| Literature DB >> 17850652 |
Simona Panunzi1, Pasquale Palumbo, Andrea De Gaetano.
Abstract
BACKGROUND: Due to the increasing importance of identifying insulin resistance, a need exists to have a reliable mathematical model representing the glucose/insulin control system. Such a model should be simple enough to allow precise estimation of insulin sensitivity on a single patient, yet exhibit stable dynamics and reproduce accepted physiological behavior.Entities:
Mesh:
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Year: 2007 PMID: 17850652 PMCID: PMC2072949 DOI: 10.1186/1742-4682-4-35
Source DB: PubMed Journal: Theor Biol Med Model ISSN: 1742-4682 Impact factor: 2.432
Anthropometric characteristics of the subjects studied (mean ± SD in 40 subjects).
| F 22 (55%) | ||||||
| 4.54 ± 0.51 | 40.80 ± 21.88 | M 18 (45%) | 45.25 ± 16.44 | 166.10 ± 8.63 | 67.53 ± 10.01 | 24.36 ± 2.34 |
Tested models and relative average Akaike information Criterion (AIC).
| A | Without first order plasma glucose elimination (Kxg) and without delay on insulin action (τi) | Vg, IΔ, τg, KxgI, Kxi, γ | 383.90 |
| B | With first order plasma glucose elimination (Kxg) and without delay on insulin action (τi) | Vg, IΔ, τg, KxgI, Kxi, γ, Kxg | 386.72 |
| C | Without first order plasma glucose elimination (Kxg) and with delay on insulin action (τi) | Vg, IΔ, τg, KxgI, Kxi, γ, Kxg, τi | 385.95 |
| D | With first order plasma glucose elimination (Kxg) and with delay on insulin action (τi) | Vg, IΔ, τg, KxgI, Kxi, γ, Kxg, Kxg, τi | 389.03 |
The four models studied differ according to the presence or absence of an insulin-independent glucose elimination rate term (-Kxg G) and according to the presence or absence of an explicit delay in the action of insulin in stimulating tissue glucose uptake (I(t-τi) instead of I(t)). The model that does not include either one of these two features was named model A; model B includes the term (-KxgG); model C uses I(t-τi) instead of I(t); model D includes both.
Figure 1Schematic representation of the two-compartments, one-discrete-delay model. Vg and Vi are the distribution volumes respectively for Glucose (G) and Insulin (I). Dg stands for the glucose bolus administered; KxgI is the second-order net elimination rate of glucose per unit of insulin concentration; Kxi is the first order elimination rate of insulin; Tgh is the net difference between glucose production and glucose elimination; Tigmax is the maximal rate of second phase insulin release.
Definition of the symbols in the discrete Single Delay Model
| t | [min] | time |
| G(t) | [mM] | glucose plasma concentration at time t |
| Gb | [mM] | basal (preinjection) plasma glucose concentration |
| I(t) | [pM] | insulin plasma concentration at time t |
| Ib | [pM] | basal (preinjection) insulin plasma concentration |
| KxgI | [min-1 pM-1] | net rate of (insulin-dependent) glucose uptake by tissues per pM of plasma insulin concentration |
| Tgh | [mmol min-1 kgBW-1] | net balance of the constant fraction of hepatic glucose output (HGO) and insulin-independent zero-order glucose tissue uptake |
| Vg | [L kgBW-1] | apparent distribution volume for glucose |
| Dg | [mmol kgBW-1] | administered intravenous dose of glucose at time 0 |
| GΔ | [mM] | theoretical increase in plasma glucose concentration over basal glucose concentration at time zero, after the instantaneous administration and distribution of the I.V. glucose bolus |
| Kxi | [min-1] | apparent first-order disappearance rate constant for insulin |
| Tigmax | [pmol min-1kgBW-1] | maximal rate of second-phase insulin release; at a glycemia equal to G* there corresponds an insulin secretion equal to Tigmax/2 |
| Vi | [L kgBW-1] | apparent distribution volume for insulin |
| τg | [min] | apparent delay with which the pancreas changes secondary insulin release in response to varying plasma glucose concentrations |
| γ | [#] | progressivity with which the pancreas reacts to circulating glucose concentrations. If γ were zero, the pancreas would not react to circulating glucose; if γ were 1, the pancreas would respond according to a Michaelis-Menten dynamics, with G* mM as the glucose concentration of half-maximal insulin secretion; if γ were greater than 1, the pancreas would respond according to a sigmoidal function, more and more sharply increasing as γ grows larger and larger |
| IΔG | [pM mM-1] | first-phase insulin concentration increase per mM increase in glucose concentration at time zero due to the injected bolus |
| G* | [mM] | glycemia at which the insulin secretion rate is half of its maximum |
Figure 2Second-phase pancreatic insulin secretion. Insulin secretion versus plasma glucose concentrations, as computed from the average values of the discrete SDM parameters.
