In this paper we present an Artificial Intelligence-based Computer Aided Diagnosis system designed to assist the clinical decision of non-specialist staff in the analysis of Heart Failure patients. The system computes the patient's pathological condition and highlights possible aggravations. The system is based on three functional parts: Diagnosis (severity assessing), Prognosis, and Follow-up management. Four Artificial Intelligence-based techniques are used and compared in diagnosis function: a Neural Network, a Support Vector Machine, a Decision Tree and a Fuzzy Expert System whose rules are produced by a Genetic Algorithm. In order to offer a complete HF analysis dashboard, state of the art algorithms are implemented to support a score-based prognosis function. The patient's Follow-up is used to refine the diagnosis by adding Heart Failure type information and to detect any worsening of patient's clinical status. In the Results section we compared the accuracy of the different implemented techniques. © 2012 Springer-Verlag.

Heart failure artificial intelligence-based computer aided diagnosis telecare system / Guidi G; Iadanza E; Pettenati MC; Milli M; Pavone F; Biffi Gentili G. - ELETTRONICO. - 7251 LNCS:(2012), pp. 278-281. (Intervento presentato al convegno 10th International Conference on Smart Homes and Health Telematics, ICOST 2012 tenutosi a Artimino, Italy nel 12-15 june 2012) [10.1007/978-3-642-30779-9_44].

Heart failure artificial intelligence-based computer aided diagnosis telecare system

GUIDI, GABRIELE;IADANZA, ERNESTO;PAVONE, FRANCESCO SAVERIO;BIFFI GENTILI, GUIDO
2012

Abstract

In this paper we present an Artificial Intelligence-based Computer Aided Diagnosis system designed to assist the clinical decision of non-specialist staff in the analysis of Heart Failure patients. The system computes the patient's pathological condition and highlights possible aggravations. The system is based on three functional parts: Diagnosis (severity assessing), Prognosis, and Follow-up management. Four Artificial Intelligence-based techniques are used and compared in diagnosis function: a Neural Network, a Support Vector Machine, a Decision Tree and a Fuzzy Expert System whose rules are produced by a Genetic Algorithm. In order to offer a complete HF analysis dashboard, state of the art algorithms are implemented to support a score-based prognosis function. The patient's Follow-up is used to refine the diagnosis by adding Heart Failure type information and to detect any worsening of patient's clinical status. In the Results section we compared the accuracy of the different implemented techniques. © 2012 Springer-Verlag.
2012
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
10th International Conference on Smart Homes and Health Telematics, ICOST 2012
Artimino, Italy
12-15 june 2012
Guidi G; Iadanza E; Pettenati MC; Milli M; Pavone F; Biffi Gentili G
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/780690
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