Abstract
Introduction Because it is a highly complex task of a great clinical importance, the diagnosis of acute coronary syndromes allows for their analysis by means of intelligent system models. Motivation To develop a multi-agent system that assembles the decisions of several neural networks for the diagnosis of chest pain with a focus on acute coronary syndromes. Methods A study of diagnostic tests where a series of neural networks are trained with a precision close to 70%, and are later on assembled with three voting systems. Then the results of special networks on specific populations are added to select the best configuration that will make part of a multi-agent system for diagnosing chest pain. Results A total of 84 networks were generated, with an average precision of 72% during testing; once assembled this precision rises up to a maximum of 84%, which then reaches 89% when the special groups are included. A configuration that offers a sensitivity of 96% with a specificity of 77% and positive and negative predictive values of 87 and 93% respectively is chosen for the diagnosis of acute coronary syndrome. Conclusions It is possible to develop a tool for the automatic diagnosis of acute coronary syndrome using a multi-agent system that assembles the dispositions taken by a set of artificial neural networks. Its performance allows taking it into consideration for implementing it within a clinical decision-making support system.
Translated title of the contribution | Diagnóstico automático del síndrome coronario agudo utilizando un sistema multiagente basado en redes neuronales |
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Original language | English |
Pages (from-to) | 255-260 |
Number of pages | 6 |
Journal | Revista Colombiana de Cardiologia |
Volume | 24 |
Issue number | 3 |
DOIs | |
State | Published - 01 May 2017 |
Keywords
- Acute coronary syndrome
- Acute myocardial infarction
- Chest pain
- Diagnosis
- Unstable angina