Abstract
Objective
This paper presents a novel rule-based fuzzy classification methodology for survival/mortality prediction in severe burnt patients. Due to the ethical aspects involved in this medical scenario, physicians tend not to accept a computer-based evaluation unless they understand why and how such a recommendation is given. Therefore, any fuzzy classifier model must be both accurate and interpretable.Methods and materials
The proposed methodology is a three-step process: (1) multi-objective constrained optimization of a patient's data set, using Pareto-based elitist multi-objective evolutionary algorithms to maximize accuracy and minimize the complexity (number of rules) of classifiers, subject to interpretability constraints; this step produces a set of alternative (Pareto) classifiers; (2) linguistic labeling, which assigns a linguistic label to each fuzzy set of the classifiers; this step is essential to the interpretability of the classifiers; (3) decision making, whereby a classifier is chosen, if it is satisfactory, according to the preferences of the decision maker. If no classifier is satisfactory for the decision maker, the process starts again in step (1) with a different input parameter set.Results
The performance of three multi-objective evolutionary algorithms, niched pre-selection multi-objective algorithm, elitist Pareto-based multi-objective evolutionary algorithm for diversity reinforcement (ENORA) and the non-dominated sorting genetic algorithm (NSGA-II), was tested using a patient's data set from an intensive care burn unit and a standard machine learning data set from an standard machine learning repository. The results are compared using the hypervolume multi-objective metric. Besides, the results have been compared with other non-evolutionary techniques and validated with a multi-objective cross-validation technique. Our proposal improves the classification rate obtained by other non-evolutionary techniques (decision trees, artificial neural networks, Naive Bayes, and case-based reasoning) obtaining with ENORA a classification rate of 0.9298, specificity of 0.9385, and sensitivity of 0.9364, with 14.2 interpretable fuzzy rules on average.Conclusions
Our proposal improves the accuracy and interpretability of the classifiers, compared with other non-evolutionary techniques. We also conclude that ENORA outperforms niched pre-selection and NSGA-II algorithms. Moreover, given that our multi-objective evolutionary methodology is non-combinational based on real parameter optimization, the time cost is significantly reduced compared with other evolutionary approaches existing in literature based on combinational optimization.References
Articles referenced by this article (107)
Title not supplied
2011
A model for predicting mortality among critically ill burn victims.
Burns, (2):201-209 2008
MED: 19019556
Mortality rates among 5321 patients with burns admitted to a burn unit in China: 1980-1998.
Burns, (3):239-245 2003
MED: 12706617
Mortality estimates in the elderly burn patients: the Northern Ireland experience.
Burns, (1):107-113 2008
MED: 18687531
A new Simplified Acute Physiology Score (SAPS II) based on a European/North American multicenter study.
JAMA, (24):2957-2963 1993
MED: 8254858
Discovery and inclusion of SOFA score episodes in mortality prediction.
J Biomed Inform, (6):649-660 2007
MED: 17485242
Show 10 more references (10 of 107)
Citations & impact
Impact metrics
Citations of article over time
Smart citations by scite.ai
Explore citation contexts and check if this article has been
supported or disputed.
https://scite.ai/reports/10.1016/j.artmed.2013.12.006
Article citations
Using the Diagnostic Odds Ratio to Select Patterns to Build an Interpretable Pattern-Based Classifier in a Clinical Domain: Multivariate Sequential Pattern Mining Study.
JMIR Med Inform, 10(8):e32319, 10 Aug 2022
Cited by: 1 article | PMID: 35947437 | PMCID: PMC9403826
Multi-objective Symbolic Regression to Generate Data-driven, Non-fixed Structure and Intelligible Mortality Predictors using EHR: Binary Classification Methodology and Comparison with State-of-the-art.
AMIA Annu Symp Proc, 2022:442-451, 01 Jan 2022
Cited by: 1 article | PMID: 37128446 | PMCID: PMC10148348
Artificial intelligence in the management and treatment of burns: a systematic review.
Burns Trauma, 9:tkab022, 19 Aug 2021
Cited by: 7 articles | PMID: 34423054 | PMCID: PMC8375569
Investigating factors affecting the interval between a burn and the start of treatment using data mining methods and logistic regression.
BMC Med Res Methodol, 21(1):71, 14 Apr 2021
Cited by: 2 articles | PMID: 33853547 | PMCID: PMC8048305
Does Physical Activity Predict Obesity-A Machine Learning and Statistical Method-Based Analysis.
Int J Environ Res Public Health, 18(8):3966, 09 Apr 2021
Cited by: 15 articles | PMID: 33918760 | PMCID: PMC8069304
Go to all (9) article citations
Similar Articles
To arrive at the top five similar articles we use a word-weighted algorithm to compare words from the Title and Abstract of each citation.
On the use of multi-objective evolutionary algorithms for the induction of fuzzy classification rule systems.
Biosystems, 81(2):101-112, 01 Aug 2005
Cited by: 4 articles | PMID: 15939532
Mortality prediction in intensive care units (ICUs) using a deep rule-based fuzzy classifier.
J Biomed Inform, 79:48-59, 19 Feb 2018
Cited by: 21 articles | PMID: 29471111
A medical diagnostic tool based on radial basis function classifiers and evolutionary simulated annealing.
J Biomed Inform, 49:61-72, 21 Mar 2014
Cited by: 9 articles | PMID: 24662274
Evolutionary fuzzy modeling human diagnostic decisions.
Ann N Y Acad Sci, 1020:190-211, 01 May 2004
Cited by: 5 articles | PMID: 15208193
Review