A comparison of different classification algorithms for determining the depth of anesthesia level on a new set of attributes

Ayse Arslan, B. Şen, F. Çelebi, M. Peker, Abdulkadir But
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引用次数: 7

Abstract

The effect of anesthesia on patient is expressed as the depth of anesthesia. The detection of appropriate depth of anesthesia is a matter of great importance in surgery. Too deep or too little anesthesia implementation may lead to many psychological and physical disorders on patients. Therefore it is necessary to keep the patient at the most appropriate level of anesthesia. This process is important and challenging operation. In this study, a system is proposed which can be used to determine the depth of anesthesia in order to assist physician. Anesthetic substances significantly affect the cortex of the brain. There are studies for determination of depth of anesthesia by monitoring of brain activity. In this study, EEG signals that reflect the brain activity are utilized to measure the depth of anesthesia. The study consists of feature extraction and classification stages of the EEG signal. In the feature extraction stage, a new attribute set consisting of 44 attributes in different categories was obtained. In this way, it is aimed to create an effective set of attributes that can represent EEG signals. The obtained attributes were used as input parameters for classification algorithms. In classification stage, the classification problem is classified by seven different classification algorithms. In this way, comparison of calculation time and accuracy for obtained results in different classification algorithms was provided. With the proposed method for the determination of different depth of anesthesia, 98.169% classification accuracy was achieved.
不同分类算法在确定麻醉深度水平上的一组新属性的比较
麻醉对病人的影响表现为麻醉的深度。在外科手术中,选择合适的麻醉深度是一个非常重要的问题。麻醉实施过深或过少都可能导致患者出现许多心理和生理障碍。因此,有必要保持病人在最适当的麻醉水平。这个过程是一个重要且具有挑战性的操作。在这项研究中,提出了一个系统,可以用来确定麻醉的深度,以协助医生。麻醉物质会显著影响大脑皮层。有研究通过监测脑活动来确定麻醉的深度。在这项研究中,脑电图信号反映了大脑的活动被用来测量麻醉的深度。该研究分为脑电信号的特征提取和分类两个阶段。在特征提取阶段,得到一个由44个不同类别的属性组成的新属性集。通过这种方式,旨在创建一组有效的属性来表示EEG信号。将获得的属性作为分类算法的输入参数。在分类阶段,采用7种不同的分类算法对分类问题进行分类。这样可以比较不同分类算法得到的结果的计算时间和精度。采用该方法确定不同麻醉深度,分类准确率达到98.169%。
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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