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Machine learning-driven classification of urease inhibitors leveraging physicochemical properties as effective filter criteria
dc.contributor.author | Morales, Natalia | |
dc.contributor.author | Valdés-Muñoz, Elizabeth | |
dc.contributor.author | González, Jaime | |
dc.contributor.author | Valenzuela-Hormazábal, Paulina | |
dc.contributor.author | Palma, Jonathan M. | |
dc.contributor.author | Galarza, Christian | |
dc.contributor.author | Catagua-González, Ángel | |
dc.contributor.author | Yáñez, Osvaldo | |
dc.contributor.author | Pereira, Alfredo | |
dc.contributor.author | Bustos, Daniel | |
dc.date.accessioned | 2024-05-28T20:32:12Z | |
dc.date.available | 2024-05-28T20:32:12Z | |
dc.date.issued | 2024 | |
dc.identifier.uri | http://repositorio.ucm.cl/handle/ucm/5408 | |
dc.description.abstract | Urease, a pivotal enzyme in nitrogen metabolism, plays a crucial role in various microorganisms, including the pathogenic Helicobacter pylori. Inhibiting urease activity offers a promising approach to combating infections and associated ailments, such as chronic kidney diseases and gastric cancer. However, identifying potent urease inhibitors remains challenging due to resistance issues that hinder traditional approaches. Recently, machine learning (ML)-based models have demonstrated the ability to predict the bioactivity of molecules rapidly and effectively. In this study, we present ML models designed to predict urease inhibitors by leveraging essential physicochemical properties. The methodological approach involved constructing a dataset of urease inhibitors through an extensive literature search. Subsequently, these inhibitors were characterized based on physicochemical properties calculations. An exploratory data analysis was then conducted to identify and analyze critical features. Ultimately, 252 classification models were trained, utilizing a combination of seven ML algorithms, three attribute selection methods, and six different strategies for categorizing inhibitory activity. The investigation unveiled discernible trends distinguishing urease inhibitors from non-inhibitors. This differentiation enabled the identification of essential features that are crucial for precise classification. Through a comprehensive comparison of ML algorithms, tree-based methods like random forest, decision tree, and XGBoost exhibited superior performance. Additionally, incorporating the “chemical family type” attribute significantly enhanced model accuracy. Strategies involving a gray-zone categorization demonstrated marked improvements in predictive precision. This research underscores the transformative potential of ML in predicting urease inhibitors. The meticulous methodology outlined herein offers actionable insights for developing robust predictive models within biochemical systems. | es_CL |
dc.language.iso | en | es_CL |
dc.rights | Atribución-NoComercial-SinDerivadas 3.0 Chile | * |
dc.rights.uri | http://creativecommons.org/licenses/by-nc-nd/3.0/cl/ | * |
dc.source | International Journal of Molecular Sciences, 25(8), 4303 | es_CL |
dc.subject | Urease inhibitors | es_CL |
dc.subject | Cheminformatics | es_CL |
dc.subject | Machine learning | es_CL |
dc.subject | Predictive modeling | es_CL |
dc.subject | Bioactivity prediction | es_CL |
dc.subject | Classification models | es_CL |
dc.title | Machine learning-driven classification of urease inhibitors leveraging physicochemical properties as effective filter criteria | es_CL |
dc.type | Article | es_CL |
dc.ucm.facultad | Facultad de Ciencias de la Ingeniería | es_CL |
dc.ucm.indexacion | Scopus | es_CL |
dc.ucm.indexacion | Isi | es_CL |
dc.ucm.indexacion | Scielo | es_CL |
dc.ucm.uri | mdpi.com/1422-0067/25/8/4303 | es_CL |
dc.ucm.doi | doi.org/10.3390/ijms25084303 | es_CL |
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