Citation: Laura Cattaneo, Paolo Zunino. Computational models for fluid exchange between microcirculation and tissue interstitium[J]. Networks and Heterogeneous Media, 2014, 9(1): 135-159. doi: 10.3934/nhm.2014.9.135
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The brain is an organ with high energy needs. While it represents only 2% of the body weight it grabs at least 20% of its total energy needs [9]. The consumed energy can come from many forms such as glutamate, glucose, oxygen and also lactate [3]. Energy is necessary to support neural activity. Gliomas are the most frequent primary brain tumors (more than 50% of brain cancer cases according to the ICM institute). Like other cancers, they lead to alterations of cells' energy management. In particular, lactate creation, consumption, import and export of a glioma cell seem to play a key role in the cancer development [5]-[11]. Today, neuroimaging techniques allow an indirect and noninvasive measure of cerebral activity. It also enables measurement of various metabolic concentrations such as lactate and measurement of important biological parameters such as the relative cerebral blood volume (allowing relative cerebral blood flow calculations). But because energy management in healthy and tumoral cells and glioma growth can be difficult to observe and explain experimentally, we propose to use mathematical modeling to help to describe and understand cells energy changes.
To the best of our knowledge, only a few mathematical models have been proposed to study lactate fluxes in the brain and the interconnections with energy, see [3] for example. We aim herein at analyzing a model first described in [2].
Our paper is organized as follows. We first present the mathematical model proposed to describe the mechanisms of interest. We then investigate its well-posedness and derive bounds on the solutions. Indeed, such an analysis is necessary to justify how a mathematical model is well-adapted to a biological problem. We also analyze the limit model and study its steady state. Bounds on the solutions are important as they are related with the viability domain of the cell. Furthermore, as mentioned in [8], a therapeutic perspective is to have the steady state outside the viability domain where cell necrosis occurs. Additionnally, we present numerical simulations with different values of the small parameter
The present model is reduced in order to follow in a simpler way lacate kinetics between a cell and the capillary network in its neighborhood. It is built in vivo which means that we have to consider loss and input terms for both intracellular and capillary lactate concentrations. We denote by
First, there is a lactate cotransport through the brain blood. It is taken into account by a simplified version of an equation for carrier-mediated symport. This nonlinear term depends on the maximum transport rate between the blood and the cell
Then a cell can equally produce and consume lactate, but also export surplus lactate to neighboring cells. We denote by
Next there is a blood flow contribution to capillary lactate depending on both arterial and venous lactates. We denote by
Finally, we have the following ODE's, for
$
u′ε(t)=J(t,uε(t))−T(uε(t)k+uε(t)−vε(t)k′+vε(t)),
$
|
(2.1) |
$
εv′ε(t)=F(t)(L−vε(t))+T(uε(t)k+uε(t)−vε(t)k′+vε(t)).
$
|
(2.2) |
The initial condition is given by :
$(u_{\varepsilon}(0);v_{\varepsilon}(0)) = (\bar{u}_0;\bar{v}_0) \in \mathbb{R}^+\times \mathbb{R}^+.$ |
The model is biologically described in [2], to which we refer the interested readers for a better understanding of this process.
Well-posedness. Recall that an ODE system
$x \geqslant 0, x_k = 0 \Rightarrow f_k(t, x)\geqslant 0$ |
is verified for all
Since we have for nonnegative
$|{\frac{u_1}{k+u_1}-\frac{u_2}{k+u_2}}| = \frac{k|{u_2-u_1}|}{(k+u_1)(k+u_2)} \leqslant \frac{|{u_2-u_1}|}{k}, $ |
then we can rewrite (2.1)-(2.2), setting
$X(t):=(uε(t);vε(t)), $
|
to have
$X'(t) = H(t, X(t)), ~~~~~~~~~ X(0) = X_0, $ |
where
Bounds on the solution. By means of (2.2), we have
$v_{\varepsilon}'(t) \leqslant -\frac{F_1 v_{\varepsilon}(t)}{\varepsilon}+\frac{F_2L}{\varepsilon}+\frac{T}{\varepsilon}, $ |
which implies, using Gronwall's lemma, that
$v_{\varepsilon}(t) \leqslant \exp (\frac{-F_1 t}{\varepsilon})\bar{v}_0+\int_0^t \exp (\frac{-F_1 (t-s)}{\varepsilon})\frac{T+F_2L}{\varepsilon}ds, $ |
or equivalently,
$v_{\varepsilon}(t) \leqslant \exp (\frac{-F_1 t}{\varepsilon})\bar{v}_0+\frac{T+F_2L}{F_1}(1- \exp (\frac{-F_1 t}{\varepsilon})).$ |
One can see, using the above formula, that we have
$v_{\varepsilon}(t) \leqslant \max(\bar{v}_0, \frac{T+F_2L}{F_1}): = B_v. \label{Bv} $ |
Theorem 3.1. We can exhibit a sufficient, but not necessary, condition to ensure a bound on
$\forall (t, x) \in \mathbb{R}^2, \ J(t, x) \leqslant B_J$ |
and :
$BJ<T(1−Bvk′+Bv)⇔BJ(k′+Bv)<Tk′.(C2.1) $
|
In that case, we have, setting
$
uε(t)⩽max(kz1−z,ˉu0):=Bu.
