Benchmarking ResNet for Short-Term Hypoglycemia Classification with DiaData
Beyza Cinar, Maria Maleshkova

TL;DR
This paper enhances the DiaData dataset for T1D by cleaning and imputing data, analyzes glucose-heart rate correlation, and benchmarks a ResNet model for hypoglycemia prediction up to 2 hours ahead.
Contribution
It introduces data cleaning methods, compares interpolation techniques, and provides a ResNet-based benchmark for hypoglycemia classification using high-quality data.
Findings
Stineman interpolation yields more realistic glucose estimates for larger gaps.
Quality data improves hypoglycemia classification accuracy by 2-3%.
Training with more data increases model performance by 7%.
Abstract
Individualized therapy is driven forward by medical data analysis, which provides insight into the patient's context. In particular, for Type 1 Diabetes (T1D), which is an autoimmune disease, relationships between demographics, sensor data, and context can be analyzed. However, outliers, noisy data, and small data volumes cannot provide a reliable analysis. Hence, the research domain requires large volumes of high-quality data. Moreover, missing values can lead to information loss. To address this limitation, this study improves the data quality of DiaData, an integration of 15 separate datasets containing glucose values from 2510 subjects with T1D. Notably, we make the following contributions: 1) Outliers are identified with the interquartile range (IQR) approach and treated by replacing them with missing values. 2) Small gaps ( 25 min) are imputed with linear interpolation and…
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