Machine Learning-Driven Classification of Urease Inhibitors Leveraging Physicochemical Properties as Effective Filter Criteria

Natalia Morales, Elizabeth Valdés-Muñoz, Jaime González, Paulina Valenzuela-Hormazábal, Jonathan M. Palma, Christian Galarza, Ángel Catagua-González, Osvaldo Yáñez, Alfredo Pereira, Daniel Bustos

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Immunology and Microbiology

Pharmacology, Toxicology and Pharmaceutical Science

Biochemistry, Genetics and Molecular Biology

Chemical Engineering