实现麻醉闭环控制的机器学习技术

O. Caelen, Gianluca Bontempi, E. Coussaert, L. Barvais, Francois Clement
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引用次数: 9

摘要

手术室中越来越多的高通量测量设备使得收集大量关于手术过程中患者状态和医生实践的数据成为可能。本文探讨了从这些数据中提取相关信息和相关决策规则的可能性,以支持日常麻醉程序。我们特别关注机器学习策略来设计一个闭环控制器,在不久的将来,它可以发挥决策支持工具的作用,从进一步的角度来看,它可以成为麻醉过程的自动驾驶员之一。根据ULB Erasme麻醉小组近年来收集的测量数据,评估了从观察数据中学习控制器的两种策略(直接和反向)。在模拟框架下,通过双谱指数(BIS)将学习方法应用于催眠调节的初步结果似乎是有希望的,值得未来的研究
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques to Enable Closed-Loop Control in Anesthesia
The growing availability of high throughput measurement devices in the operating room makes possible the collection of a huge amount of data about the state of the patient and the doctors' practice during a surgical operation. This paper explores the possibility of extracting from these data relevant information and pertinent decision rules in order to support the daily anesthesia procedures. In particular we focus on machine learning strategies to design a closed-loop controller that, in a near future, could play the role of a decision support tool and, in a further perspective, the one of automatic pilot of the anesthesia procedure. Two strategies (direct and inverse) for learning a controller from observed data are assessed on the basis of a database of measurements collected in recent years by the ULB Erasme anaesthesiology group. The preliminary results of the learning approach applied to the regulation of hypnosis through the bispectral index (BIS) in a simulated framework appear to be promising and worthy of future investigation
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