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首页> 外文期刊>International Journal of Healthcare Technology and Management >Data mining trauma injury data using C5.0 and logistic regression to determine factors associated with death
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Data mining trauma injury data using C5.0 and logistic regression to determine factors associated with death

机译:使用C5.0和Logistic回归数据确定创伤伤害数据以确定与死亡相关的因素

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摘要

Trauma injury data collected over 10 years at a UK hospital are analysed. The data include injury details such as patient age and gender, the mechanism of injury, various measures of injury severity, management interventions, and treatment outcome. Logistic regression modelling was used to determine which factors were independently associated with death during hospital stay. The data mining algorithm C5.0 was also used to determine those factors in the data that can be used to predict whether a patient will live or die. Logistic modelling and C5.0 show that different subsets of injury severity scores, and patient age, are associated with survival. In addition, C5.0 also shows that gender, and whether the patient was referred from another hospital, is important. The two techniques give different insights into those factors associated with death after trauma.
机译:分析在英国一家医院10年中收集的创伤伤害数据。数据包括受伤的详细信息,例如患者的年龄和性别,受伤的机理,受伤严重程度的各种度量,管理干预措施以及治疗结果。使用逻辑回归模型确定哪些因素与住院期间的死亡独立相关。数据挖掘算法C5.0还用于确定数据中的那些因素,这些因素可用于预测患者是存活还是死亡。 Logistic建模和C5.0表明,伤害严重程度评分和患者年龄的不同子集与生存率相关。此外,C5.0还表明性别以及患者是否从另一家医院转诊很重要。两种技术对创伤后死亡相关的因素提供了不同的见解。

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