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Deep learning methods have been applied in the drug design context as an alternative to reach new biologically active compounds¹ ². This study proposes an approach for classifying compounds into drug categories based on the analysis of their 2D structure. Thus, a dataset with 310, 194, and 280 images of Anti-inflammatories, Diuretics, and Corticosteroids, respectively, was built, which was divided into train and test sets, 80%, and 20%, respectively. As a result, a Convolutional Neural Network³ (CNN) had a classification capacity evaluated with an F1-Score of 0.77, 0.92, and 0.68 for Anti-Inflammatories, Diuretics, and Corticosteroids, respectively; and AUC-ROC values of 0.81, 1.00, and 0.78. In conclusion, CNN could classify compounds into these pharmacological classes. These models can be helpful for pharmacological classification of natural compounds, prediction of adverse effects, and drug repositioning.
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