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Brain Age Prediction Using Multi-Hop Graph Attention Combined with Convolutional Neural Network

Title
Brain Age Prediction Using Multi-Hop Graph Attention Combined with Convolutional Neural Network
Authors
LimHeejooJooYoonjiHaEunjiSongYumiYoonSujungShinTaehoon
Ewha Authors
윤수정신태훈하은지주윤지
SCOPUS Author ID
윤수정scopus; 신태훈scopus; 하은지scopus; 주윤지scopus
Issue Date
2024
Journal Title
Bioengineering
ISSN
2306-5354JCR Link
Citation
Bioengineering vol. 11, no. 3
Keywords
brain age predictionbrain magnetic resonance imageconvolutional neural networkgraph attentionself-attention
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Convolutional neural networks (CNNs) have been used widely to predict biological brain age based on brain magnetic resonance (MR) images. However, CNNs focus mainly on spatially local features and their aggregates and barely on the connective information between distant regions. To overcome this issue, we propose a novel multi-hop graph attention (MGA) module that exploits both the local and global connections of image features when combined with CNNs. After insertion between convolutional layers, MGA first converts the convolution-derived feature map into graph-structured data by using patch embedding and embedding-distance-based scoring. Multi-hop connections between the graph nodes are modeled by using the Markov chain process. After performing multi-hop graph attention, MGA re-converts the graph into an updated feature map and transfers it to the next convolutional layer. We combined the MGA module with sSE (spatial squeeze and excitation)-ResNet18 for our final prediction model (MGA-sSE-ResNet18) and performed various hyperparameter evaluations to identify the optimal parameter combinations. With 2788 three-dimensional T1-weighted MR images of healthy subjects, we verified the effectiveness of MGA-sSE-ResNet18 with comparisons to four established, general-purpose CNNs and two representative brain age prediction models. The proposed model yielded an optimal performance with a mean absolute error of 2.822 years and Pearson’s correlation coefficient (PCC) of 0.968, demonstrating the potential of the MGA module to improve the accuracy of brain age prediction. © 2024 by the authors.
DOI
10.3390/bioengineering11030265
Appears in Collections:
연구기관 > 뇌융합과학연구원 > Journal papers
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