Smartphone-based personalized blood glucose prediction
Citations Over TimeTop 10% of 2016 papers
Abstract
Effective blood glucose control is essential for patients with diabetes. However, individual patients may not be able to monitor their blood glucose level regularly because of all manner of real-life interference. In this paper, we propose a personalized diabetes prediction mechanism that leverages smartphone-collected patient data and population data to drive personalized prediction. Unlike existing predictive models, this model utilizes pooled population data and captures patient similarities, and eventually produces a personalized blood glucose prediction for an individual. We have implemented the proposed model as a mobile application and have performed extensive experiments to evaluate its performance. The experimental results demonstrate that the proposed prediction mechanism can improve the prediction accuracy and remedy the problem of sparse data in the existing approaches.
Related Papers
- What Educational Mechanism We Need(2007)
- A Probe into the Development of Community Sports and the Innovation of Its System and Mechanism(2011)
- On the Theory of Social Mechanism(2007)
- A Study on Mechanism of Synergic Development of the Regional High -tech In dustries between Mainland and Taiwan(2002)