Poster
in
Workshop: Learning from Time Series for Health
Temporal patterns in insulin needs for Type 1 diabetes
Isabella Degen · Zahraa Abdallah
Type 1 Diabetes (T1D) is a chronic condition where the body produces little or no insulin, a hormone required for the cells to use blood glucose (BG) for energy and to regulate BG levels in the body. Finding the right insulin dose and time remains a complex, challenging and as yet unsolved control task. In this study, we use the OpenAPS Data Commons dataset, which is an extensive open-source dataset collected in real-life conditions, to discover temporal patterns in insulin need that include well-known factors such as carbohydrates as well as novel factors too. We utilised various time series techniques to spot such patterns using matrix profile and multi-variate clustering. The better we understand T1D and the factors impacting insulin needs, the more we can contribute to building data-driven technology for T1D treatments.