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What the study of the stars can teach us about cancer:
There’s no success like failure, and failure’s no success at all.
Jacob G. Scott
Key Factors in the Metas
from Populatio
Christopher McFarland1*, Jacob Scott2,3,*, David Bas
1Harvard-MIT Division of Health Science & Technology, 2H. Lee Moffitt
Oncology, *contributed equally to this workoorly understood process that
aths
not explained by deterministic
the genomic level and use
explore this phenomenon
Res
Cells deriv
Metastatic
Three regi
metastasis
which only
We further
Feature of Model Observed Phenomenon
Population size determined
by fitness of cells
Larger Tumors more likely to
metastasize
Cells can acquire passenger
mutations that are slightly
deleterious
Many micrometastases never
grown to macroscopic size
Cells with more mutations are
less likely to metastasize
Stromal environment reduces
efficacy of driver mutations
Certain stromal conditions
prohibit metastasis
Metastases with same
Key Factors in the Meta
from Populat
Christopher McFarland1*, Jacob Scott2,3,*, David B
1Harvard-MIT Division of Health Science & Technology, 2H. Lee Mo
Oncology, *contributed equally to this work
Background:
Metastasis is a highly lethal and poorly understood process that
accounts for the majority cancer deaths
Patterns of metastatic spread are not explained by deterministic
explain these patterns
We develop a stochastic model at the genomic level and use
population genetics techniques to explore this phenomenon
R
Cells
Meta
Three
metas
which
We fu
Feature of Model Observed Phenomenon
Population size determined
by fitness of cells
Larger Tumors more likely to
metastasize
Cells can acquire passenger
mutations that are slightly
deleterious
Many micrometastases never
grown to macroscopic size
Cells with more mutations are
less likely to metastasize
Stromal environment reduces
efficacy of driver mutations
Certain stromal conditions
prohibit metastasis
Radiation Oncology and
Integrative Mathematical
Oncology
further, the stem compartment can differentiate at a rate β. Each population als
growth (r) and death (d) rate, proportional to their population.
FIG. 3: To capture the behavior of a putative compartment system in which there is only e
from the stem compartment into the TAC compartment, death and growth in both, but
by a common carrying capacity.
We therefore write a system of ODEs as:
Stem compartment :
dN0
dt
=
growth
  
r0N0(1 −
N
K
) −
differentiation
  
β0N0 −
death

d0N0
Differentiated :
dN1
dt
=
growth
  
r1N1(1 −
N
K
) +
differentiation
  
β0N0 −
death

d1N1
Where:
Phys. Biol. 8 (2011) 015016 D Basanta et al
Table 1. The four phenotypes in the game are autonomous growth
(AG), invasive (INV), glycolytic (GLY) and invasive glycolytic
(INV-GLY). The base payoff in a given interaction is r and the cost
of moving to another location with respect to the base payoff is c.
The fitness cost of acidity is n and k is the fitness cost of having a
less efficient glycolytic metabolism. The benefits from having
access to the vasculature as a result of angiogenesis are reflected by
the parameter α.
AG INV GLY INV-GLY
AG 1
2
+ α
2
1 1
2
− n + α 1
2
− n + α
INV 1 − c 1 − c
2
1 − c
3
1 − c
3
GLY 1
2
− k + n + α 1 − k + α
2
1
2
− k + α
4
1 − k + α
2
INV-GLY 1
2
− k + n + α 1 − k + α
2
1 − c
3
− k + α
2
1 − k − c
6
+ α
2
Table 2. List of variables used by the model.
Value Affected phenotypes Meaning
c INV, INV-GLY Cost of motility
k GLY, INV-GLY Cost having a glycolytic metabolism
n AG, INV Cost of living in an acid
microenvironment
to leaky or otherwise defective vascularization [9]. This is
shown in the table by the fact that AG cells interacting with
other AG cells (assumed to produce only moderate amounts of
HIF-1α) receive a benefit of α
2
from the moderate angiogenic
vasculature. On the other hand, AG cells interacting with
GLY cells produce, in combination, an optimal amount of
HIF-1α and obtain in return the total benefit derived from
functioning vascularity (α). Finally, as IDH-1 mutant GLY
cells proliferate producing excessive amounts of HIF-1α, the
benefit of angiogenesis is a reduced α
4
, consistent with the
angiogenic vasculature being leaky and inefficient in this case.
Another notable difference with the previous model is that
the cost of motility is assumed to be smaller in the presence of
acid-producing glycolytic phenotypes. This is represented by
a cost of motility c
3
and represents the acid-mediated invasion
[21–23] of glioma cells throughout the brain, particularly along
the myelinated neuronal axons in the white matter of the brain
along which glioma cells are known to quickly invade [24, 25].
This reduced cost of motility also quantifies and models the
generally invasive characteristics of gliomas which are well
known for their diffuse invasion that has been quantified in
In one dimension, this becomes:
∂
∂x


D
∂c
∂x
+ χc
∂a
∂x


 = Dc
∂2
c
∂x2
− cχ(a)
∂2
a
∂x2
− χ
∂c
∂x
∂a
∂x
(2.18)
Additionally, we must consider the creation and dispersal of this chemoattractant, a. To do this, we assume
Fickian diffusion as for the cells in the initial model as per 2.8, and a creation term that is linearly related
to the death of the cells by a coefficient, ω. Further, we introduce a consumption term, the rate at which
the chemoattractant is consumed by the cells, linearly related to the number of cells by a coefficient, µ.
Therefore, we can write down a full model for both the cellular concentration, as derived above, and for the
chemoattractant, a, thus:
rate of change of
glioma cell concentration

