Department of Neurology, Washington University School of Medicine, St. Louis, MO, United States.
Department of Pediatrics and the Masonic Institute for the Developing Brain, Institute of Child Development, University of Minnesota, Minneapolis, MN, United States; Department of Psychiatry, Oregon Health and Science University, Portland, OR, United States.
Neuroimage. 2022 Jun;253:119091. doi: 10.1016/j.neuroimage.2022.119091. Epub 2022 Mar 11.
T1- and T2-weighted (T1w and T2w) images are essential for tissue classification and anatomical localization in Magnetic Resonance Imaging (MRI) analyses. However, these anatomical data can be challenging to acquire in non-sedated neonatal cohorts, which are prone to high amplitude movement and display lower tissue contrast than adults. As a result, one of these modalities may be missing or of such poor quality that they cannot be used for accurate image processing, resulting in subject loss. While recent literature attempts to overcome these issues in adult populations using synthetic imaging approaches, evaluation of the efficacy of these methods in pediatric populations and the impact of these techniques in conventional MR analyses has not been performed. In this work, we present two novel methods to generate pseudo-T2w images: the first is based in deep learning and expands upon previous models to 3D imaging without the requirement of paired data, the second is based in nonlinear multi-atlas registration providing a computationally lightweight alternative. We demonstrate the anatomical accuracy of pseudo-T2w images and their efficacy in existing MR processing pipelines in two independent neonatal cohorts. Critically, we show that implementing these pseudo-T2w methods in resting-state functional MRI analyses produces virtually identical functional connectivity results when compared to those resulting from T2w images, confirming their utility in infant MRI studies for salvaging otherwise lost subject data.
T1 加权和 T2 加权(T1w 和 T2w)图像是磁共振成像(MRI)分析中组织分类和解剖定位的基础。然而,在非镇静新生儿队列中,这些解剖数据采集具有挑战性,因为他们容易出现高幅度运动,并且组织对比度比成年人低。因此,这些模态中的一种可能缺失或质量很差,无法用于精确的图像处理,导致研究对象丢失。虽然最近的文献试图使用合成成像方法来克服成人人群中的这些问题,但尚未对这些方法在儿科人群中的功效以及这些技术对常规 MR 分析的影响进行评估。在这项工作中,我们提出了两种生成伪 T2w 图像的新方法:第一种方法基于深度学习,并扩展到以前的 3D 成像模型,而无需配对数据;第二种方法基于非线性多图谱配准,提供了一种计算量较轻的替代方法。我们在两个独立的新生儿队列中证明了伪 T2w 图像的解剖准确性及其在现有 MR 处理管道中的功效。重要的是,我们表明,在静息态功能 MRI 分析中实施这些伪 T2w 方法时,与 T2w 图像产生的功能连接结果几乎完全相同,这证实了它们在婴儿 MRI 研究中的实用性,可挽救否则丢失的研究对象数据。