基于蚁群算法和CHAID的慢性肾脏病患者新冠肺炎严重程度预测方法

F. Moeinzadeh, M. Sattari
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引用次数: 0

摘要

背景与目的:COVID-19大流行是一种现象,在全球范围内感染并导致许多人死亡。糖尿病、心力衰竭、慢性肾脏疾病(CKD)等基础疾病可影响COVID-19的严重程度并加重患者病情。本研究旨在结合特征选择和分类方法预测CKD患者COVID-19疾病的严重程度。材料和方法:本研究于2021年3月至2021年9月在伊斯法罕医学大学进行。该数据集包括72例肾移植患者、231例肾衰竭患者和105例透析患者的83个特征。数据集有77个输入属性,包括年龄、性别、糖尿病、高血压、缺血性心脏病、慢性肺病、肾移植等。本文提出的方法采用蚁群算法与CHAID方法相结合的方法。结果:蚁群算法与CHAID方法相结合比单独使用CHAID方法具有更好的性能。共提取了22条规则,其中6条置信度大于60%的规则被引入为选择规则。最可靠的规则是,如果一个人患有CKD第5期,没有接受透析(5ND),并且呼吸急促,在81%的病例中,COVID-19疾病的类型将是严重的。结论:本研究采用年龄、糖尿病、血压、CKD分期等变量来衡量肾脏患者COVID-19疾病的严重程度。结果显示,高水平的肾脏疾病可能导致严重的COVID-19。版权所有©2022 Firouzeh Moeinzadeh。
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Proposed Method for Predicting COVID-19 Severity in Chronic Kidney Disease Patients Based on Ant Colony Algorithm and CHAID
Background & Objective: The COVID-19 pandemic is a phenomenon that has infected and killed many people worldwide. Underlying diseases such as diabetes mellitus, heart failure, and chronic kidney disease (CKD) can affect the severity of COVID-19 and aggravate patients' condition. This study aimed to predict the severity of the COVID-19 disease in CKD patients by combining feature selection and classification methods. Material(s) and Method(s): This study was conducted between March 2021 and September 2021 in Isfahan University of Medical Sciences. The data set includes 83 traits of 72 kidney transplant patients, 231 kidney failure patients, and 105 dialysis patients. The data set has 77 input attributes, including age, sex, diabetes mellitus, hypertension, ischemic heart disease, chronic lung disease, and kidney transplant In the proposed method, the combination of ant colony algorithm and the CHAID method has been used. Result(s): The combination of the ant colony algorithm and CHAID method leads to better performance than CHAID alone. A total of 22 rules were extracted, of which 6 rules with a confidence of more than 60% were introduced as selected rules. The most reliable rule states that if a person has CKD stage 5, is not undergoing dialysis (5ND), and is short of breath, in 81% of cases the type of COVID-19 disease will be severe. Conclusion(s): In this study the severity of COVID-19 disease in kidney patients was measured using variables including age, diabetes mellitus, blood pressure, CKD stage, etc. The results showed that high levels of kidney disease can lead to severe COVID-19. Copyright © 2022 Firouzeh Moeinzadeh.
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