Abd Rahman Noorul Husna, Mohamad Zaki Muhammad Hazim, Hasikin Khairunnisa, Abd Razak Nasrul Anuar, Ibrahim Ayman Khaleel, Lai Khin Wee
Department of Biomedical Engineering, Universiti Malaya, Lembah Pantai, Wilayah Persekutuan Kuala Lumpur, Malaysia.
Engineering Services Division, Ministry of Health, Putrajaya, Wilayah Persekutuan Putrajaya, Malaysia.
PeerJ Comput Sci. 2023 Apr 3;9:e1279. doi: 10.7717/peerj-cs.1279. eCollection 2023.
The advancement of biomedical research generates myriad healthcare-relevant 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.
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.
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.
生物医学研究的进步产生了大量与医疗保健相关的数据,包括医疗记录和医疗设备维护信息。新冠疫情严重影响了全球死亡率,对医疗设备产生了巨大需求。随着信息技术的发展,智能医疗保健的概念逐渐受到关注。智能医疗利用新一代信息技术,如物联网、大数据、云计算和人工智能,彻底改变了传统医疗系统。为了阐述智能医疗保健的概念,提出了一种预测模型,用于预测医疗设备故障,以实现医疗服务的智能管理。
通过提出一种预测性机器学习模型来改善当前的医疗设备管理,该模型可预测医疗设备故障的趋势,以实现智能医疗保健。该预测模型基于从马来西亚15家医疗机构提取的44种不同类型设备中的8294台关键医疗设备开发。该模型将设备分为三类:(i)第1类,设备在购买后的前3年内不太可能出现故障;(ii)第2类,设备在购买日期起3年内可能出现故障;(iii)第3类,设备在购买后3年以上可能出现故障。目标是根据首次故障事件的时间建立精确的维护计划,并降低维护和资源成本。比较了机器学习和深度学习技术,并提出了适用于智能医疗保健的最佳稳健模型。
本研究比较了机器学习中的五种算法和深度学习技术中的三种优化器。最佳优化预测模型分别基于集成分类器和SGDM优化器。与深度学习模型的70.30%、83.71%和67.15%相比,集成分类器模型的准确率、特异性和精确率分别为77.90%、87.60%和75.39%。在识别出显著特征后,集成分类器模型的准确率、特异性和精确率提高到79.50%、88.36%和77.43%。结果表明,尽管机器学习的准确率高于深度学习,但需要更多的训练时间,应用深度学习时为1分5秒,而机器学习则需要11.49分钟。通过引入维护记录中的非结构化数据可以提高模型的准确率,这被认为是作者未来的工作,因为处理文本数据非常耗时。所提出的模型已被证明可以改进设备的维护策略,每年可降低约326,330.88马来西亚林吉特(MYR)的成本。因此,如果将这种智能预测模型纳入医疗管理系统,维护成本将大幅降低。