∂c
∂t
=
net dispersal
of glioma cells
  
∇ · (Dc∇c) +
net growth
of glioma cells
  
ρc(1 −
c
K
) −
chemotaxis
of glioma cells
  
∇ · (cχ(a)∇a) −
death
of glioma cells

λc , (2.19)
rate of change of
chemotactic factor

∂a
∂t
=
net dispersal of
chemotactic factor
  
∇ · (Da∇a) +
creation of
chemotactic factor

λcω −
consumption of
chemotactic factor

µca . (2.20)
And again in 1-dimension:
∂c
∂t
= D
∂2
c
∂x2
− cχ(a)
∂2
a
∂x2
− χ
∂c
∂x
∂a
∂x
+ c(1 −
c
Kc
) − λc, (2.21)
∂a
∂t
= Da
∂2
a
∂x2
+ λcωa − µca. (2.22)
While the death term has remained a constant, λ, times the population, this addition does little to effect the
overall dynamics. Only with very large parameter changes, likely large enough to be physically unrealistic,
?
Tortuous Path
•Hawken ’94
•US Naval Academy ’98, Physics
Major
•Navy Nuclear Reactor Engineer
‘98-’03
•High School Physics Teacher
Florida, ’03-’04
•Case Western Reserve MD
2004-2009
•Radiation Oncology Resident
Tampa, FL, ’09-Present
•Oxford D.Phil candidate -
mathematics
Net worth.
-300000
-225000
-150000
-75000
0
75000
1993 1995 1997 1999 2001 2003 2005 2007 2009 2011 2013
$$
Hawken
Diploma
MSBS
Entrance to
medical school
MD
May 1783, John Goodricke - 100GBP
~10-7 meters - 1,000 Angstroms
~1021 meters (106 light years)
Important to understand your limitations:
Dogs are so cute when they
try to comprehend quantum
mechanics - I’m not.
As Mr. Dlugozs will tell
you, I am a terrible bench
biologist - yes, I tried.
~100 meters
MCAT
Radiation
Oncology
The study of cancer -
a disease on the
human length scale
Ptolemy’s geocentric
solar system and
crystalline heavens
(c. AD 90 – c. AD 168)
measurement
meta-
phenomenological
laws
conserved laws
(14 December 1546 – 24 October 1601)
(December 27, 1571 – November 15, 1630)
(25 December 1642 – 20 March 1727)
mechanism
(14 March 1879 – 18 April 1955
(29 April 1854 – 17 July 1912
Hippocrates - the four
humors model of physiology
Mr. Dlugosz
The Cell Cycle - IPMAT
The cycle is broken in cancer!
suggest we all adopt ideologies such side of the majority, but to escape j.stebbing
Essay
Phase itrialist
There is a new breed of clinical trialist
in cancer research. You might not
have seen them yet—they will not
be knocking down your door in the
clinic. They do not know what HIPAA
stands for. They do not know what
to do in a code. They do not wear a
white coat, you will be lucky if they
wear a tie. They are not biologists—if
you ask them to change the media,
they will probably bring you some
music you have not heard. They are
the phase i trialists.
What is a phase i trial? It is a
preclinical trial, but one in which no
cells, mice, or rats will be harmed.
Before one begins killing cells in
a dish, there is the step to decide
how to treat those cells or mice in
a sensible, yet new way. It is in this
phase, before even stepping into
a laboratory, in which we are now
seeing an influx of other types of
scientists—physicists, engineers, and
mathematicians. Some of these folks
have run out of problems in their
field and have found fertile ground
for their tools and physical science
perspective in the dizzying biological
complexity of cancer. Others have
become frustrated by the esoteric
nature of their first specialty—it takes
a special mind to be happy studying
things in other galaxies, or things so
small that you need a super collider
spanning three countries to learn
anything new.
And then, some are just naturally
dreamers, or follow their hearts into
a specialty that has affected their
you turn
research
as app
to gene
energy
people w
be expla
we can b
or a com
how a tu
how a pe
phase i.
The bi
right no
and scie
with a
to bet
grant m
mathem
to think
they too
until the
from th
Cancer and Society
From experience, we believe that
doctors are far less accepting of such
ideas than patients or healthy non-
physicians. Oncologists are more
tolerant of the concept of ginger as a
treatment for chemotherapy-induced
nausea becausethese data come from
a large trial with sound statistical
analysis. However, its potential as an
anticancer drug directly conflicts with
the beliefs of most physicians, even
though no precise mechanism of
action has been confirmed for either
potential use. We certainly do not
suggest we all adopt ideologies such
as those advocated by the authors
of books such as How to Cure Almost
Any Cancer at Home for $5·15 a Day,
but perhaps many of us are guilty of
intolerance of alternative therapeutic
ideologies.
Albert Einstein is quoted as saying
that insanity was “doing the same
thing over and over again and
expecting a different result”, and
perhaps some cancer researchers
are guilty of this way of thinking.
Marcus Aurelius once said ”the
object of life is not to be on the
side of the majority, but to escape
finding o
insane”.
that if m
researche
philosoph
professio
worth of
ginger m
doctors m
idea of th
concentr
Jonathan
Imperial Co
j.stebbing@
Essay
Phase itrialist
There is a new breed of clinical trialist
in cancer research. You might not
have seen them yet—they will not
be knocking down your door in the
clinic. They do not know what HIPAA
stands for. They do not know what
to do in a code. They do not wear a
a dish, there is the step to decide
how to treat those cells or mice in
a sensible, yet new way. It is in this
phase, before even stepping into
a laboratory, in which we are now
seeing an influx of other types of
scientists—physicists, engineers, and
you turn
research?
as appl
to genet
energy t
people w
be explai
Molecular
Reductionism
Qolism
Cellular Organism
the current i
which invasi
cancer progr
There are
these hypoth
relevant to th
First, this is a
mathematica
cancer resear
type of insigh
perhaps mos
such quantit
used. Second
to experimen
conceived. In
experiments
conducted in
relevance of
quantitative
cult and the
it exposes a g
cal and expe
Figure 2 | Cancer is multiscale. Changes at the genetic level lead to modified intracellular signal-
lingwhichcauseschangesincellularbehaviourandgivesrisetocanceroustissue.Eventually,organs
and the entire organism are affected. We propose that a focus on the cell as the fundamental unit
PERSPECTIVES
~10-20 - 1020 meters
Each of these models explains only a small part of our
experience on this earth - and with caveats...
But can we just
add them all up
and recapitulate
life?
Mechanistic Modeling:
but at what scale?
Bioinformatics
498 I. J. Radiation Oncology d Biology d Physics Volume 75, Number 2, 2009
Build models!
What is Science?
What do Scientists do?
“All models are wrong, but some are useful”
George E P Box (Statistician)
Nutrients (c)
Signalling
Proteases (m)
Invasive front
Angiogenesis
Stem cell
Inflammatory response
Stromal cell
Immune cell
Normal cell
Matrix adhesion
Dm
2
m ni,j – m,
m
t
– m ,
t
Dc
2m – ni,jc – c.
c
t
Tumour cells (n)
Extracellular matrix (f)
plement
ch as
M)
s and
ge over
by a set of
es a
of cancer
n intuitive
ancer
tion.
behav-
nt?Each
riven by
quantified
escribes
ucially,
lattice
s context
fficients
We can
PERSPECTIVES
Cancer is not only a collection of mutated cells
A complex system of many interacting cellular and
microenvironmental elements that were once normal
•More complex models are better
•Something that looks similar is similar
•Biological facts should drive derivation
•Distill key components (Dialogue)
•Focus on mechanism
•Subsequent model refinement“All models are wrong, but some are useful”
George E P Box (Statistician)
“Models should be simple but no simpler”
Albert Einstein
Minimal modeling approach
We use a suite of mathematical and computational
models to bridge a range of spatial and temporal scales.
TIME/SPATIAL SCALE
CELLULAR DETAIL
Evolutionary
Game Theory
Reaction
Diffusion Models
Hybrid Cellular
Automata
Cellular Potts
Model
Immersed
Boundary Model
Hybrid Cellular
Automata
Non-spatial
continuum
Reaction
Diffusion
Network
Theory
Dead
P
QProliferating
Quiescent
Dead
Heterogeneous Population
Spatial Constraints
Nutrient/Growth Factor Constraints
Stromal Constraints/Interactions
Time
CellDensity
dN(t)
dt
= λN(t)
N(t), number of cells
at time t
λ, proliferation rate
http://math.dartmouth.edu/~klbooksite/3.02/302.html
N(t) = Aeλt
Doubling time
Here λ =0.04, hence
T=17.33 hrs
T =
ln2
λ
Time
CellDensity
dN(t)
dt
= λN(t) 1−
N(t)
K
⎛
⎝⎜
⎞
⎠⎟
N(t), number of cells
at time t
λ, proliferation rate
K, carrying capacity
Time
CellDensity
dN
dt
= −λN log
N
K
⎛
⎝⎜
⎞
⎠⎟
N, number of cells at
time t
λ, proliferation rate
K, carrying capacity
Cons
Over simplification (no cycle)
Proliferate with same rate  at same time
Non-spatial
No mechanistic insight
Pros
Fit tumour growth data well
Compartmental models
Time
CellDensity
We use a suite of mathematical and computational
models to bridge a range of spatial and temporal scales.
TIME/SPATIAL SCALE
CELLULAR DETAIL
Evolutionary
Game Theory
Reaction
Diffusion Models
Hybrid Cellular
Automata
Cellular Potts
Model
Immersed
Boundary Model
Hybrid Cellular
Automata
Non-spatial
continuum
Reaction
Diffusion
Network
Theory
∂N(x,t)
∂t
= D
∂2
N(x,t)
∂x2
N, number of cells at
time t, position x
D, Diffusion coefficient
the rate of change of cell
number at position x and time t =
change in cell number
due to random dispersal
dN(x,t)
dt
= D
∂2
N(x,t)
∂x2
+ λN(x,t) 1−
N(x,t)
K
⎛
⎝⎜
⎞
⎠⎟
Sir Ronald Fisher
1890-1962
N, number of cells at time
t, position x
D, Diffusion coefficient
λ, proliferation rate
K, carrying cpacity
the rate of change of cell
number at position x and
time t
=
change in cell number
due to random dispersal + change in cell number
due to cell proliferation
du
dt
= Du
∂2
u
∂x2
− σv,
dv
dt
= Dv
∂2
v
∂x2
− u − v
Alan Turing
1912-1954
u, activator
v, inhibitor
D, Diffusion coefficients
, proliferation rateσ
We use a suite of mathematical and computational
models to bridge a range of spatial and temporal scales.
TIME/SPATIAL SCALE
CELLULAR DETAIL
Evolutionary
Game Theory
Reaction
Diffusion Models
Hybrid Cellular
Automata
Cellular Potts
Model
Immersed
Boundary Model
Hybrid Cellular
Automata
Non-spatial
continuum
Reaction
Diffusion
Network
Theory
Phys. Biol. 8 (2011) 015016 D Basanta et al
GF~0% GF~80% GF~100%
starting
t t t
control
raisereduce
AG
inv
gly
inv gly
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
(INV-GLY). The base payoff in a given interaction is r and the cost
of moving to another location with respect to the base payoff is c.
The fitness cost of acidity is n and k is the fitness cost of having a
less efficient glycolytic metabolism. The benefits from having
access to the vasculature as a result of angiogenesis are reflected by
the parameter α.
AG INV GLY INV-GLY
AG 1
2
+ α
2
1 1
2
− n + α 1
2
− n + α
INV 1 − c 1 − c
2
1 − c
3
1 − c
3
GLY 1
2
− k + n + α 1 − k + α
2
1
2
− k + α
4
1 − k + α
2
INV-GLY 1
2
− k + n + α 1 − k + α
2
1 − c
3
− k + α
2
1 − k − c
6
+ α
2
Table 2. List of variables used by the model.
Value Affected phenotypes Meaning
c INV, INV-GLY Cost of motility
k GLY, INV-GLY Cost having a glycolytic metabolism
n AG, INV Cost of living in an acid
microenvironment
α AG, GLY, INV-GLY Benefit from angiogenesis
moving cells incur since they cannot proliferate whilst moving
[19, 20] or as the cost for degrading and detaching from the
extra cellular matrix. The parameter k represents the cost of
utilizing glycolysis as opposed to the more efficient oxidative
phosphorylation. The parameter n represents the penalty that
cells suffer for living in an acidic environment created by the
glycolytic cells. GLY cells will suffer this penalty less as they
are adapted to live in acidic environments. The parameter α
represents the benefit of the surrounding vasculature. One way
of envisioning variations in α is the increase in oxygen and
nutrients resulting from an optimized vascularization resulting
from the release of HIF-1α and downstream proteins. Table 2
lists all model variables. These variables are normalized and
assumed to be in the range [0:1].
The payoff table 1 assumes that non-motile phenotypes
(GLY and AG) will share existing resources with the cells they
interact with, whereas motile phenotypes can chose whether to
stay or move. In the case of INV cells, they will always move
