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The Discovery of Prognosis Factors Using Association Rule Mining in Acute Myocardial Infarction with ST-Segment Elevation

机译:使用急性心肌梗死在急性心肌梗死与ST段仰角的预后因素发现

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Association rule mining has been applied actively in order to discover the hidden factors in acute myocardial infarction. There has been minimal research regarding the prognosis factor of acute myocardial infarction, and several previous studies has some limitations which are generation of incorrect population and potential data bias. Thus, we suggest the generation of prognosis factor based on association rule mining for acute myocardial infarction with ST-segment elevation. In our experiments, we obtain high interestingness factor based on Korean acute myocardial infarction registry which is corrected by 51 participating hospitals since 2005. The interestingness of the factor is evaluated by confidence. It is expected to contribute to prognosis management by high reliability factor.
机译:协会规则采矿已积极应用,以发现急性心肌梗死中的隐藏因子。关于急性心肌梗死的预后因素已经存在最小的研究,并且几个先前的研究具有一些局限性,这是不正确的群体和潜在数据偏差的影响。因此,我们建议基于急性心肌梗死与ST段仰视的关联规则挖掘产生预后因素。在我们的实验中,我们获得了基于韩国急性心肌梗死登记处的高兴趣因素,自2005年以来由51家参与医院纠正。该因素的有趣是通过信心评估。预计通过高可靠性因素促进预后管理。

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