$
|
(3.1) |
Remark 1. Condition
Proof. Equation (2.1) gives
$u_{\varepsilon}'(t) \leqslant B_J+ T\frac{B_v}{B_v+k'}-T\frac{u_{\varepsilon}(t) }{k+u_{\varepsilon}(t) }.$ |
We set
$1-z = \frac{(k'+B_v)T}{(k'+B_v)T}-\frac{B_v(T+B_J)+k'B_J}{(k'+B_v)T} = \frac{k'T-B_J(k'+B_v)}{(k'+B_v)T} > 0.$ |
Let
$u_{\varepsilon}(t) > \frac{kz}{1-z}.$ |
Then,
$u_{\varepsilon}(t)(1-\frac{B_v}{k'+B_v}-\frac{B_J}{T}) > k(\frac{B_v}{k'+B_v}+\frac{B_J}{T}), $ |
which yields
$B_J+ T\frac{B_v}{B_v+k'}-T\frac{u_{\varepsilon}(t)}{k+u_{\varepsilon}(t)} < 0, $ |
hence
$ u_{\varepsilon}'(t) < 0. $ |
We finally deduce that
$uε(t)⩽max(kz1−z,ˉu0). $
|
Remark 2. This condition on an upper bound on
$J_{test}(s, x) = \underbrace{G_J}_{\text{creation}}-\underbrace{L_J}_{\text{ consumption}}+\underbrace{\frac{C_J}{\varepsilon_J+x}}_{\text{import}}, $ |
for positive constants
We have already proved that
$v_{\varepsilon}'(t) \geqslant -\frac{F_2 v_{\varepsilon}(t)}{\varepsilon}+\frac{F_1L}{\varepsilon}-\frac{T}{\varepsilon}\frac{B_v}{k'+B_v}.$ |
Then, if
$v_{\varepsilon}(t) \leqslant \frac{F_1L-T\frac{B_v}{k'+B_v}}{F_2}, $ |
we have
$vε(t)⩾min(ˉv0,F1L−TBvk′+BvF2). $
|
If
$
vε(t)⩾min(ˉv0,max(F1L−TBvk′+BvF2,0)):=Mv.
$
|
(3.2) |
Similarly,
$u′ε(t)⩾T(Mvk′+Mv−uεk+uε). $
|
Then
$
uε(t)⩾min(ˉu0,Mvkk′):=Mu.
$
|
(3.3) |
Remark 3. The upper bound
$v_{\varepsilon}(t) \leqslant \max( \underset{\varepsilon>0}{\sup{\bar{v}_0}}, \frac{T+F_2L}{F_1}) .$ |
The lower bounds
Stability of the equilibrium. For constant
$
ul:=k(JT+vlk′+vl)1−(JT+vlk′+vl),
$
|
(3.4) |
$
vl:=L+JF.
$
|
(3.5) |
It has also been proven that this unique stationary point is a node, hence a locally stable equilibrium. However, this equilibrium does not always exist. For existence, the parameters need to satisfy :
$
JT+LF+JF(k′+L)+J<1⇔J2+JF(L+k′)−TFk′<0.
