Center for Imaging of Neurodegenerative Diseases, Department of Veterans Affairs Medical Center, San Francisco, CA 94121, USA.
Neuroimage. 2010 Aug 1;52(1):186-97. doi: 10.1016/j.neuroimage.2010.04.033. Epub 2010 Apr 18.
Structural magnetic resonance imaging (MRI) of brain tissue loss and physiological imaging of regional cerebral blood flow (rCBF) can provide complimentary information for the characterization of brain disorders, such as Alzheimer's disease (AD) but studies into gains in classification power for AD using these image modalities jointly have been limited. Our aim in this study was to determine the joint contribution of structural and perfusion-weighted imaging for the classification of AD in a cross-sectional study using an integrated multimodality MRI processing framework and a cortical surface-based analysis approach. We used logistic regression analysis to determine sequentially the value of cortical thickness, rCBF, and cortical thickness and rCBF jointly for classification for diagnosis of AD compared to controls. We further tested the extent to which cortical thinning and reduced rCBF explain individually or together variability in dementia severity. Separate analysis of structural MRI and perfusion-weighted MRI data yielded the well-established pattern of cortical thinning and rCBF reduction in AD, affecting predominantly temporo-parietal brain regions. Using structural MRI and perfusion-weighted MRI jointly indicated that cortical thinning dominated the classification of AD and controls without significant contributions from rCBF. However there was also a positive interaction between reduced rCBF and cortical thinning in the right superior temporal sulcus, implying that structural and physiological brain alterations in AD can be complementary. Compared to reduced rCBF, regional cortical thinning better explained the variability in dementia severity. In conclusion, structural brain alterations compared to physiological variations are the dominant features of MRI in AD.
脑组织结构磁共振成像(MRI)和局部脑血流(rCBF)的生理成像可以为脑疾病(如阿尔茨海默病(AD))的特征提供补充信息,但联合使用这些成像方式提高 AD 分类能力的研究有限。我们的研究目的是使用集成的多模态 MRI 处理框架和皮质表面分析方法,在横断面研究中确定结构和灌注加权成像对 AD 分类的联合贡献。我们使用逻辑回归分析,确定皮质厚度、rCBF 以及皮质厚度和 rCBF 联合用于 AD 诊断与对照相比的分类的价值。我们进一步测试皮质变薄和 rCBF 减少分别或共同解释痴呆严重程度变化的程度。对结构 MRI 和灌注加权 MRI 数据的单独分析得出了 AD 中皮质变薄和 rCBF 减少的既定模式,主要影响颞顶叶脑区。联合使用结构 MRI 和灌注加权 MRI 表明,皮质变薄主导了 AD 和对照组的分类,而 rCBF 没有显著贡献。然而,在右侧颞上回中 rCBF 减少和皮质变薄之间也存在正交互作用,这意味着 AD 中结构和生理脑改变是互补的。与 rCBF 减少相比,区域皮质变薄更好地解释了痴呆严重程度的变化。总之,与生理变化相比,结构脑改变是 AD 中 MRI 的主要特征。