Simões Rita, van Cappellen van Walsum Anne-Marie, Slump Cornelis H
MIRA Institute for Biomedical Technology and Technical Medicine, University of Twente, Enschede, The Netherlands,
Neuroradiology. 2014 Sep;56(9):709-21. doi: 10.1007/s00234-014-1385-4. Epub 2014 Jun 20.
Classification methods have been proposed to detect Alzheimer’s disease (AD) using magnetic resonance images. Most rely on features such as the shape/volume of brain structures that need to be defined a priori. In this work, we propose a method that does not require either the segmentation of specific brain regions or the nonlinear alignment to a template. Besides classification, we also analyze which brain regions are discriminative between a group of normal controls and a group of AD patients.
We perform 3D texture analysis using Local Binary Patterns computed at local image patches in the whole brain, combined in a classifier ensemble.We evaluate our method in a publicly available database including very mild-to-mild AD subjects and healthy elderly controls.
For the subject cohort including only mild AD subjects, the best results are obtained using a combination of large (30×30×30 and 40×40×40 voxels) patches. A spatial analysis on the best performing patches shows that these are located in the medial-temporal lobe and in the periventricular regions. When very mild AD subjects are included in the dataset, the small (10×10×10 voxels) patches perform best, with the most discriminative ones being located near the left hippocampus.
We show that our method is able not only to perform accurate classification, but also to localize dis-criminative brain regions, which are in accordance with the medical literature. This is achieved without the need to segment-specific brain structures and without performing nonlinear registration to a template, indicating that the method may be suitable for a clinical implementation that can help to diagnose AD at an earlier stage.
已经有人提出了利用磁共振图像检测阿尔茨海默病(AD)的分类方法。大多数方法依赖于诸如脑结构形状/体积等需要先验定义的特征。在这项工作中,我们提出了一种既不需要对特定脑区进行分割也不需要与模板进行非线性对齐的方法。除了分类,我们还分析了在一组正常对照和一组AD患者之间哪些脑区具有鉴别性。
我们使用在全脑局部图像块上计算的局部二值模式进行三维纹理分析,并将其组合到一个分类器集成中。我们在一个公开可用的数据库中评估我们的方法,该数据库包括极轻度至轻度AD受试者和健康老年对照。
对于仅包括轻度AD受试者的队列,使用大尺寸(30×30×30和40×40×40体素)图像块的组合获得了最佳结果。对表现最佳的图像块进行空间分析表明,这些图像块位于内侧颞叶和脑室周围区域。当数据集中纳入极轻度AD受试者时,小尺寸(10×10×10体素)图像块表现最佳,最具鉴别性的图像块位于左海马体附近。
我们表明我们的方法不仅能够进行准确的分类,还能够定位具有鉴别性的脑区,这与医学文献一致。这是在不需要分割特定脑结构且不需要对模板进行非线性配准的情况下实现的,表明该方法可能适用于有助于早期诊断AD的临床应用。