A reliable model of the probability density function (PDF) of self-monitoring of blood glucose (SMBG) measurement error would be important for several applications in diabetes, like testing in silico insulin therapies. In the literature, the PDF of SMBG error is usually described by a Gaussian function, whose symmetry and simplicity are unable to properly describe the variability of experimental data. Here, we propose a new methodology to derive more realistic models of SMBG error PDF.

A Model of Self-Monitoring Blood Glucose Measurement Error

VETTORETTI, MARTINA;FACCHINETTI, ANDREA;SPARACINO, GIOVANNI;COBELLI, CLAUDIO
2017

Abstract

A reliable model of the probability density function (PDF) of self-monitoring of blood glucose (SMBG) measurement error would be important for several applications in diabetes, like testing in silico insulin therapies. In the literature, the PDF of SMBG error is usually described by a Gaussian function, whose symmetry and simplicity are unable to properly describe the variability of experimental data. Here, we propose a new methodology to derive more realistic models of SMBG error PDF.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3227559
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