A Proposed Hybrid Algorithm for detecting COVID-19 Patients

A. A. Hassan, Tarik A Rashid
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Abstract

COVID-19, one of the most dangerous pandemics, is currently affecting humanity. COVID-19 is spreading rapidly due to its high reliability transmissibility. Patients who test positive more often have mild to severe symptoms such as a cough, fever, raw throat, and muscle aches. Diseased people experience severe symptoms in more severe cases. such as shortness of breath, which can lead to respiratory failure and death. Machine learning techniques for detection and classification are commonly used in current medical diagnoses. However, for treatment using neural networks based on improved Particle Swarm Optimization (PSO), known as PSONN, the accuracy and performance of current models must be improved. This hybridization implements Particle Swarm Optimization and a neural network to improve results while slowing convergence and improving efficiency. The purpose of this study is to contribute to resolving this issue by presenting the implementation and assessment of Machine Learning models. Using Neural Networks and Particle Swarm Optimization to help in the detection of COVID-19 in its early stages. To begin, we preprocessed data from a Brazilian dataset consisted primarily of early-stage symptoms. Following that, we implemented Neural Network and Particle Swarm Optimization algorithms. We used precision, accuracy score, recall, and F-Measure tests to evaluate the Neural Network with Particle Swarm Optimization algorithms. Based on the comparison, this paper grouped the top seven ML models such as Neural Networks, Logistic Regression, Nave Bayes Classifier, Multilayer Perceptron, Support Vector Machine, BF Tree, Bayesian Networks algorithms and measured feature importance, and other, to justify the differences between classification models. Particle Swarm Optimization with Neural Network is being deployed to improve the efficiency of the detection method by more accurately predicting COVID-19 detection. Preprocessed datasets with important features are then fed into the testing and training phases as inputs. Particle Swarm Optimization was used for the training phase of a neural net to identify the best weights and biases. On training data, the highest rate of accuracy gained is 0.98.738 and on testing data, it is 98.689.  
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一种新型冠状病毒患者检测的混合算法
新冠肺炎是最危险的流行病之一,目前正在影响人类。新冠肺炎由于其高可靠性传播性,正在迅速传播。检测呈阳性的患者通常会出现轻度至重度症状,如咳嗽、发烧、喉咙痛和肌肉酸痛。患病者在更严重的情况下会出现严重症状。例如呼吸急促,这可能导致呼吸衰竭和死亡。用于检测和分类的机器学习技术通常用于当前的医学诊断。然而,对于使用基于改进粒子群优化(PSO)的神经网络(称为PSONN)的处理,必须提高当前模型的准确性和性能。这种杂交实现了粒子群优化和神经网络,以提高结果,同时减缓收敛并提高效率。本研究的目的是通过介绍机器学习模型的实施和评估,为解决这一问题做出贡献。使用神经网络和粒子群优化来帮助检测新冠肺炎的早期阶段。首先,我们对巴西数据集的数据进行了预处理,该数据集主要由早期症状组成。然后,我们实现了神经网络和粒子群优化算法。我们使用精度、准确度得分、召回率和F-Measure测试来评估粒子群优化算法的神经网络。在比较的基础上,本文对前七大ML模型进行了分组,如神经网络、逻辑回归、Nave Bayes分类器、多层感知器、支持向量机、BF树、贝叶斯网络算法和测量特征重要性等,以证明分类模型之间的差异。采用神经网络的粒子群优化正被部署,通过更准确地预测新冠肺炎检测来提高检测方法的效率。然后,将具有重要特征的预处理数据集作为输入输入到测试和训练阶段。粒子群优化用于神经网络的训练阶段,以确定最佳权重和偏差。在训练数据上,获得的最高准确率为0.98.738,在测试数据上,达到98.689。
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