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Nonlinear Machine Learning Models for Insulin Bolus Estimation in Type 1 Diabetes Therapy

机译:1型糖尿病治疗中胰岛素剂量估计的非线性机器学习模型

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Type 1 diabetes (T1D) therapy requires multiple daily insulin injections to compensate the lack of endogenous insulin production due to β-cells destruction. An empirical standard formula (SF) is commonly used for such a task. Unfortunately, SF does not include information on glucose dynamics, e.g. the glucose rate-of-change (ROC) provided by continuous glucose monitoring (CGM) sensor. Hence, SF can sometimes lead to under/overestimations that can cause critical hypo/hyperglycemic episodes during/after the meal. Recently, to overcome this limitation, we proposed new linear regression models, integrating ROC information and personalized features. Despite the first encouraging results, the nonlinear nature of the problem calls for the application of nonlinear models. In this work, random forest (RF) and gradient boosting tree (GBT), nonlinear machine learning methodologies, were investigated. A dataset of 100 virtual subjects, opportunely divided into training and testing sets, was used. For each individual, a single-meal scenario with different meal conditions (preprandial ROC, BG and meal amounts) was simulated. The assessment was performed both in terms of accuracy in estimating the optimal bolus and glycemic control. Results were compared to the best performing linear model previously developed. The two tree-based models proposed lead to a statistically significant improvement of glycemic control compared to the linear approach, reducing the time spent in hypoglycemia (from 32.49% to 27.57-25.20% for RF and GBT, respectively). These results represent a preliminary step to prove that nonlinear machine learning techniques can improve the estimation of insulin bolus in T1D therapy. Particularly, RF and GBT were shown to outperform the previously linear models proposed.Clinical Relevance— Insulin bolus estimation with nonlinear machine learning techniques reduces the risk of adverse events in T1D therapy.
机译:1型糖尿病(T1D)治疗需要每天多次注射胰岛素,以补偿由于β细胞破坏而引起的内源性胰岛素缺乏的情况。经验标准公式(SF)通常用于此类任务。不幸的是,SF不包括关于葡萄糖动力学的信息,例如。连续葡萄糖监测(CGM)传感器提供的葡萄糖变化率(ROC)。因此,SF有时会导致低估/高估,从而导致进餐期间/餐后严重的低血糖/高血糖发作。最近,为克服此限制,我们提出了新的线性回归模型,该模型集成了ROC信息和个性化功能。尽管取得了令人鼓舞的结果,但问题的非线性性质要求应用非线性模型。在这项工作中,研究了随机森林(RF)和梯度提升树(GBT),非线性机器学习方法。使用了一个包含100个虚拟主题的数据集,这些数据集被适当地分为训练集和测试集。对于每个人,模拟了具有不同进餐条件(餐前ROC,BG和进餐量)的单餐方案。评估是在估计最佳推注和血糖控制的准确性方面进行的。将结果与先前开发的最佳性能线性模型进行比较。提出的两个基于树的模型与线性方法相比,在血糖控制上具有统计学上的显着改善,减少了在低血糖症中花费的时间(RF和GBT分别从32.49%减少到27.57-25.20%)。这些结果代表了一个初步步骤,以证明非线性机器学习技术可以改善T1D治疗中胰岛素推注的估计。特别是,RF和GBT的表现优于先前提出的线性模型。临床意义-非线性机器学习技术的胰岛素推注估计可降低T1D治疗中不良事件的风险。

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