Please use this identifier to cite or link to this item: 10.1155/2022/7740785
Title: Predicting the Risk of Mortality in Children using a Fuzzy-Probabilistic Hybrid Model
Authors: Rey, Corsino
Mayordomo-Colunga, Juan
Gobergs, Roberts
Balmaks, Reinis
Vivanco-Allende, Ana
Concha, Andrés
Medina, Alberto
Colubi, Ana
González-Rodríguez, Gil
Department of Paediatrics
Keywords: 3.2 Clinical medicine;1.1. Scientific article indexed in Web of Science and/or Scopus database;General Biochemistry,Genetics and Molecular Biology;General Immunology and Microbiology;SDG 3 - Good Health and Well-being
Issue Date: 2022
Citation: Rey , C , Mayordomo-Colunga , J , Gobergs , R , Balmaks , R , Vivanco-Allende , A , Concha , A , Medina , A , Colubi , A & González-Rodríguez , G 2022 , ' Predicting the Risk of Mortality in Children using a Fuzzy-Probabilistic Hybrid Model ' , BioMed Research International , vol. 2022 , 7740785 . https://doi.org/10.1155/2022/7740785
Abstract: Introduction. The mortality risk in children admitted to Pediatric Intensive Care Units (PICU) is usually estimated by means of validated scales, which only include objective data among their items. Human perceptions may also add relevant information to prognosticate the risk of death, and the tool to use this subjective data is fuzzy logic. The objective of our study was to develop a mathematical model to predict mortality risk based on the subjective perception of PICU staff and to evaluate its accuracy compared to validated scales. Methods. A prospective observational study in two PICUs (one in Spain and another in Latvia) was performed. Children were consecutively included regardless of the cause of admission along a two-year period. A fuzzy set program was developed for the PICU staff to record the subjective assessment of the patients' mortality risk expressed through a short range and a long range, both between 0% and 100%. Pediatric Index of Mortality 2 (PIM2) and Therapeutic Intervention Scoring System 28 (TISS28) were also prospectively calculated for each patient. Subjective and objective predictions were compared using the logistic regression analysis. To assess the prognostication ability of the models a stratified B-random K-fold cross-validation was performed. Results. Five hundred ninety-nine patients were included, 308 in Spain (293 survivors, 15 nonsurvivors) and 291 in Latvia (282 survivors, 9 nonsurvivors). The best logistic classification model for subjective information was the one based on MID (midpoint of the short range), whereas objective information was the one based on PIM2. Mortality estimation performance was 86.3% for PIM2, 92.6% for MID, and the combination of MID and PIM2 reached 96.4%. Conclusions. Subjective assessment was as useful as validated scales to estimate the risk of mortality. A hybrid model including fuzzy information and probabilistic scales (PIM2) seems to increase the accuracy of prognosticating mortality in PICU.
Description: Publisher Copyright: © 2022 Corsino Rey et al.
DOI: 10.1155/2022/7740785
ISSN: 2314-6133
Appears in Collections:Research outputs from Pure / Zinātniskās darbības rezultāti no ZDIS Pure

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