Application of Machine Learning Algorithms in Urinary Tract Infections Diagnosis Based on Non-Microbiological Parameters
Metadatos
Mostrar el registro completo del ítemAutor
Rodríguez del Águila, M. Mar; Sorlozano Puerto, Antonio; Bernier-Rodríguez, Cecilia; Navarro Marí, José María; Gutiérrez Fernández, JoséEditorial
MDPI
Materia
Urinary tract infections Machine learning diagnostic techniques and procedures
Fecha
2025-10-12Referencia bibliográfica
Rodríguez del Águila, M.M.; Sorlózano-Puerto, A.; BernierRodríguez, C.; Navarro-Marí, J.M.; Gutiérrez-Fernández, J. Application of Machine Learning Algorithms in Urinary Tract Infections Diagnosis Based on Non-Microbiological Parameters. Pathogens 2025, 14, 1034. https://doi.org/10.3390/pathogens14101034
Patrocinador
University of Granada - Junta de Andalucia (Research Group CTS-521)Resumen
Urinary tract infections (UTIs) are among the most common pathologies, with a high
incidence in women and hospitalized patients. Their diagnosis is based on the presence of
clinical symptoms and signs in addition to the detection of microorganisms in urine trough
urine cultures, a time-consuming and resource-intensive test. The goal was to optimize
UTI detection through artificial intelligence (machine learning) using non-microbiological
laboratory parameters, thereby reducing unnecessary cultures and expediting diagnosis.
A total of 4283 urine cultures from patients with suspected UTIs were analyzed in the
Microbiology Laboratory of the University Hospital Virgen de las Nieves (Granada, Spain)
between 2016 and 2020. Various machine learning algorithms were applied to predict positive urine cultures and the type of isolated microorganism. Random Forest demonstrated
the best performance, achieving an accuracy (percentage of correct positive and negative
classifications) of 82.2% and an area under the ROC curve of 87.1%. Moreover, the Tree
algorithm successfully predicted the presence of Gram-negative bacilli in urine cultures
with an accuracy of 79.0%. Among the most relevant predictive variables were the presence
of leukocytes and nitrites in the urine dipstick test, along with elevated white cells count,
monocyte count, lymphocyte percentage in blood and creatinine levels. The integration of
AI algorithms and non-microbiological parameters within the diagnostic and management
pathways of UTI holds considerable promise. However, further validation with clinical
data is required for integration into hospital practice.





