首页> 外文会议>IFAC Symposium on Modelling and Control in Biomedical Systems (including Biological Systems) >DATA MINING BASED DECISION-MAKING APPROACH FOR PREDICTING SURVIVAL OF KIDNEY DIALYSIS PATIENTS
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DATA MINING BASED DECISION-MAKING APPROACH FOR PREDICTING SURVIVAL OF KIDNEY DIALYSIS PATIENTS

机译:基于数据挖掘的决策方法,用于预测肾透析患者的存活

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Dialysis care is particularly complex and multiple factors may influence patient survival. The cost of such treatment for end stage kidney disease is high and needs attention for reducing it. Individual patient survival may depend on an intricate interrelationship between various demographic and clinical variables, medications, medical interventions and the dialysis treatment prescription. In this research, a data mining approach is used to extract knowledge regarding the interactions between the features and the outcome. There exist a complex and contradictory relationships among data mining rules that are difficult to interpret and implement. To resolve these conflicts a decision-making algorithm is developed using sixteen different classifiers. The decision-making algorithm employs simple and weighted voting schemes. Thus in this paper, a hybrid data mining enhanced decision making approach is used for predictions of an individual patient surviving beyond the median survival time. The concepts introduced in this research have been applied and tested using data collected at four dialysis sites.
机译:透析护理特别复杂,多种因素可能会影响患者存活。这种肾病这种治疗的成本很高,需要注意减少它。个体患者存活可能取决于各种人口统计和临床变量,药物,医疗干预和透析治疗处方之间复杂的相互关系。在本研究中,数据挖掘方法用于提取关于特征与结果之间的相互作用的知识。数据挖掘规则之间存在复杂和矛盾的关系,这些规则难以解释和实施。为了解决这些冲突,使用十六个不同的分类器开发了决策算法。决策算法采用简单和加权的投票方案。因此,在本文中,混合数据挖掘增强决策方法用于预测超出中位生存时间的单个患者存活的预测。在本研究中引入的概念已经应用和测试使用在四个透析位点收集的数据进行测试。

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