Definition of the symbols in the Minimal Model
| t | [min] | time after the glucose bolus |
| G(t) | [mM] | blood glucose concentration at time t |
| X(t) | [min-1] | auxiliary function representing insulin-excitable tissue glucose uptake activity, proportional to insulin concentration in a "distant" compartment |
| Gb | [mM] | subject's basal (pre-injection) glycemia |
| Ib | [pM] | subject's basal (pre-injection) insulinemia |
| b0 | [mM] | theoretical glycemia at time 0 after the instantaneous glucose bolus |
| b1 | [min-1] | glucose mass action rate constant, i.e. the insulin-independent rate constant of tissue glucose uptake, "glucose effectiveness" |
| b2 | [min-1] | rate constant expressing the spontaneous decrease of tissue glucose uptake ability |
| b3 | [min-2 pM-1] | insulin-dependent increase in tissue glucose uptake ability, per unit of insulin concentration excess over baseline insulin |
| SI (b3/b2) | [min-1 pM-1] | insulin sensitivity index and represents the capability of tissue to uptake circulating plasma glucose |
Figure 3Plot for Subject 13. Glucose and Insulin (circles) concentrations versus time together with the predicted time-curves from the SDM (continuous lines) and the MM (dotted lines) for subject 13.
Figure 4Plot for Subject 27. Glucose and Insulin (circles) concentrations versus time together with the predicted time-curves from the SDM (continuous lines) and the MM (dotted lines) for subject 27.
Figure 5Plot for Subject 28. Glucose and Insulin (circles) concentrations versus time together with the predicted time-curves from the SDM (continuous lines) and the MM (dotted lines) for subject 28.
Figure 6S. Scatter plot between the Insulin Sensitivity (SI) derived from MM and the parameter KxgI over the whole sample of 40 subjects.
Figure 7S. Scatter plot between the Insulin Sensitivity (SI) derived from MM and the parameter KxgI over the reduced sample of 35 subjects.
Correlation between 1/HOMA-IR and the two insulin-sensitivity indices KxgI and SI
| 0.588 | -0.151 | ||
| < 0.001 | 0.351 | ||
| 40 | 40 | ||
| 0.599 | 0.569 | ||
| < 0.001 | < 0.001 | ||
| 35 | 35 | ||
Descriptive Statistics of the parameter estimates for the SDM on the whole sample.
| 0.152 | 41.791 | 19.271 | 1.43E-04 | 0.101 | 2.464 | |
| 0.050 | 20.637 | 12.156 | 8.7 E-05 | 0.079 | 0.875 | |
| 32.66 | 49.38 | 63.08 | 60.93 | 78.00 | 35.53 | |
| 0.0079 | 3.2631 | 1.9220 | 1.38E-05 | 0.0124 | 0.1384 | |
| 5.16 | 7.81 | 9.97 | 9.63 | 12.33 | 5.62 | |
| 0.065 | 11.686 | 3.58E-37 | 4.34E-05 | 0.0314 | 0.736 | |
| 0.292 | 90.90 | 60 | 4.28E-04 | 0.480 | 4.122 | |
| 1 | 0.248 | 0.044 | -0.454 | -0.353 | 0.136 | |
| 1 | 0.203 | -0.529 | 0.059 | 0.117 | ||
| 1 | -0.403 | -0.383 | -0.185 | |||
| 1 | 0.552 | -0.288 | ||||
| 1 | 0.098 | |||||
| 1 | ||||||
| 0.039 | 19.75% | |||||
| 0.099 | 31.46% | |||||
Descriptive Statistics of the parameter estimates from the WLS methods for the MM.
