Feature aggregation graph convolutional network based on imaging genetic data for diagnosis and pathogeny identification of Alzheimer's disease.
Xia-An BiWenyan ZhouSheng LuoYuhua MaoXi HuBin ZengLuyun XuPublished in: Briefings in bioinformatics (2022)
The roles of brain regions activities and gene expressions in the development of Alzheimer's disease (AD) remain unclear. Existing imaging genetic studies usually has the problem of inefficiency and inadequate fusion of data. This study proposes a novel deep learning method to efficiently capture the development pattern of AD. First, we model the interaction between brain regions and genes as node-to-node feature aggregation in a brain region-gene network. Second, we propose a feature aggregation graph convolutional network (FAGCN) to transmit and update the node feature. Compared with the trivial graph convolutional procedure, we replace the input from the adjacency matrix with a weight matrix based on correlation analysis and consider common neighbor similarity to discover broader associations of nodes. Finally, we use a full-gradient saliency graph mechanism to score and extract the pathogenetic brain regions and risk genes. According to the results, FAGCN achieved the best performance among both traditional and cutting-edge methods and extracted AD-related brain regions and genes, providing theoretical and methodological support for the research of related diseases.
Keyphrases
- neural network
- genome wide
- deep learning
- resting state
- white matter
- convolutional neural network
- machine learning
- copy number
- genome wide identification
- functional connectivity
- high resolution
- lymph node
- cerebral ischemia
- dna methylation
- bioinformatics analysis
- electronic health record
- physical activity
- cognitive decline
- squamous cell carcinoma
- gene expression
- early stage
- artificial intelligence
- brain injury
- transcription factor
- neoadjuvant chemotherapy
- weight gain