and leave existing resources for the cell it is interacting with
unless the interaction happens with another INV cell, in which
Phys. Biol. 8 (2011) 015016 (9pp) doi:10.1088/1478-3975/8/1/015016
The role of IDH1 mutated tumour cells in
secondary glioblastomas: an evolutionary
game theoretical view
David Basanta1, Jacob G Scott1, Russ Rockne2, Kristin R Swanson2
and Alexander R A Anderson1
1
Integrated Mathematical Oncology, H Lee Moffitt Cancer Center and Research Institute, Tampa,
FL 33612, USA
2
Pathology and Applied Mathematics at the University of Washington, Seattle, WA 98104, USA
E-mail: david.basanta@kclalumni.net and jacob.scott@moffitt.org
Received 17 September 2010
Accepted for publication 10 January 2011
Published 7 February 2011
Online at stacks.iop.org/PhysBio/8/015016
Abstract
Recent advances in clinical medicine have elucidated two significantly different subtypes of
glioblastoma which carry very different prognoses, both defined by mutations in isocitrate
dehydrogenase-1 (IDH-1). The mechanistic consequences of this mutation have not yet been
fully clarified, with conflicting opinions existing in the literature; however, IDH-1 mutation
may be used as a surrogate marker to distinguish between primary and secondary glioblastoma
multiforme (sGBM) from malignant progression of a lower grade glioma. We develop a
mathematical model of IDH-1 mutated secondary glioblastoma using evolutionary game
theory to investigate the interactions between four different phenotypic populations within the
tumor: autonomous growth, invasive, glycolytic, and the hybrid invasive/glycolytic cells. Our
model recapitulates glioblastoma behavior well and is able to reproduce two recent
experimental findings, as well as make novel predictions concerning the rate of invasive growth
as a function of vascularity, and fluctuations in the proportions of phenotypic populations that
a glioblastoma will experience under different microenvironmental constraints.
1. Introduction
Our ability to tease apart pathologic differences in cancers
began with microscope and differential staining and has
progressed to the current age of molecular medicine.
The mantra of clinical medicine in the molecular age is
‘personalized medicine’—the hope that one day we will
be able to perfectly understand each person’s tumor at the
molecular and mechanistic level in order to prescribe the
perfect treatment. While we have made many advances
in subtyping many different cancers and even designed
molecularly targeted therapies, the results so far have been
disappointing. One cancer that has remained particularly
resistant to our therapies is glioblastoma multiforme (GBM),
which carries a prognosis of less than a year and certain
mortality.
It has been understood for several years that there
are different subtypes of glioblastoma characterized by
mutation pattern and cell of origin [1], but this knowledge
has not altered our treatment strategy, only our ability
to prognosticate outcome. That these subtypes all end
up looking the same under the microscope and end up
behaving very similarly as aggregates is an example of
convergent evolution—genotypically different cells with
similar phenotypic characteristics.
Most recently, two significantly different classes of
glioblastoma have been identified which carry very different
prognoses [2–4]. These two groups of glioblastoma are, for
the most part, differentiated by mutations found in a single
coding region of an enzyme involved in the Krebs cycle,
isocitrate dehydrogenase 1 (IDH1). This mutation is present
in the majority of secondary glioblastomas (sGBM) and low
grade gliomas (LGGs), many of which progress to become
1478-3975/11/015016+09$33.00 1 © 2011 IOP Publishing Ltd Printed in the UK
IOP PUBLISHING
Phys. Biol. 8 (2011) 015016 (9pp) doi:10.1088
The role of IDH1 mutated tumour c
secondary glioblastomas: an evolut
game theoretical view
David Basanta1, Jacob G Scott1, Russ Rockne2, Kristin R Swanson2
and Alexander R A Anderson1
1
Integrated Mathematical Oncology, H Lee Moffitt Cancer Center and Research Institute, Tampa,
FL 33612, USA
2
Pathology and Applied Mathematics at the University of Washington, Seattle, WA 98104, USA
E-mail: david.basanta@kclalumni.net and jacob.scott@moffitt.org
Received 17 September 2010
Accepted for publication 10 January 2011
LETTER TO THE EDITOR
Production of 2-hydroxyglutarate by
isocitrate dehydrogenase 1–mutated
gliomas: an evolutionary alternative
to the Warburg shift?
Neuro-Oncology
Neuro-Oncology Advanc
Neuro-Oncology
NEURO-ONCOLOGY
Neuro-Oncology Advance Access published July 22, 2011
015016 D Basanta et al
Invasion
BeforeBevacizumabAfterBevacizumab
Loss of PET signal
~ Less Glycolysis
starting
t t t
reduce
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
0 200 400 600 800 1000
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1
Figure 3. Plot of k = 0.1, n = 0.2, c = 0.1 and α = 0.3, 0.32, 0.35. The first panel shows two interesting dynamics: with increasing benefi
vasculature (increasing α), we see a more rapid progression as well as a higher overall proportion of cells with the GLY phenotype. Also
decreasing α promotes the INV phenotype (stars) which is recapitulated in recurrent glioblastoma after bevacizumab treatment. The two
panels below the control one show what happens after bevacizumab has been administered after 600 time steps without assuming wheth
the main effect would be a normalization of the angiogenic vasculature (which would increase α, shown in the second row) or the reduc
of the existing vasculature (which would have a negative effect on α, shown in the third row).
changes that we see in glioblastoma patients after failure of
bevacizumab (a monoclonal antibody to VEGF-α).
The recapitulation of known behaviors allows some
measure of confidence in our model and gives some credence
to predictions that the model can make. Now we can begin to
make observations about the mechanisms driving the behaviors
that were, otherwise, obscured by the biological complexity.
A recurring theme observed in the time-dependent behavior
of our model suggests an underlying mechanism driven by
interactions between different phenotypes. Specifically, the
emergence of the invasive phenotypes is always preceded
by a rise in the glycolytic fraction. This rise in the
glycolytic fraction is preceded by an overgrowth of AG cells.
cells grow into a viable proportion, the damage that they
to the local environment with their excessive acid product
begins to promote the benefit of cells that can move to a n
place (INV). We see this sequence reproduced in nearly
areas of the parameter space, and certainly in all the areas
are relevant to glioma. Further, these results agree nic
with earlier work done by this group suggesting that
glycolytic phenotype is necessary to bring about the emerge
of invasion [18].
In addition to this sequence, there was an interest
dynamic that emerged in some areas of the parameter spa
Figure 5 shows an example of two types of oscillatory behav
that our model can produce. Even though neither manag
We use a suite of mathematical and computational
models to bridge a range of spatial and temporal scales.
TIME/SPATIAL SCALE
CELLULAR DETAIL
Evolutionary
Game Theory
Reaction
Diffusion Models
Hybrid Cellular
Automata
Cellular Potts
Model
Immersed
Boundary Model
Hybrid Cellular
Automata
Non-spatial
continuum
Reaction
Diffusion
Network
Theory
Symmetric Division Rate
and live in a ‘continuous’ milieu described completely by
the experimenter
end result is a model that looks complicated, but is entirely
described by a minimum of parameters - allowing for
emergent phenomena
and the subtype driven by PDGF overexpression. For NF1-driven
cancers, we investigated bi-allelic loss of NF1 and a dominant
negative mutation of TP53 as the necessary driver mutations that
must be accumulated in a single cell to initiate tumorigenesis. For
PDGF-driven cancers, the necessary driving alterations are those
leading to PDGF overexpression and bi-allelic loss of INK4A/ARF.
We did not include the accumulation of passenger mutations in
this model since those alterations, by definition, do not influence
of cells carrying alterations in
similarly leads to increased pro
on the background of either T
INK4A/ARF2/2
NF12/2
cells
fitness RARF 6RNF1,mut and div
In contrast, cells mutated in NF
a fitness detriment, RNF1,wt0.
cell divisions beyond the norm
Figure 1. A mathematical model of the cell of origin of PDGF- and NF1-driven gliomas. Initially, th
cells (blue) and 2z+1
21 wild-type transit-amplifying non-self-renewing (TA) cells (purple). At each time ste
probability a, the SR cell divides symmetrically and one daughter cell replaces another randomly chosen SR
divides asymmetrically and one daughter cell remains a SR cell while the other daughter cell becomes comm
This new TA cell divides symmetrically z times to give rise to successively more differentiated cells (progres
becoming terminally differentiated. This restriction of the stochastic process ensures that the total number of
homeostatic conditions in the healthy brain. In the figure, the darkening purple gradations refer to successively
clarify a single time step of the stochastic process. We investigate the dynamics of only one cell cluster since the
given by the probability per cluster times the number of clusters; hence, a consideration of all clusters does n
cell of origin of brain cancer.
doi:10.1371/journal.pone.0024454.g001
Rounds of Transient
Amplification
Vascular Density
0.01 0.05 0.1
!!!!! !! !!
!!
! !!!!
! !!!!! ! !!!!!! ! !!!!!! ! !!!!!!!
Loss of homeostasis
Symmetric division rate - 0.5
Rounds of Amplification -11
Vascular density - .05
1 5 10 15 20
0
0.5
1
1.5
2
2.5
x 10
5
Divisions per progenitor cell
Cells
s/a 0.1
s/a 0.3
s/a 0.5
1 5 10 15 20
0
0.5
1
1.5
2
x 10
5
Divisions per progenitor cell
s/a 0.1
s/a 0.3
s/a 0.5
1 5 10 15 20
0
0.5
1
1.5
2
2.5
x 10
5
Divisions per progenitor cell
Cells
s/a 0.1
s/a 0.3
s/a 0.5
Vascular Density
Quantifying the unmeasurable
0.01 0.05 0.1
Background:
Metastasis is a highly lethal and poorly understood process that
accounts for the majority cancer deaths
We use a suite of mathematical and computational
models to bridge a range of spatial and temporal scales.
TIME/SPATIAL SCALE
CELLULAR DETAIL
Evolutionary
Game Theory
Reaction
Diffusion Models
Hybrid Cellular
Automata
Cellular Potts
Model
Immersed
Boundary Model
Hybrid Cellular
Automata
Non-spatial
continuum
Reaction
Diffusion
Network
Theory
90% of cancer death is from metastatic disease
Yet from the clinicians perspective, metastasis is a binary
event - the least understood process
M0
M1
Which patients will end up as M1 vs. M450??
We now have targetted local therapies (like SBRT) that
ablate these tumors...
Game	
  1
Game	
  2
Jacob Scott, Maciunas STEMM Keynote 2010
The cutoff frequency .[o is then defined as
1
./o= ~ (17)
Values afro for each segment are listed in Table 1.
5 Computational procedure
A digital computer program was written in FOR-
TRAN to operate on the branching configuration
multiple branching
parallel. Transmiss
node calculated fr
backward towards
pedance of the wh
final result is a com
ching configuration
and transmission p
every node. Hence
ejection waveform
flow waveforms m
53
52/~ 55
51~5136 3~
~7 7i ~4 the branching struc
0s 6o flow throughout th
---r-~ pheral resistance v57 35 47
~564~)]~0__.~33]1~ sistances and visco
The input data t
dimensions and
o~4' _ . ?2
42 i!/6; 2,1 ,e sS/.~ 9
8~8~70 15 49 61, ,, 3, ,, o2 :,, I
, }1 3200[ !/
.o, ,,oo,!,
,o8 ' ~'~, ,03 ~q
~o9 10cm ! ~L
' I 800
pH} c 0
113
,,8 y ' , , s
12it 125
humanarterialtree
Fig. 1 Schematic representation of the human arterial tree
with all lengths drawn to scale. Segment numbers
correspond to arteries listed in Table l
2
r 1-0
.
= -1.ot i
Fig. 2 Input impedanc
pedance in each
simultaneous re
ascending aorta
culatedfrom mo
Medical  Biological Engineering  Computing November
Jacob Scott, Maciunas STEMM Keynote 2010
Simple	
  experiment	
  and	
  ODE	
  model	
  	
