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Prediction of 4-year risk for Coronary Artery Calcification using Ensemble-based Classification

机译:基于基于集合的分类预测冠状动脉钙化的4年风险

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The progression of coronary artery calcification (CAC) has been regarded as an important risk factor of coronary artery disease (CAD), which is the biggest cause of death. Because CAC occurrence increases the risk of CAD by a factor of ten, the one whose coronary artery is calcified should pay more attention to the health management. However, performing the computerized tomography (CT) scan to check if coronary artery is calcified as a regular examination might be inefficient due to its high cost. Therefore, it is required to identify high risk persons who need regular follow-up checks of CAC or low risk ones who can avoid unnecessary CT scans. Due to this reason, we develop a 4-year prediction model for a new occurrence of CAC based on data collected by the regular health examination. We build the prediction model using ensemble-based methods to handle imbalanced dataset. Experimental results show that the developed prediction models provided a reasonable accuracy (AUC 75%), which is about 5% higher than the model built by the other imbalanced classification method.
机译:冠状动脉钙化(CAC)的进展被认为是冠状动脉疾病(CAD)的重要危险因素,这是死亡的最大原因。因为CAC发生增加了CAD的风险十因素,冠状动脉被钙化的冠状动脉应该更加关注健康管理。然而,执行计算机化断层扫描(CT)扫描以检查冠状动脉是否算作常规检查可能效率低,因为其高成本可能效率低。因此,需要识别需要避免不必要的CT扫描的CAC或低风险的高风险人员。由于这个原因,我们基于定期健康检查所收集的数据,开发了一个4年的预测模型,用于新的CAC发生。我们使用基于集合的方法构建预测模型来处理不平衡数据集。实验结果表明,发育的预测模型提供了合理的准确度(AUC 75%),比其他不平衡分类方法构建的模型高约5%。

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