Data Collected and Analysis of COVID-19 Infection Status: Case Study of Iraqi Hospital Patients in Diwaniyah and Najaf Governorates

Haitham Abdulaaima, Ali Hasan Taresh
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Abstract

In recent years, the coronavirus (COVID-19) spread in a dangerous and rapidly. It first appeared in the Chinese city of Wuhan in early December 2019, causing many cases of infection and death because of the rapid spread of the virus throughout the world. The conversion of patient information from paper to electronic helps the medical staff and researchers analyze and retrieve information faster. In this paper, we gathered data about patients infected with COVID-19 who were registered in the Iraqi hospitals of two governorates (Diwaniyah and Najaf) from 2020 to 2023. In addition, we used machine learning algorithms that protect the infection of the data entered for the patient. The highest accuracy (average in both datasets od Diwaniyah and Najaf) ) are achieved by both the algorithms Nave Bayes (90%) and Decision tree (90%) , while the K nearest neighbor (89%), Random forest() and artificial neural network (84).
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COVID-19感染状况数据收集与分析:以伊拉克迪瓦尼耶省和纳杰夫省医院患者为例
近年来,冠状病毒(COVID-19)以危险和迅速的方式传播。它于2019年12月初首次出现在中国武汉市,由于该病毒在全球的迅速传播,造成了许多感染和死亡病例。患者信息从纸质到电子的转换有助于医务人员和研究人员更快地分析和检索信息。在本文中,我们收集了2020年至2023年在伊拉克两个省(迪瓦尼耶和纳杰夫)医院登记的COVID-19感染患者的数据。此外,我们使用机器学习算法来保护患者输入的数据不受感染。最高的准确率(Diwaniyah和Najaf两个数据集的平均值)是由两种算法(90%)和决策树(90%)实现的,而K近邻(89%),随机森林()和人工神经网络(84)。
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