REFERENCE
MOH , Strategic Framework of the Medical Programme Ministry of Health Malaysia 2021 to 2025 . 2020 , Hospital Management Unit , Medical Development Division : Kuala Lumpur , Malaysia . Joseph , J . and S . Madhukumar . A novel approach to data driven preventive maintenance scheduling of medical instruments . in 2010 International Conference on Systems in Medicine and Biology . 2010 . IEEE . Gandhare , B . S . and M . Akarte . Maintenance strategy selection . in Proc . of Ninth AIMS Int . Conf . on Management . 2012 . Wang , L ., J . Chu , and J . Wu , Selection of optimum maintenance strategies based on a fuzzy analytic hierarchy process . International Journal of Production Economics , 2007 . 107 ( 1 ): p . 151-163 . Wireman , T ., Maintenance work management processes . 2008 : Industrial Press . Corciovă , C ., D . Andriţoi , and C . Luca , A Modern Approach for Maintenance Prioritization of Medical Equipment , in Maintenance Management . 2020 , IntechOpen . Malaysia , M . o . H ., Concession Agreement . 2015 : Putrajaya , Malaysia . Romancito , G . Hemodialysis Information . 2021 [ cited 2021 6 September 2021 ]; Available from : https :// www . niddk . nih . gov / healthinformation / kidney-disease / kidney-failure / hemodialysis # happens . Hall , Y . N ., et al ., Effects of six versus three times per week hemodialysis on physical performance , health , and functioning : Frequent Hemodialysis Network ( FHN ) randomized trials . Clinical journal of the American Society of Nephrology , 2012 . 7 ( 5 ): p . 782-794 . Milana , M ., The Development of a Hybrid Knowledge-Based System for Integrated Maintenance Strategy and Operations in an Automotive Industry Environment : The Development of a Hybrid Knowledge-Based ( KB ) System / Gauging Absences of Pre- Requisites ( GAP )/ Analytic Hierarchy Process ( AHP ) Methodology for Integrated Maintenance Strategy and Operations in an Automotive Industry Environment . 2019 , University of Bradford . Magadán , L ., et al ., Low-cost real-time monitoring of electric motors for the Industry 4.0 . Procedia Manufacturing , 2020 . 42 : p . 393-398 .
Carvalho , T . P ., et al ., A systematic literature review of machine learning methods applied to predictive maintenance . Computers & Industrial Engineering , 2019 . 137 : p . 106024 . Susto , G . A ., et al ., Machine learning for predictive maintenance : A multiple classifier approach . IEEE Transactions on Industrial Informatics , 2014 . 11 ( 3 ): p . 812-820 . Hrvat , F ., et al . Artificial neural networks for prediction of medical device performance based on conformity assessment data : infusion and perfusor pumps case study . in 2020 9th Mediterranean conference on embedded computing ( MECO ). 2020 . IEEE . Çınar , Z . M ., et al ., Machine learning in predictive maintenance towards sustainable smart manufacturing in industry 4.0 . Sustainability , 2020 . 12 ( 19 ): p . 8211 . Amruthnath , N . and T . Gupta . A research study on unsupervised machine learning algorithms for early fault detection in predictive maintenance . in 2018 5th International Conference on Industrial Engineering and Applications ( ICIEA ). 2018 . IEEE . Engineering Service Division , M . o . H . M ., Project Operation Guidelines for Biomedical Engineering Maintenances Services ( BEMS ). 2015 : Putrajaya , Malaysia . Wuest , T ., et al ., Machine learning in manufacturing : advantages , challenges , and applications . Production & Manufacturing Research , 2016 . 4 ( 1 ): p . 23-45 . Ahmad , M . A ., C . Eckert , and A . Teredesai . Interpretable machine learning in healthcare . in Proceedings of the 2018 ACM international conference on bioinformatics , computational biology , and health informatics . 2018 . Alias , M . S . A ., N . Ibrahim , and Z . M . Zin , Comparative Study of Machine Learning Algorithms and Correlation Between Input Parameters . International Journal of Integrated Engineering , 2019 . 11 ( 4 ). Jain , A . K ., M . N . Murty , and P . J . Flynn , Data clustering : a review . ACM computing surveys ( CSUR ), 1999 . 31 ( 3 ): p . 264-323 . Pham , D . T . and A . A . Afify , Machine-learning techniques and their applications in manufacturing . Proceedings of the Institution of Mechanical Engineers , Part B : Journal of Engineering Manufacture , 2005 . 219 ( 5 ): p . 395- 412 .
21