$
|
(3.6) |
Remark 4. We have already shown that
$J^2+JF(L+k')-TFk'> T^2+TF(L+k')-TFk' = T(T+FL) > 0.$ |
Therefore, the contraposition leads to:
$J^2+JF(L+k')-TFk'\leqslant 0 \text{ implies } J \leqslant T.$ |
We fix all the parameters but
$\Delta_J = F^2(L+k')^2+4TFk'>0$ |
and there is an equilibrium only when
$Jb:=12(−F(L+k′)−√ΔJ),Jh:=12(−F(L+k′)+√ΔJ). $
|
Knowing that
1.
2.
A therapeutic perspective is to have the steady state outside the viability domain [8]. Therefore playing on cell lactate intake could be worth exploring: a large
We now study the limit system for
$
u′0(t)=J−T(u0(t)k+u0(t)−v0(t)k′+v0(t)),
$
|
(4.1) |
$
0=F(L−v0(t))+T(u0(t)k+u0(t)−v0(t)k′+v0(t)),
$
|
(4.2) |
together with the initial condition :
$u_0(0) = \bar{u}_0 \in \mathbb{R}^+.$ |
We first give some preliminary results and then establish bounds on the solutions and study the well-posedness of the system. We finally compare the original system (with
Preliminaries. The function
We define the function
${\varphi _c}\left\{ ]−c,+∞[→]−∞,T[s↦Tsc+s. \right.$
|
It is easy to see that
$\varphi _c^{ - 1}\left\{ [0,T[→[0,+∞[z↦czT−z. \right.$
|
Furthermore, we introduce the function
${{\psi }_{c}}\left\{ ]−c,+∞[→R s↦Fs+φc(s), \right.$
|
where
$\psi_c'(s) = F+\frac{Tc}{(c+s)^2}.$ |
Employing (4.2), we have :
$\psi_{k'}(v_0(t)) = FL+\varphi_k(u_0(t)).$ |
We rewrite (4.1)-(4.2) as :
$
v0(t)=ψ−1k′(FL+φk(u0(t))):=Ψ(u0(t)),
$
|
(4.3) |
$
u′0(t)=J−T(u0(t)k+u0(t)−Ψ(u0(t))k′+Ψ(u0(t))):=G(t,u0(t)),
$
|
(4.4) |
and set, for
$Ψ−1(y)=φ−1k(ψk′(y)−FL). $
|
A priori bounds on the solutions. Thanks to (4.4), we have :
$G(t, 0) = J+\frac{T\psi_{k'}^{-1}(FL)}{k'+\psi_{k'}^{-1}(FL)}\geqslant J, $ |
and the system is quasipositive : for an initial condition
Using (4.2), we find an upper bound on
$
v0(t)⩽L+TF:=Bv,0.
$
|
(4.5) |
We can also obtain an upper bound on
We now rewrite (4.2) as :
$v_{0}(t)^2+v_{0}(t)(k'-L+\frac{T}{F}-z)-k'(L+z) = 0, $ |
where
Noting that
$
v0(t)=12(z+L−TF−k′+√(TF+k′−L−z)2+4k′(L+z)).
$
|
(4.6) |
Well-posedness. Equation (4.4) gives :
$u′0(t)=J−T(u0(t)k+u0(t)−Ψ(u0(t))k′+Ψ(u0(t))):=G(t,u0(t)). $
|
Lemma 1. The function
$|{\Psi(u_1)-\Psi(u_2)}| \leqslant K_L |{u_1-u_2}|.$ |
Proof. Let
$Ψ′(u)=1(Ψ−1)′(Ψ(u)) $
|
and :
$|(Ψ−1)′(Ψ(u))|=|(φ−1k)′(ψk′(Ψ(u))−FL)ψk′(Ψ(u)))|=|Tk(T−ψk′(Ψ(u))+FL)2(F+Tk(k+Ψ(u))2)|=|Tk(Tk+F(k+Ψ(u))2)(T+φk(u))2(k+Ψ(u))2|. $
|
It follows from the above that
$0=F(L−v)+T(uk+u−vk′+v)⇒v⩽FL+T=Bv,0,v⩾0. $
|
Therefore,
$|Ψ′(u)|=1|(Ψ−1)′(Ψ(u))|=|(T+φk(u))2(k+Ψ(u))2Tk(Tk+F(k+Ψ(u))2)|⩽(T+Tuk+u)2(k+Ψ(u))2⩽4T2(k+Bv,0)2:=KL. $
|
Consequently,
Stability of the equilibrium. As proved in [3], (4.1)-(4.2) can have at most one equilibrium given under the above parameters condition. The Jacobian of the system at this point gives the eigenvalue :
$\lambda: = -T \frac{k}{(k+u_l)^2} <0.$ |
Therefore,
$Tulk+ul=Tkzl1−zl1−zlk=Tzl=TJT+Tvlk′+vl=F(JF+L−L)+Tvlk′+vl=F(vl−L)+Tvlk′+vl. $
|
Thus :
$Fv_l+T\frac{v_l}{k'+v_l} = FL+T\frac{u_l}{k+u_l} \Leftrightarrow v_l = \Psi(u_l), $ |
and the stationnary point
Comparison between the original and the limit systems. We wish to bound the difference between
$u_{\varepsilon}(0) = u_0(0) = \bar{u}_0.$ |
We set
$
u′(t)=T(k′v(t)(vε(t)+k′)(v0(t)+k′)−ku(t)(uε(t)+k)(u0(t)+k)),
$
|
(4.7) |
$
εv′(t)=−Fv(t)+T(ku(t)(uε(t)+k)(u0(t)+k)−k′v(t)(vε(t)+k′)(v0(t)+k′))−εv′0(t).
