Incorporating Feature Selection Methods into Machine Learning-Based Covid-19 Diagnosis

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS
Çağla Danacı, S. Tuncer
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引用次数: 0

Abstract

Abstract The aim of the study is to diagnose Covid-19 by machine learning algorithms using biochemical parameters. In addition to the aim of the study, October selection was performed using 14 different feature selection methods based on the biochemical parameters available to us. As a result of the study, the performance of the algorithms and feature selection methods was evaluated using performance evaluation criteria. The dataset used in the study consists of 100 covid-negative and 121 covid-positive data from a total of 221 patients. The dataset includes 16 biochemical parameters used for the diagnosis of Covid-19. Feature selection methods were used to reduce the number of parameters and perform the classification process. The result of the study shows that the new feature set obtained using feature selection algorithms yields very similar results to the set containing all features. Overall, 5 features obtained from 16 features by feature selection methods yielded the best performance for the K-Nearest Neighbour algorithm with the FSVFS feature selection method of 86.4 %.
将特征选择方法纳入基于机器学习的Covid-19诊断
摘要本研究的目的是利用生化参数的机器学习算法诊断Covid-19。除了研究目的之外,根据我们可以获得的生化参数,使用14种不同的特征选择方法进行十月选择。研究的结果是,使用性能评价标准对算法和特征选择方法的性能进行评价。该研究中使用的数据集包括来自221名患者的100例新冠病毒阴性和121例新冠病毒阳性数据。该数据集包括16个用于诊断Covid-19的生化参数。使用特征选择方法来减少参数数量并执行分类过程。研究结果表明,使用特征选择算法获得的新特征集与包含所有特征集的结果非常相似。总体而言,通过特征选择方法从16个特征中获得5个特征,k -最近邻算法的性能最佳,FSVFS特征选择方法的性能为86.4%。
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来源期刊
Applied Computer Systems
Applied Computer Systems COMPUTER SCIENCE, THEORY & METHODS-
自引率
10.00%
发文量
9
审稿时长
30 weeks
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