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Bayesian optimization assisted meal bolus decision based on Gaussian processes learning and risk-sensitive control

机译:基于高斯工艺学习和风险敏感控制的贝叶斯优化辅助膳食推注决策

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摘要

Effective postprandial glucose control is important to glucose management for subjects with diabetes mellitus. In this work, a data-driven meal bolus decision method is proposed without the need of subject-specific glucose management parameters. The postprandial glucose dynamics is learnt using Gaussian process regression. Considering the asymmetric risks of hyper- and hypoglycemia and the uncertainties in the predicted glucose trajectories, an asymmetric risk-sensitive cost function is designed. Bayesian optimization is utilized to solve the optimization problem, since the gradient of the cost function is unavailable. The proposed approach is evaluated using the 10-adult cohort of the FDA-accepted UVA/Padova T1DM simulator and compared with the standard insulin bolus calculator. For the case of announced meals, the proposed method achieves satisfactory and similar performance in terms of mean glucose and percentage time in [70, 180] mg/dL without increasing the risk of hypoglycemia. Similar results are observed for the case without the meal information (assuming that the patient follows a consistent diet) and the case of basal rate mismatches. In addition, a comparison with a run-to-run based method for the scenario of potentially incorrect meal carbohydrate counts is also performed, and the results show that the proposed method is more robust to the carbohydrate counting disturbances. At last, advisory-mode analysis is performed based on clinical data, which indicates that the method can determine safe and reasonable meal boluses in real clinical settings. The results verify the effectiveness and robustness of the proposed method and indicate the feasibility of achieving improved postprandial glucose regulation through a data-driven optimal control method.
机译:有效的餐后葡萄糖控制对于糖尿病糖尿病受试者的葡萄糖管理是重要的。在这项工作中,提出了一种无需对象特异性葡萄糖管理参数的数据驱动的膳食推注决策方法。使用高斯进程回归学习后​​葡萄糖动力学。考虑到超血糖的不对称风险以及预测葡萄糖轨迹中的不确定性,设计了不对称的风险敏感成本函数。贝叶斯优化用于解决优化问题,因为成本函数的梯度不可用。使用FDA接受的UVA / PADOVA T1DM模拟器的10成型群组进行评估所提出的方法,并与标准胰岛素推注计算器进行比较。对于宣布的膳食的情况,所提出的方法在[70,180] Mg / DL的平均葡萄糖和百分比时,在不增加低血糖风险的情况下实现令人满意和类似的性能。在没有膳食信息的情况下观察到类似的结果(假设患者遵循一致的饮食)和基础速率不匹配的情况。另外,还进行了与潜在不正确的碳水化合物计数的情况的基于跑步的基于方式的比较,结果表明,该方法对碳水化合物计数干扰更鲁棒。最后,基于临床数据执行咨询模式分析,这表明该方法可以确定真实临床环境中的安全性和合理的膳食钢管。结果验证了所提出的方法的有效性和鲁棒性,并表明通过数据驱动的最优控制方法实现改进的后葡萄糖调节的可行性。

著录项

  • 来源
    《Control Engineering Practice》 |2021年第9期|104881.1-104881.11|共11页
  • 作者单位

    State Key Laboratory of Intelligent Control and Decision of Complex Systems School of Automation Beijing Institute of Technology Beijing China;

    Department of Endocrine and Metabolism Peking University People's Hospital Beijing China;

    Department of Endocrine and Metabolism Peking University People's Hospital Beijing China;

    State Key Laboratory of Intelligent Control and Decision of Complex Systems School of Automation Beijing Institute of Technology Beijing China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Meal bolus decision; Gaussian processes; Risk-sensitive control; Bayesian optimization;

    机译:膳食推车决定;高斯过程;风险敏感控制;贝叶斯优化;

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