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Design and Algorithms of the Device to predict Blood Glucose Level based on Saliva Sample using Machine Learning

机译:基于机器学习的基于唾液样品预测血糖水平的装置的设计和算法

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Regular tracking of blood glucose level is an integral part of treatment of Diabetes Mellitus, a chronic disease that occurs either when the pancreas does not produce enough insulin. Commercially available devices are involve pricking and analyzing of blood sample. Observing the pain, cost and chance of infection, non-invasive devices to measure blood sugar level are under research and development for the past decade. The paper proposes a method to develop a portable and economic device that can determine the blood glucose level of the patient by analyzing a saliva sample deposited by patient using spectroscopic methods. The device is constructed considering two theories as basis. The first theory is relation of glucose concentration of a solution to the attenuation observed while performing absorption spectroscopy. The second theory is the existence of relation between salivary glucose level and blood glucose level. Using the first theory, a device was constructed which uses NIR spectroscopy to find concentration of glucose in the given solution. The attenuation and concentration have been correlated using Machine Learning, $mathrm{R}2=0.96$. Data of salivary glucose level and blood glucose level was acquired and correlated using machine learning and $mathrm{R}2=0.87$. The proposed device requires patient to deposit saliva in a test tube and place it in the device. The device first predicts the glucose concentration of the solution(saliva). The device then uses the correlation between salivary glucose level and blood glucose level to find blood glucose level. The data is displayed and stored in the cloud.
机译:定期跟踪血糖水平是治疗糖尿病的一种组成部分,当胰腺不会产生足够的胰岛素时发生的慢性疾病。市售的设备涉及血液样品的刺穿和分析。观察感染的疼痛,成本和机会,以达到血糖水平的非侵入性设备是在过去十年的研究和开发中。本文提出了一种方法,可以通过使用光谱方法分析患者沉积的唾液样品来制定便携式和经济装置,其可以通过分析沉积的患者沉积的唾液样品来确定患者的血糖水平。根据基础考虑两个理论的构造。第一理论是在进行吸收光谱的同时观察到衰减溶液的葡萄糖浓度的关系。第二种理论是唾液葡萄糖水平与血糖水平之间的关系存在。使用第一理论,构建了一种装置,该装置使用NIR光谱法在给定溶液中捕获葡萄糖的浓度。使用机器学习相关的衰减和浓度, $ mathrm {r} 2 = 0.96 $ 。利用机器学习获得和相关的唾液葡萄糖水平和血糖水平的数据 $ mathrm {r} 2 = 0.87 $ 。所提出的装置需要患者在试管中沉积唾液并将其放入装置中。该装置首先预测溶液(唾液)的葡萄糖浓度。然后,该装置使用唾液葡萄​​糖水平与血糖水平之间的相关性以找到血糖水平。显示数据并存储在云中。

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