$
|
(4.8) |
It follows from the above that,
$u′0(t)=J−T(u0(t)k+u0(t)−v0(t)k′+v0(t))∈[J−T,J+T],v0(t)⩽Bv,0, $
|
Therefore, differentiating (4.2), we find :
$Fv′0(t)=T(ku′0(t)(k+u0(t))2−k′v′0(t)(k′+v0(t))2)⇒v′0(t)(F+k′T(k′+v0(t))2)=Tku′0(t)(k+u0(t))2, $
|
hence
$|{v_{0}'(t)}| \leqslant \frac{kT(J+T)}{(F+\frac{k'T}{(k'+B_{v, 0})^2})}: = \gamma.$ |
Next, multiplying
$
12ddt(u2(t))⩽Tk′|u(t)||v(t)|,
$
|
(4.9) |
$
ε12ddt(v2(t))+Fv2(t)⩽Tk|u(t)||v(t)|+ε|v(t)|γ.
$
|
(4.10) |
Noting that
$Tk|u(t)||v(t)|+ε|v(t)|γ=(Tk|u(t)|2√F)(√F2|v(t)|)+(|v(t)|√F2)(2√Fεγ)⩽F2v2(t)+4T2Fk2u2(t)+4γ2Fε2 $
|
and
$Tk′|u(t)||v(t)|=(Tk′|u(t)|√2√F)(√F√2|v(t)|)⩽F2v2(t)+2T2Fk′2u2(t), $
|
summing (4.9) and (4.10) thus yields,
$ddt(u2(t)+εv2(t))⩽(8T2Fk2+4T2Fk′2)(u2(t)+εv2(t))+8γ2Fε2. $
|
Noting finally that :
$u^2(0) = 0 \text{ and }u^2(0)+\varepsilon v^2(0) = \varepsilon (\bar{v}_0-\Psi(\bar{u}_0))^2, $ |
Gronwall's lemma gives,
$u2(t)+εv2(t)⩽exp(T2tF(8k2+4k′2))(ε(ˉv0−Ψ(ˉu0))2+k2(J+T)2(F+k′T(k′+L+TF)2)22ε2(2k2+1k′2))−k2(J+T)2(F+k′T(k′+L+TF)2)22ε2(2k2+1k′2). $
|
Remark 5. In the particular case
$u2(t)+εv2(t)⩽(exp(T2tmF(8k2+4k′2))−1)2γ2ε2T2(2k2+1k′2) $
|
which yields that, on the finite time interval
$
|u(t)|⩽Ctmε,|v(t)|⩽Ctm√ε.
$
|
(4.11) |
Remark 6. Setting
In this section, we first present several numerical simulations with relevant values of our parameters. We also compare the numerical simulations with different values of
Numerical illustration with nonconstant
$J\left\{ R+→R+ x↦GJ−Lj+Cjx+εj, \right.$
|
containing a creation term, a consumption term and an import term. This function
$F\left\{ \begin{array}{l} {\mathbb{R}^ + } \to {\mathbb{R}^ + }\\ t \mapsto \left\{ \begin{array}{l} {F_0}(1 + {\alpha _f})\;\;\;{\rm{if}}\;\exists N \in\mathbb{N} /(N - 1){t_f} + {t_i}{\rm{ < }}t{\rm{ < }}N{t_f},\\ \;\;\;\;\;\;\;\;\;\;\;\;{F_0}\;\;{\rm{if}}\;\;{\rm{not}} \end{array} \right.
