With continuous glucose monitoring (CGM), data-driven models on blood glucose
prediction have been shown to be effective in related work. However, such (CGM)
systems are not always available, e.g., for a patient at home. In this work, we
conduct a study on 9 patients and examine the predictability of data-driven
(aka. machine learning) based models on patient-level blood glucose prediction;
with measurements are taken only periodically (i.e., after several hours). To
this end, we propose several post-prediction methods to account for the noise
nature of these data, that marginally improves the performance of the end
system.Comment: In Proceedings of ACM CIKM 2018 Workshop