Title: John Lowengrub
1Multiscale Models of Solid Tumor Growthand
AngiogenesisThe effect of the microenvironment
- John Lowengrub
- Dept Math and Biomed Eng., UCI
- www.math.uci.edu/lowengrb
Vittorio Cristini, Paul Macklin (UT Health Sci.
Center) Yao-Li Chuang, H. Frieboes, Fang Jin,
Steven Wise (UCI), X. Zheng (U. Mich.)
2Motivation
- Provide biophysically justified in silico virtual
system to study - Help experimental investigations design new
experiments - Therapy protocols
3Outline
- Models and analysis of invasion
- Numerical methods and results
- Models of angiogenesis
- Nonlinear coupling of angiogenesis and invasion
4The Six Basic Capabilities of Cancer (Hanahan
and Weinberg, 2000)
- Genetic-Level (Nanoscopic)
- Self-sufficiency in Growth Signals
- Insensitivity to Growth-inhibitory Signals
- Evasion of Programmed Cell Death
- Limitless Replicative Potential
- Tissue-Level (Microscopic)
- Tissue Invasion and Metastasis
- Sustained Angiogenesis
5Cartoon of solid tumor growth
- Goal Model all Phases of growth
6Cancer Multiscale Problem
Recent Reviews Araujo-McElwain (2004), Byrne et
al (2006), Roose et al (2007)
Nonlinear (continuum) simulations Cristini et al
(2003), Zheng et al. (2005), Macklin-L.
(2005,2006,2007), Hogea et al (2005,2006), Wise
et al. (in review)
7Modeling
Owen et al, 2004
- Continuum approximation super-cell macro scale
- (Collective motion)
- Role of cell adhesion and motility on tissue
invasion and metastasis - Idealized mechanical response of
tissues - Coupling between growth and angiogenesis
(neo-vascularization) necessary for maintaining
uncontrolled cell proliferation.
Hybrid-continuum-discrete approach - Genetic mutations random changes in
microphysical parameters cell apoptosis and
adhesion
8Key variables
Minimal set.
Tumor fraction
Will discuss refinements later.
9Equations governing tumor growth and tissue
invasion
Wise, Lowengrub, Frieboes, Cristini, Bull. Math.
Biol., in review.
-- Adhesion fluxes
S Net sources/sinks of mass
Mixture models Ambrosi-Preziosi (2002),
Byrne-Preziosi (2003)
10Adhesion
Fundamental biophysical mechanism.
Cell-cell binding through cell-surface proteins
(CAMs, cadherins)
- Cell-sorting due to cell-cell adhesion
Chick embryo Armstrong (1971)
- Cells of like kind prefer to stay together.
Cell-ECM binding through other cell-surface
proteins (integrins)
11Adhesion Energy Application to Tumor
- Assume tumor cells prefer to be together.
Different phenotypes may have different
adhesivity (can extend the model)
(expansion of nonlocal interaction potential)
- Thermodynamic consistency
Generalized Cahn- Hilliard equation
where
12Constitutive Assumptions
Simplest assumptions. Can be generalized.
(X.Li, L., Cristini, Wise)
- Water density is constant
Water decouples
Excess adhesion
- Cell-velocities are matched using Darcys law
Solid
Cell mobility reflects strength of cell-cell and
cell-matrix adhesion
Oncotic (hydrostatic) solid pressure
liquid pressure
permeability
Liquid
(arise from thermodynamic considerations)
13Constitutive Assumptions Contd.
Heaviside function
Nutrient (oxygen)
Cell proliferation
Viability level of nutrient
mitosis
apoptosis
necrosis
Necrotic cells
lysing (enzymatic degradation)
Host domain
Water
14The Equations (nondimensionalized)
Total tumor cells
Dead tumor cells
Adhesive potential
Solid Pressure/Velocity
Liquid Pressure/Velocity
Sources
- Only one Cahn-Hilliard Equation to be solved for
(4th order, nonlinear advection-diffusion
equation)
time
length
- Generalizes to multiple species easily.
15Evolution of nutrient
Oxygen
uptake by viable cells
0 (quasi-steady assumption). Tumor growth time
scale (1 day) large compared to typical
diffusion time (1 min)
Source due to capillaries (angiogenesis)
16Interpretation
- D is an indirect measure of perfusion
i.e., D large
nutrient rich
is a measure of mechanical/adhesive properties of
extra-tumor tissue
i.e.,
small
tissue hard to penetrate
(less mobile)
- Although a very simplified model of these
effects, this - does provide insight on how the
microenvironment influences - tumor growth.
17Nondimensional parameters
Microenvironmental
- Mobility (adhesion) ratio
Cell-based
18Spherical Solutions
- Balance between proliferation/necrosis/lysing.
- Viable tumor cells move to center. (water moves
outward) - Necrotic boundary is diffuse
19Convergence to sharp interface
20Tumor Spheroids Validation in vitro
In vitro growth
No vascularization (diffusion-dominated)
Dormant (steady) states
One micron section of tumor spheroid showing
outer living shell of growing cells and inner
core of necrosis.
