Please use this identifier to cite or link to this item: http://hdl.handle.net/10662/24072
Title: Machine-learning Model to Predict the Intradialytic Hypotension Based on Clinical-Analytical Data
Authors: Mendoza Pitti, Luis
Gómez Pulido, José Manuel
Vargas Lombardo, Miguel
Gómez Pulido, Juan Antonio
Polo Luque, María Luz
Rodríguez Puyol, Diego
Keywords: Datos clínicos y analíticos;Clinical-analytical data;Hemodiálisis;Hemodialysis;Hipotensión intradialítica;Intradialytic hypotension;Aprendizaje máquina;Machine learning;Modelo predictivo;Predicting model
Issue Date: 2022
Publisher: IEEE
Abstract: Predicting whether patients will experience intradialytic hypotension (IDH) during hemodialysis (HD) is not an easy task. IDH is associated with multiple risk factors, meaning that traditional statistical models are unable to nd the relationships that affect it. In this context, the use of models based on machine learning (ML) can allow the discovery of complex relationships, since they can solve problems without being explicitly programmed. In this work we developed, evaluated and identi ed an ML-based model that is capable of predicting at the beginning of the HD session whether a patient will suffer from IDH during its prolonged development. To develop the ML models, we used the hold-out and cross-validation methods; while, to evaluate the performance of the models we used the metrics F1-score, Matthews Correlation Coef cient, areas under the receiver operating characteristic (AUROC) and precision-recall curve (AUPRC). In this sense, we selected and used a reduced combination of variables from clinical records and blood analytics, which have proven to be decisive for the occurrence of IDH. The predictive results obtained through our work con rmed that the best ML model was based on the XGBoost model, achieving values of 0.969 and 0.945 for AUROC and AUPRC respectively. Therefore, our study suggests that the XGBoost model has a very high predictive capacity for the appearance of an IDH in HD patients and presents great versatility and exibility in terms of supporting informed decision-making by medical staff.
URI: http://hdl.handle.net/10662/24072
ISSN: 2169-3536
DOI: 10.1109/ACCESS.2022.3189018
Appears in Collections:DTCYC - Artículos

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