Affiliation:
1. School of Information Engineering, Shaoyang University, Shaoyang 422000, China
2. Hunan Key Laboratory for Computation
and Simulation in Science and Engineering, Xiangtan University, Xiangtan, Hunan 411105, China
Abstract
Abstract:
With the development of sequencing technology, various forms of biomedical data, including
genomics, transcriptomics, proteomics, microbiomics, and metabolomics data, are increasingly emerging.
These data are an external manifestation of cell activity and mechanism. How to deeply analyze
these data is critical to uncovering and understanding the nature of life. Due to the heterogeneousness
and complexity of these data, it is a vastly challenging task for traditional machine learning to deal with
it. Over the recent ten years, a new machine learning framework called graph neural networks (GNNs)
has been proposed. The graph is a very powerful tool to represent a complex system. The GNNs is becoming
a key to open the mysterious door of life. In this paper, we focused on summarizing state-ofthe-
art GNNs algorithms (GraphSAGE, graph convolutional network, graph attention network, graph
isomorphism network and graph auto-encoder), briefly introducing the main principles behind them. We
also reviewed some applications of the GNNs to the area of biomedicine, and finally discussed the possible
developing direction of GNNs in the future.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Hunan Province
Shaoyang University Innovation Foundation For Postgraduate
Publisher
Bentham Science Publishers Ltd.
Subject
Computational Mathematics,Genetics,Molecular Biology,Biochemistry
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