Liu Wenping, Zhang Gangping, Yu Liling, Xu Binfeng, Jin Haoyu
Institute of Medical Devices, Guangdong Food and Drug Vocational College, Guangzhou, China.
Artif Organs. 2019 Apr;43(4):386-398. doi: 10.1111/aor.13350. Epub 2018 Nov 4.
Artificial pancreas (AP) is an important treatment for patients with Type 1 diabetes (T1D). The control algorithm adopted in an AP system determines its reliability and accuracy. The generalized predictive control (GPC) is a representative adaptive control algorithm and has been widely applied to AP systems. However, we found that the traditional GPC controller does not work well for adolescents with T1D because of their high-fluctuating blood glucose and high insulin resistance. Here, we propose an improved GPC algorithm with an adaptive reference glucose trajectory and an adaptive softening factor. The slopes of the reference trajectory and the value of softening factor are calculated real-time on the basis of the blood glucose concentration (BGC) variations. In silico testing was done using the US Food and Drug Administration (FDA) approved virtual patient software T1D mellitus. The BGC trace and density of 20 patient-subjects (10 adults and 10 adolescents) were recorded. Results showed that the average BGC percentage within the target regions (70-180 mg/dL) of the tests with adaptive reference glucose trajectory and softening factor for adolescents (0.93 ± 0.07) was significantly higher than that of the traditional GPC algorithm tests (0.88 ± 0.11), suggesting that the control quality of the blood glucose of adolescents is significantly improved with our GPC algorithm. Therefore, our improved GPC controller is effective and should have a good applicability in AP systems.
人工胰腺(AP)是1型糖尿病(T1D)患者的一种重要治疗手段。AP系统所采用的控制算法决定了其可靠性和准确性。广义预测控制(GPC)是一种具有代表性的自适应控制算法,已被广泛应用于AP系统。然而,我们发现传统的GPC控制器对患有T1D的青少年效果不佳,因为他们的血糖波动大且胰岛素抵抗高。在此,我们提出一种改进的GPC算法,该算法具有自适应参考血糖轨迹和自适应软化因子。参考轨迹的斜率和软化因子的值根据血糖浓度(BGC)变化实时计算。使用美国食品药品监督管理局(FDA)批准的虚拟患者软件T1D mellitus进行计算机模拟测试。记录了20名患者(10名成年人和10名青少年)的BGC轨迹和密度。结果显示,对于青少年,采用自适应参考血糖轨迹和软化因子的测试中,目标区域(70 - 180 mg/dL)内的平均BGC百分比(0.93±0.07)显著高于传统GPC算法测试(0.88±0.11),这表明我们的GPC算法显著提高了青少年的血糖控制质量。因此,我们改进的GPC控制器是有效的,并且在AP系统中应具有良好的适用性。