  to	
  
begin	
  a	
  conversa:on
Can	
  likely	
  measure	
  f(t)	
  in	
  a	
  mouse	
  model	
  by	
  
injec:on	
  a	
  bolus	
  of	
  tumor	
  cells	
  into	
  a	
  tail	
  
vein	
  and	
  measuring	
  CTCs	
  at	
  several	
  :me	
  
points
tumor
Other	
  organ
•C	
  is	
  number	
  of	
  CTCs
•Alpha	
  and	
  beta	
  are	
  constants
•T(t)	
  is	
  a	
  func:on	
  describing	
  tumor	
  size
•z(t)	
  is	
  rate	
  of	
  tumor	
  cell	
  intravasa:on	
  
“shedding	
  rate”
•f(t)	
  is	
  the	
  rate	
  of	
  filtra:on	
  or	
  CTC	
  arrest
Jacob Scott, Maciunas STEMM Keynote 2010
Jacob Scott, Maciunas STEMM Keynote 2010
Jacob Scott, Maciunas STEMM Keynote 2010
What would we need for Kirchoff’s rules?
!#$%'#()*'+,
-+'.#
!./*+
0,
-1'((*+'#(2+3%,',*
-3#*
β
η
γ
Unifying metastasis — integrating
intravasation, circulation and
end-organ colonization
Jacob Scott1,2
, Peter Kuhn3
and Alexander R. A. Anderson1
!#$%'$()(*+'+,$($+'-,./.01'/(23,'+#($-$(-3+(+,/+2($-+(4+#5%+4+,$(.6('1%'5/$1,0(
$54.5%('+//#(7898#:(1,(;$1+,$#(-3+(#;5%%+2(1,$+%+#$(1,($-+('1%'5/$.%(;-#+(.6(4+$#$#1#=(
9+'-,15+#($-$(2.(,.$(#./+/(%+/(.,((/..2(#4;/+(//.?(#5#$,$1/(1./.01'/(1,$+%%.0$1.,(
+.,2(#14;/('.5,$1,0(898#=
for
gy,
A.
In patients with advanced primary cancer, circulating
tumour cells (CTCs)1
can be found throughout the entire
vascular system2
. When and where these CTCs form
metastasis is not fully understood, and is currently the
subject of intensive biological study. Paget’s well-known
seed–soil hypothesis3
suggests that the ‘soil’ (the site of
a metastasis) is as important as the ‘seed’ (the metastatic
cells) in the determination of successful metastasis. The
mechanism by which seeds are disseminated to specific
soil has, to date, been a ‘known unknown’. We think that
it is during this poorly understood phase of metastasis
that we stand to answer important questions4
.
We hypothesize that the rich variety of possible meta-
static disease patterns not only stems from the physical
aspects of the circulation but also from CTC hetero-
geneity (FIG. 1). These seeds represent many different
populations that are derived from a diverse population
of competing phenotypes within the primary tumour5
.
Because such seeds need to pass through a system of
physical and biological filters in the form of specific
organs, the circulatory phase of metastasis could be
modelled as a complex deterministic filter. In theory,
until the evolution of a suitable seed, any number of
CTCs could flow through the circulation and arrest
at end organs without metastases forming. As tumour
heterogeneity is thought to expand as the tumour pro-
gresses, it follows that at some point a seed will come
into existence that is suited to a specific soil within that
patient’s body. If this seed is to propagate it must find
its soil, a process that we hypothesize is governed by
solvable physical rules that relate to the dynamics of
do not fit a model that is defined only by physical flow
and filtration.
To begin the process of physical interrogation, we
propose a model that represents the human circulatory
system as a directed and weighted network, with nodes
representing organs and edges representing arteries and
veins.The novelty is only fully realized when combined
withaheterogeneousCTCpopulation(drivenbyprimary
tumour heterogeneity) modulated by the complex organ
filter system (with physiologically relevant connections)
under dynamic flow. Four important biological processes
emerge from this representation. First, the shedding rate,
which is defined as the rate at which the tumour sheds
CTCs into the vasculature. Second, CTC heterogeneity,
which is defined as the distribution of CTC phenotypes
present in the circulation. Third, the filtration fraction,
which is defined as the proportion (and type) of CTCs
that arrest in a given organ. Fourth, the clearance rate,
which is defined as the rate at which cancer cells are
cleared from the blood and/or organ after arrest. Each of
these biological processes is probably disease- and even
patient-specific, and each is extremely poorly understood.
Using this representation to motivate the develop-
ment of a mathematical model we can define both the
concentration of CTCs and their phenotypic distribu-
tion at any given point in the network, as well as organ-
specific filtration values. To parameterize this model,
characterization and enumeration of CTCs taken from
a single patient at different time points and from differ-
ent points in this network will need to be undertaken.
A complete understanding of the model will also pro-
Unifying metastasis — int
intravasation, circulation
end-organ colonization
Jacob Scott1,2
, Peter Kuhn3
and Alexander R. A. Anders
!#$%'$()(*+'+,$($+'-,./.01'/(23,'+#($-$(-3+(+,/+2($
$54.5%('+//#(7898#:(1,(;$1+,$#(-3+(#;5%%+2(1,$+%+#$(1,($-+('1%
8@A
Nature Reviews Cancer | AOP, published online 24 May 2012; doi:10.1038/nrc3287
Jacob Scott, Maciunas STEMM Keynote 2010
Jacob Scott, Maciunas STEMM Keynote 2010
Matrices are important - pay attention in AMH!!
“Whereas a good simulation should
include as much as possible, a good
model should include as little as possible.”
Jacob Scott, Maciunas STEMM Keynote 2010
Lung



outflow
∂CL
∂t
=
inflow
IL −
filtering
ηLCL
buildup
∂OL
∂t
=
arresting
ηLCL −
clearing
γLOL
Liver



outflow
∂CLi
∂t
=
inflow *A
αLiCLi +
inflow *B
αGCG −
filtering
ηLiCLi +
shedding
β
buildup
∂OLi
∂t
=
arresting
ηLiCLi −
clearing
γLiOLi
Make everything as
simple as possible,
but no simpler
Jacob Scott, Maciunas STEMM Keynote 2010
Brain
Liver
Gut
Bone
Venous Arterial
Portal System
CTCflow
Lung
Breast
Primary Seeding
Primary
Tumor
(a) Primary Seeding cartoon
Brain
Liver
Gut
Bone
Venous Arterial
Portal System
CTCflow
Lung
Breast
Primary
Tumor
Secondary
Tumor
Secondary
Tumor
Secondary Seeding
(b) Secondary Seeding cartoon
A
Time (cell cycles)
Logtumourmass B
Removal rate λ
Returnprobabilityp
growthacceleration(logscale)
primary
seeding
secondary
seeding
Figure 2: Simulating the dynamics of primary seeding.(A) shows the total tumour b
for three different conditions where the removal rate was fixed at λ = 10−5 and return proba
was taken to be p = 10−2,10−3 and 10−4 respectively. (B) illustrates the model dynamics
the parameters λ and p are varied systematically, and shows that accelerated tumour growth
, 20130011, published 20 February 2013102013J. R. Soc. Interface
Jacob G. Scott, David Basanta, Alexander R. A. Anderson and Philip Gerlee
growth
secondary metastatic deposits as drivers of primary tumour
A mathematical model of tumour self-seeding reveals
Open Access
science  society
B
iology has long been the stepchild
of the natural sciences. Compared
with mathematical proofs, physical
formulae and the molecules of chemistry,
biology, like life itself, has often seemed
unquantifiable, unpredictable and messy.
Yet, scientists have striven gallantly to pin
biology down through the application of the
of inspiration for mathematicians. “In my
40 plus years of research, I have found that
problems in biomathematics almost always
uncover unexplored and undeveloped areas
of mathematics,” he said. “These are areas
that mathematicians have not even thought
about exploring. New mathematics.”
involves events a
gene expression o
take place in nano
nisms or body-wi
minutes, hours o
between people
tions that last mon
understand these s
different layers an
Jost points out, ha
mathematical biolo
T
he applicatio
logy itself i
back at least
on the inheritanc
nineteenth centur
the theory of Men
foundation of mod
ally reproducing o
Biology is the new physics
The increasing use of mathematics in biology is both inspiring
research in mathematics and creating new career options for
mathematical biologists
Philip Hunter
EMBO reports VOL 11 | NO 5 | 2010350
“For many years the inspiration for
innovation in applied mathematics has
come from physics, but in my opinion,
in this century it will come from the bio-
logical sciences, broadly defined,” Mackey
explained, adding that this switch has been
taking place slowly over several decades.
While physics has stagnated, waiting for
new theoretical insights to make progress
against fundamental problems such as
quantum gravity, Mackey argued, theoreti-
cal biology has emerged as a new source
complexes;
able to accou
tle difference
infection am
ous approac
growing use
biological an
capable of a
the systems u
of a protein,
essence, inf
geometry wi
changing, co
Other tech
information
tions betwee
a huge ran
The human
continue to the extent that it
might even become the main
driving force behind innovation
and development in mathematics

