1 / 23

Engineering the Tissue Which Encapsulates Subcutaneous Implants. I. Diffusion Properties

Engineering the Tissue Which Encapsulates Subcutaneous Implants. I. Diffusion Properties. A. Adam Sharkawy, Bruce Klitzman, George A. Truskey, W. Monty Reichert Dept. of Biomedical Engineering, Duke University J Biomed Mater Res . 1997 . 37: 401-412. Motivation

vivian
Télécharger la présentation

Engineering the Tissue Which Encapsulates Subcutaneous Implants. I. Diffusion Properties

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Engineering the Tissue Which Encapsulates Subcutaneous Implants. I. Diffusion Properties A. Adam Sharkawy, Bruce Klitzman, George A. Truskey, W. Monty Reichert Dept. of Biomedical Engineering, Duke University J Biomed Mater Res. 1997. 37: 401-412 • Motivation • Demonstrate that implant surface architecture impacts the mass transfer properties of the surrounding tissue • Objectives • Demonstrate impact of implant surface on encapsulation tissue • Measure binary diffusion coefficient of a small-molecule analyte through each tissue • Approach • Implantation in subcutaneous tissue of rats • Histology of encapsulation tissue at implant surface • Two-chamber measurements of diffusion coefficient across tissue

  2. Engineering the Tissue Which Encapsulates Subcutaneous Implants. I. Diffusion Properties A. Adam Sharkawy, Bruce Klitzman, George A. Truskey, W. Monty Reichert Dept. of Biomedical Engineering, Duke University J Biomed Mater Res. 1997. 37: 401-412 • Motivation • Demonstrate that implant surface architecture impacts the mass transfer properties of the surrounding tissue • Objectives • Demonstrate impact of implant surface on encapsulation tissue • Measure binary diffusion coefficient of a small-molecule analyte through each tissue • Approach • Implantation in subcutaneous tissue of rats • Histology of encapsulation tissue at implant surface • Two-chamber measurements of diffusion coefficient across tissue

  3. Engineering the Tissue That Encapsulates Subcutaneous Implants. I. Diffusion Properties A. Adam Sharkawy, Bruce Klitzman, George A. Truskey, W. Monty Reichert Dept. of Biomedical Engineering, Duke University J Biomed Mater Res. 1997. 37: 401-412 • Motivation • Demonstrate that implant surface architecture impacts the mass transfer properties of the surrounding tissue • Objectives • Demonstrate impact of implant surface on encapsulation tissue • Measure binary diffusion coefficient of a small-molecule analyte through each tissue • Approach • Implantation in subcutaneous tissue of rats • Histology of encapsulation tissue at implant surface • Two-chamber measurements of diffusion coefficient across tissue

  4. Implants in Sprague-Dawley Rats Implant Types Parenthetical values are length of implantation in weeks SQ - normal subcutaneous tissue (4) SS - stainless steel cages (3 or 12) PVA-skin - non-porous PVA (4) PVA-60 - PVA sponge, 60 m pore size (4) PVA-350 - PVA sponge, 350 m pore size (4) PVA Sponge Stainless Steel Mesh

  5. Porosity Reduces Encapsulation PVA-skin PVA-60 S = A3/2 Is this an appropriate assumption?

  6. Fibrous Tissue Inhibits Diffusion Concentrated Chamber Dilute Chamber Membrane Ussing-type Diffusion Chamber Fluorescein MW 376 PVA-350 SQ PVA-60 SS PVA-skin Maxwell’s correlation for composite media:

  7. Finite Difference Modeling Step Change Ramp

  8. This is a Good Paper • This is a good paper • It presented qualitative evidence that the implant surface could be engineered to minimize the formation of fibrous scar tissue • It presented internally-consistent data showing that fibrous tissue inhibited the diffusion of small molecule analytes • The community agrees; nearly 100 citations plus 100 more for 2 companion papers But, this is a very difficult experiment, and it isn’t without its flaws…

  9. The Paper Does Have Flaws • Absence of a control membrane that allows quantitative comparison to other studies • The FD model adds nothing to the paper; I got the same answer they did in 30 seconds w/out using Matlab • Why do experiment and theory correlate poorly in this study? • Rats aren’t humans; subcutaneous tissue isn’t abdominal tissue - these results offer a qualitative picture, not an absolute quantitative measure But to reiterate: This is a difficult experiment!

