Sheng Jinhua, Wang Bocheng, Zhang Qiao, Zhou Rougang, Wang Luyun, Xin Yu
College of Computer Science and Technology, Hangzhou Dianzi University, Hangzhou, Zhejiang, 310018, China.
Key Laboratory of Intelligent Image Analysis for Sensory and Cognitive Health, Ministry of Industry and Information Technology of China, Hangzhou, Zhejiang, 310018, China.
Heliyon. 2021 Jun 11;7(6):e07287. doi: 10.1016/j.heliyon.2021.e07287. eCollection 2021 Jun.
Based on the joint HCPMMP parcellation method we developed before, which divides the cortical brain into 360 regions, the concept of ordered core features (OCF) is first proposed to reveal the functional brain connectivity relationship among different cohorts of Alzheimer's disease (AD), late mild cognitive impairment (LMCI), early mild cognitive impairment (EMCI) and healthy controls (HC). A set of core network features that change significantly under the specifically progressive relationship were extracted and used as supervised machine learning classifiers. The network nodes in this set mainly locate in the frontal lobe and insular, forming a narrow band, which are responsible for cognitive impairment as suggested by previous finding. By using these features, the accuracy ranged from 86.0% to 95.5% in binary classification between any pair of cohorts, higher than 70.1%-91.0% when using all network features. In multi-group classification, the average accuracy was 75% or 78% for HC, EMCI, LMCI or EMCI, LMCI, AD against baseline of 33%, and 53.3% for HC, EMCI, LMCI and AD against baseline of 25%. In addition, the recognition rate was lower when combining EMCI and LMCI patients into one group of mild cognitive impairment (MCI) for classification, suggesting that there exists a big difference between early and late MCI patients. This finding supports the EMCI/LMCI inclusion criteria introduced by ADNI based on neuropsychological assessments.
基于我们之前开发的联合HCPMMP分割方法,该方法将大脑皮层划分为360个区域,首次提出了有序核心特征(OCF)的概念,以揭示阿尔茨海默病(AD)、晚期轻度认知障碍(LMCI)、早期轻度认知障碍(EMCI)和健康对照(HC)不同队列之间的功能性脑连接关系。提取了一组在特定进展关系下显著变化的核心网络特征,并将其用作监督机器学习分类器。该集合中的网络节点主要位于额叶和岛叶,形成一条窄带,正如先前研究所表明的,这些区域负责认知障碍。通过使用这些特征,在任意两个队列之间的二元分类中,准确率范围为86.0%至95.5%,高于使用所有网络特征时的70.1%-91.0%。在多组分类中,对于HC、EMCI、LMCI或EMCI、LMCI、AD,相对于33%的基线,平均准确率为75%或78%,对于HC、EMCI、LMCI和AD,相对于25%的基线,平均准确率为53.3%。此外,将EMCI和LMCI患者合并为一组轻度认知障碍(MCI)进行分类时,识别率较低,这表明早期和晚期MCI患者之间存在很大差异。这一发现支持了ADNI基于神经心理学评估引入的EMCI/LMCI纳入标准。