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Applying Data Mining Techniques in Healthcare

机译:在医疗保健中应用数据挖掘技术

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摘要

Healthcare sector provides huge volume of data on patients and their illnesses, on health insurance plants, medication and treatment schedules for different diseases, on medical services and so forth. Nowadays, there is a growing demand for the healthcare community to transform the existing quantities of healthcare data into value-added data, by discovering unknown patterns and relations between these data and by using them in the decision-making process, even if they refer to management, planning or treatments. Data mining consists in discovering knowledge and techniques such as classification and regression trees, logistic regression and neural networks that are adequate to predict the health status of a patient, by taking into account various medical parameters (also known as attributes) and demographic parameters. This paper presents a case study on the classification of patients with thyroid dysfunctions into three classes (i.e. 1 hypothyroidism, 2 - hyperthyroidism, 3-normal) by using data mining algorithms and discusses possible methods to improve the accuracy of the considered classification models.
机译:医疗保健部门提供有关患者及其疾病,健康保险工厂,针对不同疾病的药物和治疗时间表,医疗服务等方面的大量数据。如今,医疗保健界越来越需要通过发现未知的模式和这些数据之间的关系,并在决策过程中使用它们(即使它们涉及到)来将现有的医疗保健数据量转换为增值数据。管理,计划或治疗。数据挖掘在于通过考虑各种医学参数(也称为属性)和人口统计参数,发现足以预测患者健康状况的知识和技术,例如分类和回归树,逻辑回归和神经网络。本文提供了一个案例研究,通过使用数据挖掘算法将甲状腺功能障碍患者分为三类(即1种甲状腺功能减退,2种甲状腺功能亢进,3种正常),并讨论了提高所考虑分类模型准确性的可能方法。

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