Mathematical, Computational and Systems Biology, University of California, Postal Address: 1400 Biological Sciences III, Irvine, CA 92697, United States.
Department of Psychology, University of California Riverside, Riverside, California, United States.
Neuroimage. 2022 Jun;253:119063. doi: 10.1016/j.neuroimage.2022.119063. Epub 2022 Mar 8.
Recent advances in diffusion-weighted imaging have enabled us to probe the microstructure of even gray matter non-invasively. However, these advanced multi-shell protocols are often not included in large-scale studies as they significantly increase scan time. In this study, we investigated whether one set of multi-shell diffusion metrics commonly used in gray matter (as derived from Neurite Orientation Dispersion and Density Imaging, NODDI) provide enough additional information over typical tensor and volume metrics to justify the increased acquisition time, using the cognitive aging framework in the human hippocampus as a testbed. We first demonstrated that NODDI metrics are robust and reliable by replicating previous findings from our lab in a larger population of 79 younger (20.41 ± 1.89 years, 46 females) and 75 older (73.56 ± 6.26 years, 45 females) adults, showing that these metrics in the hippocampal subfields are sensitive to age and memory performance. We then asked how these subfield specific hippocampal NODDI metrics compared with standard tensor metrics and volume in predicting age and memory ability. We discovered that both NODDI and tensor measures separately predicted age and cognition in comparable capacities. However, integrating these modalities together considerably increased the predictive power of our logistic models, indicating that NODDI and tensor measures may be capturing independent microstructural information. We use these findings to encourage neuroimaging data collection consortiums to include a multi-shell diffusion sequence in their protocols since existing NODDI measures (and potential future multi-shell measures) may be able to capture microstructural variance that is missed by traditional approaches, even in studies exclusively examining gray matter.
最近,扩散加权成像的进展使我们能够无创地探测灰质的微观结构。然而,这些先进的多壳层协议通常不包括在大规模研究中,因为它们会显著增加扫描时间。在这项研究中,我们研究了一套常用的灰质多壳层扩散指标(源自神经丝取向分散和密度成像,NODDI)是否提供了足够的额外信息,以证明增加采集时间是合理的,使用人类海马体的认知老化框架作为测试平台。我们首先通过在一个更大的人群(79 名年轻参与者,年龄 20.41±1.89 岁,女性 46 名;75 名年老参与者,年龄 73.56±6.26 岁,女性 45 名)中复制我们实验室的先前发现,证明了 NODDI 指标的稳健性和可靠性,表明这些海马亚区的指标对年龄和记忆表现敏感。然后,我们询问这些特定于亚区的海马 NODDI 指标与标准张量指标和体积在预测年龄和记忆能力方面的比较。我们发现,NODDI 和张量指标都能分别以类似的能力预测年龄和认知能力。然而,将这些模态整合在一起可以大大提高我们逻辑回归模型的预测能力,这表明 NODDI 和张量指标可能捕捉到了独立的微观结构信息。我们利用这些发现鼓励神经影像学数据采集联盟在其方案中包括多壳层扩散序列,因为现有的 NODDI 指标(和潜在的未来多壳层指标)可能能够捕捉到传统方法错过的微观结构变化,即使在专门研究灰质的研究中也是如此。