Chronobiologically-Informed Features from CGM Data Provide Unique Information for XGBoost Prediction of Longer-Term Glycemic Dysregulation in 8,000 Individuals with Type-2 Diabetes
Chronobiologically-Informed Features from CGM Data Provide Unique Information for XGBoost Prediction of Longer-Term Glycemic Dysregulation in 8,000 Individuals with Type-2 Diabetes
About this collection
- Extent
-
1 digital object.
- Cite This Work
-
Burks, Jamison H.; Joe, Leslie; Kanjaria, Karina; Monsivais, Carlos; Smarr, Benjamin L. (2025). Data from: Chronobiologically-Informed Features from CGM Data Provide Unique Information for XGBoost Prediction of Longer-Term Glycemic Dysregulation in 8,000 Individuals with Type-2 Diabetes. UC San Diego Library Digital Collections. https://doi.org/10.6075/J0BR8SK9
- Description
-
This collection contains the tabulated data used to perform the machine learning components of the manuscript Chronobiologically-Informed Features from CGM Data Provide Unique Information for XGBoost Prediction of Longer-Term Glycemic Dysregulation in 8,000 Individuals with Type-2 Diabetes.
- Creation Date
- 2022-04
- Date Issued
- 2025
- Author
- Principal Investigator
- Topics
Formats
View formats within this collection
- Language
- English
- Identifier
-
Identifier: Benjamin Lee Smarr: https://orcid.org/0000-0003-4442-3956
Identifier: Jamison Henry Burks: https://orcid.org/0000-0003-4816-5704
- Related Resources
- Burks, J., Joe, L., Kanjaria, K., Monsivais, C., O'laughlin, K., Smarr, B. Chronobiologically-Informed Features from CGM Data Provide Unique Information for XGBoost Prediction of Longer-Term Glycemic Dysregulation in 8,000 Individuals with Type-2 Diabetes [Manuscript submitted for publication].
- Image credit: Jamison Henry Burks. "Performance improvement from adding chronobiological features."
Primary associated publication
Collection image