Robust Machine Learning in Critical Care — Software Engineering and Medical Perspectives

M. Staron, Helena Odenstedt Herg'es, S. Naredi, L. Block, Ali El-Merhi, Richard Vithal, M. Elam
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引用次数: 2

Abstract

Using machine learning in clinical practice poses hard requirements on explainability, reliability, replicability and robustness of these systems. Therefore, developing reliable software for monitoring critically ill patients requires close collaboration between physicians and software engineers. However, these two different disciplines need to find own research perspectives in order to contribute to both the medical and the software engineering domain. In this paper, we address the problem of how to establish a collaboration where software engineering and medicine meets to design robust machine learning systems to be used in patient care. We describe how we designed software systems for monitoring patients under carotid endarterectomy, in particular focusing on the process of knowledge building in the research team. Our results show what to consider when setting up such a collaboration, how it develops over time and what kind of systems can be constructed based on it. We conclude that the main challenge is to find a good research team, where different competences are committed to a common goal.
重症监护中的鲁棒机器学习-软件工程和医学观点
在临床实践中使用机器学习对这些系统的可解释性、可靠性、可复制性和鲁棒性提出了苛刻的要求。因此,开发监测危重病人的可靠软件需要医生和软件工程师之间的密切合作。然而,这两个不同的学科需要找到自己的研究视角,以便为医学和软件工程领域做出贡献。在本文中,我们解决了如何在软件工程和医学相遇的地方建立协作的问题,以设计用于患者护理的健壮的机器学习系统。我们描述了我们如何设计用于监测颈动脉内膜切除术患者的软件系统,特别关注研究团队的知识构建过程。我们的结果显示了在建立这样的协作时应该考虑什么,它是如何随着时间的推移而发展的,以及在此基础上可以构建什么样的系统。我们的结论是,主要的挑战是找到一个好的研究团队,在这个团队中,不同的能力致力于一个共同的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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