Title: Steady-State Optimal Insulin Infusion for Hyperglycemic ICU Patients
1Steady-State Optimal Insulin Infusion for
Hyperglycemic ICU Patients
- J G Chase, G C Wake, Z-H Lam, J-Y Lee, K-S Hwang
and G. Shaw - University of Canterbury
- Dept of Mechanical Engineering
- Christchurch
- New Zealand
- ICARCV 2002, Singapore
2Diabetes A Brief Overview
- Diabetes A disorder of the metabolism
- Type I Body produces little or no insulin.
- Type II Insulin resistance or impaired glucose
tolerance. - Complications kidney failure, blindness, nerve
damage, amputation, heart attack, stroke. - High annual costs growing exponentially with
number of cases - Estimated cost to NZ is 1B per year in 2020 A
growing epidemic! - Similar numbers hold true throughout most of the
world, including Singapore.
3Diabetes in the ICU
- Elevated blood glucose levels or Hyperglycaemia
is very common among the critically ill in the
ICU - Stress of the disease
- Many older patients are Type II diabetic
individuals - Direct result of disease
- Current Treatment
- Sliding scale protocols based on magnitude with
very coarse resolution - Feeding 1-2x daily in slow infusion
- Generally poor control (lt8 mmol/L is considered
very good) - Often overlooked because of severity of other
issues and disease - Why bother? 45 reasons for every 100!
- Vandenberghe et al (2001) showed that tight
glucose regulation in the ICU (levels lt 6mmol/L)
resulted in up to a 45 decrease in mortality
43 Elements of Control Systems in an ICU
- Sensing
- Typically done with GlucoCard or similar
arterial blood measurement - Modern methods of automatic measuring being
developed (Trajanoski et al, 1994) - Computation
- Sliding scale protocol could be replaced by an
algorithm implemented on DSP - Actuation
- Standard systems such as a Graseby 3500
- Necessary technologies emerging very rapidly to
close the loop!
52-Compartment Glucose-Insulin System Model
- Model derived and validated in Bergman et al.
1985 - More amenable for real-time control analysis than
many models - G and I are variations from basal levels of
Glucose and Insulin. - Coefficients p1, p2, p3 vary for Type I, Type II,
Normal, and n varys for insulin type. - System simulated with time step of 1 minute,
actuation and sensor bandwidth are varied to
determine trade-offs and diminishing returns.
6Optimal Steady State Infusion Rate
- Equations for I(t) and X(t) solved analytically
and the optimal solution for u(t) obtained for G
d/dt(G) 0 no excursion or slope
- Solution depends on 1st and 2nd derivatives of
exogenous glucose input P(t) as well as
its initial conditions. I.e. you must know P(t)
very well. - If P(t)0 for all t then the optimal steady state
rate is simply u0 as expected for Gd/dt(G)0
status
7Solution of Steady State Optimal Infusion I
- First solve for I(t) insulin level in first
compartment in terms of infusion u(t)
- Use I(t) solution to obtain remote compartment
analytical solution for X(t) in terms - of the input u(t) from the solution for I(t).
8Solution of Steady State Optimal Infusion II
- Insulin utilization equation if dG/dt G 0
for a Type 1 diabetic ? the steady state
- Inserting solutions for X(t) and using Laplace
transforms to simplify the convolution - integrals and algebra the steady state optimal
infusion u(t) can be obtained from the - inverse Laplace transform of the above equation
solved for U(s)
The algebra is ugly but fairly direct and much
easier if the initial conditions for P(t) are
equal to zero, which should be true for a slow,
smooth infusion.
9Optimal Control of a Glucose Slow Infusion
- Infusion will follow the normal
- response shown
- Optimal response essentially flat
- because P(t) is very well known,
- smooth and continuous
- This input profile is not unlike a
- typical ICU night feeding via IV.
- Infusion occurs over 3hours for
- 500kcals of feeding
The optimal controller handles this case very well
10Optimal Infusion for Slow Infusion
- Glucose Response is flat with
- small errors due to numerical time
- step size. At infinitely small size
- the response is almost perfectly flat.
- Small negative infusion or glucose
- input is due to numerical issues. The
- solution is not very stable on Matlab
- Much more like an injection than the
- normal modeled response.
11A Difficult Test
- 1000 calories in 4 hours over five meal inputs
of glucose which is rapidly absorbed - Inputs vary in magnitude from 50 400 calories
- Inputs occur in two groups of rapid succession at
t 0, 10, 30 minutes and at t 210 and 300
minutes - The last meal is 40 calories from 980 1020
calories so the full absorption of about 1000
calories occurs by 4 hours quite easily. - Controller has no knowledge of glucose input
except in optimal case - Input knowledge is not currently practicable in
any way for this system in general
The goal is to hammer the system and see if it
breaks!
12Comparison with other Controllers
- Relative proportional controller (RPC).
- Optimal steady state infusion rate by solving
analytically with
- PD controller controls slopes of
incresing/decreasing blood sugar level rather
than actual glucose concentration
13Control of Glucose Inputs
Optimal control very nearly flat as desired and
much lower than other forms of control
14Insulin Infusion Rates for Glucose Inputs
15Summary Conclusions
- A steady state optimal infusion solution is
developed for a physiologically verified 3
compartment model of the glucose regulatory
system - Solution is shown to provide the desired flat
glucose response to steady, slow inputs as well
as more significant challenges - Optimal solution does require knowledge of the
glucose absorption function P(t) which is
unlikely to be known outside of a controlled
setting such as the ICU. Hence, its limited
application clinically. - Optimal insulin infusions mimic the injection
solutions which have been hand optimized for care
over the prior 50 years
16Acknowledgements
Lipids and Diabetes Research Group
17Questions, Comments, Complements, .
Failure is not an option (but it is much more
interesting). -- G. Shaw, MD No, no, no
(explicit adjective(s)) -- G. Chase, PhD