Smart-Watches Assisted Sugar Level Monitoring with Different Activities and Nutrition based on Machine Learning Approaches

Sajida Memon
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Abstract

These days, sugar glucose monitoring is very important for both diabetic and non-diabetic patients while they are eating and doing different activities in practice. There are different ways to monitor body glucose levels such as blood-based glucose monitoring and smart watches-based glucose monitoring. However, continuous glucose monitoring (CGM) is an emerging non-invasive method for different subjects (e.g., patients and customers). However, smartwatches have limitations. In this paper, we present a new smartwatch framework that monitors the body's glucose level with new features such as nutrition, and activities. We present the modified dataset with an additional feature such as sugar glucose level with different activities (e.g., running, sitting, sleeping, and walking) while eating different nutrition in different time intervals. We present empirical machine learning such as an activity glucose monitoring algorithm (ASA) which executes all datasets with more optimal results. Simulation results show that our proposed framework is more optimal and shows glucose monitoring with different activities with more features as compared to existing smartwatches and obtained an accuracy of 78% as compared to existing machine learning methods.
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基于机器学习方法的智能手表在不同活动和营养情况下辅助监测糖分水平
如今,无论是糖尿病患者还是非糖尿病患者,在进食和进行各种实际活动时,血糖监测都非常重要。监测血糖水平的方法多种多样,如基于血液的血糖监测和基于智能手表的血糖监测。然而,持续葡萄糖监测(CGM)是一种新兴的非侵入性方法,适用于不同对象(如病人和顾客)。然而,智能手表有其局限性。在本文中,我们提出了一个新的智能手表框架,该框架通过营养和活动等新功能监测人体葡萄糖水平。我们展示了修改后的数据集,其中增加了一个新的特征,如在不同的活动(如跑步、坐着、睡觉和走路)中的血糖水平,同时在不同的时间间隔内食用不同的营养品。我们提出了经验机器学习,如活动血糖监测算法(ASA),该算法能以更优化的结果执行所有数据集。仿真结果表明,与现有的智能手表相比,我们提出的框架更加优化,能以更多特征显示不同活动的葡萄糖监测情况,与现有的机器学习方法相比,准确率达到 78%。
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