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Interpretation Method for Continuous Glucose Monitoring with Subsequence Time-Series Clustering

机译:随后时序聚类连续葡萄糖监测的解释方法

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We propose mini-batch top-n k-medoids to sequential pattern mining to improve CGM interpretation. Mecical workers can treat specific patient groups better by understanding the time series variation of blood glucose results. For 10 years, continuous glucose monitoring (CGM) has provided time-series data of blood glucose thanks to the invention of devices with low measurement errors. We conducted two experiments. In the first experiment, we evaluated the proposed method with a manually created dataset and confirmed that the method provides more accurate patterns than other clustering methods. In the second experiment, we applied the proposed method to a CGM dataset consisting of real data from 163 patients. We created two labels based on blood glucose (BG) statistics and found patterns that correlated with a specific label in each case.
机译:我们将迷你批次TOP-N K-贝氏素提出到连续的模式挖掘以改善CGM解释。 通过了解血糖结果的时间序列变化,微小的工人可以更好地治疗特定患者群体。 由于具有低测量误差的装置,连续葡萄糖监测(CGM)提供了血糖的时间序列数据。 我们进行了两个实验。 在第一个实验中,我们用手动创建的数据集评估了所提出的方法,并确认该方法提供比其他聚类方法更准确的模式。 在第二个实验中,我们将所提出的方法应用于由163名患者的真实数据组成的CGM数据集。 我们基于血糖(BG)统计数据的两种标签,并发现与每种情况下的特定标签相关的模式。

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