Arueyingho Oritsetimeyin V, Al-Taie Anmar, McCallum Claire
School of Computer Science, Electrical and Electronic Engineering, and Engineering Maths (SCEEM), Centre for Doctoral Training in Digital Health and Care, University of Bristol, UK.
Department of Clinical Pharmacy, Faculty of Pharmacy, Istinye University, Istanbul, Turkey.
Digit Health. 2024 Oct 22;10:20552076221144095. doi: 10.1177/20552076221144095. eCollection 2024 Jan-Dec.
Healthcare institutions focus on improving the quality of life for end-users, with key performance indicators like access to essential medicines reflecting the effectiveness of management. Effective healthcare management involves planning, organizing, and controlling institutions built on human resources, data systems, service delivery, access to medicines, finance, and leadership. According to the World Health Organization, these elements must be balanced for an optimal healthcare system. Big data generated from healthcare institutions, including health records and genomic data, is crucial for smart staffing, decision-making, risk management, and patient engagement. Properly organizing and analysing this data is essential, and machine learning, a sub-field of artificial intelligence, can optimize these processes, leading to better overall healthcare management.
This review examines the major applications of machine learning in healthcare management, the algorithms frequently used in data analysis, their limitations, and the evidence-based benefits of machine learning in healthcare.
Following PRISMA guidelines, databases such as IEEE Xplore, ScienceDirect, ACM Digital Library, and SCOPUS were searched for eligible articles published between 2011 and 2021. Articles had to be in English, peer-reviewed, and include relevant keywords like healthcare, management, and machine learning.
Out of 51 relevant articles, 6 met the inclusion criteria. Identified algorithms include topic modelling, dynamic clustering, neural networks, decision trees, and ensemble classifiers, applied in areas such as electronic health records, chatbots, and multi-disease prediction.
Machine learning supports healthcare management by aiding decision-making, processing big data, and providing insights for system improvements.
医疗机构专注于提高终端用户的生活质量,诸如基本药物可及性等关键绩效指标反映了管理的有效性。有效的医疗管理涉及对基于人力资源、数据系统、服务提供、药品可及性、财务和领导力的机构进行规划、组织和控制。根据世界卫生组织的说法,这些要素必须保持平衡才能构建一个优化的医疗系统。医疗机构产生的大数据,包括健康记录和基因组数据,对于智能人员配置、决策制定、风险管理和患者参与至关重要。对这些数据进行妥善组织和分析至关重要,而机器学习作为人工智能的一个子领域,可以优化这些流程,从而实现更好的整体医疗管理。
本综述探讨机器学习在医疗管理中的主要应用、数据分析中常用的算法、其局限性以及机器学习在医疗领域基于证据的益处。
遵循PRISMA指南,在IEEE Xplore、ScienceDirect、ACM数字图书馆和SCOPUS等数据库中搜索2011年至2021年期间发表的符合条件的文章。文章必须为英文、经过同行评审且包含医疗、管理和机器学习等相关关键词。
在51篇相关文章中,6篇符合纳入标准。确定的算法包括主题建模、动态聚类、神经网络、决策树和集成分类器,应用于电子健康记录、聊天机器人和多种疾病预测等领域。
机器学习通过辅助决策制定、处理大数据以及为系统改进提供见解来支持医疗管理。