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Monitoring System for Sickle Cell Disease Patients by Using Supervised Machine Learning

机译:使用监督机器学习的镰状细胞病患者监测系统

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Recently, the need for a real-time healthcare monitoring system that able to offer remote and personal health-care services has increased. The patients with Sickle Cell Disease (SCD) require continuous services of testing, following-up and monitoring. Offering these services to patients smoothly at any time needs to integrated healthcare system. The recent development in information systems and technologies facilitate introducing such healthcare systems. This paper proposed an integrated system model, which offers the services of testing, following-up and monitoring patients with (SCD). The proposed system uses support vector machine SVM, which is supervised machine learning approach to analyze the collected data of a specific patient and takes the appropriate action such as send alert message to the healthcare staff. To perform the classification process, four methods are applied with SVM algorithm, which are Sequential Minimal Optimization SMO, Rules JRIP, Tree Decision Stump and Naive Bays for comparative analysis. In this paper, many experiments were implemented based on the four machine learning algorithms to determine patients of SCD from normal patients. The results were promising as they show 99% classifications were accurate when using SMO algorithm.
机译:近来,对能够提供远程和个人保健服务的实时保健监视系统的需求增加了。镰状细胞病(SCD)患者需要持续的测试,随访和监测服务。随时为患者顺利提供这些服务需要集成医疗系统。信息系统和技术的最新发展促进了这种医疗系统的引入。本文提出了一种集成的系统模型,该模型提供了测试,随访和监测(SCD)患者的服务。所提出的系统使用支持向量机SVM,它是一种受监督的机器学习方法,用于分析特定患者的收集数据,并采取适当的措施,例如向医疗人员发送警报消息。为了执行分类过程,使用SVM算法应用了四种方法,即顺序最小优化SMO,规则JRIP,树决策树桩和朴素Bays以进行比较分析。在本文中,基于四种机器学习算法进行了许多实验,以从正常患者中确定SCD患者。结果表明,使用SMO算法时99%的分类是准确的,结果令人鼓舞。

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