Jacobs Peter G, Resalat Navid, El Youssef Joseph, Reddy Ravi, Branigan Deborah, Preiser Nicholas, Condon John, Castle Jessica
Department of Biomedical Engineering, Oregon Health and Science University, Portland OR, USA
Department of Biomedical Engineering, Oregon Health and Science University, Portland OR, USA.
J Diabetes Sci Technol. 2015 Oct 5;9(6):1175-84. doi: 10.1177/1932296815609371.
In this article, we present several important contributions necessary for enabling an artificial endocrine pancreas (AP) system to better respond to exercise events. First, we show how exercise can be automatically detected using body-worn accelerometer and heart rate sensors. During a 22 hour overnight inpatient study, 13 subjects with type 1 diabetes wearing a Zephyr accelerometer and heart rate monitor underwent 45 minutes of mild aerobic treadmill exercise while controlling their glucose levels using sensor-augmented pump therapy. We used the accelerometer and heart rate as inputs into a validated regression model. Using this model, we were able to detect the exercise event with a sensitivity of 97.2% and a specificity of 99.5%. Second, from this same study, we show how patients' glucose declined during the exercise event and we present results from in silico modeling that demonstrate how including an exercise model in the glucoregulatory model improves the estimation of the drop in glucose during exercise. Last, we present an exercise dosing adjustment algorithm and describe parameter tuning and performance using an in silico glucoregulatory model during an exercise event.
在本文中,我们介绍了使人工内分泌胰腺(AP)系统更好地应对运动事件所需的几项重要贡献。首先,我们展示了如何使用可穿戴式加速度计和心率传感器自动检测运动。在一项为期22小时的住院过夜研究中,13名患有1型糖尿病的受试者佩戴Zephyr加速度计和心率监测器,在使用传感器增强泵疗法控制血糖水平的同时,进行了45分钟的轻度有氧跑步机运动。我们将加速度计和心率作为输入,输入到一个经过验证的回归模型中。使用该模型,我们能够检测到运动事件,灵敏度为97.2%,特异性为99.5%。其次,从同一研究中,我们展示了运动事件期间患者血糖如何下降,并展示了计算机模拟建模的结果,该结果表明在葡萄糖调节模型中纳入运动模型如何改善运动期间血糖下降的估计。最后,我们提出了一种运动剂量调整算法,并描述了在运动事件期间使用计算机葡萄糖调节模型进行参数调整和性能评估的情况。