用于新冠肺炎预测的关联规则挖掘

Q1 Decision Sciences
Vishnu Kumar Rai, Santonab Chakraborty, S. Chakraborty
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引用次数: 4

摘要

新冠肺炎是一场肆虐的大流行病,其影响范围从数百万人的生命损失到整个世界的社会和经济混乱。新冠肺炎在印度造成的灾难性冲击也是巨大的。目前,印度是亚洲新冠肺炎病例最多的国家。因此,对新冠肺炎患者进行无错误预测、快速诊断、疾病识别、隔离和治疗变得极其重要。如今,从临床数据集中挖掘知识并为疾病诊断提供科学决策在医疗保健领域得到了广泛应用。在这个方向上,在不同的数据挖掘工具中,关联规则挖掘已经成为一种流行的技术,可以提取宝贵的信息并开发重要的知识库,帮助快速自动地智能诊断不同的疾病。本文尝试开发一种基于关联规则挖掘的频繁模式增长算法的预测模型,以确定患者患新冠肺炎的可能性。它将呼吸问题、发烧、干咳、喉咙痛、出国旅行和参加大型聚会确定为新冠肺炎的主要指标。基于大型临床数据集,还提出了一种线性回归模型,该模型在正确预测新冠肺炎发生方面的准确率为73.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association rule mining for prediction of COVID-19
COVID-19 is a raging pandemic that has created havoc with its impact ranging from loss of millions of human lives to social and economic disruptions of the entire world. The catastrophic shock of COVID-19 in India is also enormous. Currently, India has the largest number of COVID cases in Asia. Therefore, error-free prediction, quick diagnosis, disease identification, isolation and treatment of a COVID patient have become extremely important. Nowadays, mining knowledge and providing scientific decision making for diagnosis of diseases from clinical datasets has found wide-ranging applications in healthcare sector. In this direction, among different data mining tools, association rule mining has already emerged out as a popular technique to extract invaluable information and develop important knowledge-base to help in intelligent diagnosis of distinct diseases quickly and automatically. In this paper, an attempt is put forward to develop a predictive model based on frequent pattern growth algorithm of association rule mining to determine the likelihood of COVID-19 in a patient. It identifies breathing problem, fever, dry cough, sore throat, abroad travel and attended large gathering as the main indicators of COVID-19. Based on a large clinical dataset, a linear regression model is also proposed having an accuracy of 73.9% in correctly predicting the occurrence of COVID-19.
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来源期刊
Decision Making Applications in Management and Engineering
Decision Making Applications in Management and Engineering Decision Sciences-General Decision Sciences
CiteScore
14.40
自引率
0.00%
发文量
35
审稿时长
14 weeks
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