Predicting medical device failure: a promise to reduce healthcare facilities cost through smart healthcare management

被引:0
|
作者
Rahman N.H.A. [1 ,2 ]
Zaki M.H.M. [1 ]
Hasikin K. [1 ,3 ]
Razak N.A.A. [1 ]
Ibrahim A.K. [4 ]
Lai K.W. [1 ]
机构
[1] Department of Biomedical Engineering, Universiti Malaya, Lembah Pantai, Wilayah Persekutuan Kuala Lumpur
[2] Engineering Services Division, Ministry of Health, Putrajaya,Wilayah Persekutuan Putrajaya
[3] Center of Intelligent Systems for Emerging Technology (CISET), Faculty of Engineering, Universiti Malaya, Lembah Pantai, Wilayah Persekutuan Kuala Lumpur
[4] Faculty of Computing and Informatics, Universiti Malaysia Sabah, Sabah, Kota Kinabalu
关键词
Artificial intelligence; Deep learning; Machine learning; Maintenance cost; Medical device failure prediction; Medical device maintenance; Smart healthcare;
D O I
10.7717/PEERJ-CS.1279
中图分类号
学科分类号
摘要
Background: The advancement of biomedical research generates myriad healthcarerelevant data, including medical records and medical device maintenance information. The COVID-19 pandemic significantly affects the global mortality rate, creating an enormous demand for medical devices. As information technology has advanced, the concept of intelligent healthcare has steadily gained prominence. Smart healthcare utilises a new generation of information technologies, such as the Internet of Things (loT), big data, cloud computing, and artificial intelligence, to completely transform the traditional medical system. With the intention of presenting the concept of smart healthcare, a predictive model is proposed to predict medical device failure for intelligent management of healthcare services. Methods: Present healthcare device management can be improved by proposing a predictive machine learning model that prognosticates the tendency of medical device failures toward smart healthcare. The predictive model is developed based on 8,294 critical medical devices from 44 different types of equipment extracted from 15 healthcare facilities in Malaysia. The model classifies the device into three classes; (i) class 1, where the device is unlikely to fail within the first 3 years of purchase, (ii) class 2, where the device is likely to fail within 3 years from purchase date, and (iii) class 3 where the device is likely to fail more than 3 years after purchase. The goal is to establish a precise maintenance schedule and reduce maintenance and resource costs based on the time to the first failure event. A machine learning and deep learning technique were compared, and the best robust model for smart healthcare was proposed. Results: This study compares five algorithms in machine learning and three optimizers in deep learning techniques. The best optimized predictive model is based on ensemble classifier and SGDM optimizer, respectively. An ensemble classifier model produces 77.90%, 87.60%, and 75.39% for accuracy, specificity, and precision compared to 70.30%, 83.71%, and 67.15% for deep learning models. The ensemble classifier model improves to 79.50%, 88.36%, and 77.43% for accuracy, specificity, and precision after significant features are identified. The result concludes although machine learning has better accuracy than deep learning, more training time is required, which is 11.49 min instead of 1 min 5 s when deep learning is applied. The model accuracy shall be improved by introducing unstructured data from maintenance notes and is considered the author’s future work because dealing with text data is time-consuming. The proposed model has proven to improve the devices’ maintenance strategy with a Malaysian Ringgit (MYR) cost reduction of approximately MYR 326,330.88 per year. Therefore, the maintenance cost would drastically decrease if this smart predictive model is included in the healthcare management system. © 2023 Abd Rahman et al.
引用
收藏
页码:1 / 34
页数:33
相关论文
共 50 条
  • [41] An integrated community and primary healthcare worker intervention to reduce stigma and improve management of common mental disorders in rural India: protocol for the SMART Mental Health programme
    Mercian Daniel
    Pallab K. Maulik
    Sudha Kallakuri
    Amanpreet Kaur
    Siddhardha Devarapalli
    Ankita Mukherjee
    Amritendu Bhattacharya
    Laurent Billot
    Graham Thornicroft
    Devarsetty Praveen
    Usha Raman
    Rajesh Sagar
    Shashi Kant
    Beverley Essue
    Susmita Chatterjee
    Shekhar Saxena
    Anushka Patel
    David Peiris
    Trials, 22
  • [42] HEALTHCARE COST COMPARISON BETWEEN MORBIDLY OBESE INDIAN PATIENTS UNDERGOING BARIATRIC SURGERY VERSUS CONVENTIONAL TREATMENT Medical management of bariatric patients
    Lakdawala, M.
    Bhasker, A. G.