3-D video holography through biological tissue P.
Yu, G. Mustata, and D. D. Nolte, Dept. of
Physics, Purdue University
21Tumor Modeling The basic model
Model validation
Growth of tumor
Viable rim
In vitro data Karim Carlsson Cancer Res.
- Agreement w/ observed growth
- Determine microphysical parameters
22Microphysical parameters
(approximately 7 cells)
G is not determined
23Morphological stability
Perturbation
Underlying Growth
d2,3
(balance between proliferation, necrosis and
apoptosis)
Shape evolution
Self-similar evolution
If N0, then can also get
24- Qualitatively similar for 2D/3D
- Necrosis enhances instability
(A,Ggt0)
- Low vascularization
- (diffusion-dominated)
Stable/Shape-preserving/Unstable
(Alt0, Ggt0)
Stable
Experimental evidence (Polverini et al., Cancer
Res. 2001)
3. High vascularization
(Glt0)
Shape instability with high vascularization
Vascular/mechanical anisotropy
25Diffusional Instability--Avascular
2D Cristini, Lowengrub and Nie, J. Math. Biol.
46, 191-224, 2003 3D, Li, Cristini, Nie and
Lowengrub, DCDS-B, 2007.
Avascular (tumor spheroid) (low cell-to-cell
adhesion)
2D
3D
- Growth-by-bumps
- topology change
ejection of cells from bulk
Highly vascularized
(isotropic vasculature)
Boundary integral method
26Diffusional Instability
- Perturbed tumor spheroids/Complex Morphology
glioblastoma
Velocity field (simulation)
Swirling ejection from bulk
Frieboes, et al.
- Theory
- Possible mechanism for invasion into soft
tissue
Cristini, Lowengrub, Nie J. Math. Biol
(2003) Cristini, Gatenby, et. al., Clin. Cancer
Res. 11 (2003) 6772. Macklin, Lowengrub, J.
Theor. Biol. (2007)
27Nonlinear Simulations
28Numerical Scheme
- Implicit time discretization (Gradient Stable)
- fully implicit treatment of system
- Second order accurate, centered difference
scheme. - Conservative form. Adaptive spatial
discretization. - Nonlinear, Multilevel,
- multigrid method
Chombo, Mitran
Kim, Kang, Lowengrub, J. Comp. Phys. (2004) Wise,
Lowengrub, Kim, Thornton, Voorhees, Johnson,
Appl. Phys. Lett. (2005) Wise, Kim, Lowengrub J.
Comp. Phys., in review
29Advantages of Multigrid
- Complexity is O(N)
- Optimal convergence rate
- Handles large inhomogeneity/ nonlinearity
seamlessly (no additional cost) - Flexible implementation of b.c.s (compare with
pseudo-spectral, spectral methods) - Seamlessly made adaptive
- Hard to analyze quantify smoothing properties of
the nonlinear relaxation scheme
- Smoothing is performed by, for example, the
nonlinear Gauss-Seidel method.
- Local linearization. No global linearization, for
example via Newtons Method, is needed.
30Nutrient-rich host domain
- Small nutrient
- gradients in host
Wise, Lowengrub, Frieboes, Cristini, BMB in
review.
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33- Tumor develops folds to increase access to
nutrient
34Large nutrient gradients
- Large nutrient
- gradients in host
- Tumor breaks up in its search for nutrient
35Morphology diagram
Macklin, Lowengrub JTB, 2007.
A0, G20,
N0.35
(decreased mobility)
- Fragmented (nutrient-poor).
- Fingered (high tissue resistance)
- Hollowed (low tissue resistance, nutrient-rich)
36Invasion Summary
- Microenvironment is a primary determinant for
- tumor growth and morphology
(fragmented, invasive fingering, hollow/necrotic)
- Internal structure (e.g. size of necrotic,
proliferating regions) - determined by cell-based parameters
- Link between morphology,
- microenvironment, phenotype
- Implications for therapy
- Experimental evidence for this
- behavior?
G55 human glioblastoma tumors in vivo becoming
invasive after anti-angiogenic therapy Rubinstein
et al. Neoplasia (2000)
37Comparison with experiment
Exp Frieboes et al., Cancer Res. (2006).
fetal bovine serum (FBS)
increasing
glucose
increasing
- Model is qualitatively consistent with
experimental results
38Angiogenesis
More realistic description of in vivo tumor
microenvironment
Angiogenic factors VEGF (Vascular
Endothelial cell Growth Factor) FGF
(Fibroblast Growth Factor) Angiogenin
TGF (Transforming Growth Factor),.
(fibronectin/collagen)
39Gradient-based, biased circular random walk
Ref Plank-Sleeman, Bull. Math. Biol (2004)
Othmer-Stevens, SIAM J. App. Math. (1997)
Hill-Häder, J. Theor. Biol. (1997)
Idea track the capillary tip. Use the trace to
describe the vessel. Not lattice-based.
