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Predicting the meal macronutrient composition from continuous glucose monitors

机译:通过连续的血糖监测仪预测膳食中的丰富营养成分

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Sustained high levels of blood glucose in type 2 diabetes (T2DM) can have disastrous long-term health consequences. An essential component of clinical interventions for T2DM is monitoring dietary intake to keep plasma glucose levels within an acceptable range. Yet, current techniques to monitor food intake are time intensive and error prone. To address this issue, we are developing techniques to automatically monitor food intake and the composition of those foods using continuous glucose monitors (CGMs). This article presents the results of a clinical study in which participants consumed nine standardized meals with known macronutrients amounts (carbohydrate, protein, and fat) while wearing a CGM. We built a multitask neural network to estimate the macronutrient composition from the CGM signal, and compared it against a baseline linear regression. The best prediction result comes from our proposed neural network, trained with subject-dependent data, as measured by root mean squared relative error and correlation coefficient. These findings suggest that it is possible to estimate macronutrient composition from CGM signals, opening the possibility to develop automatic techniques to track food intake.
机译:2型糖尿病(T2DM)中持续的高血糖水平可能会给长期健康造成灾难性的后果。 T2DM临床干预措施的重要组成部分是监测饮食摄入,以将血浆葡萄糖水平保持在可接受的范围内。然而,当前监测食物摄入的技术耗时且容易出错。为了解决这个问题,我们正在开发使用连续葡萄糖监测仪(CGM)自动监测食物摄入量和食物成分的技术。本文介绍了一项临床研究的结果,参与者在穿CGM时食用了九种标准膳食,这些膳食具有已知的大量营养素(碳水化合物,蛋白质和脂肪)。我们建立了一个多任务神经网络,以从CGM信号中估算大量营养成分,并将其与基线线性回归进行比较。最好的预测结果来自我们提出的神经网络,该神经网络经过与受检者相关的数据训练,并通过均方根相对误差和相关系数进行了测量。这些发现表明,有可能从CGM信号中估算大量营养成分,从而为开发自动技术来跟踪食物摄入提供了可能性。

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