Download presentation
Presentation is loading. Please wait.
1
Distributed Models of Drug Kinetics
Paul F. Morrison Ph.D. Drug Delivery and Kinetics Resource, Division of Bioengineering and Physical Science, NIH
2
Previous: Whole organ pharmacokinetic models
® C(t), Cp(t) Multiple organs Multiple chemical species Today: Distributed models of pharmacokinetics ® C(x, t)
3
Outline General principles behind distributed models
Simple formalism Major physiological-physical factors Examples where distributed kinetics are important in drug delivery Peritoneal cavity Intraventricular infusion Direct interstitial infusion in the CNS Microdialysis Delivery of tight-binding antibodies
4
General Principles Central issue: What is the situation which leads to a spatially-dependent distribution of drug in a tissue, and how is this distribution described quantitatively? Essential Characteristic: Target tissue can not be approximated as a well-mixed compartment. Specifically, drug is delivered along a path from the source along which local clearance or binding causes the concentration to vary.
5
Common Situations Leading to Spatial Distributions
Delivery of agents from spatially non-uniform sources e.g. point source of needle tips e.g. surface (planar) sources encountered when drug solution bathes the surface of a target organ e.g. intravenous delivery into tissues with highly heterogeneous capillary densities Certain tumors Delivery of very highly binding substances leading to a “moving front” concentration boundary High affinity antibody conjugates
6
Distributed Capillary Bed
7
Diffusion-Reaction Formalism
Mass balance for substance in tissue: 2 C C k m æ C ö = D - C - pa ç - C ÷ p 2 t è R ø x R rate of conc net diffusion metabolism net transport change in D V in D V in D V across microvasculature If C ( t ) , c c p - D DV - D x x C ( x , ) = , IC x x + D x , C ( ) t = R C inf , BC kmC /R C ( , t ) = , BC pa(C/R-Cp)
8
(Diffusion-reaction Cont’d)
Then C ( x , t ) 1 é - x ù é x ù = exp erfc - kt ê ú ê ú R C 2 ë k / D û ë 4 Dt û inf 1 é x ù é x ù + exp erfc + kt ê ú ê ú 2 ë k / D û ë 4 Dt û ( ) k m + pa where k = / R At steady state, this simplifies to just: C ( x ) [ ] = R exp - x k / D C inf If no reaction is present, then: C ( x , t ) é x ù = R erfc ê ú C ë 4 Dt û inf
9
Implications Drugs can be delivered to tissue layer near exposed surface but the thickness of this layer depends strongly on metabolism of agent Delivery of non-metabolized agents across surfaces for purposes of systemic drug administration (e.g. I.P.) is dominated by distributed microvascular uptake in the tissue layer underlying the surface And not by the rate of transfer across the peritoneal membrane per se
10
AUC = ò C ( t ) dt is NOT applicable , instead AUC ( x ) = ò C ( x , t
Importantly, local dose-response relationships also become spatially dependent, e.g. AUC = ò C ( t ) dt is NOT applicable , instead AUC ( x ) = ò C ( x , t ) dt is applicable .
11
Diffusion Constants and Reaction Rate Constants
Diffusion constants extrapolated from known values for reference substances Reaction rate constants Cultured cell metabolic data Fittings of compartment models to whole tissue data From autoradiography and fit to exp[-x√(k/D)] - 2 37 2 D = l * D l a * . 6 a ( MW ) tissue aqueous æ ö . 6 D æ MW ö tissue ref ç ÷ = ç ÷ ç ÷ D è MW ø è ø tissue , ref
12
(continued) pa µ MW so æ ö pa æ MW ö ç ÷ = ç ÷ ç ÷ pa è MW ø è ø -
Concentration profile insensitive to MW if k= pa/R (i.e. inulin depth ~ urea) - 63 . pa MW so æ ö . 63 pa æ MW ö ref ç ÷ = ç ÷ ç ÷ pa è MW ø è ø ref
13
Example 1 Intraperitoneal Administration of Agents
Treatment of ovarian cancer patients
14
The ovarian goals: Achieve sufficient penetration of surfaces to treat resident tumor nodules Nodules lie on serosal surface, not invasive Not metastatic Diameter of <5 mm (in 73% of post surgical cases) Complete irrigation of serosal surfaces Predicted pharmacokinetic advantage of I.P. over I.V. delivery Alberts et al confirmed survival advantage for patients treated with cisplatin
