Guo Lin, Remedios Samuel W, Korotcov Alexandru, Pham Dzung L
Henry M. Jackson Foundation for the Advancement of Military Medicine, Bethesda, MD, USA.
Department of Computer Science, Johns Hopkins University, Baltimore, MD, USA.
Proc SPIE Int Soc Opt Eng. 2024 Feb;12930. doi: 10.1117/12.3016094. Epub 2024 Apr 2.
Animal models are pivotal in disease research and the advancement of therapeutic methods. The translation of results from these models to clinical applications is enhanced by employing technologies which are consistent for both humans and animals, like Magnetic Resonance Imaging (MRI), offering the advantage of longitudinal disease evaluation without compromising animal welfare. However, current animal MRI techniques predominantly employ 2D acquisitions due to constraints related to organ size, scan duration, image quality, and hardware limitations. While 3D acquisitions are feasible, they are constrained by longer scan times and ethical considerations related to extended sedation periods. This study evaluates the efficacy of SMORE, a self-supervised deep learning super-resolution approach, to enhance the through-plane resolution of anisotropic 2D MRI scans into isotropic resolutions. SMORE accomplishes this by self-training with high-resolution in-plane data, thereby eliminating domain discrepancies between the input data and external training sets. The approach is tested on mouse MRI scans acquired across a range of through-plane resolutions. Experimental results show SMORE substantially outperforms traditional interpolation methods. Additionally, we find that pre-training offers a promising approach to reduce processing time without compromising performance.
动物模型在疾病研究和治疗方法的进步中起着关键作用。通过采用对人类和动物都适用的技术,如磁共振成像(MRI),可以加强从这些模型到临床应用的结果转化,这种技术具有在不损害动物福利的情况下进行纵向疾病评估的优势。然而,由于与器官大小、扫描持续时间、图像质量和硬件限制相关的约束,当前的动物MRI技术主要采用二维采集。虽然三维采集是可行的,但它们受到更长扫描时间以及与延长镇静期相关的伦理考量的限制。本研究评估了一种自监督深度学习超分辨率方法SMORE的功效,该方法可将各向异性二维MRI扫描的层面分辨率提高到各向同性分辨率。SMORE通过使用高分辨率平面内数据进行自我训练来实现这一点,从而消除输入数据与外部训练集之间的域差异。该方法在一系列层面分辨率下采集的小鼠MRI扫描上进行了测试。实验结果表明,SMORE显著优于传统插值方法。此外,我们发现预训练提供了一种在不影响性能的情况下减少处理时间的有前景的方法。