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What stars can teach us about cancer: Modeling metastasis through population genetics

  • 1. What the study of the stars can teach us about cancer: There’s no success like failure, and failure’s no success at all. Jacob G. Scott Key Factors in the Metas from Populatio Christopher McFarland1*, Jacob Scott2,3,*, David Bas 1Harvard-MIT Division of Health Science & Technology, 2H. Lee Moffitt Oncology, *contributed equally to this workoorly understood process that aths not explained by deterministic the genomic level and use explore this phenomenon Res Cells deriv Metastatic Three regi metastasis which only We further Feature of Model Observed Phenomenon Population size determined by fitness of cells Larger Tumors more likely to metastasize Cells can acquire passenger mutations that are slightly deleterious Many micrometastases never grown to macroscopic size Cells with more mutations are less likely to metastasize Stromal environment reduces efficacy of driver mutations Certain stromal conditions prohibit metastasis Metastases with same Key Factors in the Meta from Populat Christopher McFarland1*, Jacob Scott2,3,*, David B 1Harvard-MIT Division of Health Science & Technology, 2H. Lee Mo Oncology, *contributed equally to this work Background: Metastasis is a highly lethal and poorly understood process that accounts for the majority cancer deaths Patterns of metastatic spread are not explained by deterministic explain these patterns We develop a stochastic model at the genomic level and use population genetics techniques to explore this phenomenon R Cells Meta Three metas which We fu Feature of Model Observed Phenomenon Population size determined by fitness of cells Larger Tumors more likely to metastasize Cells can acquire passenger mutations that are slightly deleterious Many micrometastases never grown to macroscopic size Cells with more mutations are less likely to metastasize Stromal environment reduces efficacy of driver mutations Certain stromal conditions prohibit metastasis Radiation Oncology and Integrative Mathematical Oncology further, the stem compartment can differentiate at a rate β. Each population als growth (r) and death (d) rate, proportional to their population. FIG. 3: To capture the behavior of a putative compartment system in which there is only e from the stem compartment into the TAC compartment, death and growth in both, but by a common carrying capacity. We therefore write a system of ODEs as: Stem compartment : dN0 dt = growth r0N0(1 − N K ) − differentiation β0N0 − death d0N0 Differentiated : dN1 dt = growth r1N1(1 − N K ) + differentiation β0N0 − death d1N1 Where: Phys. Biol. 8 (2011) 015016 D Basanta et al Table 1. The four phenotypes in the game are autonomous growth (AG), invasive (INV), glycolytic (GLY) and invasive glycolytic (INV-GLY). The base payoff in a given interaction is r and the cost of moving to another location with respect to the base payoff is c. The fitness cost of acidity is n and k is the fitness cost of having a less efficient glycolytic metabolism. The benefits from having access to the vasculature as a result of angiogenesis are reflected by the parameter α. AG INV GLY INV-GLY AG 1 2 + α 2 1 1 2 − n + α 1 2 − n + α INV 1 − c 1 − c 2 1 − c 3 1 − c 3 GLY 1 2 − k + n + α 1 − k + α 2 1 2 − k + α 4 1 − k + α 2 INV-GLY 1 2 − k + n + α 1 − k + α 2 1 − c 3 − k + α 2 1 − k − c 6 + α 2 Table 2. List of variables used by the model. Value Affected phenotypes Meaning c INV, INV-GLY Cost of motility k GLY, INV-GLY Cost having a glycolytic metabolism n AG, INV Cost of living in an acid microenvironment to leaky or otherwise defective vascularization [9]. This is shown in the table by the fact that AG cells interacting with other AG cells (assumed to produce only moderate amounts of HIF-1α) receive a benefit of α 2 from the moderate angiogenic vasculature. On the other hand, AG cells interacting with GLY cells produce, in combination, an optimal amount of HIF-1α and obtain in return the total benefit derived from functioning vascularity (α). Finally, as IDH-1 mutant GLY cells proliferate producing excessive amounts of HIF-1α, the benefit of angiogenesis is a reduced α 4 , consistent with the angiogenic vasculature being leaky and inefficient in this case. Another notable difference with the previous model is that the cost of motility is assumed to be smaller in the presence of acid-producing glycolytic phenotypes. This is represented by a cost of motility c 3 and represents the acid-mediated invasion [21–23] of glioma cells throughout the brain, particularly along the myelinated neuronal axons in the white matter of the brain along which glioma cells are known to quickly invade [24, 25]. This reduced cost of motility also quantifies and models the generally invasive characteristics of gliomas which are well known for their diffuse invasion that has been quantified in In one dimension, this becomes: ∂ ∂x   D ∂c ∂x + χc ∂a ∂x    = Dc ∂2 c ∂x2 − cχ(a) ∂2 a ∂x2 − χ ∂c ∂x ∂a ∂x (2.18) Additionally, we must consider the creation and dispersal of this chemoattractant, a. To do this, we assume Fickian diffusion as for the cells in the initial model as per 2.8, and a creation term that is linearly related to the death of the cells by a coefficient, ω. Further, we introduce a consumption term, the rate at which the chemoattractant is consumed by the cells, linearly related to the number of cells by a coefficient, µ. Therefore, we can write down a full model for both the cellular concentration, as derived above, and for the chemoattractant, a, thus: rate of change of glioma cell concentration ∂c ∂t = net dispersal of glioma cells ∇ · (Dc∇c) + net growth of glioma cells ρc(1 − c K ) − chemotaxis of glioma cells ∇ · (cχ(a)∇a) − death of glioma cells λc , (2.19) rate of change of chemotactic factor ∂a ∂t = net dispersal of chemotactic factor ∇ · (Da∇a) + creation of chemotactic factor λcω − consumption of chemotactic factor µca . (2.20) And again in 1-dimension: ∂c ∂t = D ∂2 c ∂x2 − cχ(a) ∂2 a ∂x2 − χ ∂c ∂x ∂a ∂x + c(1 − c Kc ) − λc, (2.21) ∂a ∂t = Da ∂2 a ∂x2 + λcωa − µca. (2.22) While the death term has remained a constant, λ, times the population, this addition does little to effect the overall dynamics. Only with very large parameter changes, likely large enough to be physically unrealistic, ?
  • 2. Tortuous Path •Hawken ’94 •US Naval Academy ’98, Physics Major •Navy Nuclear Reactor Engineer ‘98-’03 •High School Physics Teacher Florida, ’03-’04 •Case Western Reserve MD 2004-2009 •Radiation Oncology Resident Tampa, FL, ’09-Present •Oxford D.Phil candidate - mathematics
  • 3. Net worth. -300000 -225000 -150000 -75000 0 75000 1993 1995 1997 1999 2001 2003 2005 2007 2009 2011 2013 $$ Hawken Diploma MSBS Entrance to medical school MD
  • 4.
  • 5. May 1783, John Goodricke - 100GBP
  • 6.
  • 7. ~10-7 meters - 1,000 Angstroms ~1021 meters (106 light years)
  • 8. Important to understand your limitations: Dogs are so cute when they try to comprehend quantum mechanics - I’m not. As Mr. Dlugozs will tell you, I am a terrible bench biologist - yes, I tried.
  • 10. MCAT
  • 11. Radiation Oncology The study of cancer - a disease on the human length scale
  • 12. Ptolemy’s geocentric solar system and crystalline heavens (c. AD 90 – c. AD 168)
  • 13. measurement meta- phenomenological laws conserved laws (14 December 1546 – 24 October 1601) (December 27, 1571 – November 15, 1630) (25 December 1642 – 20 March 1727) mechanism (14 March 1879 – 18 April 1955 (29 April 1854 – 17 July 1912
  • 14. Hippocrates - the four humors model of physiology
  • 15. Mr. Dlugosz The Cell Cycle - IPMAT The cycle is broken in cancer!
  • 16. suggest we all adopt ideologies such side of the majority, but to escape j.stebbing Essay Phase itrialist There is a new breed of clinical trialist in cancer research. You might not have seen them yet—they will not be knocking down your door in the clinic. They do not know what HIPAA stands for. They do not know what to do in a code. They do not wear a white coat, you will be lucky if they wear a tie. They are not biologists—if you ask them to change the media, they will probably bring you some music you have not heard. They are the phase i trialists. What is a phase i trial? It is a preclinical trial, but one in which no cells, mice, or rats will be harmed. Before one begins killing cells in a dish, there is the step to decide how to treat those cells or mice in a sensible, yet new way. It is in this phase, before even stepping into a laboratory, in which we are now seeing an influx of other types of scientists—physicists, engineers, and mathematicians. Some of these folks have run out of problems in their field and have found fertile ground for their tools and physical science perspective in the dizzying biological complexity of cancer. Others have become frustrated by the esoteric nature of their first specialty—it takes a special mind to be happy studying things in other galaxies, or things so small that you need a super collider spanning three countries to learn anything new. And then, some are just naturally dreamers, or follow their hearts into a specialty that has affected their you turn research as app to gene energy people w be expla we can b or a com how a tu how a pe phase i. The bi right no and scie with a to bet grant m mathem to think they too until the from th Cancer and Society From experience, we