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NAGNN: Classification of COVID‐19 based on neighboring aware representation from deep graph neural network

2021·150 Zitationen·International Journal of Intelligent SystemsOpen Access
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150

Zitationen

5

Autoren

2021

Jahr

Abstract

-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.

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