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    Amir Bashkin et al, 2021, Molecules CrossRef
  2. Antimicrobial Activity of Dihydroisocoumarin Isolated from Wadi Lajab Sediment-Derived Fungus Penicillium chrysogenum: In Vitro and In Silico Study
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  3. Phytochemical Composition and Biological Activities of Wild Scolymus maculatus L.
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  4. Identification of Novel Antibacterials Using Machine Learning Techniques
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  5. Machine Learning Study of Metabolic NetworksvsChEMBL Data of Antibacterial Compounds
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  6. Machine Learning in Antibacterial Drug Design
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  7. Suppressive Effects of Octyl Gallate on Streptococcus mutans Biofilm Formation, Acidogenicity, and Gene Expression
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  8. In Vitro Activity of Essential Oils Distilled from Colombian Plants against Candidaauris and Other Candida Species with Different Antifungal Susceptibility Profiles
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  9. Lauryl Gallate Activity and Streptococcus mutans: Its Effects on Biofilm Formation, Acidogenicity and Gene Expression
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  10. Correlation between Antibacterial Activity and Free-Radical Scavenging: In-Vitro Evaluation of Polar/Non-Polar Extracts from 25 Plants
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  11. Machine Learning-Enabled Genome Mining and Bioactivity Prediction of Natural Products
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