Mansour Nehal A, Saleh Ahmed I, Badawy Mahmoud, Ali Hesham A
Nile Higher Institute for Engineering and Technology, Mansoura, Egypt.
Computers and Control Department, Faculty of Engineering, Mansoura University, Mansoura, Egypt.
J Ambient Intell Humaniz Comput. 2022;13(1):41-73. doi: 10.1007/s12652-020-02883-2. Epub 2021 Jan 15.
The outbreak of Coronavirus (COVID-19) has spread between people around the world at a rapid rate so that the number of infected people and deaths is increasing quickly every day. Accordingly, it is a vital process to detect positive cases at an early stage for treatment and controlling the disease from spreading. Several medical tests had been applied for COVID-19 detection in certain injuries, but with limited efficiency. In this study, a new COVID-19 diagnosis strategy called Feature Correlated Naïve Bayes (FCNB) has been introduced. The FCNB consists of four phases, which are; Feature Selection Phase (FSP), Feature Clustering Phase (FCP), Master Feature Weighting Phase (MFWP), and Feature Correlated Naïve Bayes Phase (FCNBP). The FSP selects only the most effective features among the extracted features from laboratory tests for both COVID-19 patients and non-COVID-19 people by using the Genetic Algorithm as a wrapper method. The FCP constructs many clusters of features based on the selected features from FSP by using a novel clustering technique. These clusters of features are called Master Features (MFs) in which each MF contains a set of dependent features. The MFWP assigns a weight value to each MF by using a new weight calculation method. The FCNBP is used to classify patients based on the weighted Naïve Bayes algorithm with many modifications as the correlation between features. The proposed FCNB strategy has been compared to recent competitive techniques. Experimental results have proven the effectiveness of the FCNB strategy in which it outperforms recent competitive techniques because it achieves the maximum (99%) detection accuracy.
冠状病毒(COVID-19)的爆发在全球范围内迅速在人与人之间传播,以至于感染人数和死亡人数每天都在快速增加。因此,早期检测出阳性病例对于治疗和控制疾病传播是至关重要的过程。已经应用了几种医学检测方法来检测某些损伤中的COVID-19,但效率有限。在本研究中,引入了一种名为特征相关朴素贝叶斯(FCNB)的新型COVID-19诊断策略。FCNB由四个阶段组成,即:特征选择阶段(FSP)、特征聚类阶段(FCP)、主特征加权阶段(MFWP)和特征相关朴素贝叶斯阶段(FCNBP)。FSP通过使用遗传算法作为包装方法,仅从COVID-19患者和非COVID-19人群的实验室检测提取的特征中选择最有效的特征。FCP通过使用一种新颖的聚类技术,基于从FSP中选择的特征构建许多特征簇。这些特征簇被称为主特征(MFs),其中每个MF包含一组相关特征。MFWP通过使用一种新的权重计算方法为每个MF分配一个权重值。FCNBP用于基于加权朴素贝叶斯算法对患者进行分类,并进行了许多修改以考虑特征之间的相关性。所提出的FCNB策略已与最近的竞争技术进行了比较。实验结果证明了FCNB策略的有效性,它优于最近的竞争技术,因为它实现了最高(99%)的检测准确率。