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Use of Smartphones to Estimate Carbohydrates in Foods for Diabetes Management

机译:使用智能手机来估算糖尿病管理食品中的碳水化合物

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Over 380 million adults worldwide are currently living with diabetes and the number has been projected to reach 590 million by 2035. Uncontrolled diabetes often lead to complications, disability, and early death. In the management of diabetes, dietary intervention to control carbohydrate intake is essential to help manage daily blood glucose level within a recommended range. The intervention traditionally relies on a self-report to estimate carbohydrate intake through a paper based diary. The traditional approach is known to be inaccurate, inconvenient, and resource intensive. Additionally, patients often require a long term of learning or training to achieve a certain level of accuracy and reliability. To address these issues, we propose a design of a smartphone application that automatically estimates carbohydrate intake from food images. The application uses imaging processing techniques to classify food type, estimate food volume, and accordingly calculate the amount of carbohydrates. To examine the proof of concept, a small fruit database was created to train a classification algorithm implemented in the application. Consequently, a set of fruit photos (n=6) from a real smartphone were applied to evaluate the accuracy of the carbohydrate estimation. This study demonstrates the potential to use smartphones to improve dietary intervention, although further studies are needed to improve the accuracy, and extend the capability of the smartphone application to analyse broader food contents.
机译:超过380万成年人全世界目前患有糖尿病的人数已经预计到2035年控制的糖尿病,达到5.9亿常常引起并发症,残疾和过早死亡。在糖尿病的管理,饮食干预,以控制碳水化合物的摄入量是帮助必不可少管理建议的范围内每天的血糖水平。干预传统的依靠自我报告通过纸质日记来估算碳水化合物的摄入量。传统的方法被称为是不准确的,不方便和资源密集型的。另外,患者往往需要学习或培训,以实现精确度和可靠性的一定水平的长期性。为了解决这些问题,我们提出了一个智能手机应用,可自动估计碳水化合物从食物中摄取图像的设计。该应用程序使用的成像处理技术进行分类食品的类型,估计食品量,并相应地计算碳水化合物的量。为了检验概念证明,一个小果数据库的建立是为了培养应用程序中执行的分类算法。因此,一组从实际的智能手机水果照片(N = 6)被应用到评估碳水化合物估计的准确度。这项研究表明,以利用潜在的智能手机,以改善膳食干预,但还需要进一步研究,以提高精度,延长智能手机应用程序的能力来分析更广泛的食品内容。

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