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dc.contributor.author Silva-Andrade, Claudia
dc.contributor.author Rodriguez-Fernández, María
dc.contributor.author Garrido, Daniel
dc.contributor.author Martin, Alberto J.M.
dc.date.accessioned 2026-02-08T03:20:45Z
dc.date.available 2026-02-08T03:20:45Z
dc.date.issued 2024-05
dc.identifier.issn 2165-0497
dc.identifier.other Mendeley: 07292ced-0eff-3c10-ab27-fc68ac2e6299
dc.identifier.uri https://repositorio.uss.cl/handle/uss/20228
dc.description Publisher Copyright: © 2024 American Society for Microbiology. All rights reserved.
dc.description.abstract Understanding the interactions between microorganisms and their impact on bacterial behavior at the community level is a key research topic in microbiology. Different methods, relying on experimental or mathematical approaches based on the diverse properties of bacteria, are currently employed to study these interactions. Recently, the use of metabolic networks to understand the interactions between bacterial pairs has increased, highlighting the relevance of this approach in characterizing bacteria. In this study, we leverage the representation of bacteria through their metabolic networks to build a predictive model aimed at reducing the number of experimental assays required for designing bacterial consortia with specific behaviors. Our novel method for predicting cross-feeding or competition interactions between pairs of microorganisms utilizes metabolic network features. Machine learning classifiers are employed to determine the type of interaction from automatically reconstructed metabolic networks. Several algorithms were assessed and selected based on comprehensive testing and careful separation of manually compiled data sets obtained from literature sources. We used different classification algorithms, including K Nearest Neighbors, XGBoost, Support Vector Machine, and Random Forest, tested different parameter values, and implemented several data curation approaches to reduce the biological bias associated with our data set, ultimately achieving an accuracy of over 0.9. Our method holds substantial potential to advance the understanding of community behavior and contribute to the development of more effective approaches for consortia design. IMPORTANCE Understanding bacterial interactions at the community level is critical for microbiology, and leveraging metabolic networks presents an efficient and effective approach. The introduction of this novel method for predicting interactions through machine learning classifiers has the potential to advance the field by reducing the number of experimental assays required and contributing to the development of more effective bacterial consortia. en
dc.language.iso eng
dc.relation.ispartof vol. 12 Issue: no. 5 Pages:
dc.source Microbiology Spectrum
dc.title Using metabolic networks to predict cross-feeding and competition interactions between microorganisms en
dc.type Artículo
dc.identifier.doi 10.1128/spectrum.02287-23
dc.publisher.department Facultad de Ingeniería


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