利用基于变压器的边缘深度学习在糖尿病护理中进行特定人群血糖预测

Taiyu Zhu;Lei Kuang;Chengzhe Piao;Junming Zeng;Kezhi Li;Pantelis Georgiou
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引用次数: 0

摘要

利用连续血糖监测(CGM)系统,实时预测血糖(BG)对主动干预至关重要,在加强 1 型糖尿病(T1D)和 2 型糖尿病(T2D)的管理方面发挥着关键作用。然而,开发一个适用于人群的模型,并将其嵌入可穿戴设备的微芯片,在技术上面临着巨大的挑战。此外,文献中对 T2D 血糖预测领域的研究仍然不足。有鉴于此,我们提出了一个针对特定人群的血糖预测模型,利用时态融合转换器(TFT)的功能,根据个人人口数据调整预测结果。然后,将训练好的模型嵌入片上系统,与我们的低功耗、低成本定制可穿戴设备融为一体。该设备通过蓝牙与 CGM 系统无缝通信,并利用边缘计算提供及时的 BG 预测。嵌入式 TFT 模型在两个公开的临床数据集(共有 124 名 T1D 或 T2D 患者)上进行评估时,始终表现出卓越的性能,与一系列机器学习基线方法相比,预测误差最小。在我们的可穿戴设备上执行 TFT 模型所需的内存和功耗极低,只需给锂聚合物电池充一次电,就能持续提供超过 51 天的决策支持。这些研究结果证明了所提出的 TFT 模型和可穿戴设备在提高糖尿病患者生活质量和有效应对现实世界挑战方面的巨大潜力。
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Population-Specific Glucose Prediction in Diabetes Care With Transformer-Based Deep Learning on the Edge
Leveraging continuous glucose monitoring (CGM) systems, real-time blood glucose (BG) forecasting is essential for proactive interventions, playing a crucial role in enhancing the management of type 1 diabetes (T1D) and type 2 diabetes (T2D). However, developing a model generalized to a population and subsequently embedding it within a microchip of a wearable device presents significant technical challenges. Furthermore, the domain of BG prediction in T2D remains under-explored in the literature. In light of this, we propose a population-specific BG prediction model, leveraging the capabilities of the temporal fusion Transformer (TFT) to adjust predictions based on personal demographic data. Then the trained model is embedded within a system-on-chip, integral to our low-power and low-cost customized wearable device. This device seamlessly communicates with CGM systems through Bluetooth and provides timely BG predictions using edge computing. When evaluated on two publicly available clinical datasets with a total of 124 participants with T1D or T2D, the embedded TFT model consistently demonstrated superior performance, achieving the lowest prediction errors when compared with a range of machine learning baseline methods. Executing the TFT model on our wearable device requires minimal memory and power consumption, enabling continuous decision support for more than 51 days on a single Li-Poly battery charge. These findings demonstrate the significant potential of the proposed TFT model and wearable device in enhancing the quality of life for people with diabetes and effectively addressing real-world challenges.
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