GIGA-Cyclotron Research Centre in vivo imaging, University of Liège, Liège, Belgium.
Department of Electrical Engineering and Computer Science, University of Liège, Liège, Belgium.
Hum Brain Mapp. 2019 Oct 1;40(14):4279-4286. doi: 10.1002/hbm.24701. Epub 2019 Jun 26.
Alzheimer's disease (AD) subtypes have been described according to genetics, neuropsychology, neuropathology, and neuroimaging. Thirty-one patients with clinically probable AD were selected based on perisylvian metabolic decrease on FDG-PET. They were compared to 25 patients with a typical pattern of decreased posterior metabolism. Tree-based machine learning was used on those 56 images to create a classifier that was subsequently applied to 207 Alzheimer's Disease Neuroimaging Initiative (ADNI) patients with AD. Machine learning was also used to discriminate between the two ADNI groups based on neuropsychological scores. Compared to AD patients with a typical precuneus metabolic decrease, the new subtype showed stronger hypometabolism in the temporoparietal junction. The classifier was able to distinguish the two groups in the ADNI population. Both groups could only be distinguished cognitively by Trail Making Test-A scores. This study further confirms that there is more than a typical metabolic pattern in probable AD with amnestic presentation.
阿尔茨海默病(AD)亚型根据遗传学、神经心理学、神经病理学和神经影像学进行了描述。根据 FDG-PET 显示的边缘系统代谢降低,选择了 31 名临床可能的 AD 患者。将他们与 25 名具有典型后部代谢降低的患者进行了比较。对这 56 张图像进行了基于树的机器学习,创建了一个分类器,然后将其应用于 207 名 ADNI 阿尔茨海默病患者。机器学习还用于根据神经心理学评分区分 ADNI 两组之间的差异。与具有典型顶内代谢降低的 AD 患者相比,新亚型在颞顶联合区表现出更强的代谢低下。该分类器能够在 ADNI 人群中区分这两组。两组患者仅在 Trail Making Test-A 评分上表现出认知差异。这项研究进一步证实,在有记忆障碍的可能 AD 中,存在不止一种典型的代谢模式。