首页> 外文期刊>Biomedical signal processing and control >Graph Convolutional Network Enabled Two-Stream Learning Architecture for Diabetes Classification based on Flash Glucose Monitoring Data
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Graph Convolutional Network Enabled Two-Stream Learning Architecture for Diabetes Classification based on Flash Glucose Monitoring Data

机译:图表卷积网络支持基于Flash血糖监测数据的糖尿病分类的两流学习架构

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摘要

The classification of type 1 and type 2 diabetes is currently performed based on biochemical indicators and clinical experience. However, considering the unsatisfactory efficiency and accuracy of the experience-based diabetes type classification, we aim to propose a data-driven diabetes classification model through exploiting features contained in flash glucose monitoring (FGM) data. In particular, we propose a novel data reorganization and topologization method to reasonably extract the features of glycemic variability influence. Furthermore, a graph convolutional network is adopted to learn the inter-day influence feature and a Long Short-Term Memory network to characterize intra-day glycemic variability, which enables simultaneous characterization of slow and fast dynamics in FGM data. Finally, to visualize the effectiveness of our model, a t-distributed stochastic neighbor embedding method is implemented. The effectiveness of the proposed model is evaluated through a crossvalidation approach using a dataset containing FGM records of 113 diabetic subjects. Compared with classical machine learning algorithms and neural networks, the proposed model achieved the highest specificity value (0.9943) in diabetes type classification, F-Measure (0.8824) and Matthews correlation coefficient score (0.8250). The obtained results indicate the feasibility of achieving diabetes classification by learning the patterns hidden in continuous glucose monitoring data.
机译:目前基于生物化学指标和临床经验进行1型和2型糖尿病的分类。然而,考虑到基于经验的糖尿病类型分类的效率和准确性,我们的目标是通过闪存血糖监测(FGM)数据中包含的特征来提出数据驱动的糖尿病分类模型。特别是,我们提出了一种新颖的数据重组和拓种方法,以合理提取血糖可变性影响的特征。此外,采用图形卷积网络来学习日间影响特征和长期内存网络,以表征日内血糖可变性,这使得能够在FGM数据中同时表征缓慢和快速动态。最后,为了可视化模型的有效性,实现了一种T分布式随机邻居嵌入方法。通过使用包含113型糖尿病患者的FGM记录的数据集来评估所提出的模型的有效性。与经典机器学习算法和神经网络相比,所提出的模型在糖尿病型分类中实现了最高的特异性值(0.9943),F测量(0.8824)和马修相关系数分数(0.8250)。所获得的结果表明通过学习隐藏在连续葡萄糖监测数据中隐藏的模式来实现糖尿病分类的可行性。

著录项

  • 来源
    《Biomedical signal processing and control》 |2021年第8期|102896.1-102896.8|共8页
  • 作者单位

    Beijing Inst Technol Sch Automat State Key Lab Intelligent Control & Decis Complex Beijing Peoples R China;

    Peking Univ Peoples Hosp Dept Endocrine & Metab Beijing Peoples R China;

    Peking Univ Peoples Hosp Dept Endocrine & Metab Beijing Peoples R China;

    Peking Univ Peoples Hosp Dept Endocrine & Metab Beijing Peoples R China;

    Peking Univ Peoples Hosp Dept Endocrine & Metab Beijing Peoples R China;

    Global Energy Interconnect Res Inst Co Ltd Beijing Peoples R China;

    Beijing Inst Technol Sch Automat State Key Lab Intelligent Control & Decis Complex Beijing Peoples R China;

    Peking Univ Peoples Hosp Dept Endocrine & Metab Beijing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Diabetes classification; Graph convolutional network; Data processing; LSTM; Attention mechanism;

    机译:糖尿病分类;图卷积网络;数据处理;LSTM;注意机制;

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