\end{array} \right.$
|
The parameters for these two functions are given in Table 1.
Parameter | Value | Unit |
| 0.012 | s |
| 0.5 | |
| 50 | |
| 100 | |
| 5.7*10 | |
| 0.001 | |
| 0.002 | |
| 0.001 | |
We also consider the parameters given in [2] and [8]. In that case,
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.001 | s |
The solutions
Numerical simulations with different values of
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0057 | mM.s |
| 0.0272 | s |
| 0.1 | s |
Note that, in that case, we have shown the existence of an upper bound on
Using the parameters values given in Table 3, we perform numerical simulations with various values of
While the intracellular lactate trajectories seem not to differ a lot, the capillary lactate trajectories show different initial dynamics. The smaller
Remark 7. An approach based on singular perturbation theory has been made on this model by Lahutte-Auboin et al. [7,8]. There, the authors give a geometrical explanation for the initial lactate dip and prove the existence of a periodic solution of the fast-slow system under a repetitive sequence of identical stimuli. In addition, our approach gives an estimate on the rate of convergence with respect to the parameters, which is usually not the case with singular perturbation theory.
Using the parameters given in Table 3, we now test different values for
There is a limit value of
$J_{lim} = 0.00851 \text{ mM.s$^{-1}$}.$ |
There are two types of dynamics : those with
Experimental data. In this section we compare typical results obtained by using the model (with constant
For each five patients we have four lactate concentration measures (only three for patient 1) separated from each other by more than
We are unable to distinguish between capillary lactate and intracellular lactate using imaging data. Therefore lactate concentration measures are the sum of the capillary lactate and intracellular lactate concentrations.
Because lactate concentrations variations are intrinsic and depend on lactate exchanges, we assume that it is relevant to adjust the initial values (
Parameter | Value | Unit |
| 0.1 | mM.d |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0272 | d |
| 0.1 | d |
The results are given in Figure 7. Fitted values of
Patient | | | |
| | | |
| | | |
| | | |
| | | |
| | | |
Our model (with constant
In this study we analyze a model for lactate kinetics first given in [2]. This model is a first step in view of a better understanding of lactate dynamics in the brain. Lactate has a key role in neuroenergetics. Therefore studying its dynamics in the brain is necessary to better understand the energetic breakdown which is observed, for example in tumors. This model is known to give good results when fitted with experimental data [2], [8]. However, to the best of our knowledge, no mathematical analysis has been made to show the existence and uniqueness of the solution and conditions for bounds on the solution, but also comparisons between the original and limit systems.
In this paper, we study the original and limit systems and obtain existence, uniqueness and bounds on the solutions for the two systems. We also give a condition on
When confronted with imaging data from NMR spectroscopy and perfusion, the model provides good results. Because there are large time variations, we cannot ensure that all the parameters remain constant in time. Therefore constant parameters are not good for explaining hard changes on the lactate concentration dynamics such as shifting from a decreasing concentration to an increasing one. Despite this, they can explain what happens after a lactate spike.
Differences in lactate dynamics suggest that there are several glioma profiles with different typical kinetics. This could indicate that non-agressive low grade gliomas show an increasing lactate concentration and then move to more agressive form (WHO Ⅱ+ to WHO Ⅲ+). At this stage the glioma will exhibit angiogenesis, modified proteins and altered transporters, which leads to fluctuating lactate kinetics [6]. This point should be considered as a critical one because of its therapeutical management consequences. Yet the patient should be referred to more agressive therapeutics such as radiotherapy or chemotherapy. Also the imaging control frequency should be restrained as well.
As already mentioned in [10], an initial dip exists in the brain lactate dynamics. This dip could be mathematically explained by the different initial values of the capillary lactate concentration between the original and limit systems. Therefore the dip can be biologically explained by compartment volume modifications.
