NAGNN: Classification of COVID‐19 based on neighboring aware representation from deep graph neural network
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Gorriz Sáez, Juan ManuelDate
2021-04-03Referencia bibliográfica
NAGNN: classification of COVID‐19 based on neighboring aware representation from deep graph neural network S Lu, Z Zhu, JM Gorriz, SH Wang, YD Zhang International Journal of Intelligent Systems 37 (2), 1572-1598
Abstract
COVID‐19 pneumonia started in December 2019 and
caused large casualties and huge economic losses. In
this study, we intended to develop a computer‐aided
diagnosis system based on artificial intelligence to automatically
identify the COVID‐19 in chest computed
tomography images. We utilized transfer learning to
obtain the image‐level representation (ILR) based on
the backbone deep convolutional neural network.
Then, a novel neighboring aware representation (NAR)
was proposed to exploit the neighboring relationships
between the ILR vectors. To obtain the neighboring
information in the feature space of the ILRs, an ILR
graph was generated based on the k‐nearest neighbors
algorithm, in which the ILRs were linked with their
k‐nearest neighboring ILRs. Afterward, the NARs were
computed by the fusion of the ILRs and the graph. On
the basis of this representation, a novel end‐to‐end
COVID‐19 classification architecture called neighboring
aware graph neural network (NAGNN) was proposed.
The private and public data sets were used for evaluation
in the experiments. Results revealed that our
NAGNN outperformed all the 10 state‐of‐the‐art methods
in terms of generalization ability. Therefore, the
proposed NAGNN is effective in detecting COVID‐19,
which can be used in clinical diagnosis.