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How the artificial intelligence tool iPGK-PseAAC is working in predicting lysine phosphoglycerylation sites in proteins

. BOHR International Journal of Biocomputing and Nano Technology, 1 (1): 5-6 (марта 2020)
DOI: https://doi.org/10.54646/bijbnt.002

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