首页> 外文会议>2008 International Conference on Machine Learning and Cybernetics(2008机器学习与控制论国际会议)论文集 >COMPARING DECISION TREE AND OPTIMAL RISK PATTERN MINING FOR ANALYSING EMERGENCY ULTRA SHORT STAY UNIT DATA
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COMPARING DECISION TREE AND OPTIMAL RISK PATTERN MINING FOR ANALYSING EMERGENCY ULTRA SHORT STAY UNIT DATA

机译:比较决策树和最佳风险模式挖掘以分析紧急超短停留单元数据

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A data set contains patient records of Ultra Short Stay Unit (USSU) at emergency department at Toowoomba Base Hospital. Some patients were admitted to the hospital for further treatment after a long stay at USSU and other patients were discharged after a short stay at USSU. In most hospitals the USSU is not enough for large demand, and there will be better utilisation of the unit if medical professionals know what types of patients are more likely to be hospitalised before any treatment at USSU. Two data mining methods; decision trees and optimal risk pattern mining, have been applied on the data to explore cohorts of patients who are more likely to be admitted to the hospital. Results show that decision tree method is inadequate for finding understandable patterns, and that optimal risk pattern mining method is good for mining meaningful patterns for medical practitioners.
机译:数据集包含Toowoomba Base Hospital急诊科的超短住院病房(USSU)的患者记录。在USSU长期停留后,一些患者被送入医院接受进一步治疗,而在USSU短暂停留后,其他患者已出院。在大多数医院中,USSU不足以满足大量需求,如果医疗专业人员在USSU进行任何治疗之前就知道哪种类型的患者更有可能住院,则USSU的利用率会更高。两种数据挖掘方法;决策树和最佳风险模式挖掘已应用到数据中,以探索更可能入院的患者队列。结果表明,决策树方法不足以发现可理解的模式,而最佳风险模式挖掘方法则对于挖掘从业者有意义的模式是有好处的。

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