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Predicting the Phosphorylation Sites Using Hidden Markov Models and Machine Learning Methods

Journal of Chemical Information and Modeling - United States
doi 10.1021/ci050047+
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Categories
Computer Science ApplicationsChemistryChemical EngineeringLibraryInformation Sciences
Date

July 1, 2005

Authors
Pasak SenawongseAndrew R. DalbyZheng Rong Yang
Publisher

American Chemical Society (ACS)


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