It cannot be excluded that
Indeed one perspective is to build more complex and suitable models for brain metabolism. Adding oxygen and glucose dynamics to this model can be the next step in view of a more accurate description of energy dynamics in the brain. It could also be interesting to build a model with different cell types (such as astrocyte and neuron), for a better understanding of the brain fuel substrate fluxes.
The authors wish to thank an anonymous referee for her/his careful reading of the paper and helpful comments.
[1] |
L. T. Baxter and R. K. Jain, Transport of fluid and macromolecules in tumors. i. role of interstitial pressure and convection, Microvascular Research, 37 (1989), 77-104. doi: 10.1016/0026-2862(89)90074-5
![]() |
[2] |
L. T. Baxter and R. K. Jain, Transport of fluid and macromolecules in tumors ii. role of heterogeneous perfusion and lymphatics, Microvascular Research, 40 (1990), 246-263. doi: 10.1016/0026-2862(90)90023-K
![]() |
[3] | L. T. Baxter and R. K. Jain, Transport of fluid and macromolecules in tumors. iii. role of binding and metabolism, Microvascular Research, 41 (1991), 5-23. |
[4] |
L. T. Baxter and R. K. Jain, Transport of fluid and macromolecules in tumors: Iv. a microscopic model of the perivascular distribution, Microvascular Research, 41 (1991), 252-272. doi: 10.1016/0026-2862(91)90026-8
![]() |
[5] |
T. R. Blake and J. F. Gross, Analysis of coupled intra- and extraluminal flows for single and multiple capillaries, Mathematical Biosciences, 59 (1982), 173-206. doi: 10.1016/0025-5564(82)90022-0
![]() |
[6] |
S. Canic, D. Lamponi, A. Mikelić and J. Tambaca, Self-consistent effective equations modeling blood flow in medium-to-large compliant arteries, Multiscale Modeling and Simulation, 3 (2005), 559-596. doi: 10.1137/030602605
![]() |
[7] | P. Carmeliet and R. K. Jain, Angiogenesis in cancer and other diseases, Nature, 407 (2000), 249-257. |
[8] |
S. J. Chapman, R. J. Shipley and R. Jawad, Multiscale modeling of fluid transport in tumors, Bulletin of Mathematical Biology, 70 (2008), 2334-2357. doi: 10.1007/s11538-008-9349-7
![]() |
[9] | C. D'Angelo, Multiscale Modeling of Metabolism and Transport Phenomena in Living Tissues, Ph.D thesis, 2007. |
[10] |
C. D'Angelo, Finite element approximation of elliptic problems with dirac measure terms in weighted spaces: Applications to one- and three-dimensional coupled problems, SIAM Journal on Numerical Analysis, 50 (2012), 194-215. doi: 10.1137/100813853
![]() |
[11] |
C. D'Angelo and A. Quarteroni, On the coupling of 1D and 3D diffusion-reaction equations. Application to tissue perfusion problems, Math. Models Methods Appl. Sci., 18 (2008), 1481-1504. doi: 10.1142/S0218202508003108
![]() |
[12] | Submitted. |
[13] |
D. A. Fedosov, G. E. Karniadakis and B. Caswell, Steady shear rheometry of dissipative particle dynamics models of polymer fluids in reverse poiseuille flow, Journal of Chemical Physics, 132 (2010). doi: 10.1063/1.3366658
![]() |
[14] |
M. Ferrari, Frontiers in cancer nanomedicine: Directing mass transport through biological barriers, Trends in Biotechnology, 28 (2010), 181-188. doi: 10.1016/j.tibtech.2009.12.007
![]() |
[15] |
G. J. Fleischman, T. W. Secomb and J. F. Gross, The interaction of extravascular pressure fields and fluid exchange in capillary networks, Mathematical Biosciences, 82 (1986), 141-151. doi: 10.1016/0025-5564(86)90134-3
![]() |
[16] |
G. J. Flieschman, T. W. Secomb and J. F. Gross, Effect of extravascular pressure gradients on capillary fluid exchange, Mathematical Biosciences, 81 (1986), 145-164. doi: 10.1016/0025-5564(86)90114-8
![]() |
