Modeling the euglycemic hyperinsulinemic clamp
by stochastic differential equations
U. Picchini, S. Ditlevsen and A. De Gaetano
Published on
Journal of Mathematical Biology (2006) 53(5), 771–796.
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The Euglycemic Hyperinsulinemic Clamp (EHC) is the most widely used experimental
procedure for the determination of insulin sensitivity. In the present study, 16
subjects with BMI between 18.5 and 63.6 kg/m^2 have been studied with a long-duration
(5 hours) EHC. In order to explain the oscillations of glycemia occurring in
response to the hyperinsulinization and to the continuous glucose infusion at
varying speeds, we first hypothesized a system of ordinary differential equations
(ODEs), with limited success. We then extended the model and represented the
experiment using a system of stochastic differential equations (SDEs). The latter
allow for distinction between (i) random variation imputable to observation error
and (ii) system noise (intrinsic variability of the metabolic system), due to a
variety of influences which change over time. The stochastic model of the EHC
was fitted to data and the system noise was estimated by means of a (simulated)
maximum likelihood procedure, for a series of different hypothetical measurement
error values. We showed that, for the whole range of reasonable measurement error
values: (i) the system noise estimates are non-negligible; and (ii) these
estimates are robust to changes in the likely value of the measurement error.
Explicit expression of system noise is physiologically relevant in this case,
since glucose uptake rate is known to be affected by a host of additive
influences, usually neglected when modeling metabolism. While in some of the
studied subjects system noise appeared to only marginally affect the dynamics,
in others the system appeared to be driven more by the erratic oscillations
in tissue glucose transport rather than by the overall glucose-insulin control
system. It is possible that the quantitative relevance of the unexpressed
effects (system noise) should be considered in other physiological situations,
represented so far only with deterministic models.
Keywords: mathematical models, dynamical systems, glucose, insulin, parameter estimation,
Monte Carlo methods, simulated maximum likelihood.
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