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Supportive Glucose Sensing Mobile Application to Improve the Accuracy of Continuous Glucose Monitors

机译:支持性葡萄糖传感移动应用程序,可提高连续血糖监测仪的准确性

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An insulin pump can be programmed to continuously deliver accurate amounts of insulin to diabetic patients. A continuous glucose monitor (CGM) which provides continuous patient glucose levels, needs to be calibrated at least every 6 hours. This paper provides an overview of the software and hardware requirements to increase the calibration duration with a high level of accuracy in an open source Artificial Pancreas platform. On the software level, it uses a smartphone camera to capture the food intake, and a smartphone sensor and positioning system to capture the patient movements. The system maps three months' worth of data points to the actual glucose level generated by the CGM. It then generates the probability of the estimated insulin needed based on the recorded movements and food intake activities for the patient. The logged data is used as the training data set. Using Bayes' analysis, the generated probability that is based on the patient activities is used as posterior probabilities to the CGM results, which generates a more accurate estimation of the glucose level. On the hardware level, the paper presents a Universal Remote Control and its associated protocol to connect the smartphone with the CGM for information retrieval and with the insulin pump for information dissemination. The information is sent to the insulin pump using a Field Programmable Gate Array (FPGA). For communication, there are two kinds of message frames: Dosage Delivery Frame (DDF) and Acknowledgement frame (ACKF) with a secure layer of encryption.
机译:可以对胰岛素泵进行编程,以向糖尿病患者连续输送准确量的胰岛素。提供连续的患者血糖水平的连续血糖监测仪(CGM)需要至少每6小时进行一次校准。本文概述了在开源人工胰腺平台上以较高的准确性提高校准持续时间的软件和硬件要求。在软件层面,它使用智能手机摄像头捕获食物摄入量,并使用智能手机传感器和定位系统捕获患者运动。该系统将三个月的数据点映射到CGM生成的实际葡萄糖水平。然后,根据记录的患者运动和食物摄入活动,生成估计所需胰岛素的概率。记录的数据用作训练数据集。使用贝叶斯分析,将基于患者活动的生成概率用作CGM结果的后验概率,从而生成更准确的葡萄糖水平估算值。在硬件方面,本文提出了一种通用遥控器及其相关协议,以将智能手机与CGM连接以进行信息检索,并与胰岛素泵进行信息发布。使用现场可编程门阵列(FPGA)将信息发送到胰岛素泵。对于通信,有两种消息帧:带有安全加密层的剂量传送帧(DDF)和确认帧(ACKF)。

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