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Shah et al., 2022 - Google Patents

DeepRF: A deep learning method for predicting metabolic pathways in organisms based on annotated genomes

Shah et al., 2022

Document ID
13741410586175232477
Author
Shah H
Liu J
Yang Z
Zhang X
Feng J
Publication year
Publication venue
Computers in Biology and Medicine

External Links

Snippet

The rapid increase of metabolomics has led to an increasing focus on metabolic pathway modeling and reconstruction. In particular, reconstructing an organism's metabolic network based on its genome sequence is a key challenge in systems biology. The method used to …
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