Gürkan Kuntalp Damla, Özcan Nermin, Düzyel Okan, Kababulut Fevzi Yasin, Kuntalp Mehmet
Department of Electrical and Electronics Engineering, Dokuz Eylül University, İzmir 35160, Türkiye.
Department of Biomedical Engineering, İskenderun Technical University, İskenderun 31200, Türkiye.
Diagnostics (Basel). 2024 Oct 8;14(19):2244. doi: 10.3390/diagnostics14192244.
The correct diagnosis and early treatment of respiratory diseases can significantly improve the health status of patients, reduce healthcare expenses, and enhance quality of life. Therefore, there has been extensive interest in developing automatic respiratory disease detection systems. Most recent methods for detecting respiratory disease use machine and deep learning algorithms. The success of these machine learning methods depends heavily on the selection of proper features to be used in the classifier. Although metaheuristic-based feature selection methods have been successful in addressing difficulties presented by high-dimensional medical data in various biomedical classification tasks, there is not much research on the utilization of metaheuristic methods in respiratory disease classification. This paper aims to conduct a detailed and comparative analysis of six widely used metaheuristic optimization methods using eight different transfer functions in respiratory disease classification. For this purpose, two different classification cases were examined: binary and multi-class. The findings demonstrate that metaheuristic algorithms using correct transfer functions could effectively reduce data dimensionality while enhancing classification accuracy.
呼吸系统疾病的正确诊断和早期治疗可以显著改善患者的健康状况,降低医疗费用,并提高生活质量。因此,开发自动呼吸系统疾病检测系统引起了广泛关注。最近检测呼吸系统疾病的方法使用了机器学习和深度学习算法。这些机器学习方法的成功很大程度上取决于分类器中使用的适当特征的选择。尽管基于元启发式的特征选择方法在解决各种生物医学分类任务中高维医学数据带来的困难方面取得了成功,但在呼吸系统疾病分类中利用元启发式方法的研究并不多。本文旨在对六种广泛使用的元启发式优化方法在呼吸系统疾病分类中使用八种不同传递函数进行详细的比较分析。为此,研究了两种不同的分类情况:二分类和多分类。研究结果表明,使用正确传递函数的元启发式算法可以有效降低数据维度,同时提高分类准确率。