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A novel data mining mechanism considering bio-signal and environmental data with applications on asthma monitoring.

机译:一种新颖的数据挖掘机制,考虑了生物信号和环境数据,并应用于哮喘监测。

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摘要

Chronic asthmatic sufferers need to be constantly observed to prevent sudden attacks. In order to improve the efficiency and effectiveness of patient monitoring, we proposed in this paper a novel data mining mechanism for predicting attacks of chronic diseases by considering of both bio-signals of patients and environmental factors. We proposed two data mining methods, namely Pattern Based Decision Tree (PBDT) and Pattern Based Class-Association Rule (PBCAR). Both methods integrate the concepts of sequential pattern mining to extract features of asthma attacks, and then build classifiers with the concepts of decision tree mining and rule-based method respectively. Besides the general clinical data of patients, we considered environmental factors, which are related to many chronic diseases. For experimental evaluations, we adopted the children asthma allergic dataset collated from a hospital in Taiwan as well as the environmental factors like weather and air pollutant data. The experimental results show that PBCAR delivers 86.89% of accuracy and 84.12% of recall, and PBDT shows 87.52% accuracy and 85.59 of recall. These results also indicate that our methods can perform high accuracy and recall on predictions of chronic disease attacks. The readable rules of both classifiers can provide patients and healthcare workers with insights on essential illness related information. At the same time, additional environmental factors of input data are also proven to be valuable in predicting attacks.
机译:需要经常观察慢性哮喘患者,以防止突然发作。为了提高患者监测的效率和有效性,我们提出了一种新颖的数据挖掘机制,该机制通过考虑患者的生物信号和环境因素来预测慢性疾病的发作。我们提出了两种数据挖掘方法,即基于模式的决策树(PBDT)和基于模式的类关联规则(PBCAR)。两种方法都结合了顺序模式挖掘的概念以提取哮喘发作的特征,然后分别使用决策树挖掘和基于规则的方法来构建分类器。除了患者的一般临床数据外,我们还考虑了与许多慢性疾病有关的环境因素。为了进行实验评估,我们采用了台湾一家医院整理的儿童哮喘过敏数据集以及诸如天气和空气污染物数据之类的环境因素。实验结果表明,PBCAR的准确度为86.89%,召回率为84.12%; PBDT的准确度为87.52%,召回率为85.59。这些结果还表明,我们的方法可以实现较高的准确性,并且可以预测慢性病发作。两个分类器的可读规则可以为患者和医护人员提供有关基本疾病相关信息的见解。同时,输入数据的其他环境因素也被证明对预测攻击非常有价值。

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