A data mining algorithm for determination of influential factors on the hospitalization of patients subject to chronic obstructive pulmonary disease

S. Athari
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Abstract

Background: The present study is on the development of a data mining algorithm for finding the influential factors on the hospitalization of patients subject to chronic obstructive pulmonary disease. Materials and Methods: This is a descriptive analytical study conducted cross sectionally in 2017 on a research community of 150 people with disease symptoms referred to clinics and hospitals across Tehran (Iran). The people were surveyed by a self-designed questionnaire, including queries on life style and family information. The sampling was simple intuitive from previously published studies. The modeling of the data was based on the CRISP method. The C5 decision tree algorithm was used and the data was analyzed by RapidMiner software. Results: The common symptoms of the patients were found to be shortness of breath, cough, chest pain, sputum, continuous cold, and cyanogens. Besides, the family history, smoking, and exposure to allergic agents were other influential factors on the disease. After accomplishment of this study, the results were consulted with the experts of the field. Conclution: It is concluded that data mining can be applied for excavation of knowledge from the gathered data and for determination of the effective factors on patient conditions. Accordingly, this model can successfully predict the disease status of any patient from its symptoms.
慢性阻塞性肺疾病患者住院影响因素的数据挖掘算法
背景:本研究旨在开发一种数据挖掘算法,用于寻找慢性阻塞性肺疾病患者住院的影响因素。材料和方法:这是一项描述性分析研究,于2017年对在德黑兰(伊朗)的诊所和医院就诊的150名有疾病症状的研究群体进行了横断面研究。这些人接受了一份自己设计的问卷调查,包括生活方式和家庭信息。从之前发表的研究中,抽样是简单直观的。采用CRISP方法对数据进行建模。采用C5决策树算法,采用RapidMiner软件对数据进行分析。结果:患者的常见症状为呼吸短促、咳嗽、胸痛、痰多、持续受寒、发绀。此外,家族史、吸烟、接触过敏物质也是影响本病的其他因素。本研究完成后,与本领域的专家进行了研究。结论:数据挖掘可以用于从收集到的数据中挖掘知识,并确定影响患者病情的因素。因此,该模型可以成功地从症状预测任何患者的疾病状态。
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