[17] |
L. Formaggia, D. Lamponi and A. Quarteroni, One-dimensional models for blood flow in arteries, Journal of Engineering Mathematics, 47 (2003), 251-276. doi: 10.1023/B:ENGI.0000007980.01347.29
![]() |
[18] |
L. Formaggia, A. Quarteroni and A. Veneziani, Multiscale models of the vascular system, in Cardiovascular Mathematics, MS&A. Model. Simul. Appl., 1, Springer Italia, Milan, 2009, 395-446. doi: 10.1007/978-88-470-1152-6_11
![]() |
[19] |
A. Harris, G. Guidoboni, J. C. Arciero, A. Amireskandari, L. A. Tobe and B. A. Siesky, Ocular hemodynamics and glaucoma: The role of mathematical modeling, European Journal of Ophthalmology, 23 (2013), 139-146. doi: 10.5301/ejo.5000255
![]() |
[20] |
K. O. Hicks, F. B. Pruijn, T. W. Secomb, M. P. Hay, R. Hsu, J. M. Brown, W. A. Denny, M. W. Dewhirst and W. R. Wilson, Use of three-dimensional tissue cultures to model extravascular transport and predict in vivo activity of hypoxia-targeted anticancer drugs, Journal of the National Cancer Institute, 98 (2006), 1118-1128. doi: 10.1093/jnci/djj306
![]() |
[21] | S. S. Hossain, Y. Zhang, X. Liang, F. Hussain, M. Ferrari, T. J. Hughes and P. Decuzzi, In silico vascular modeling for personalized nanoparticle delivery, Nanomedicine, 8 (2013), 343-357. |
[22] |
M. Intaglietta, N. R. Silverman and W. R. Tompkins, Capillary flow velocity measurements in vivo and in situ by television methods, Microvascular Research, 10 (1975), 165-179. doi: 10.1016/0026-2862(75)90004-7
![]() |
[23] |
R. K. Jain, Transport of molecules, particles, and cells in solid tumors, Annual Review of Biomedical Engineering, (1999), 241-263. doi: 10.1146/annurev.bioeng.1.1.241
![]() |
[24] |
R. K. Jain, R. T. Tong and L. L. Munn, Effect of vascular normalization by antiangiogenic therapy on interstitial hypertension, peritumor edema, and lymphatic metastasis: Insights from a mathematical model, Cancer Research, 67 (2007), 2729-2735. doi: 10.1158/0008-5472.CAN-06-4102
![]() |
[25] | J. Lee and T. C. Skalak, Microvascular Mechanics: Hemodynamics of Systemic and Pulmonary Microcirculation, Springer-Verlag, 1989. |
[26] |
H. Lei, D. A. Fedosov, B. Caswell and G. E. Karniadakis, Blood flow in small tubes: Quantifying the transition to the non-continuum regime, Journal of Fluid Mechanics, 722 (2013), 214-239. doi: 10.1017/jfm.2013.91
![]() |
[27] | J. R. Less, T. C. Skalak, E. M. Sevick and R. K. Jain, Microvascular architecture in a mammary carcinoma: Branching patterns and vessel dimensions, Cancer Research, 51 (1991), 265-273. |
[28] |
W. K. Liu, Y. Liu, D. Farrell, L. Zhang, X. S. Wang, Y. Fukui, N. Patankar, Y. Zhang, C. Bajaj, J. Lee, J. Hong, X. Chen and H. Hsu, Immersed finite element method and its applications to biological systems, Comput. Methods Appl. Mech. Engrg., 195 (2006), 1722-1749. doi: 10.1016/j.cma.2005.05.049
![]() |
[29] |
Y. Liu and W. K. Liu, Rheology of red blood cell aggregation by computer simulation, Journal of Computational Physics, 220 (2006), 139-154. doi: 10.1016/j.jcp.2006.05.010
![]() |
[30] |
Y. Liu, L. Zhang, X. Wang and W. K. Liu, Coupling of navier-stokes equations with protein molecular dynamics and its application to hemodynamics, International Journal for Numerical Methods in Fluids, 46 (2004), 1237-1252. doi: 10.1002/fld.798
![]() |
[31] |
J. Peiró and A. Veneziani, Reduced models of the cardiovascular system, in Cardiovascular Mathematics, MS&A. Model. Simul. Appl., 1, Springer Italia, Milan, 2009, 347-394. doi: 10.1007/978-88-470-1152-6_10
![]() |
[32] | http://download.gna.org/getfem/html/homepage/. |
[33] |
