Bron Esther E, Steketee Rebecca M E, Houston Gavin C, Oliver Ruth A, Achterberg Hakim C, Loog Marco, van Swieten John C, Hammers Alexander, Niessen Wiro J, Smits Marion, Klein Stefan
Departments of Medical Informatics and Radiology, Biomedical Imaging Group Rotterdam, Erasmus MC - University Medical Center Rotterdam, the Netherlands.
Hum Brain Mapp. 2014 Sep;35(9):4916-31. doi: 10.1002/hbm.22522. Epub 2014 Apr 3.
Because hypoperfusion of brain tissue precedes atrophy in dementia, the detection of dementia may be advanced by the use of perfusion information. Such information can be obtained noninvasively with arterial spin labeling (ASL), a relatively new MR technique quantifying cerebral blood flow (CBF). Using ASL and structural MRI, we evaluated diagnostic classification in 32 prospectively included presenile early stage dementia patients and 32 healthy controls. Patients were suspected of Alzheimer's disease (AD) or frontotemporal dementia. Classification was based on CBF as perfusion marker, gray matter (GM) volume as atrophy marker, and their combination. These markers were each examined using six feature extraction methods: a voxel-wise method and a region of interest (ROI)-wise approach using five ROI-sets in the GM. These ROI-sets ranged in number from 72 brain regions to a single ROI for the entire supratentorial brain. Classification was performed with a linear support vector machine classifier. For validation of the classification method on the basis of GM features, a reference dataset from the AD Neuroimaging Initiative database was used consisting of AD patients and healthy controls. In our early stage dementia population, the voxelwise feature-extraction approach achieved more accurate results (area under the curve (AUC) range = 86 - 91%) than all other approaches (AUC = 57 - 84%). Used in isolation, CBF quantified with ASL was a good diagnostic marker for dementia. However, our findings indicated only little added diagnostic value when combining ASL with the structural MRI data (AUC = 91%), which did not significantly improve over accuracy of structural MRI atrophy marker by itself.
由于在痴呆症中脑组织灌注不足先于萎缩出现,利用灌注信息或许可以提前检测出痴呆症。这样的信息可以通过动脉自旋标记(ASL)无创获取,ASL是一种相对较新的用于量化脑血流量(CBF)的磁共振技术。我们使用ASL和结构磁共振成像,对32名前瞻性纳入的早老性早期痴呆症患者和32名健康对照者进行了诊断分类评估。患者被怀疑患有阿尔茨海默病(AD)或额颞叶痴呆。分类基于作为灌注标志物的CBF、作为萎缩标志物的灰质(GM)体积及其组合。这些标志物分别使用六种特征提取方法进行检查:一种体素级方法和一种使用GM中五个感兴趣区域(ROI)集的感兴趣区域(ROI)级方法。这些ROI集的数量范围从72个脑区到整个幕上脑的单个ROI。使用线性支持向量机分类器进行分类。为了基于GM特征验证分类方法,使用了来自AD神经影像倡议数据库的参考数据集,该数据集由AD患者和健康对照者组成。在我们的早期痴呆症人群中,体素级特征提取方法比所有其他方法(曲线下面积(AUC)=57%-84%)取得了更准确的结果(AUC范围=86%-91%)。单独使用时,用ASL量化的CBF是痴呆症的一个良好诊断标志物。然而,我们的研究结果表明,将ASL与结构磁共振成像数据结合时,仅显示出很小的额外诊断价值(AUC=91%),相比结构磁共振成像萎缩标志物自身的准确性并没有显著提高。