Qsar model for predicting neuraminidase inhibitors of influenza a viruses (H1N1) based on adaptive grasshopper optimization algorithm
High-dimensionality is one of the major problems which affect the quality of the quantitative structure–activity relationship (QSAR) modelling. Obtaining a reliable QSAR model with few descriptors is an essential procedure in chemometrics. The binary grasshopper optimization algorithm (BGOA) is a ne...
Main Authors: | Algamal, Zakariya Y., Qasim, Maimoonah Khalid, Lee, Muhammad Hisyam, Mohammad Ali, Haithem Taha |
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Format: | Article |
Published: |
Taylor and Francis Ltd.
2020
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Subjects: |
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