planar reformation, and SRR. A proof-of-concept is provided with two case studies involving CT, BLI, and MRI data of bone and kidney tumors in a mouse model. We show that local SRR-MRI is a computationally efficient complementary imaging modality for the precise characterization of tumor metastases, and that the method provides a feasible high-resolution alternative to conventional MRI.
在小动物成像研究中,当感兴趣的微观结构位置事先未知时,同时需要全身覆盖和高分辨率。在磁共振成像(MRI)中,对图像对比度和采集时间的额外要求常常使得无法直接获取此类图像。最近,一种名为超分辨率重建(SRR)的分辨率增强后处理技术已被证明,通过组合多个低分辨率采集来改善小动物MRI中微观结构的可视化和定位。然而,当视野相对于所需体素大小较大时,从内存需求和计算时间两方面来看,解决SRR问题的成本变得非常高。在本文中,我们介绍了一种新颖的局部SRR方法,旨在克服计算问题,并允许研究人员在全身小动物MRI中有效地探索全局和局部特征。该方法整合了基于关节图谱分割、平面重建和SRR等领域的先进图像处理技术。通过两个案例研究提供了概念验证,这些案例涉及小鼠模型中骨和肾肿瘤的CT、生物发光成像(BLI)和MRI数据。我们表明,局部SRR-MRI是一种计算高效的互补成像方式,可用于精确表征肿瘤转移,并且该方法为传统MRI提供了一种可行的高分辨率替代方案。