15
Predicted Penetration in Peritoneum
Cisplatin Cis-diamminedichloroplatinum (II) Slow hydrolysis Compute C(x) at steady state How good is the model? Estimate predictability of diffusion model for surrogate EDTA
17
Concentration Profile of EDTA at Peritoneal Interface of GI Tissue
0.01 0.1 1 C - f e p ( ) inf = exp x k / D [ ] where . 26 , 0078 m 1 Relative Tissue Concentration C / Cinf Plasma 200 400 600 800 1000 Distance from Peritoneum (µ)
18
Example 2 Intraventricular Delivery
-- Attempt to circumvent the BBB
19
Blood-Brain Barrier Exclusion of Histamine
Pardridge et al, Ann Int Med 105; (1986)
20
Sucrose Distribution After Intraventricular Administration
Groothuis et al, J. Neurosurg. 1998
21
Similar Penetration with Macromolecules
For macromolecules (MW > 67kD), D = fe De /R decreases by >10-fold and effective pa decreases by a similar amount. Thus, in the capillary permeation limit ln 2 Penetration depth ( d ) = p pa + k m
22
Intraventricular Infusion of BDNF
Yan et al, Exp. Neurol. 127; (1994)
23
Delivery of NGF from Implanted Polymer
2.5mm 2.5mm Krewson et al, Brain Res. 680; (1995)
24
Example 3 Direct Interstitial Infusion (microinfusion)
-- approach to achieve more widespread distribution
25
Direct Infusion Cannula in Brain
26
On a cellular scale: Slow flow: 0.5 to 10 µl/hour (Alzet range) High flow: 0.1 to 4.0 µl/min (Harvard pump)
27
Two Techniques for Direct Interstitial Infusion
Alzet pump Harvard Pump 250 µl 10 µl Syringe system
28
(0.9 µl/hr of cisplatin for 160 hrs)
Slow Microinfusion (0.9 µl/hr of cisplatin for 160 hrs) Applicable mass balance: Steady state solution for continuous infusion, after matching mass inflow rate to diffusive flux at cannula tip, is: qCinf is mass infusion rate, and D=f De/R. R= 1 for cisplatin, R=f for IgG, where f is the extracellular volume fraction. Time to steady state at r = 4 mm is 3 hrs for cisplatin.
29
Concentration Profile of Cisplatin in Rat Brain (0.9 µl/hr)
30
Issues Treatment volumes r >1 cm
If pumping rates taken to maximum range, how does the response of high-flow delivery compare with low-flow (diffusional) delivery? Simple estimators of profiles and volumes of distribution
31
High Flow Infusion Model
p Pressure: Darcy’s Law: Continuity Equation for Water Minor deformation Macromolecular mass balance: i v ( r ) = - k r C 1 C 1 C k m 2 2 = D r - r v C - pa ( - C ) - C 2 2 p t r r r R r r R R change net diffusion net bulk flow net mass transfer metabolic in total into a volume into a volume across capillaries loss conc in D t element element
32
Simplification of Mass Balance
Concentration Profile: where q Cinf is the mass infusion rate, ro is the cannula radius Penetration depth at S.S. and time to reach it: 1.8 cm days hr=> km 3.6 cm days infinity => km
34
Concentration Profiles in Brain (3 µl/min)
35
Brain Infusion Technology
Delivery Predicted distribution of albumin-aCSF in striatum from flow-diffusion-reaction equation
36
111-In-DTPA-Transferrin Infusion
37
MODEL: POST-INFUSION PHASE
Pure Diffusional Relaxation of End-of-Infusion Profile Profile: C ( r , t ˆ ) = - k t ˆ e 2 ˆ [ - ( r - r ) /( 4 D t ) - ( r 2 + r ) /( 4 D t ˆ ) ò C ( r , t ) e - e ] r d r 2 r D t ˆ inf p t ˆ > where D = f D / R , k = ( pa + k ) / R , t ˆ = t - t e m inf
38
Post-infusional Behavior of Concentration Profiles
39
Post-infusional Behavior of Concentration Profiles
40
Increased Treatment Volume with High Flow Infusion
42
Application: Chemical Pallidotomy
Parkinson’s disease Alternative to thermal ablation Problem of optic nerve destruction Quinolinic acid Parameters from microdialysis Small molecular weight
43
Simulated Quinolinic Acid Profiles in Gpi Following Direct Interstitial Infusion
44
Chemopallidectomy
45
Chemopallidectomy Gpi, Intact Side Gpi, Lesioned Side
46
Summary General principles of distributed pharmacokinetics Examples
-- Peritoneal -- Intraventricular -- Interstitial Next week: Population pharmacokinetics
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.