cgmquantify: Python and R packages for comprehensive analysis of interstitial glucose and glycemic variability from continuous glucose monitor data
Brinnae Bent, Maria Henriquez, Jessilyn Dunn

TL;DR
cgmquantify is an open-source Python and R toolkit that standardizes and visualizes continuous glucose monitor data, offering validated metrics to enhance research and clinical insights into glucose variability.
Contribution
The paper introduces cgmquantify, a comprehensive open-source software package that standardizes and visualizes CGM data with validated metrics, addressing bioinformatic challenges.
Findings
Contains over 20 functions for glucose analysis
Includes 25 validated glucose variability metrics
Provides visualization tools for CGM data
Abstract
Continuous glucose monitoring (CGM) systems provide real-time, dynamic glucose information by tracking interstitial glucose values throughout the day (typically values are recorded every 5 minutes). CGMs are commonly used in diabetes management by clinicians and patients and in research to understand how factors of longitudinal glucose and glucose variability relate to disease onset and severity and the efficacy of interventions. CGM data presents unique bioinformatic challenges because the data is longitudinal, temporal, and there are nearly infinite possible ways to summarize and use this data. There are over 20 metrics of glucose variability, no standardization of metrics, and little validation across studies. Here we present open source python and R packages called cgmquantify, which contains over 20 functions with over 25 clinically validated metrics of glucose and glucose…
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Taxonomy
TopicsDiabetes Management and Research · Pancreatic function and diabetes · Diabetes and associated disorders
