Inglese P, Amoroso N, Boccardi M, Bocchetta M, Bruno S, Chincarini A, Errico R, Frisoni G B, Maglietta R, Redolfi A, Sensi F, Tangaro S, Tateo A, Bellotti R
Istituto Nazionale di Fisica Nucleare, Sezione di Bari, Italy; Università degli Studi di Bari, Bari, Italy.
LENITEM Laboratory of Epidemiology, Neuroimaging & Telemedicine, IRCSS Istituto Centro San Giovanni di Dio - Fatebenefratelli, Brescia, Italy.
Phys Med. 2015 Dec;31(8):1085-1091. doi: 10.1016/j.ejmp.2015.08.003. Epub 2015 Oct 21.
The hippocampus has a key role in a number of neurodegenerative diseases, such as Alzheimer's Disease. Here we present a novel method for the automated segmentation of the hippocampus from structural magnetic resonance images (MRI), based on a combination of multiple classifiers. The method is validated on a cohort of 50 T1 MRI scans, comprehending healthy control, mild cognitive impairment, and Alzheimer's Disease subjects. The preliminary release of the EADC-ADNI Harmonized Protocol training labels is used as gold standard. The fully automated pipeline consists of a registration using an affine transformation, the extraction of a local bounding box, and the classification of each voxel in two classes (background and hippocampus). The classification is performed slice-by-slice along each of the three orthogonal directions of the 3D-MRI using a Random Forest (RF) classifier, followed by a fusion of the three full segmentations. Dice coefficients obtained by multiple RF (0.87 ± 0.03) are larger than those obtained by a single monolithic RF applied to the entire bounding box, and are comparable to state-of-the-art. A test on an external cohort of 50 T1 MRI scans shows that the presented method is robust and reliable. Additionally, a comparison of local changes in the morphology of the hippocampi between the three subject groups is performed. Our work showed that a multiple classification approach can be implemented for the segmentation for the measurement of volume and shape changes of the hippocampus with diagnostic purposes.
海马体在多种神经退行性疾病中起着关键作用,如阿尔茨海默病。在此,我们提出一种基于多个分类器组合的从结构磁共振图像(MRI)中自动分割海马体的新方法。该方法在包含健康对照、轻度认知障碍和阿尔茨海默病受试者的50例T1 MRI扫描队列上进行了验证。使用EADC-ADNI协调协议训练标签的初步版本作为金标准。全自动流程包括使用仿射变换进行配准、提取局部边界框以及将每个体素分为两类(背景和海马体)。分类是沿着3D-MRI的三个正交方向逐片使用随机森林(RF)分类器进行的,然后对三个完整分割结果进行融合。多个RF获得的骰子系数(0.87±0.03)大于应用于整个边界框的单个整体RF获得的系数,并且与现有技术相当。对50例T1 MRI扫描的外部队列进行的测试表明,所提出的方法是稳健且可靠的。此外,还对三个受试者组之间海马体形态的局部变化进行了比较。我们的工作表明,可以实施多分类方法来分割海马体,以测量其体积和形状变化,用于诊断目的。