Using machine learning to predict perfusionists' critical decision-making during cardiac surgery.

R D Dias, M A Zenati, G Rance, Rithy Srey, D Arney, L Chen, R Paleja, L R Kennedy-Metz, M Gombolay
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Abstract

The cardiac surgery operating room is a high-risk and complex environment in which multiple experts work as a team to provide safe and excellent care to patients. During the cardiopulmonary bypass phase of cardiac surgery, critical decisions need to be made and the perfusionists play a crucial role in assessing available information and taking a certain course of action. In this paper, we report the findings of a simulation-based study using machine learning to build predictive models of perfusionists' decision-making during critical situations in the operating room (OR). Performing 30-fold cross-validation across 30 random seeds, our machine learning approach was able to achieve an accuracy of 78.2% (95% confidence interval: 77.8% to 78.6%) in predicting perfusionists' actions, having access to only 148 simulations. The findings from this study may inform future development of computerised clinical decision support tools to be embedded into the OR, improving patient safety and surgical outcomes.

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利用机器学习预测心脏手术中灌注师的关键决策。
心脏外科手术室是一个高风险和复杂的环境,多位专家作为一个团队工作,为患者提供安全和优质的护理。在心脏手术的体外循环阶段,需要做出关键的决定,灌注师在评估现有信息和采取一定的行动过程中起着至关重要的作用。在本文中,我们报告了一项基于模拟的研究结果,该研究使用机器学习来建立手术室(OR)危急情况下灌注师决策的预测模型。通过对30个随机种子进行30倍交叉验证,我们的机器学习方法在预测灌注师行为方面能够达到78.2%(95%置信区间:77.8%至78.6%)的准确率,仅访问了148次模拟。这项研究的发现可能会为未来计算机化临床决策支持工具的发展提供信息,这些工具将嵌入手术室,提高患者的安全性和手术效果。
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来源期刊
CiteScore
2.80
自引率
6.20%
发文量
102
期刊介绍: Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization is an international journal whose main goals are to promote solutions of excellence for both imaging and visualization of biomedical data, and establish links among researchers, clinicians, the medical technology sector and end-users. The journal provides a comprehensive forum for discussion of the current state-of-the-art in the scientific fields related to imaging and visualization, including, but not limited to: Applications of Imaging and Visualization Computational Bio- imaging and Visualization Computer Aided Diagnosis, Surgery, Therapy and Treatment Data Processing and Analysis Devices for Imaging and Visualization Grid and High Performance Computing for Imaging and Visualization Human Perception in Imaging and Visualization Image Processing and Analysis Image-based Geometric Modelling Imaging and Visualization in Biomechanics Imaging and Visualization in Biomedical Engineering Medical Clinics Medical Imaging and Visualization Multi-modal Imaging and Visualization Multiscale Imaging and Visualization Scientific Visualization Software Development for Imaging and Visualization Telemedicine Systems and Applications Virtual Reality Visual Data Mining and Knowledge Discovery.
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