Publication | Open Access
Investigation of the visual attention role in clinical bioethics decision-making using machine learning algorithms
15
Citations
15
References
2017
Year
EngineeringMachine LearningClinical Decision-makingMachine Learning AlgorithmsEuthanasia DecisionClinical BioethicsMultilayer PerceptronAttentionPsychologySocial SciencesMedical Decision MakingClassification MethodData SciencePattern RecognitionBioethicsBiostatisticsCognitive ScienceVisual Attention RolePredictive AnalyticsVisual DiagnosisDecision AidMedical Decision AnalysisMedical EthicsDecision-makingEye TrackingClinical Decision Support SystemHealth Informatics
This study proposes the use of a computational approach based on machine learning (ML) algorithms to build predictive models using eye tracking data. Our intention is to provide results that may support the study of medical investigation in the decision-making process in clinical bioethics, particularly in this work, in cases of euthanasia. The data used in the approach were collected from 75 students of the nursing undergraduate course using an eye tracker. The available data were processed through feature selection methods, and were later used to create models capable of predicting the euthanasia decision through ML algorithms. Statistical experiments showed that the predictive model resultant from the multilayer perceptron (MLP) algorithm led to the best performance compared with the other tested algorithms, presenting an accuracy of 90.7% and a mean area under the ROC curve of 0.90. Interesting knowledge (patterns and rules) for the studied bioethical decision-making was extracted using simulations with MLP models and inspecting the obtained decision-tree rules. The good performance shown by the obtained MLP predictive model demonstrates that the proposed investigation approach may be used to test scientific hypotheses related to visual attention and decision-making.
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