Experimental Validation and Development of Decision Tree - based System for Prediction of Service Management of Perfusors / Syringe Pump
Experimental Validation and Development of Decision Tree - based System for Prediction of Service Management of Perfusors / Syringe Pump
Author(s): Becir Isakovic, Zerina Mašetić, Jasmin Kevrić, Lejla Gurbeta, Enis GegicSubject(s): Marketing / Advertising, ICT Information and Communications Technologies
Published by: UIKTEN - Association for Information Communication Technology Education and Science
Keywords: decision Tree; perfusor; medical device; maintenance; Industry 4.0.; artificial intelligence
Summary/Abstract: Despite the fact that technology is improving day by day and that the medical devices (MDs) are being constantly upgraded, their malfunction is not a rare occurrence. The aim of this research is to develop an expert system that can predict whether the device will satisfy functional and safety requirements during a regular inspection. This expert system can be seen as part of Industry 4.0 that is revolutionizing medical device management. In order to develop the system, five machine learning algorithms that are representative of each classifier group, were used: (1) Random Forest, (2) Decision Tree, (3) Support Vector Machine, (4) Naive Bayes, (5) k-Nearest Neighbour. The Decision Tree outperformed other classifiers achieving the classification accuracy of 100% with and without attribute selection applied on the dataset. This study showed that machine learning algorithms can be used in order to predict MDs performance and potential failures in order to make the process of maintenance of medical devices more convenient and sophisticated and it is one step in modernizing medical device management systems by utilizing artificial intelligence.
Journal: TEM Journal
- Issue Year: 11/2022
- Issue No: 3
- Page Range: 1242-1253
- Page Count: 12
- Language: English