    OBESITY SURGERY, 2017, 27 : 681 - 681
  • [43] Improving Healthcare Quality and Reducing Cost via Online Interaction for Chinese Patients with Rheumatic Diseases Based on Smart System of Disease Management (SSDM) Mobile Tool
    Wei, Hua
    Huang, Anbin
    Luo, Li
    Wang, Fen
    Li, Qin
    Zhang, Hong
    Wang, Yong
    Ji, Peng
    Zhao, Yanping
    Shen, LingXun
    Wang, Zhengang
    Wei, Feng
    Xie, Tong
    Wang, Xiaohan
    Guo, Huifang
    Shu, Qiang
    Liu, Xiangyuan
    Du, Rong
    Zhang, Anbing
    Qin, Fang
    Wu, Bing
    Jia, Yuhua
    Xiao, Hui
    Xiao, Fei
    Zhang, Fengchun
    ARTHRITIS & RHEUMATOLOGY, 2019, 71
  • [44] A BUNDLED INTERVENTION INCLUDING EARLY CONSULTATION WITH A CARDIOLOGIST IN THE EMERGENCY DEPARTMENT TO REDUCE RE-HOSPITALIZATIONS AND HEALTHCARE COST FOR HIGH-RISK URBAN PATIENTS WITH ACUTE DECOMPENSATED HEART FAILURE
    Tabit, Corey
    Coplan, Mitchell
    Spencer, Kirk
    Sanghani, Rupa
    Liao, James
    JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2017, 69 (11) : 2567 - 2567
  • [46] Letter regarding article by Galbreath et al, "Long-Term Healthcare and cost outcomes of disease management in a large, randomized, community-based population with heart failure"
    Linden, A
    Wilson, T
    CIRCULATION, 2005, 112 (01) : E11 - E11
  • [47] Does increasing physician volume in primary healthcare facilities under the hierarchical medical system help reduce hospital service utilisation in China? A fixed-effects analysis using province-level panel data
    Li, Xiaotong
    Xu, Huiwen
    Du, Fang
    Zhu, Bin
    Xie, Pei
    Wang, Hankun
    Han, Xinxin
    BMJ OPEN, 2023, 13 (02):
  • [48] Elucidating and Creating Working Knowledge for the Care of the Frail Elderly Through User-Centered Technology Evaluation of a 4-Wheel Electric Power Assisted Bicycle: A Case Study of a Salutogenic Device in Healthcare Facilities in Japan
    Saijo, Miki
    Watanabe, Makiko
    Aoshima, Sanae
    Oda, Norihiro
    Matsumoto, Satoshi
    Kawamotos, Shishin
    KNOWLEDGE DISCOVERY, KNOWLEDGE ENGINEERING AND KNOWLEDGE MANAGEMENT, IC3K 2014, 2015, 553 : 605 - 620
  • [49] Heart Failure Association of the European Society of Cardiology position paper on the management of left ventricular assist device-supported patients for the non-left ventricular assist device specialist healthcare provider: Part 2: at the emergency department
    Milicic, Davor
    Ben Avraham, Binyamin
    Chioncel, Ovidiu
    Barac, Yaron D.
    Goncalvesova, Eva
    Grupper, Avishai
    Altenberger, Johann
    Frigeiro, Maria
    Ristic, Arsen
    De Jonge, Nicolaas
    Tsui, Steven
    Lavee, Jacob
    Rosano, Giuseppe
    Generosa Crespo-Leiro, Marisa
    Coats, Andrew J. S.
    Seferovic, Petar
    Ruschitzka, Frank
    Metra, Marco
    Anker, Stefan
    Filippatos, Gerasimos
    Adamopoulos, Stamatis
    Abuhazira, Miriam
    Elliston, Jeremy
    Gotsman, Israel
    Hamdan, Righab
    Hammer, Yoav
    Hasin, Tal
    Hill, Lorrena
    Ben Zadok, Osnat Itzhaki
    Mullens, Wilfried
    Nalbantgil, Sanemn
    Piepoli, Massimo Francesco
    Ponikowski, Piotr
    Potena, Luciano
    Ruhparwar, Arjang
    Shaul, Aviv
    Tops, Laurens F.
    Winnik, Stephan
    Jaarsma, Tiny
    Gustafsson, Finn
    Ben Gal, Tuvia
    ESC HEART FAILURE, 2022, 8 (06): : 4409 - 4424
  • [50] Heart Failure Association of the European Society of Cardiology position paper on the management of left ventricular assist device-supported patients for the non-left ventricular assist device specialist healthcare provider: Part 2: at the emergency department
    Milicic, Davor
    Ben Avraham, Binyamin
    Chioncel, Ovidiu
    Barac, Yaron D.
    Goncalvesova, Eva
    Grupper, Avishai
    Altenberger, Johann
    Frigeiro, Maria
    Ristic, Arsen
    De Jonge, Nicolaas
    Tsui, Steven
    Lavee, Jacob
    Rosano, Giuseppe
    Generosa Crespo-Leiro, Marisa
    Coats, Andrew J. S.
    Seferovic, Petar
    Ruschitzka, Frank
    Metra, Marco
    Anker, Stefan
    Filippatos, Gerasimos
    Adamopoulos, Stamatis
    Abuhazira, Miriam
    Elliston, Jeremy
    Gotsman, Israel
    Hamdan, Righab
    Hammer, Yoav
    Hasin, Tal
    Hill, Lorrena
    Ben Zadok, Osnat Itzhaki
    Mullens, Wilfried
    Nalbantgil, Sanemn
    Piepoli, Massimo Francesco
    Ponikowski, Piotr
    Potena, Luciano
    Ruhparwar, Arjang
    Shaul, Aviv
    Tops, Laurens F.
    Winnik, Stephan
    Jaarsma, Tiny
    Gustafsson, Finn
    Ben Gal, Tuvia
    ESC HEART FAILURE, 2021, 8 (06): : 4409 - 4424