COVID-19 Diagnosis from Blood Gas Using Multivariate Linear Regression

Ebubekir Seyyarer, Faruk Ayata
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Abstract

With the impact of the COVID-19 outbreak, almost all scientists and nations began to show great interest in the subject for a long time. Studies in the field of outbreak, diagnosis and prevention are still ongoing. Issues such as methods developed to understand the spread mechanisms of the disease, prevention measures, vaccine and drug research are among the top priorities of the world agenda. The accuracy of the tests applied in the outbreak management has become extremely critical. In this study, it is aimed to obtain a function that finds the positive or negative COVID-19 test from the blood gas values of individuals by using Machine Learning methods to contribute to the outbreak management. Using the Multivariate Linear Regression (MLR) model, a linear function is obtained to represent the COVID-19 dataset taken from the Van province of Turkey. The data set obtained from Van Yüzüncü Yıl University Dursun Odabaş Medical Center consists of blood gas analysis samples (109 positive, 1146 negative) taken from individuals. It is thought that the linear function to be obtained by using these data will be an important method in determining the test results of individuals. Gradient Descent optimization methods are used to find the optimum values of the coefficients in the function to be obtained. In the study, the RMSProp optimization algorithm has a success rate of 58-91.23% in all measurement methods, and it is seen that it is much more successful than other optimization algorithms.
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COVID-19 利用多元线性回归进行血气诊断
随着 COVID-19 疫情的爆发,几乎所有科学家和国家都开始对这一主题表现出长期的浓厚兴趣。疫情、诊断和预防领域的研究仍在继续。为了解疾病传播机制而开发的方法、预防措施、疫苗和药物研究等问题都是世界议程中的重中之重。在疫情管理中应用的测试的准确性已变得极为重要。本研究旨在利用机器学习方法获得一个函数,从个体的血气值中发现 COVID-19 检测的阳性或阴性,为疫情管理做出贡献。利用多元线性回归(MLR)模型,获得了一个线性函数来表示取自土耳其凡省的 COVID-19 数据集。从范尤祖努伊勒大学杜尔松-奥达巴什医疗中心获得的数据集包括从个人采集的血气分析样本(109 份阳性样本,1146 份阴性样本)。我们认为,利用这些数据获得的线性函数将是确定个人测试结果的重要方法。梯度下降优化方法用于寻找函数中系数的最佳值。在研究中,RMSProp 优化算法在所有测量方法中的成功率为 58%-91.23%,可见其成功率远远高于其他优化算法。
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