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[1] rifaioglu as, et al. recent applications of deep learning and machine intelligence on in silico drug discovery: methods, tools and databases. brief bioinform. 2019 sep ;20(5):1878-1912.
[2] guttman y, kerem z. dietary inhibitors of cyp3a4 are revealed using virtual screening by using a new deep-learning classifier. j agric food chem. 2022 mar ;70(8):2752-2761.
[3] liu s, et al. virtual screening of nrf2 dietary-derived agonists and safety by a new deep-learning model and verified in vitro and in vivo. j agric food chem. 2023 may ;71(21):8038-8049.
[4] li b, et al. a deep learning framework for accurate reaction prediction and its application on high-throughput experimentation data. j cheminform. 2023 aug;15(1):72.
[5] segler mhs, et al. planning chemical syntheses with deep neural networks and symbolic ai. nature. 2018 mar ;555(7698):604-610.
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