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Modelling and multivariable control in anaesthesia using neural-fuzzy paradigms Part Ⅰ. Classification of depth of anaesthesia and development of a patient model

机译:神经模糊范例对麻醉的建模和多变量控制麻醉深度的分类和患者模型的建立

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Objective: The first part of this research relates to two strands: classification of depth of anaesthesia (DOA) and the modelling of patient's vital signs. Methods and Material: First, a fuzzy relational classifier was developed to classify a set of wavelet-extracted features from the auditory evoked potential (AEP) into different levels of DOA. Second, a hybrid patient model using Takagi-Sugeno Kang fuzzy models was developed. This model relates the heart rate, the systolic arterial pressure and the AEP features with the effect concentrations of the anaesthetic drug propofol and the analgesic drug remifentanil. The surgical stimulus effect was incorporated into the patient model using Mamdani fuzzy models. Results: The result of this study is a comprehensive patient model which predicts the effects of the above two drugs on DOA while monitoring several vital patient's signs. Conclusion: This model will form the basis for the development of a multivariable closed-loop control algorithm which administers 'optimally' the above two drugs simultaneously in the operating theatre during surgery.
机译:目的:本研究的第一部分涉及两个方面:麻醉深度(DOA)的分类和患者生命体征的建模。方法和材料:首先,开发了模糊关系分类器,将听觉诱发电位(AEP)中的一组小波提取特征分类为不同级别的DOA。其次,开发了使用Takagi-Sugeno Kang模糊模型的混合患者模型。该模型将心率,收缩期动脉压和AEP特征与麻醉药异丙酚和镇痛药瑞芬太尼的作用浓度相关联。使用Mamdani模糊模型将手术刺激效果纳入患者模型。结果:这项研究的结果是一个综合的患者模型,该模型可以预测上述两种药物对DOA的影响,同时监测几个重要患者的体征。结论:该模型将为开发多变量闭环控制算法奠定基础,该算法在手术期间在手术室中同时“优化”管理上述两种药物。

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