  10. Supplemental Slides

  11. Assume membrane adjusts rapidly to changes in concentration Species balance for each tank Two-Chamber Diffusion • Expanding flux terms • Integrating w/ Coi,lower-Coi,upper @ t = 0 • Assuming tanks are equal volumes, we can say Ci,lower = Coi,lower-Ci,upper • Combine species balances

  12. Maxwell’s Composite Correlation In Maxwell’s derivation, we can consider some property, v (temperature, concentration, etc.), whose rate of change is governed by a material property, Z (diffusivity, conductivity, etc.) We now consider an isolated sphere with property Z’ embedded within an infinite medium with property Z. Far from the sphere, there is a linear gradient in v along the z-axis such that v = Vz. We want to know the disturbance in the linear gradient introduced by the embedded sphere.

  13. We assume profiles of the form: Maxwell’s Composite Correlation Outside Sphere Inside Sphere Subject to the boundary conditions: v = v’ for r = a, 0 ≤  ≤  Solving for A and B, we find:

  14. We now consider a larger sphere of radius b with many smaller spheres of radius a inside, such that na3 = b3, where  is the volume fraction of small spheres in the large one. The following must be true: Maxwell’s Composite Correlation Equating these two expressions, we can solve for Zeff: This expression can be written in various forms, including the one listed in the paper.

  15. Maxwell’s Correlation for Diffuse Spheres Other Composite Correlations Rayleigh’s Correlation for Densely-Packed Spheres Rayleigh’s Correlation for Long Cylinders Source: BSL, 2nd Edition, p.281-282.

  16. What are the Volume Fractions?

  17. Other Way to Estimate the Lag Time C Composite Resistances DAB,1 DAB,2 L1 L2

  18. Other Way to Estimate the Lag Time In Cartesian Co-ords (A1=A2): For DAB,1 = 2.35 and DAB,2 = 1.11: In Cylindrical Co-ords: In Spherical Co-ords:

  19. The Finite Difference Model Discretized Transient Species Balance Transient Species Balance Boundary Conditions: 1/F > 20 in the model to ensure stability where

  20. Rats v. Humans “This study reveals profound physiological differences at material-tissue interfaces in rats and humans and highlights the need for caution when extrapolating subcutaneous rat biocompatibility data to humans.” - Wisniewski, et al. Am J Physiol Endocrinol Metab. 2002. “Despite the dichotomy between primates and rodents regarding solid-state oncogenesis, 6-month or longer implantation test in rats, mice and hamsters risk the accidental induction of solid-state tumors...” - Woodward and Salthouse, Handbook of Biomaterials Evaluation, 1987.

  21. 2-Bulb Problem No flux @ boundaries --> Nt = 0 As w/ our membrane, we assume that the concentrations can adjust very rapidly in the connecting tube (pseudo steady-state). Thus, we obtain a linear profile connecting the two bulbs: Species Balance for a bulb Div.Thm.

  22. For left bulb: 2-Bulb Problem Substituting our expression for the molar flux and rearranging: We can eliminate the right-side mole fraction via an equilibrium balance. Applying and simplifying: In a multicomponent system, we’d need to decouple these equations to solve them analytically. For our binary system, we can solve directly:

  23. Sources of Error • 1-D Assumption • Quasi-Steady State Assumption • Infinite Reservoir Assumption • Constant cross-sectional area • Constant tissue thickness • Implantation errors • Dissection errors • Image Analysis errors • Cubic volume fraction assumption • Tissue shrinkage/swelling • Stokes-Einstein estimation • Sampling errors • Dissection-triggered cell changes

More Related