{"title":"Machine learning in healthcare strategic management: a systematic literature review","authors":"S. Salhout","doi":"10.1108/agjsr-06-2023-0252","DOIUrl":null,"url":null,"abstract":"PurposeThis study specifically seeks to investigate the strategic implementation of machine learning (ML) algorithms and techniques in healthcare institutions to enhance innovation management in healthcare settings.Design/methodology/approach The papers from 2011 to 2021 were considered following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines. First, relevant keywords were identified, and screening was performed. Bibliometric analysis was performed. One hundred twenty-three relevant documents that passed the eligibility criteria were finalized.Findings Overall, the annual scientific production section results reveal that ML in the healthcare sector is growing significantly. Performing bibliometric analysis has helped find unexplored areas; understand the trend of scientific publication; and categorize topics based on emerging, trending and essential. The paper discovers the influential authors, sources, countries and ML and healthcare management keywords.Research limitations/implications The study helps understand various applications of ML in healthcare institutions, such as the use of Internet of Things in healthcare, the prediction of disease, finding the seriousness of a case, natural language processing, speech and language-based classification, etc. This analysis would help future researchers and developers target the healthcare sector areas that are likely to grow in the coming future.Practical implications The study highlights the potential for ML to enhance medical support within healthcare institutions. It suggests that regression algorithms are particularly promising for this purpose. Hospital management can leverage time series ML algorithms to estimate the number of incoming patients, thus increasing hospital availability and optimizing resource allocation. ML has been instrumental in the development of these systems. By embracing telemedicine and remote monitoring, healthcare management can facilitate the creation of online patient surveillance and monitoring systems, allowing for early medical intervention and ultimately improving the efficiency and effectiveness of medical services.Originality/value By offering a comprehensive panorama of ML's integration within healthcare institutions, this study underscores the pivotal role of innovation management in healthcare. The findings contribute to a holistic understanding of ML's applications in healthcare and emphasize their potential to transform and optimize healthcare delivery.","PeriodicalId":50978,"journal":{"name":"Arab Gulf Journal of Scientific Research","volume":"118 18","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-12-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Arab Gulf Journal of Scientific Research","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1108/agjsr-06-2023-0252","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Business, Management and Accounting","Score":null,"Total":0}
引用次数: 0
Abstract
PurposeThis study specifically seeks to investigate the strategic implementation of machine learning (ML) algorithms and techniques in healthcare institutions to enhance innovation management in healthcare settings.Design/methodology/approach The papers from 2011 to 2021 were considered following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines. First, relevant keywords were identified, and screening was performed. Bibliometric analysis was performed. One hundred twenty-three relevant documents that passed the eligibility criteria were finalized.Findings Overall, the annual scientific production section results reveal that ML in the healthcare sector is growing significantly. Performing bibliometric analysis has helped find unexplored areas; understand the trend of scientific publication; and categorize topics based on emerging, trending and essential. The paper discovers the influential authors, sources, countries and ML and healthcare management keywords.Research limitations/implications The study helps understand various applications of ML in healthcare institutions, such as the use of Internet of Things in healthcare, the prediction of disease, finding the seriousness of a case, natural language processing, speech and language-based classification, etc. This analysis would help future researchers and developers target the healthcare sector areas that are likely to grow in the coming future.Practical implications The study highlights the potential for ML to enhance medical support within healthcare institutions. It suggests that regression algorithms are particularly promising for this purpose. Hospital management can leverage time series ML algorithms to estimate the number of incoming patients, thus increasing hospital availability and optimizing resource allocation. ML has been instrumental in the development of these systems. By embracing telemedicine and remote monitoring, healthcare management can facilitate the creation of online patient surveillance and monitoring systems, allowing for early medical intervention and ultimately improving the efficiency and effectiveness of medical services.Originality/value By offering a comprehensive panorama of ML's integration within healthcare institutions, this study underscores the pivotal role of innovation management in healthcare. The findings contribute to a holistic understanding of ML's applications in healthcare and emphasize their potential to transform and optimize healthcare delivery.
目的 本研究旨在探讨医疗机构如何战略性地实施机器学习(ML)算法和技术,以加强医疗机构的创新管理。首先,确定相关关键词并进行筛选。然后进行文献计量分析。总体而言,年度科研成果部分的结果显示,医疗保健领域的 ML 正在显著增长。进行文献计量分析有助于发现尚未开发的领域,了解科学出版物的趋势,并根据新兴、趋势和必要对主题进行分类。本论文发现了有影响力的作者、来源、国家以及 ML 和医疗保健管理关键词。研究局限性/意义 本研究有助于了解 ML 在医疗保健机构中的各种应用,如在医疗保健中使用物联网、预测疾病、发现病例的严重性、自然语言处理、基于语音和语言的分类等。这项分析将有助于未来的研究人员和开发人员瞄准未来可能增长的医疗保健领域。研究表明,回归算法在这方面大有可为。医院管理部门可以利用时间序列 ML 算法来估算入院病人的数量,从而提高医院的可用性并优化资源分配。ML 在这些系统的开发过程中发挥了重要作用。通过接受远程医疗和远程监控,医疗保健管理部门可以促进创建在线患者监控系统,从而实现早期医疗干预,并最终提高医疗服务的效率和效果。 原创性/价值 本研究通过对 ML 在医疗保健机构中的整合提供一个全面的全景图,强调了创新管理在医疗保健中的关键作用。研究结果有助于全面了解 ML 在医疗保健领域的应用,并强调了其改变和优化医疗保健服务的潜力。