DBGDGM: Dynamic Brain Graph Deep Generative Model

被引:0
作者
Campbell, Alexander [1 ,2 ]
Spasov, Simeon [1 ,3 ]
Toschi, Nicola [4 ]
Lio, Pietro [1 ,5 ]
机构
[1] Univ Cambridge, Dept Comp Sci & Technol, Cambridge, England
[2] Alan Turing Inst, London, England
[3] German Ctr Neurodegenerat Dis DZNE, Bonn, Germany
[4] Univ Roma Tor Vergata, Rome, Italy
[5] Harvard Med Sch, AA Martinos Ctr Biomed Imaging, Boston, MA USA
来源
MEDICAL IMAGING WITH DEEP LEARNING, VOL 227 | 2023年 / 227卷
基金
英国工程与自然科学研究理事会;
关键词
Dynamic graph; generative model; functional magnetic resonance imaging; TIME-VARYING CONNECTIVITY; FUNCTIONAL CONNECTIVITY; NETWORKS; PREDICTION;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graphs are a natural representation of brain activity derived from functional magnetic imaging (fMRI) data. It is well known that clusters of anatomical brain regions, known as functional connectivity networks (FCNs), encode temporal relationships which can serve as useful biomarkers for understanding brain function and dysfunction. Previous works, however, ignore the temporal dynamics of the brain and focus on static graphs. In this paper, we propose a dynamic brain graph deep generative model (DBGDGM) which simultaneously clusters brain regions into temporally evolving communities and learns dynamic unsupervised node embeddings. Specifically, DBGDGM represents brain graph nodes as embeddings sampled from a distribution over communities that evolve over time. We parameterise this community distribution using neural networks that learn from subject and node embeddings as well as past community assignments. Experiments demonstrate DBGDGM outperforms baselines in graph generation, dynamic link prediction, and is comparable for graph classification. Finally, an analysis of the learnt community distributions reveals overlap with known FCNs reported in neuroscience literature. Code available at https: //github.com/simeon-spasov/dynamic- brain- graph- deep-generative-model.
引用
收藏
页码:1346 / 1371
页数:26
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