Incorporating multiple biology based knowledge to amplify the prophecy of enzyme sub-functional classes
Based on current in silico methods, enzyme sub-functional classes is distinguished from sequence level information, local order or sequence length and order knowledge. To date, no work has been done to predict the enzyme subclasses efficiently corresponding to the ENZYME database. In order to precis...
Main Authors: | Guramads, S. K., Hassan, R., Othman, R. M., Asmuni, H., Kasim, S. |
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Format: | Article |
Published: |
Insight Society
2017
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Subjects: |
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