Shaban Warda M, Rabie Asmaa H, Saleh Ahmed I, Abo-Elsoud M A
Nile higher institute for engineering and technology, Egypt.
Computers and Control Dept. faculty of engineering Mansoura University, Egypt.
Pattern Recognit. 2021 Nov;119:108110. doi: 10.1016/j.patcog.2021.108110. Epub 2021 Jun 16.
COVID-19, as an infectious disease, has shocked the world and still threatens the lives of billions of people. Early detection of COVID-19 patients is an important issue for treating and controlling the disease from spreading. In this paper, a new strategy for detecting COVID-19 infected patients will be introduced, which is called Distance Biased Naïve Bayes (DBNB). The novelty of DBNB as a proposed classification strategy is concentrated in two contributions. The first is a new feature selection technique called Advanced Particle Swarm Optimization (APSO) which elects the most informative and significant features for diagnosing COVID-19 patients. APSO is a hybrid method based on both filter and wrapper methods to provide accurate and significant features for the next classification phase. The considered features are extracted from Laboratory findings for different cases of people, some of whom are COVID-19 infected while some are not. APSO consists of two sequential feature selection stages, namely; Initial Selection Stage (IS) and Final Selection Stage (FS). IS uses filter technique to quickly select the most important features for diagnosing COVID-19 patients while removing the redundant and ineffective ones. This behavior minimizes the computational cost in FS, which is the next stage of APSO. FS uses Binary Particle Swarm Optimization (BPSO) as a wrapper method for accurate feature selection. The second contribution of this paper is a new classification model, which combines evidence from statistical and distance based classification models. The proposed classification technique avoids the problems of the traditional NB and consists of two modules; Weighted Naïve Bayes Module (WNBM) and Distance Reinforcement Module (DRM). The proposed DBNB tries to accurately detect infected patients with the minimum time penalty based on the most effective features selected by APSO. DBNB has been compared with recent COVID-19 diagnose strategies. Experimental results have shown that DBNB outperforms recent COVID-19 diagnose strategies as it introduce the maximum accuracy with the minimum time penalty.
作为一种传染病,新冠病毒病(COVID-19)震惊了世界,目前仍威胁着数十亿人的生命。早期发现COVID-19患者是治疗和控制该疾病传播的一个重要问题。本文将介绍一种检测COVID-19感染患者的新策略,即距离偏差朴素贝叶斯(DBNB)。作为一种提出的分类策略,DBNB的新颖之处集中在两个方面。第一个是一种名为高级粒子群优化(APSO)的新特征选择技术,它为诊断COVID-19患者选择最具信息性和显著性的特征。APSO是一种基于过滤和包装方法的混合方法,为下一个分类阶段提供准确和显著的特征。所考虑的特征是从不同人群病例的实验室检查结果中提取的,其中一些人感染了COVID-19,而另一些人没有。APSO由两个连续的特征选择阶段组成,即初始选择阶段(IS)和最终选择阶段(FS)。IS使用过滤技术快速选择诊断COVID-19患者的最重要特征,同时去除冗余和无效特征。这种做法将FS(APSO的下一阶段)中的计算成本降至最低。FS使用二进制粒子群优化(BPSO)作为包装方法进行精确的特征选择。本文的第二个贡献是一个新的分类模型,它结合了基于统计和距离的分类模型的证据。所提出的分类技术避免了传统朴素贝叶斯的问题,由两个模块组成;加权朴素贝叶斯模块(WNBM)和距离强化模块(DRM)。所提出的DBNB试图基于APSO选择的最有效特征,以最小的时间代价准确检测感染患者。DBNB已与最近的COVID-19诊断策略进行了比较。实验结果表明,DBNB优于最近的COVID-19诊断策略,因为它在最小的时间代价下引入了最高的准确性。