基于Naïve贝叶斯分类器的猪流感预测医疗决策支持系统

Binal. A. Thakkar, Mosin I. Hasan, Mansi Desai
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引用次数: 26

摘要

医疗保健行业收集了大量的数据,这些数据没有得到适当的挖掘,也没有得到最佳的利用。发现这些隐藏的模式和关系往往是不被利用的。然而,目前正在进行的医学诊断研究可以根据过去从患者身上收集的数据来预测心脏、肺部和各种肿瘤的疾病。我们的研究主要集中在这方面的医学诊断,通过猪流感收集的数据学习模式。本研究已开发出智能猪流感预测软件(ISWPS)原型。我们使用Naïve贝叶斯分类器将猪流感患者分为三类(最不可能,可能或最可能)。我们使用了猪流感的17种症状,并从不同的医院和医生那里收集了110种症状集。使用ISWPS,我们获得了接近63.33%的精度。它在JAVA平台上实现。
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Health Care Decision Support System for Swine Flu Prediction Using Naïve Bayes Classifier
The healthcare industry collects a huge amount of data which is not properly mined and not put to the optimum use. Discovery of these hidden patterns and relationships often goes unexploited. However there is ongoing research in medical diagnosis which can predict the diseases of the heart, lungs and various tumors based on the past data collected from the patients. Our research focuses on this aspect of Medical diagnosis by learning pattern through the collected data for Swine Flu. This research has developed prototype Intelligent Swine flu Prediction software (ISWPS). We used Naïve Bayes classifier for classifying the patients of swine flu into three categories (least possible, probable or most probable). We have used 17 symptoms of Swine flu and collected 110 symptoms sets from various hospitals and medical practitioners. Using ISWPS, we have achieved an accuracy of nearly 63.33%. It is implemented on the JAVA platform.
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