believe that doctors are far less accepting of such ideas than patients or healthy non- physicians. Oncologists are more tolerant of the concept of ginger as a treatment for chemotherapy-induced nausea becausethese data come from a large trial with sound statistical analysis. However, its potential as an anticancer drug directly conflicts with the beliefs of most physicians, even though no precise mechanism of action has been confirmed for either potential use. We certainly do not suggest we all adopt ideologies such as those advocated by the authors of books such as How to Cure Almost Any Cancer at Home for $5·15 a Day, but perhaps many of us are guilty of intolerance of alternative therapeutic ideologies. Albert Einstein is quoted as saying that insanity was “doing the same thing over and over again and expecting a different result”, and perhaps some cancer researchers are guilty of this way of thinking. Marcus Aurelius once said ”the object of life is not to be on the side of the majority, but to escape finding o insane”. that if m researche philosoph professio worth of ginger m doctors m idea of th concentr Jonathan Imperial Co j.stebbing@ Essay Phase itrialist There is a new breed of clinical trialist in cancer research. You might not have seen them yet—they will not be knocking down your door in the clinic. They do not know what HIPAA stands for. They do not know what to do in a code. They do not wear a a dish, there is the step to decide how to treat those cells or mice in a sensible, yet new way. It is in this phase, before even stepping into a laboratory, in which we are now seeing an influx of other types of scientists—physicists, engineers, and you turn research? as appl to genet energy t people w be explai
  • 17. Molecular Reductionism Qolism Cellular Organism the current i which invasi cancer progr There are these hypoth relevant to th First, this is a mathematica cancer resear type of insigh perhaps mos such quantit used. Second to experimen conceived. In experiments conducted in relevance of quantitative cult and the it exposes a g cal and expe Figure 2 | Cancer is multiscale. Changes at the genetic level lead to modified intracellular signal- lingwhichcauseschangesincellularbehaviourandgivesrisetocanceroustissue.Eventually,organs and the entire organism are affected. We propose that a focus on the cell as the fundamental unit PERSPECTIVES ~10-20 - 1020 meters
  • 18. Each of these models explains only a small part of our experience on this earth - and with caveats... But can we just add them all up and recapitulate life?
  • 19. Mechanistic Modeling: but at what scale? Bioinformatics 498 I. J. Radiation Oncology d Biology d Physics Volume 75, Number 2, 2009
  • 20. Build models! What is Science? What do Scientists do? “All models are wrong, but some are useful” George E P Box (Statistician)
  • 21. Nutrients (c) Signalling Proteases (m) Invasive front Angiogenesis Stem cell Inflammatory response Stromal cell Immune cell Normal cell Matrix adhesion Dm 2 m ni,j – m, m t – m , t Dc 2m – ni,jc – c. c t Tumour cells (n) Extracellular matrix (f) plement ch as M) s and ge over by a set of es a of cancer n intuitive ancer tion. behav- nt?Each riven by quantified escribes ucially, lattice s context fficients We can PERSPECTIVES
  • 22. Cancer is not only a collection of mutated cells A complex system of many interacting cellular and microenvironmental elements that were once normal
  • 23. •More complex models are better •Something that looks similar is similar •Biological facts should drive derivation •Distill key components (Dialogue) •Focus on mechanism •Subsequent model refinement“All models are wrong, but some are useful” George E P Box (Statistician) “Models should be simple but no simpler” Albert Einstein Minimal modeling approach
  • 24. We use a suite of mathematical and computational models to bridge a range of spatial and temporal scales. TIME/SPATIAL SCALE CELLULAR DETAIL Evolutionary Game Theory Reaction Diffusion Models Hybrid Cellular Automata Cellular Potts Model Immersed Boundary Model Hybrid Cellular Automata Non-spatial continuum Reaction Diffusion Network Theory
  • 26. Time CellDensity dN(t) dt = λN(t) N(t), number of cells at time t λ, proliferation rate http://math.dartmouth.edu/~klbooksite/3.02/302.html
  • 27. N(t) = Aeλt Doubling time Here λ =0.04, hence T=17.33 hrs T = ln2 λ
  • 28. Time CellDensity dN(t) dt = λN(t) 1− N(t) K ⎛ ⎝⎜ ⎞ ⎠⎟ N(t), number of cells at time t λ, proliferation rate K, carrying capacity
  • 29. Time CellDensity dN dt = −λN log N K ⎛ ⎝⎜ ⎞ ⎠⎟ N, number of cells at time t λ, proliferation rate K, carrying capacity
  • 30. Cons Over simplification (no cycle) Proliferate with same rate at same time Non-spatial No mechanistic insight Pros Fit tumour growth data well Compartmental models Time CellDensity
  • 31. We use a suite of mathematical and computational models to bridge a range of spatial and temporal scales. TIME/SPATIAL SCALE CELLULAR DETAIL Evolutionary Game Theory Reaction Diffusion Models Hybrid Cellular Automata Cellular Potts Model Immersed Boundary Model Hybrid Cellular Automata Non-spatial continuum Reaction Diffusion Network Theory
  • 32. ∂N(x,t) ∂t = D ∂2 N(x,t) ∂x2 N, number of cells at time t, position x D, Diffusion coefficient the rate of change of cell number at position x and time t = change in cell number due to random dispersal
  • 33. dN(x,t) dt = D ∂2 N(x,t) ∂x2 + λN(x,t) 1− N(x,t) K ⎛ ⎝⎜ ⎞ ⎠⎟ Sir Ronald Fisher 1890-1962 N, number of cells at time t, position x D, Diffusion coefficient λ, proliferation rate K, carrying cpacity the rate of change of cell number at position x and time t = change in cell number due to random dispersal + change in cell number due to cell proliferation
  • 34. du dt = Du ∂2 u ∂x2 − σv, dv dt = Dv ∂2 v ∂x2 − u − v Alan Turing 1912-1954 u, activator v, inhibitor D, Diffusion coefficients , proliferation rateσ
  • 35. We use a suite of mathematical and computational models to bridge a range of spatial and temporal scales. TIME/SPATIAL SCALE CELLULAR DETAIL Evolutionary Game Theory Reaction Diffusion Models Hybrid Cellular Automata Cellular Potts Model Immersed Boundary Model Hybrid Cellular Automata Non-spatial continuum Reaction Diffusion Network Theory
  • 36. Phys. Biol. 8 (2011) 015016 D Basanta et al GF~0% GF~80% GF~100% starting t t t control raisereduce AG inv gly inv gly 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 (INV-GLY). The base payoff in a given interaction is r and the cost of moving to another location with respect to the base payoff is c. The fitness cost of acidity is n and k is the fitness cost of having a less efficient glycolytic metabolism. The benefits from having access to the vasculature as a result of angiogenesis are reflected by the parameter α. AG INV GLY INV-GLY AG 1 2 + α 2 1 1 2 − n + α 1 2 − n + α INV 1 − c 1 − c 2 1 − c 3 1 − c 3 GLY 1 2 − k + n + α 1 − k + α 2 1 2 − k + α 4 1 − k + α 2 INV-GLY 1 2 − k + n + α 1 − k + α 2 1 − c 3 − k + α 2 1 − k − c 6 + α 2 Table 2. List of variables used by the model. Value Affected phenotypes Meaning c INV, INV-GLY Cost of motility k GLY, INV-GLY Cost having a glycolytic metabolism n AG, INV Cost of living in an acid microenvironment α AG, GLY, INV-GLY Benefit from angiogenesis moving cells incur since they cannot proliferate whilst moving [19, 20] or as the cost for degrading and detaching from the extra cellular matrix. The parameter k represents the cost of utilizing glycolysis as opposed to the more efficient oxidative phosphorylation. The parameter n represents the penalty that cells suffer for living in an acidic environment created by the glycolytic cells. GLY cells will suffer this penalty less as they are adapted to live in acidic environments. The parameter α represents the benefit of the surrounding vasculature. One way of envisioning variations in α is the increase in oxygen and nutrients resulting from an optimized vascularization resulting from the release of HIF-1α and downstream proteins. Table 2 lists all model variables. These variables are normalized and assumed to be in the range [0:1]. The payoff table 1 assumes that non-motile phenotypes (GLY and AG) will share existing resources with the cells they interact with, whereas motile phenotypes can chose whether to stay or move. In the case of INV cells, they will always move and leave existing resources for the cell it is interacting with unless the interaction happens with another INV cell, in which Phys. Biol. 8 (2011) 015016 (9pp) doi:10.1088/1478-3975/8/1/015016 The role of IDH1 mutated tumour cells in secondary glioblastomas: an evolutionary game theoretical view David Basanta1, Jacob G Scott1, Russ Rockne2, Kristin R Swanson2 and Alexander R A Anderson1 1 Integrated Mathematical Oncology, H Lee Moffitt Cancer Center and Research Institute, Tampa, FL 33612, USA 2 Pathology and Applied Mathematics at the University of Washington, Seattle, WA 98104, USA E-mail: david.basanta@kclalumni.net and jacob.scott@moffitt.org Received 17 September 2010 Accepted for publication 10 January 2011 Published 7 February 2011 Online at stacks.iop.org/PhysBio/8/015016 Abstract Recent advances in clinical medicine have elucidated two significantly different subtypes of glioblastoma which carry very different prognoses, both defined by mutations in isocitrate dehydrogenase-1 (IDH-1). The mechanistic consequences of this mutation have not yet been fully clarified, with conflicting opinions existing in the literature; however, IDH-1 mutation may be used as a surrogate marker to distinguish between primary and secondary glioblastoma multiforme (sGBM) from malignant progression of a lower grade glioma. We develop a mathematical model of IDH-1 mutated secondary glioblastoma using evolutionary game theory to investigate the interactions between four different phenotypic populations within the tumor: autonomous growth, invasive, glycolytic, and the hybrid invasive/glycolytic cells. Our model recapitulates glioblastoma behavior well and is able to reproduce two recent experimental findings, as well as make novel predictions concerning the rate of invasive growth as a function of vascularity, and fluctuations in the proportions of phenotypic populations that a glioblastoma will experience under different microenvironmental constraints. 