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Kroll et al., 2022 - Google Patents

The substrate scopes of enzymes: a general prediction model based on machine and deep learning

Kroll et al., 2022

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Document ID
14693920866635430728
Author
Kroll A
Ranjan S
Engqvist M
Lercher M
Publication year
Publication venue
bioRxiv

External Links

Snippet

For a comprehensive understanding of metabolism, it is necessary to know all potential substrates for each enzyme encoded in an organism's genome. However, for most proteins annotated as enzymes, it is unknown which primary and/or secondary reactions they …
Continue reading at www.biorxiv.org (PDF) (other versions)

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