McFadden Benjamin R, Reynolds Mark, Inglis Timothy J J
School of Physics, Mathematics and Computing, University of Western Australia, Perth, WA, Australia.
Western Australian Country Health Service, Perth, WA, Australia.
Front Digit Health. 2023 Sep 27;5:1260602. doi: 10.3389/fdgth.2023.1260602. eCollection 2023.
Infection science is a discipline of healthcare which includes clinical microbiology, public health microbiology, mechanisms of microbial disease, and antimicrobial countermeasures. The importance of infection science has become more apparent in recent years during the SARS-CoV-2 (COVID-19) pandemic and subsequent highlighting of critical operational domains within infection science including the hospital, clinical laboratory, and public health environments to prevent, manage, and treat infectious diseases. However, as the global community transitions beyond the pandemic, the importance of infection science remains, with emerging infectious diseases, bloodstream infections, sepsis, and antimicrobial resistance becoming increasingly significant contributions to the burden of global disease. Machine learning (ML) is frequently applied in healthcare and medical domains, with growing interest in the application of ML techniques to problems in infection science. This has the potential to address several key aspects including improving patient outcomes, optimising workflows in the clinical laboratory, and supporting the management of public health. However, despite promising results, the implementation of ML into clinical practice and workflows is limited. Enabling the migration of ML models from the research to real world environment requires the development of trustworthy ML systems that support the requirements of users, stakeholders, and regulatory agencies. This paper will provide readers with a brief introduction to infection science, outline the principles of trustworthy ML systems, provide examples of the application of these principles in infection science, and propose future directions for moving towards the development of trustworthy ML systems in infection science.
感染科学是医疗卫生领域的一门学科,包括临床微生物学、公共卫生微生物学、微生物致病机制以及抗菌对策。近年来,在严重急性呼吸综合征冠状病毒2(SARS-CoV-2,即新冠病毒)大流行期间,以及随后对感染科学关键业务领域(包括医院、临床实验室和公共卫生环境)的重点强调,以预防、管理和治疗传染病,感染科学的重要性变得更加明显。然而,随着全球社会度过大流行阶段,感染科学的重要性依然存在,新发传染病、血流感染、脓毒症以及抗菌药物耐药性对全球疾病负担的影响日益显著。机器学习(ML)在医疗卫生和医学领域经常得到应用,人们对将ML技术应用于感染科学问题的兴趣也与日俱增。这有可能解决几个关键问题,包括改善患者治疗效果、优化临床实验室的工作流程以及支持公共卫生管理。然而,尽管取得了一些令人鼓舞的成果,但ML在临床实践和工作流程中的应用仍然有限。要使ML模型从研究环境迁移到现实环境,就需要开发出值得信赖的ML系统,以满足用户、利益相关者和监管机构的要求。本文将向读者简要介绍感染科学,概述值得信赖的ML系统的原则,列举这些原则在感染科学中的应用实例,并为在感染科学领域朝着开发值得信赖的ML系统的方向发展提出未来建议。