- Endothelial cell travels with speed s with
direction given by - the polar and azimuthal angles (f, ?)
Hybrid continuum-discrete model
(1 EC per 50-100 Tissue/Tumor cells)
Endothelial cells/vessels treated as discrete
quantities Tumor cells/substrate species treated
as continuum
40Angiogenesis contd.
Cell receptor ligand f (e.g., Fibronectin) in the
ECM. Regulates cell adhesion and motion
Matrix degradation by vascular endothelial cells
degradation
production
Matrix degradative enzymes (MDEs) m
Endothelial cells tend to move up the gradients
of c and f
(chemotaxis, haptotaxis). Speed s proportional to
their magnitudes.
41Gradient-based, biased circular random walk
Ref Plank-Sleeman, Bull. Math. Biol (2004)
Othmer-Stevens, SIAM J. App. Math. (1997)
--- Probability Density function
Hill-Häder, J. Theor. Biol. (1997)
--- mean turning rate,
--- rotational diffusivity
Fokker-Planck Eq
Prob. Mobility (Mean turning rate)
Gradient Model Transition rate Transition
probability
VEGF gradient direction
FIB gradient direction
VEGF sensitivity (turning coefficient)
FIB sensitivity
42Gradient-based, biased circular random walk
Ref Plank-Sleeman, Bull. Math. Biol (2004)
Othmer-Stevens, SIAM J. App. Math. (1997)
Hill-Häder, J. Theor. Biol. (1997)
- Branching Tip is allowed to split with a certain
probability
- Anastomosis If vessels are close, they may merge
with a - certain probability.
43Tumor-Capillary Interactions
Anderson, Chaplain, McDougall, Levine, Sleeman,
Zheng,Wise,Cristini, Frieboes et al, Macklin, et
al.
(in reality is much more complicated but this is
a start)
Tumor angiogenic factor c
Tumor angiogenic factor (e.g., VEGF-A) potent
mitogen, drives motion
Uptake by the endothelial cells
Nutrient equation n
Decay
Nutrient transfer
production
Endothelial Cell (localized) density
Nutrient inside capillary
Transfer rate
Capillary pressure
Heaviside function
Capillary density
44 Simulation of Tumor-Induced Angiogenesis
Parameters appropriate for glioblastoma
Wise, Lowengrub, Frieboes, Zheng, Cristini, Bull.
Math. Biol, in review
Frieboes, Lowengrub, Wise, Zheng, , Cristini,
Neuroimage (in press)
45Vascular cooption
- Initial capillaries present
- Growing tumor surrounds
- vessels
- Uses up available vasculature
- Secondary angiogenesis
- Observe bursts of growth as
- the nutrient supply increases
- (cyclical bouts of angiogenesis)
46Progression
200um
- Note nutrient supply localized near red
(nutrient-releasing) vessels - Observe corresponding viable tumor cells around
vessels.
47Simulation
Human Glioma
- Tumor architecture is determined by cellular
metabolism and intra-tumoral diffusion - nutrient gradients of required nutrients
provided by the vasculature, - Confirms the presence of substrate gradients and
the parameter estimates for - diffusion length used in the simulations Bar,
200 um.
48Human glioma
simulation
- Model predicts that tumor tissue
- invasion is driven by diffusion gradients.
Bar 100um
49Implications for therapy
Anti-invasive therapy
Anti-invasive therapy
Rubinstein et al (2000)
increase adhesion
increase adhesion
Anti-angiogenic therapy
vessel disruption
Vascular normalization
2D Cristini, et al., Cancer Res. (2006)
50Next Steps
- More complex/realistic biophysics
- Mechanical response
- Angiogenesis (Flow)
- Mutations/multiple cell-types
- Complex domains
- Even biophysically simplified modeling can
provide - insight though
- from morphology, infer microenvironment,
phenotype - and hence invasive potential
- Move beyond phenomenological to predictive
modeling
Integrative models match molecular-scale
features of experiments. Gatenby (Invasion
and Morphologic instability)
51Tumor-Induced Angiogenesis
Macklin, McDougall, Anderson, Chaplain, Cristini,
L. In preparation.
- Flow/Wall Shear Stress enhances branching.
- Pressure cuts off vessels. Complex Nonlinear
interaction between tumor growth and angiogenesis
52Mutations
- Include a 3rd tumor species
- (random times/random positions)
- Increase proliferation/nutrient uptake
t0
t10
t60
t212
t120
t180
- Mutation enhances/creates instability (nutrient
gradient)
53Improved modeling
- Introduction of quiescent cells
- Better treatment of necrotic core
- Mutations/heterogeneous populations
Macklin, Lowengrub
54Hypoxia-induced invasion
- Branched tubular structures
Hypoxia-induced matrix invasion in vitro by
MLP-29 mouse embryo liver cell spheroids.
Hypoxia-induced Upregulated HGF/Met tyrosine
kinase Pennachietti et al, Cancer Cell (2003).
Normoxic
Hypoxic
HypoxicHGF
Simulation Low proliferation. Chemotaxis.
Decreased adhesion