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Real-time estimation of plasma insulin concentration using continuous subcutaneous glucose measurements in people with type 1 diabetes

机译:使用连续皮下葡萄糖测量实时评估1型糖尿病患者的血浆胰岛素浓度

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In artificial pancreas (AP) systems, continuous glucose monitoring (CGM) data are used to compute the required insulin amount to be infused with an insulin pump to regulate blood glucose concentration of people with type 1 diabetes (T1D). Real-time plasma insulin concentration (PIC) estimations will facilitate calculation of more realistic insulin infusion rates and prevent hypoglycemia caused by overdosing of insulin. Our objective is to develop a method to estimate PIC in real time from CGM and infused insulin data in real-time by using a mathematical model. Thirteen datasets from nine different subjects with type 1 diabetes (T1D) which are based on two euglycemic clamps with (seven datasets) and without (six datasets) an insulin infusion site warming device (IISWD) are used. Hovorka's model that describes glucose-insulin dynamics in different parts of the human body has been incorporated into a continuous-discrete extended Kalman filter (CDEKF) to provide a PIC estimate. Furthermore, because of variability in system dynamics over time, some uncertain model parameters that have significant effect on PIC estimates are considered as new states in Hovorka's model to be estimated by CDEKF. Partial least squares models are developed for the initial guess of the time-varying unknown model parameters used in the nonlinear CDEKF estimator. The performance of proposed method is tested with clinical data by computing the Pearson product-moment correlation coefficient, root mean square error and mean absolute relative error. The method will be beneficial for an AP system with realtime PIC estimates for preventing excess insulin infusions.
机译:在人工胰腺(AP)系统中,连续血糖监测(CGM)数据用于计算需要注入胰岛素泵的胰岛素量,以调节1型糖尿病(T1D)患者的血糖浓度。实时血浆胰岛素浓度(PIC)估计将有助于计算更实际的胰岛素输注速率,并防止因胰岛素剂量过多而引起的低血糖症。我们的目标是开发一种使用数学模型从CGM和注入的胰岛素数据实时估计PIC的方法。使用了来自9个1型糖尿病(T1D)不同受试者的13个数据集,这些数据集基于两个具有(七个数据集)和不具有(六个数据集)胰岛素输注部位加热装置(IISWD)的正常血糖钳位。描述人体不同部位葡萄糖-胰岛素动态的Hovorka模型已被纳入连续离散扩展卡尔曼滤波器(CDEKF)中以提供PIC估计值。此外,由于系统动力学随时间的变化,一些对PIC估计有重大影响的不确定模型参数被视为由CDEKF估计的Hovorka模型中的新状态。针对非线性CDEKF估计器中使用的随时间变化的未知模型参数的初步猜测,开发了偏最小二乘模型。通过计算皮尔逊乘积矩相关系数,均方根误差和绝对绝对相对误差,用临床数据测试了该方法的性能。该方法将对具有实时PIC估计的AP系统有益,以防止过多的胰岛素输注。

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