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Classification of severity of trachea stenosis from EEG signals using ordinal decision-tree based algorithms and ensemble-based ordinal and non-ordinal algorithms

机译:基于序数决策算法和基于基于序数和非序算法的脑电图信号的气管狭窄严重程度分类

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Machine learning is integrated nowadays in many data-driven applications that attempt to model the behavior of a system. Thus, the implementation of machine-learning algorithms for medical applications is growing, enabling doctors to make decisions based on the output of the model of the system?s behavior. The upper airway is involved in a variety of disorders that lead to non-specific symptoms; thus, upper-airway obstruction is frequently unrecognized or misdiagnosed. Bronchoscopy, which is a minimally invasive procedure, and lung function (spirometry) tests, which are relatively demanding for the patient, are currently the most common methods for diagnosing respiratory diseases. In this study, a novel, non-invasive procedure is proposed in which tracheal obstruction is identified based on brain signals. Specifically, the spectral information in electroencephalogram (EEG) signals is used as an input to an ensemble learner approach based on ordinal and non-ordinal classification algorithms, where the classification problem involves identifying the degree of airway obstruction. An experiment was conducted in which four healthy subjects breathed through three-dimensional (3D) geometric models of the trachea that mimicked different obstruction rates. Multi-subject classification was carried out in which the classification model of each subject was produced by training the model on the other subjects? datasets. The main findings were as follows. Firstly, the in-house ordinal classification algorithms, which included a C4.5 and a random-forest algorithm, both based on a weighted information-gain ratio measure, yielded better classification results than their non-ordinal counterparts and other conventional classifiers. Additionally, the study showed that when integrating the two types of algorithms (ordinal and non-ordinal) into an ensemble approach, the performance was improved relative to each individual classifier. Finally, the classification accuracy is such that the proposed method of using EEG signals for the identification of the degree of tracheal obstruction by means of an ensemble approach shows promise as a supplemental clinical test.
机译:在许多数据驱动的应用程序中,在尝试模拟系统行为的许多数据驱动应用程序中,可以集成机器学习。因此,用于医疗应用的机器学习算法的实现正在增长,使医生能够基于系统行为模型的输出来做出决策。上呼吸道参与了导致非特异性症状的各种疾病;因此,上气道阻塞经常无法识别或误诊。支气管镜检查是一种微创手术,肺功能(Spirometry)测试,对患者相对苛刻,目前是诊断呼吸系统疾病的最常见方法。在该研究中,提出了一种新的非侵入性程序,其中基于脑信号鉴定了气管阻塞。具体地,脑电图中的光谱信息(EEG)信号被用作基于序数和非序序分类算法的集合学习方法的输入,其中分类问题涉及识别气道阻塞程度。进行了一个实验,其中四种健康受试者通过气管的三维(3D)几何模型呼吸,其模仿不同的阻塞率。执行多主题分类,其中通过在其他主题上培训模型来生产每个受试者的分类模型?数据集。主要结果如下。首先,包括基于加权信息增益比率测量的C4.5和随机林算法的内部序数分类算法产生了比其非序对应物和其他传统分类器更好的分类结果。此外,该研究表明,当将这两种类型的算法(序数和非序数)集成到集合方法时,相对于每个分类器的性能得到改善。最后,分类精度使得使用EEG信号的方法通过集合方法鉴定气管障碍程度的鉴定的方法表明了作为补充临床测试的承诺。

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