A. M. Robertson and A. Sequeira, A director theory approach for modeling blood flow in the arterial system: An alternative to classical id models, Mathematical Models and Methods in Applied Sciences, 15 (2005), 871-906. doi: 10.1142/S0218202505000601
![]() |
[34] |
A. M. Robertson, A. Sequeira and R. G. Owens, Rheological models for blood. In Cardiovascular Mathematics, MS&A. Model. Simul. Appl., 1, Springer Italia, Milan, 2009, 211-241. doi: 10.1007/978-88-470-1152-6_6
![]() |
[35] |
T. W. Secomb, A. R. Pries, P. Gaehtgens and J. F. Gross, Theoretical and experimental analysis of hematocrit distribution in microcirculatory networks, in Microvascular Mechanics (eds. J.-S. Lee and T. C. Skalak), Springer, New York, 1989, 39-49. doi: 10.1007/978-1-4612-3674-0_4
![]() |
[36] | http://www.physiology.arizona.edu/people/secomb. |
[37] |
T. W. Secomb, R. Hsu, R. D. Braun, J. R. Ross, J. F. Gross and M. W. Dewhirst, Theoretical simulation of oxygen transport to tumors by three-dimensional networks of microvessels, Advances in Experimental Medicine and Biology, 454 (1998), 629-634. doi: 10.1007/978-1-4615-4863-8_74
![]() |
[38] |
T. W. Secomb, R. Hsu, E. Y. H. Park and M. W. Dewhirst, Green's function methods for analysis of oxygen delivery to tissue by microvascular networks, Annals of Biomedical Engineering, 32 (2004), 1519-1529. doi: 10.1114/B:ABME.0000049036.08817.44
![]() |
[39] |
R. J. Shipley and S. J. Chapman, Multiscale modelling of fluid and drug transport in vascular tumours, Bulletin of Mathematical Biology, 72 (2010), 1464-1491. doi: 10.1007/s11538-010-9504-9
![]() |
[40] |
M. Soltani and P. Chen, Numerical modeling of fluid flow in solid tumors, PLoS ONE, (2011). doi: 10.1371/journal.pone.0020344
![]() |
[41] |
Q. Sun and G. X. Wu, Coupled finite difference and boundary element methods for fluid flow through a vessel with multibranches in tumours, International Journal for Numerical Methods in Biomedical Engineering, 29 (2013), 309-331. doi: 10.1002/cnm.2502
![]() |
[42] | C. J. Van Duijn, A. Mikelić, I. S. Pop and C. Rosier, Effective dispersion equations for reactive flows with dominant pclet and damkohler numbers, Advances in Chemical Engineering, 34 (2008), 1-45. |
[43] |
G. Vilanova, I. Colominas and H. Gomez, Capillary networks in tumor angiogenesis: From discrete endothelial cells to phase-field averaged descriptions via isogeometric analysis, International Journal for Numerical Methods in Biomedical Engineering, 29 (2013), 1015-1037. doi: 10.1002/cnm.2552
![]() |
[44] |
L. Zhang, A. Gerstenberger, X. Wang and W. K. Liu, Immersed finite element method, Comput. Methods Appl. Mech. Engrg., 193 (2004), 2051-2067. doi: 10.1016/j.cma.2003.12.044
![]() |
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Parameter | Value | Unit |
| 0.012 | s |
| 0.5 | |
| 50 | |
| 100 | |
| 5.7*10 | |
| 0.001 | |
| 0.002 | |
| 0.001 | |
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.001 | s |
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0057 | mM.s |
| 0.0272 | s |
| 0.1 | s |
Parameter | Value | Unit |
| 0.1 | mM.d |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0272 | d |
| 0.1 | d |
Patient | | | |
| | | |
| | | |
| | | |
| | | |
| | | |
Parameter | Value | Unit |
| 0.012 | s |
| 0.5 | |
| 50 | |
| 100 | |
| 5.7*10 | |
| 0.001 | |
| 0.002 | |
| 0.001 | |
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.001 | s |
Parameter | Value | Unit |
| 0.01 | mM.s |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0057 | mM.s |
| 0.0272 | s |
| 0.1 | s |
Parameter | Value | Unit |
| 0.1 | mM.d |
| 3.5 | mM |
| 3.5 | mM |
| 0.3 | mM |
| 0.0272 | d |
| 0.1 | d |
Patient | | | |
| | | |
| | | |
| | | |
| | | |
| | | |