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Unannounced Meal Detection for Artificial Pancreas Systems Using Extended Isolation Forest

机译:使用扩展隔离林对人工胰腺系统进行突击进餐检测

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This study aims at developing an unannounced meal detection method for artificial pancreas, based on a recent extension of Isolation Forest. The proposed method makes use of features accounting for individual Continuous Glucose Monitoring (CGM) profiles and benefits from a two-threshold decision rule detection. The advantage of using Extended Isolation Forest (EIF) instead of the standard one is supported by experiments on data from virtual diabetic patients, showing good detection accuracy with acceptable detection delays.
机译:这项研究的目的是基于隔离森林的最新扩展,开发一种针对人工胰腺的突击进餐检测方法。所提出的方法利用了针对单个连续葡萄糖监测(CGM)配置文件的特征,并受益于两个阈值的决策规则检测。对来自虚拟糖尿病患者的数据进行的实验支持了使用扩展隔离森林(EIF)而不是标准扩展森林的优势,显示出良好的检测准确性和可接受的检测延迟。

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