1. Introduction Our ability to tease apart pathologic differences in cancers began with microscope and differential staining and has progressed to the current age of molecular medicine. The mantra of clinical medicine in the molecular age is ‘personalized medicine’—the hope that one day we will be able to perfectly understand each person’s tumor at the molecular and mechanistic level in order to prescribe the perfect treatment. While we have made many advances in subtyping many different cancers and even designed molecularly targeted therapies, the results so far have been disappointing. One cancer that has remained particularly resistant to our therapies is glioblastoma multiforme (GBM), which carries a prognosis of less than a year and certain mortality. It has been understood for several years that there are different subtypes of glioblastoma characterized by mutation pattern and cell of origin [1], but this knowledge has not altered our treatment strategy, only our ability to prognosticate outcome. That these subtypes all end up looking the same under the microscope and end up behaving very similarly as aggregates is an example of convergent evolution—genotypically different cells with similar phenotypic characteristics. Most recently, two significantly different classes of glioblastoma have been identified which carry very different prognoses [2–4]. These two groups of glioblastoma are, for the most part, differentiated by mutations found in a single coding region of an enzyme involved in the Krebs cycle, isocitrate dehydrogenase 1 (IDH1). This mutation is present in the majority of secondary glioblastomas (sGBM) and low grade gliomas (LGGs), many of which progress to become 1478-3975/11/015016+09$33.00 1 © 2011 IOP Publishing Ltd Printed in the UK IOP PUBLISHING Phys. Biol. 8 (2011) 015016 (9pp) doi:10.1088 The role of IDH1 mutated tumour c secondary glioblastomas: an evolut game theoretical view David Basanta1, Jacob G Scott1, Russ Rockne2, Kristin R Swanson2 and Alexander R A Anderson1 1 Integrated Mathematical Oncology, H Lee Moffitt Cancer Center and Research Institute, Tampa, FL 33612, USA 2 Pathology and Applied Mathematics at the University of Washington, Seattle, WA 98104, USA E-mail: david.basanta@kclalumni.net and jacob.scott@moffitt.org Received 17 September 2010 Accepted for publication 10 January 2011
  • 37. LETTER TO THE EDITOR Production of 2-hydroxyglutarate by isocitrate dehydrogenase 1–mutated gliomas: an evolutionary alternative to the Warburg shift? Neuro-Oncology Neuro-Oncology Advanc Neuro-Oncology NEURO-ONCOLOGY Neuro-Oncology Advance Access published July 22, 2011 015016 D Basanta et al Invasion BeforeBevacizumabAfterBevacizumab Loss of PET signal ~ Less Glycolysis starting t t t reduce 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 200 400 600 800 1000 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 Figure 3. Plot of k = 0.1, n = 0.2, c = 0.1 and α = 0.3, 0.32, 0.35. The first panel shows two interesting dynamics: with increasing benefi vasculature (increasing α), we see a more rapid progression as well as a higher overall proportion of cells with the GLY phenotype. Also decreasing α promotes the INV phenotype (stars) which is recapitulated in recurrent glioblastoma after bevacizumab treatment. The two panels below the control one show what happens after bevacizumab has been administered after 600 time steps without assuming wheth the main effect would be a normalization of the angiogenic vasculature (which would increase α, shown in the second row) or the reduc of the existing vasculature (which would have a negative effect on α, shown in the third row). changes that we see in glioblastoma patients after failure of bevacizumab (a monoclonal antibody to VEGF-α). The recapitulation of known behaviors allows some measure of confidence in our model and gives some credence to predictions that the model can make. Now we can begin to make observations about the mechanisms driving the behaviors that were, otherwise, obscured by the biological complexity. A recurring theme observed in the time-dependent behavior of our model suggests an underlying mechanism driven by interactions between different phenotypes. Specifically, the emergence of the invasive phenotypes is always preceded by a rise in the glycolytic fraction. This rise in the glycolytic fraction is preceded by an overgrowth of AG cells. cells grow into a viable proportion, the damage that they to the local environment with their excessive acid product begins to promote the benefit of cells that can move to a n place (INV). We see this sequence reproduced in nearly areas of the parameter space, and certainly in all the areas are relevant to glioma. Further, these results agree nic with earlier work done by this group suggesting that glycolytic phenotype is necessary to bring about the emerge of invasion [18]. In addition to this sequence, there was an interest dynamic that emerged in some areas of the parameter spa Figure 5 shows an example of two types of oscillatory behav that our model can produce. Even though neither manag
  • 38. We use a suite of mathematical and computational models to bridge a range of spatial and temporal scales. TIME/SPATIAL SCALE CELLULAR DETAIL Evolutionary Game Theory Reaction Diffusion Models Hybrid Cellular Automata Cellular Potts Model Immersed Boundary Model Hybrid Cellular Automata Non-spatial continuum Reaction Diffusion Network Theory
  • 39. Symmetric Division Rate and live in a ‘continuous’ milieu described completely by the experimenter end result is a model that looks complicated, but is entirely described by a minimum of parameters - allowing for emergent phenomena and the subtype driven by PDGF overexpression. For NF1-driven cancers, we investigated bi-allelic loss of NF1 and a dominant negative mutation of TP53 as the necessary driver mutations that must be accumulated in a single cell to initiate tumorigenesis. For PDGF-driven cancers, the necessary driving alterations are those leading to PDGF overexpression and bi-allelic loss of INK4A/ARF. We did not include the accumulation of passenger mutations in this model since those alterations, by definition, do not influence of cells carrying alterations in similarly leads to increased pro on the background of either T INK4A/ARF2/2 NF12/2 cells fitness RARF 6RNF1,mut and div In contrast, cells mutated in NF a fitness detriment, RNF1,wt0. cell divisions beyond the norm Figure 1. A mathematical model of the cell of origin of PDGF- and NF1-driven gliomas. Initially, th cells (blue) and 2z+1 21 wild-type transit-amplifying non-self-renewing (TA) cells (purple). At each time ste probability a, the SR cell divides symmetrically and one daughter cell replaces another randomly chosen SR divides asymmetrically and one daughter cell remains a SR cell while the other daughter cell becomes comm This new TA cell divides symmetrically z times to give rise to successively more differentiated cells (progres becoming terminally differentiated. This restriction of the stochastic process ensures that the total number of homeostatic conditions in the healthy brain. In the figure, the darkening purple gradations refer to successively clarify a single time step of the stochastic process. We investigate the dynamics of only one cell cluster since the given by the probability per cluster times the number of clusters; hence, a consideration of all clusters does n cell of origin of brain cancer. doi:10.1371/journal.pone.0024454.g001 Rounds of Transient Amplification Vascular Density 0.01 0.05 0.1 !!!!! !! !! !! ! !!!! ! !!!!! ! !!!!!! ! !!!!!! ! !!!!!!!
  • 40. Loss of homeostasis Symmetric division rate - 0.5 Rounds of Amplification -11 Vascular density - .05
  • 41. 1 5 10 15 20 0 0.5 1 1.5 2 2.5 x 10 5 Divisions per progenitor cell Cells s/a 0.1 s/a 0.3 s/a 0.5 1 5 10 15 20 0 0.5 1 1.5 2 x 10 5 Divisions per progenitor cell s/a 0.1 s/a 0.3 s/a 0.5 1 5 10 15 20 0 0.5 1 1.5 2 2.5 x 10 5 Divisions per progenitor cell Cells s/a 0.1 s/a 0.3 s/a 0.5 Vascular Density Quantifying the unmeasurable 0.01 0.05 0.1 Background: Metastasis is a highly lethal and poorly understood process that accounts for the majority cancer deaths
  • 42. We use a suite of mathematical and computational models to bridge a range of spatial and temporal scales. TIME/SPATIAL SCALE CELLULAR DETAIL Evolutionary Game Theory Reaction Diffusion Models Hybrid Cellular Automata Cellular Potts Model Immersed Boundary Model Hybrid Cellular Automata Non-spatial continuum Reaction Diffusion Network Theory
