Classifier Model for COVID-19 Diagnosis using Hybrid Algorithms in Data Mining

IF 1.3 Q3 PEDIATRICS
Mohammad Saeedi, A. Ghazikhani, M. Nikooghadam
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引用次数: 0

Abstract

The outbreak of Covid-19 has created a difficult situation for all people around the world and the number of deaths is increasing daily. Diagnosis of Covid-19 by blood test (RT-PCR) is time consuming and experts are looking for a faster solution to control and counteract the further spread of the virus worldwide using non-clinical methods such as data technology. Mining, machine learning and artificial intelligence. Because the healthcare industry generates large amounts of data, we can use data mining to find hidden and understandable patterns that may help in rapid diagnosis and effective and efficient decision making. Prediction and diagnostic algorithms can reduce the pressure on health care systems by accurately and quickly identifying diseases. In this study, a proposed model for more accurate and faster diagnosis of patients with Covid-19 and healthy individuals using basic and combined data mining algorithms is presented. The data set includes: electronic medical and laboratory records of patients in Imam Reza (AS) Hospital in Mashhad, which has been implemented with the help of Python software version 3.7 and Veka version 3.9. We used basic algorithms such as: Naive Bayes, Decission Tree, K- nearest neighborhood, Support Vector Machine, Random Forest, Ada-Boost, Bagging, Majority Voting, XGBoost and Stacking. The results of the present study showed that the proposed model achieved an accuracy of 83% by using a combination of basic algorithms in the stacking classification, which used the gradient boosting algorithm in the meta part.
基于数据挖掘混合算法的COVID-19诊断分类器模型
新冠肺炎的爆发给世界各地的所有人带来了困难,死亡人数每天都在增加。通过血液检测(RT-PCR)诊断新冠肺炎很耗时,专家们正在寻找一种更快的解决方案,使用数据技术等非临床方法来控制和遏制病毒在全球的进一步传播。采矿、机器学习和人工智能。由于医疗保健行业产生了大量数据,我们可以使用数据挖掘来发现隐藏的、可理解的模式,这些模式可能有助于快速诊断和有效决策。预测和诊断算法可以通过准确快速地识别疾病来减轻医疗保健系统的压力。在这项研究中,提出了一种使用基本数据挖掘算法和组合数据挖掘算法对新冠肺炎患者和健康个体进行更准确、更快诊断的模型。该数据集包括:马什哈德Imam Reza(AS)医院患者的电子医疗和实验室记录,该记录是在Python软件3.7版和Veka 3.9版的帮助下实现的。我们使用了一些基本算法,如:朴素贝叶斯、决策树、K-最近邻域、支持向量机、随机森林、Ada-Boost、Bagging、多数投票、XGBoost和Stacking。本研究的结果表明,通过在堆叠分类中使用基本算法的组合,所提出的模型实现了83%的准确率,其中在元部分使用了梯度增强算法。
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
4 weeks
期刊介绍: International Journal of Pediatrics is a peer-reviewed, open access journal that publishes original researcharticles, review articles, and clinical studies in all areas of pediatric research. The journal accepts submissions presented as an original article, short communication, case report, review article, systematic review, or letter to the editor.
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