基于闵科夫斯基距离的新型脑电图聚类提高癫痫智能诊断水平

Dhiah Al-Shammary , Ekram Hakem , Ahmed M. Mahdi , Ayman Ibaida , Khandakar Ahmed
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引用次数: 0

摘要

本文介绍了一种基于闵科夫斯基数学相似性的新型聚类方法,以改进用于分类的脑电图特征选择,并在机器学习中实现高效的粒子群优化(PSO)。鉴于高维医学数据集的复杂性,特征选择在预防疾病和促进公众健康方面发挥着至关重要的作用。通过采用闵科夫斯基聚类,目标是将数据集记录归入两个具有高特征一致性的聚类,从而通过应用 PSO 等优化技术选择最优特征来提高准确性。此外,建议的模型还可扩展到智能数据集,包括脑电图和其他数据集。由于精确分类所需的特征较少,因此智能特征选择是机器学习的高级步骤。本文研究了影响脑电图波恩大学数据集特征选择的关键因素。将所提出的系统与各种优化和特征选择方法进行了比较,结果表明,根据准确度指标,该系统在分析和分类脑电信号方面表现出色。实验结果证实了所建议的模型作为脑电图数据分类的重要工具的有效性,准确率高达 100%。这项研究的成果有望使相关专业的医学专家受益,简化识别和诊断脑部疾病的过程。在技术上,采用了 RF、KNN、SVM、NB 和 DT 等机器学习算法对所选特征进行分类。
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A novel brain EEG clustering based on Minkowski distance to improve intelligent epilepsy diagnosis

This paper introduces a novel clustering approach based on Minkowski's mathematical similarity to improve EEG feature selection for classification and have efficient Particle Swarm Optimization (PSO) in the context of machine learning. Given the intricacy of high-dimensional medical datasets, feature selection plays a critical role in preventing disease and promoting public health. By employing Minkowski clustering, the objective is to group dataset records into two clusters exhibiting high feature coherence, thereby improving accuracy by applying optimization techniques like PSO to select the most optimal features. Furthermore, the proposed model can be extended to intelligent datasets, including EEG and others. As fewer features are needed for precise categorization, intelligent feature selection is an advanced step of machine learning. This paper investigates the key factors influencing feature selection in the EEG Bonn University dataset. The proposed system is compared against various optimization and feature selection methods, demonstrating superior performance in analyzing and classifying EEG signals based on accuracy measures. The experimental results have confirmed the effectiveness of the suggested model as a valuable tool for EEG data classification, achieving up to 100% accuracy. The outcomes of this research have the potential to benefit medical experts in related specialties by streamlining the process of identifying and diagnosing brain disorders. Technically, the machine learning algorithms RF, KNN, SVM, NB, and DT are employed to classify the selected features.

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来源期刊
Informatics in Medicine Unlocked
Informatics in Medicine Unlocked Medicine-Health Informatics
CiteScore
9.50
自引率
0.00%
发文量
282
审稿时长
39 days
期刊介绍: Informatics in Medicine Unlocked (IMU) is an international gold open access journal covering a broad spectrum of topics within medical informatics, including (but not limited to) papers focusing on imaging, pathology, teledermatology, public health, ophthalmological, nursing and translational medicine informatics. The full papers that are published in the journal are accessible to all who visit the website.
期刊最新文献
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