| 13.415 | 0.016 | 0.061 | 6.59E-06 | 0.425 | 5.091 | 0.136 | 618.82 | 30.00 | |
| 2.605 | 0.016 | 0.107 | 1.11E-05 | 1.428 | 1.362 | 0.065 | 311.51 | 148.48 | |
| 19.42 | 98.91 | 174.90 | 168.85 | 335.99 | 26.75 | 47.43 | 50.34 | 494.99 | |
| 0.407 | 0.003 | 0.017 | 1.74E-06 | 0.223 | 0.213 | 0.010 | 48.65 | 23.19 | |
| 3.03 | 15.45 | 27.32 | 26.37 | 52.47 | 4.18 | 7.41 | 7.86 | 77.30 | |
| 13.251 | 0.013 | 0.066 | 7.49E-06 | 0.222 | 5.023 | 0.136 | 632.869 | 1.25E-04 | |
| 2.175 | 0.012 | 0.113 | 1.16E-05 | 0.372 | 1.357 | 0.064 | 319.523 | 7.40E-05 | |
| 16.42 | 92.92 | 172.24 | 155.47 | 167.22 | 27.02 | 47.04 | 50.49 | 59.35 | |
| 0.340 | 0.002 | 0.018 | 1.82E-06 | 0.058 | 0.212 | 0.010 | 49.901 | 1.16E-05 | |
| 2.56 | 14.51 | 26.90 | 24.28 | 26.12 | 4.22 | 7.35 | 7.88 | 9.27 | |
| 1 | 0.588 | -0.264 | -0.270 | -0.224 | 0.194 | 0.023 | 0.073 | ||
| 1 | -0.190 | -0.199 | 0.118 | 0.289 | 0.091 | 0.051 | |||
| 1 | 0.960 | -0.082 | -0.165 | 0.147 | -0.126 | ||||
| 1 | -0.081 | -0.185 | 0.180 | -0.209 | |||||
| 1 | 0.506 | -0.097 | 0.020 | ||||||
| 1 | -0.184 | 0.301 | |||||||
| 1 | 0.140 | ||||||||
| 1 | |||||||||
| 1 | 0.410 | -0.300 | -0.314 | 0.151 | 0.386 | -0.003 | 0.185 | ||
| 1 | -0.155 | -0.136 | 0.539 | 0.429 | 0.090 | 0.203 | |||
| 1 | 0.968 | 0.022 | -0.145 | 0.151 | -0.153 | ||||
| 1 | -0.011 | -0.174 | 0.204 | -0.249 | |||||
| 1 | 0.694 | 0.247 | 0.487 | ||||||
| 1 | -0.123 | 0.384 | |||||||
| 1 | 0.149 | ||||||||
| 1 | |||||||||
Figure 8Comparison between different methods of data fitting. Each figure reports Glucose (white circles) and Insulin (black diamonds) observed concentrations versus time, together with the predicted time-curves (dashed line for Glucose and continuous line for Insulin) using four different methods: the discrete Single Delay Model (figure 8.a); the Minimal Model with its traditional two-pass 'decoupling' estimation method (figure 8.b); the Minimal Model when all parameters are fitted simultaneously (figure 8.c); the Minimal Model when global system behavior (interacting glycemias and insulinemias) is reconstructed from separately estimated (two-pass) parameters (figure 8.d).