Sundaravadivel T, Mahalakshmi V
Mater Today Proc. 2022;56:3317-3324. doi: 10.1016/j.matpr.2021.10.153. Epub 2021 Oct 25.
Covid-19 cases are increasing each day, however none of the countries successfully came up with a proper approved vaccine. Studies suggest that the virus enters the body causing a respiratory infection post contact with a disease. Measures like screening and early diagnosis contribute towards the management of COVID- 19 thereby reducing the load of health care systems. Recent studies have provided promising methods that will be applicable for the current pandemic situation. The previous system designed a various Machine Learning (ML) algorithms such as Decision Tree (DT), Random Forest (RF), XGBoost, Gradient Boosting Machine (GBM) and Support Vector Machine (SVM) for predicting COVID-19 disease with symptoms. However, it does not produce satisfactory results in terms of true positive rate. And also, better optimization methods are required to enhance the precision rate with minimum execution time. To solve this problem the proposed system designed a Weighted Butterfly Optimization Algorithm (WBOA) with Intuitionistic fuzzy Gaussian function based Adaptive-Neuro Fuzzy Inference System (IFGF-ANFIS) classifier for predicting the magnitude of COVID- 19 disease. The principle aim of this method is to design an algorithm that could predict and assess the COVID-19 parameters. Initially, the dataset regarding COVID-19 is taken as an input and preprocessed. The parameters included are age, sex, history of fever, travel history, presence of cough and lung infection. Then the optimal features are selected by using Weighted Butterfly Optimization Algorithm (WBOA) to improve the classification accuracy. Based on the selected features, an Intuitionistic fuzzy Gaussian function based Adaptive-Neuro Fuzzy Inference System (IFGF-ANFIS) classifier is utilized for classifying the people having infection possibility. The studies conducted on this proposed system indicates that it is capable of producing better results than the other systems especially in terms of accuracy, precision, recall and f-measure.
新冠病毒感染病例每天都在增加,然而没有一个国家成功研发出一种获得正式批准的疫苗。研究表明,该病毒在与疾病接触后进入人体,引发呼吸道感染。筛查和早期诊断等措施有助于新冠疫情的管控,从而减轻医疗系统的负担。近期研究提供了一些有望适用于当前疫情形势的方法。先前的系统设计了多种机器学习(ML)算法,如决策树(DT)、随机森林(RF)、XGBoost、梯度提升机(GBM)和支持向量机(SVM),用于根据症状预测新冠疾病。然而,在真阳性率方面,其并未产生令人满意的结果。此外,还需要更好的优化方法,以在最短执行时间内提高准确率。为解决这一问题,所提出的系统设计了一种基于直觉模糊高斯函数的自适应神经模糊推理系统(IFGF - ANFIS)分类器的加权蝴蝶优化算法(WBOA),用于预测新冠疾病的严重程度。该方法的主要目的是设计一种能够预测和评估新冠参数的算法。首先,将关于新冠病毒的数据集作为输入并进行预处理。所包含的参数有年龄、性别、发热史、旅行史、咳嗽和肺部感染情况。然后,使用加权蝴蝶优化算法(WBOA)选择最优特征,以提高分类准确率。基于所选特征,利用基于直觉模糊高斯函数的自适应神经模糊推理系统(IFGF - ANFIS)分类器对有感染可能性的人群进行分类。对该所提出系统进行的研究表明,它能够产生比其他系统更好的结果,尤其是在准确率、精确率、召回率和F值方面。