Department of Electrical Engineering, Vanderbilt University, Nashville, TN 37235-1679, USA.
Neuroimage. 2011 Feb 14;54(4):2854-66. doi: 10.1016/j.neuroimage.2010.11.047. Epub 2010 Nov 20.
Modern MRI image processing methods have yielded quantitative, morphometric, functional, and structural assessments of the human brain. These analyses typically exploit carefully optimized protocols for specific imaging targets. Algorithm investigators have several excellent public data resources to use to test, develop, and optimize their methods. Recently, there has been an increasing focus on combining MRI protocols in multi-parametric studies. Notably, these have included innovative approaches for fusing connectivity inferences with functional and/or anatomical characterizations. Yet, validation of the reproducibility of these interesting and novel methods has been severely hampered by the limited availability of appropriate multi-parametric data. We present an imaging protocol optimized to include state-of-the-art assessment of brain function, structure, micro-architecture, and quantitative parameters within a clinically feasible 60-min protocol on a 3-T MRI scanner. We present scan-rescan reproducibility of these imaging contrasts based on 21 healthy volunteers (11 M/10 F, 22-61 years old). The cortical gray matter, cortical white matter, ventricular cerebrospinal fluid, thalamus, putamen, caudate, cerebellar gray matter, cerebellar white matter, and brainstem were identified with mean volume-wise reproducibility of 3.5%. We tabulate the mean intensity, variability, and reproducibility of each contrast in a region of interest approach, which is essential for prospective study planning and retrospective power analysis considerations. Anatomy was highly consistent on structural acquisition (1-5% variability), while variation on diffusion and several other quantitative scans was higher (<10%). Some sequences are particularly variable in specific structures (ASL exhibited variation of 28% in the cerebral white matter) or in thin structures (quantitative T2 varied by up to 73% in the caudate) due, in large part, to variability in automated ROI placement. The richness of the joint distribution of intensities across imaging methods can be best assessed within the context of a particular analysis approach as opposed to a summary table. As such, all imaging data and analysis routines have been made publicly and freely available. This effort provides the neuroimaging community with a resource for optimization of algorithms that exploit the diversity of modern MRI modalities. Additionally, it establishes a baseline for continuing development and optimization of multi-parametric imaging protocols.
现代 MRI 图像处理方法已经对人脑进行了定量、形态计量学、功能和结构评估。这些分析通常利用针对特定成像目标精心优化的协议。算法研究人员有几个极好的公共数据资源可用于测试、开发和优化他们的方法。最近,人们越来越关注将 MRI 方案结合用于多参数研究。值得注意的是,这些方法包括融合连通性推断与功能和/或解剖特征的创新方法。然而,由于缺乏适当的多参数数据,这些有趣和新颖方法的可重复性验证受到严重阻碍。我们提出了一种成像方案,该方案经过优化,可在 3-T MRI 扫描仪上的临床可行的 60 分钟方案中包括对大脑功能、结构、微观结构和定量参数的最新评估。我们根据 21 名健康志愿者(11 名男性/10 名女性,22-61 岁)展示了这些成像对比的扫描-再扫描可重复性。皮质灰质、皮质白质、脑室脑脊髓液、丘脑、壳核、尾状核、小脑灰质、小脑白质和脑干的平均体积再现性为 3.5%。我们以感兴趣区域方法为基础列出了每个对比的平均强度、可变性和再现性,这对于前瞻性研究规划和回顾性功率分析考虑至关重要。解剖结构在结构采集上高度一致(1-5%的可变性),而扩散和其他几种定量扫描的变化更高(<10%)。由于自动 ROI 放置的变异性,一些序列在特定结构(ASL 在大脑白质中表现出 28%的变化)或在薄结构(定量 T2 在尾状核中变化高达 73%)中特别可变。跨成像方法的强度联合分布的丰富性可以在特定分析方法的上下文中进行最佳评估,而不是在汇总表中进行评估。因此,所有成像数据和分析例程都已公开并免费提供。这项工作为神经影像学社区提供了一个资源,用于优化利用现代 MRI 方式多样性的算法。此外,它为继续开发和优化多参数成像方案奠定了基础。