Soui Makram, Mansouri Nesrine, Alhamad Raed, Kessentini Marouane, Ghedira Khaled
College of Computing and Informatics, Saudi Electronic University, Riyadh, Saudi Arabia.
University of Gabes, Gabes, Tunisia.
Nonlinear Dyn. 2021;106(2):1453-1475. doi: 10.1007/s11071-021-06504-1. Epub 2021 May 18.
Nowadays, humanity is facing one of the most dangerous pandemics known as COVID-19. Due to its high inter-person contagiousness, COVID-19 is rapidly spreading across the world. Positive patients are often suffering from different symptoms that can vary from mild to severe including cough, fever, sore throat, and body aches. In more dire cases, infected patients can experience severe symptoms that can cause breathing difficulties which lead to stern organ failure and die. The medical corps all over the world are overloaded because of the exponentially myriad number of contagions. Therefore, screening for the disease becomes overwrought with the limited tools of test. Additionally, test results may take a long time to acquire, leaving behind a higher potential for the prevalence of the virus among other individuals by the patients. To reduce the chances of infection, we suggest a prediction model that distinguishes the infected COVID-19 cases based on clinical symptoms and features. This model can be helpful for citizens to catch their infection without the need for visiting the hospital. Also, it helps the medical staff in triaging patients in case of a deficiency of medical amenities. In this paper, we use the non-dominated sorting genetic algorithm (NSGA-II) to select the interesting features by finding the best trade-offs between two conflicting objectives: minimizing the number of features and maximizing the weights of selected features. Then, a classification phase is conducted using an AdaBoost classifier. The proposed model is evaluated using two different datasets. To maximize results, we performed a natural selection of hyper-parameters of the classifier using the genetic algorithm. The obtained results prove the efficiency of NSGA-II as a feature selection algorithm combined with AdaBoost classifier. It exhibits higher classification results that outperformed the existing methods.
如今,人类正面临着一种最危险的大流行病——新冠病毒病(COVID-19)。由于其高度的人际传染性,COVID-19正在全球迅速传播。阳性患者常常出现不同症状,从轻微到严重不等,包括咳嗽、发烧、喉咙痛和身体疼痛。在更严重的情况下,受感染患者会出现严重症状,导致呼吸困难,进而引发重要器官衰竭并死亡。由于感染病例呈指数级增长,世界各地的医疗团队不堪重负。因此,在检测工具有限的情况下,疾病筛查变得十分棘手。此外,获取检测结果可能需要很长时间,这使得患者将病毒传播给其他个体的可能性更高。为了降低感染几率,我们提出一种预测模型,该模型基于临床症状和特征来区分感染COVID-19的病例。这种模型有助于市民在无需前往医院的情况下发现自己是否感染。此外,在医疗设施不足的情况下,它还能帮助医护人员对患者进行分类。在本文中,我们使用非支配排序遗传算法(NSGA-II)通过在两个相互冲突的目标之间找到最佳权衡来选择有趣的特征:最小化特征数量并最大化所选特征的权重。然后,使用AdaBoost分类器进行分类阶段。我们使用两个不同的数据集对所提出的模型进行评估。为了使结果最大化,我们使用遗传算法对分类器的超参数进行自然选择。获得的结果证明了NSGA-II作为一种特征选择算法与AdaBoost分类器相结合的有效性。它展现出更高的分类结果,优于现有方法。