Alzheimer's disease classification using mutual information generated graph convolutional network for functional MRI.

IF 3.4 3区 医学 Q2 NEUROSCIENCES
Yinghua Fu, Li Jiang, John Detre, Ze Wang
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引用次数: 0

Abstract

BackgroundHigh-order cognitive functions depend on collaborative actions and information exchange between multiple brain regions. These inter-regional interactions can be characterized by mutual information (MI). Alzheimer's disease (AD) is known to affect many high-order cognitive functions, suggesting an alteration to inter-regional MI, which remains unstudied.ObjectiveTo examine whether inter-regional MI can effectively distinguish different stages of AD from normal control (NC) through a connectome-based graph convolutional network (GCN).MethodsMI was calculated between the mean time series of each pair of brain regions, forming the connectome which was input to a multi-level connectome based GCN (MLC-GCN) to predict the different stages of AD and NC. The spatio-temporal feature extraction in MLC-GCN was used to capture multi-level functional connectivity patterns generating connectomes. The GCN predictor learns and optimizes graph representations at each level, concatenating the representations for final classification. We validated our model on 552 subjects from ADNI and OASIS3. The MI-based model was compared to models with several different connectomes defined by Kullback-Leibler divergence, cross-entropy, cross-sample entropy, and correlation coefficient. Model performance was evaluated using 5-fold cross-validation.ResultsThe MI-based connectome achieved the highest prediction performance for both ADNI2 and OASIS3 where it's accuracy/Area Under the Curve/F1 were 87.72%/0.96/0.88 and 84.11%/0.96/0.91 respectively. Model visualization revealed that prominent MI features located in temporal, prefrontal, and parietal cortices.ConclusionsMI-based connectomes can reliably differentiate NC, mild cognitive impairment and AD. Compared to other four measures, MI demonstrated the best performance. The model should be further tested with other independent datasets.

基于互信息生成图卷积网络的功能MRI阿尔茨海默病分类。
高阶认知功能依赖于多个脑区之间的协作行为和信息交换。这些区域间的相互作用可以用相互信息(MI)来描述。已知阿尔茨海默病(AD)影响许多高阶认知功能,提示区域间心肌梗死的改变,但尚未研究。目的研究基于连接体的图卷积网络(GCN)能否有效区分AD与正常对照的不同阶段。方法计算每对脑区平均时间序列之间的smi,形成连接组,并将其输入到基于多层次连接组的GCN (MLC-GCN)中,预测AD和NC的不同阶段。利用MLC-GCN的时空特征提取,捕获生成连接体的多层次功能连接模式。GCN预测器学习并优化每个级别的图形表示,将表示连接起来进行最终分类。我们在来自ADNI和oasis的552名受试者身上验证了我们的模型。将基于mi的模型与由Kullback-Leibler散度、交叉熵、交叉样本熵和相关系数定义的几种不同连接体模型进行比较。采用5倍交叉验证评估模型性能。结果基于mi的连接组对ADNI2和OASIS3的预测准确率/曲线下面积/F1分别为87.72%/0.96/0.88和84.11%/0.96/0.91,均取得了最高的预测效果。模型可视化显示,突出的心肌梗死特征位于颞叶、前额叶和顶叶皮层。结论基于smi的连接体可以可靠地鉴别NC、轻度认知障碍和AD。与其他四项指标相比,MI表现出最好的表现。该模型需要进一步用其他独立数据集进行测试。
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来源期刊
Journal of Alzheimer's Disease
Journal of Alzheimer's Disease 医学-神经科学
CiteScore
6.40
自引率
7.50%
发文量
1327
审稿时长
2 months
期刊介绍: The Journal of Alzheimer''s Disease (JAD) is an international multidisciplinary journal to facilitate progress in understanding the etiology, pathogenesis, epidemiology, genetics, behavior, treatment and psychology of Alzheimer''s disease. The journal publishes research reports, reviews, short communications, hypotheses, ethics reviews, book reviews, and letters-to-the-editor. The journal is dedicated to providing an open forum for original research that will expedite our fundamental understanding of Alzheimer''s disease.
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