Ferrarini Luca, Palm Walter M, Olofsen Hans, van der Landen Roald, van Buchem Mark A, Reiber Johan H C, Admiraal-Behloul Faiza
LKEB-Division of Image Processing, Department of Radiology, Leiden University Medical Center, Leiden, The Netherlands.
Magn Reson Med. 2008 Feb;59(2):260-7. doi: 10.1002/mrm.21471.
The aim of this work was to identify ventricular shape-based biomarkers in MR images to discriminate between patients with Alzheimer's disease (AD) and healthy elderly. Clinical MR images were collected for 58 patients and 28 age-matched healthy controls. After normalizing all the images the ventricular cerebrospinal fluid was semiautomatically extracted for each subject and an innovative technique for fully automatic shape modeling was applied to generate comparable meshes of all ventricles. The search for potential biomarkers was carried out with repeated permutation tests: results highlighted well-defined areas of the ventricular surface being discriminating features for AD: the left inferior medial temporal horn, the right medial temporal horn (superior and inferior), and the areas close to the left anterior part of the corpus callosum and the head of the right caudate nucleus. The biomarkers were then used as features to build an intelligent machine for AD detection: a Support Vector Machine was trained on AD and healthy subjects and subsequently tested with leave-1-out experiments and validation tests on previously unseen cases. The results showed a sensitivity of 76% for AD, with an overall accuracy of 84%, proving that suitable biomarkers for AD can be detected in clinical MR images.
这项工作的目的是在磁共振成像(MR)图像中识别基于脑室形状的生物标志物,以区分阿尔茨海默病(AD)患者和健康老年人。收集了58例患者和28名年龄匹配的健康对照的临床MR图像。在对所有图像进行归一化处理后,为每个受试者半自动提取脑室脑脊液,并应用一种创新的全自动形状建模技术生成所有脑室的可比网格。通过重复排列检验寻找潜在的生物标志物:结果突出显示脑室表面的明确区域是AD的鉴别特征:左下内侧颞角、右内侧颞角(上、下)以及靠近胼胝体左前部和右尾状核头部的区域。然后将这些生物标志物用作特征来构建用于AD检测的智能机器:在AD患者和健康受试者上训练支持向量机,随后通过留一法实验和对以前未见过的病例进行验证测试。结果显示AD的灵敏度为76%,总体准确率为84%,证明可以在临床MR图像中检测到适合AD的生物标志物。