Litcius/Paper detail

GLU: a software package for analysing continuously measured glucose levels in epidemiology

Louise A C Millard, Nashita Patel, Kate Tilling, Melanie Lewcock, Peter Flach, Debbie A. Lawlor

2020International Journal of Epidemiology26 citationsDOIOpen Access PDF

Abstract

Continuous glucose monitors (CGM) record interstitial glucose levels 'continuously', producing a sequence of measurements for each participant (e.g. the average glucose level every 5 min over several days, both day and night). To analyse these data, researchers tend to derive summary variables such as the area under the curve (AUC), to then use in subsequent analyses. To date, a lack of consistency and transparency of precise definitions used for these summary variables has hindered interpretation, replication and comparison of results across studies. We present GLU, an open-source software package for deriving a consistent set of summary variables from CGM data. GLU performs quality control of each CGM sample (e.g. addressing missing data), derives a diverse set of summary variables (e.g. AUC and proportion of time spent in hypo-, normo- and hyper- glycaemic levels) covering six broad domains, and outputs these (with quality control information) to the user. GLU is implemented in R and is available on GitHub at https://github.com/MRCIEU/GLU. Git tag v0.2 corresponds to the version presented here.

Topics & Concepts

R packageSoftware packageSoftwareConsistency (knowledge bases)Computer scienceReplication (statistics)Missing dataSet (abstract data type)Transparency (behavior)StatisticsData setOpen sourceQuality (philosophy)Sample (material)Data miningMathematicsMachine learningArtificial intelligenceChemistryProgramming languageEpistemologyPhilosophyChromatographyComputer securityDiabetes Management and ResearchDiabetes and associated disordersMetabolism, Diabetes, and Cancer