方法预测2型糖尿病患者血糖水平

Tabassum Khan, M. A. Masud, K. Mamun
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引用次数: 3

摘要

糖尿病已成为影响人类健康和福祉的一个日益扩大的全球健康问题。虽然它几乎是无法治愈的,但适当的管理可以有助于控制它,让受影响的人过上健康的生活几十年。为了以更智能的方式管理糖尿病,准确且无麻烦的血糖水平预测对患者至关重要。为此,我们提出了三种预测模型(线性回归模型,SVR模型,威布尔分布模型),每个模型都使用当前和前一天的BGL来预测第二天的禁食BGL。我们模型的独特之处在于,它们只需要单一类型的数据(BGLs)和最少数量的数据输入,就可以在不影响精度水平的情况下进行预测。在三个模型中,SVR模型表现较好,平均RMSE为3.24 mmol/L。由于2型糖尿病患者是糖尿病患者的主要人群,目前还没有得到卫生工作者和研究人员的重视,因此我们正在考虑专门针对2型糖尿病患者进行bgl预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods to predict blood glucose level for type 2 diabetes patients
Diabetes has turned into an ever-expanding global health concern for people's health and well-being. Though it is almost incurable but proper management can contribute toward keeping it under-control to allow affected people to lead a healthy life for decades. To manage diabetes in a smarter way, accurate and hassle free prediction of blood glucose level (BGL) is paramount important for patients. Toward this goal, we propose three prediction models (Linear Regression Model, SVR Model, Weibull Distribution model) each of which uses the current and previous days BGLs to predict the next day's fasting BGL. The uniqueness of our models are that they require only a single type of data (BGLs) with minimum numbers of data inputs to make the prediction without compromising the accuracy level. Among our three models, SVR model performs better with average 3.24 mmol/L RMSE. We are considering to predict BGLs specifically for Type 2 diabetes patients as the Type 2-diabetes-affected people constitute major segment among the diabetes victims and it has so far not received the level of attention of the health workers and researchers.
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