  • 43. 90% of cancer death is from metastatic disease Yet from the clinicians perspective, metastasis is a binary event - the least understood process
  • 44. M0
  • 45. M1
  • 46. Which patients will end up as M1 vs. M450?? We now have targetted local therapies (like SBRT) that ablate these tumors...
  • 47. Game  1 Game  2 Jacob Scott, Maciunas STEMM Keynote 2010
  • 48. The cutoff frequency .[o is then defined as 1 ./o= ~ (17) Values afro for each segment are listed in Table 1. 5 Computational procedure A digital computer program was written in FOR- TRAN to operate on the branching configuration multiple branching parallel. Transmiss node calculated fr backward towards pedance of the wh final result is a com ching configuration and transmission p every node. Hence ejection waveform flow waveforms m 53 52/~ 55 51~5136 3~ ~7 7i ~4 the branching struc 0s 6o flow throughout th ---r-~ pheral resistance v57 35 47 ~564~)]~0__.~33]1~ sistances and visco The input data t dimensions and o~4' _ . ?2 42 i!/6; 2,1 ,e sS/.~ 9 8~8~70 15 49 61, ,, 3, ,, o2 :,, I , }1 3200[ !/ .o, ,,oo,!, ,o8 ' ~'~, ,03 ~q ~o9 10cm ! ~L ' I 800 pH} c 0 113 ,,8 y ' , , s 12it 125 humanarterialtree Fig. 1 Schematic representation of the human arterial tree with all lengths drawn to scale. Segment numbers correspond to arteries listed in Table l 2 r 1-0 . = -1.ot i Fig. 2 Input impedanc pedance in each simultaneous re ascending aorta culatedfrom mo Medical Biological Engineering Computing November Jacob Scott, Maciunas STEMM Keynote 2010
  • 49. Simple  experiment  and  ODE  model    to   begin  a  conversa:on Can  likely  measure  f(t)  in  a  mouse  model  by   injec:on  a  bolus  of  tumor  cells  into  a  tail   vein  and  measuring  CTCs  at  several  :me   points tumor Other  organ •C  is  number  of  CTCs •Alpha  and  beta  are  constants •T(t)  is  a  func:on  describing  tumor  size •z(t)  is  rate  of  tumor  cell  intravasa:on   “shedding  rate” •f(t)  is  the  rate  of  filtra:on  or  CTC  arrest Jacob Scott, Maciunas STEMM Keynote 2010
  • 50. Jacob Scott, Maciunas STEMM Keynote 2010
  • 51. Jacob Scott, Maciunas STEMM Keynote 2010 What would we need for Kirchoff’s rules?
  • 52. !#$%'#()*'+, -+'.# !./*+ 0, -1'((*+'#(2+3%,',* -3#* β η γ Unifying metastasis — integrating intravasation, circulation and end-organ colonization Jacob Scott1,2 , Peter Kuhn3 and Alexander R. A. Anderson1 !#$%'$()(*+'+,$($+'-,./.01'/(23,'+#($-$(-3+(+,/+2($-+(4+#5%+4+,$(.6('1%'5/$1,0( $54.5%('+//#(7898#:(1,(;$1+,$#(-3+(#;5%%+2(1,$+%+#$(1,($-+('1%'5/$.%(;-#+(.6(4+$#$#1#=( 9+'-,15+#($-$(2.(,.$(#./+/(%+/(.,((/..2(#4;/+(//.?(#5#$,$1/(1./.01'/(1,$+%%.0$1.,( +.,2(#14;/('.5,$1,0(898#= for gy, A. In patients with advanced primary cancer, circulating tumour cells (CTCs)1 can be found throughout the entire vascular system2 . When and where these CTCs form metastasis is not fully understood, and is currently the subject of intensive biological study. Paget’s well-known seed–soil hypothesis3 suggests that the ‘soil’ (the site of a metastasis) is as important as the ‘seed’ (the metastatic cells) in the determination of successful metastasis. The mechanism by which seeds are disseminated to specific soil has, to date, been a ‘known unknown’. We think that it is during this poorly understood phase of metastasis that we stand to answer important questions4 . We hypothesize that the rich variety of possible meta- static disease patterns not only stems from the physical aspects of the circulation but also from CTC hetero- geneity (FIG. 1). These seeds represent many different populations that are derived from a diverse population of competing phenotypes within the primary tumour5 . Because such seeds need to pass through a system of physical and biological filters in the form of specific organs, the circulatory phase of metastasis could be modelled as a complex deterministic filter. In theory, until the evolution of a suitable seed, any number of CTCs could flow through the circulation and arrest at end organs without metastases forming. As tumour heterogeneity is thought to expand as the tumour pro- gresses, it follows that at some point a seed will come into existence that is suited to a specific soil within that patient’s body. If this seed is to propagate it must find its soil, a process that we hypothesize is governed by solvable physical rules that relate to the dynamics of do not fit a model that is defined only by physical flow and filtration. To begin the process of physical interrogation, we propose a model that represents the human circulatory system as a directed and weighted network, with nodes representing organs and edges representing arteries and veins.The novelty is only fully realized when combined withaheterogeneousCTCpopulation(drivenbyprimary tumour heterogeneity) modulated by the complex organ filter system (with physiologically relevant connections) under dynamic flow. Four important biological processes emerge from this representation. First, the shedding rate, which is defined as the rate at which the tumour sheds CTCs into the vasculature. Second, CTC heterogeneity, which is defined as the distribution of CTC phenotypes present in the circulation. Third, the filtration fraction, which is defined as the proportion (and type) of CTCs that arrest in a given organ. Fourth, the clearance rate, which is defined as the rate at which cancer cells are cleared from the blood and/or organ after arrest. Each of these biological processes is probably disease- and even patient-specific, and each is extremely poorly understood. Using this representation to motivate the develop- ment of a mathematical model we can define both the concentration of CTCs and their phenotypic distribu- tion at any given point in the network, as well as organ- specific filtration values. To parameterize this model, characterization and enumeration of CTCs taken from a single patient at different time points and from differ- ent points in this network will need to be undertaken. A complete understanding of the model will also pro- Unifying metastasis — int intravasation, circulation end-organ colonization Jacob Scott1,2 , Peter Kuhn3 and Alexander R. A. Anders !#$%'$()(*+'+,$($+'-,./.01'/(23,'+#($-$(-3+(+,/+2($ $54.5%('+//#(7898#:(1,(;$1+,$#(-3+(#;5%%+2(1,$+%+#$(1,($-+('1% 8@A Nature Reviews Cancer | AOP, published online 24 May 2012; doi:10.1038/nrc3287
  • 53. Jacob Scott, Maciunas STEMM Keynote 2010
  • 54. Jacob Scott, Maciunas STEMM Keynote 2010 Matrices are important - pay attention in AMH!!
  • 55. “Whereas a good simulation should include as much as possible, a good model should include as little as possible.” Jacob Scott, Maciunas STEMM Keynote 2010
  • 56. Lung    outflow ∂CL ∂t = inflow IL − filtering ηLCL buildup ∂OL ∂t = arresting ηLCL − clearing γLOL Liver    outflow ∂CLi ∂t = inflow *A αLiCLi + inflow *B αGCG − filtering ηLiCLi + shedding β buildup ∂OLi ∂t = arresting ηLiCLi − clearing γLiOLi Make everything as simple as possible, but no simpler Jacob Scott, Maciunas STEMM Keynote 2010
  • 57. Brain Liver Gut Bone Venous Arterial Portal System CTCflow Lung Breast Primary Seeding Primary Tumor (a) Primary Seeding cartoon Brain Liver Gut Bone Venous Arterial Portal System CTCflow Lung Breast Primary Tumor Secondary Tumor Secondary Tumor Secondary Seeding (b) Secondary Seeding cartoon A Time (cell cycles) Logtumourmass B Removal rate λ Returnprobabilityp growthacceleration(logscale) primary seeding secondary seeding Figure 2: Simulating the dynamics of primary seeding.(A) shows the total tumour b for three different conditions where the removal rate was fixed at λ = 10−5 and return proba was taken to be p = 10−2,10−3 and 10−4 respectively. (B) illustrates the model dynamics the parameters λ and p are varied systematically, and shows that accelerated tumour growth , 20130011, published 20 February 2013102013J. R. Soc. Interface Jacob G. Scott, David Basanta, Alexander R. A. Anderson and Philip Gerlee growth secondary metastatic deposits as drivers of primary tumour A mathematical model of tumour self-seeding reveals Open Access
  • 58. science society B iology has long been the stepchild of the natural sciences. Compared with mathematical proofs, physical formulae and the molecules of chemistry, biology, like life itself, has often seemed unquantifiable, unpredictable and messy. Yet, scientists have striven gallantly to pin biology down through the application of the of inspiration for mathematicians. “In my 40 plus years of research, I have found that problems in biomathematics almost always uncover unexplored and undeveloped areas of mathematics,” he said. “These are areas that mathematicians have not even thought about exploring. New mathematics.” involves events a gene expression o take place in nano nisms or body-wi minutes, hours o between people tions that last mon understand these s different layers an Jost points out, ha mathematical biolo T he applicatio logy itself i back at least on the inheritanc nineteenth centur the theory of Men foundation of mod ally reproducing o Biology is the new physics The increasing use of mathematics in biology is both inspiring research in mathematics and creating new career options for mathematical biologists Philip Hunter EMBO reports VOL 11 | NO 5 | 2010350 “For many years the inspiration for innovation in applied mathematics has come from physics, but in my opinion, in this century it will come from the bio- logical sciences, broadly defined,” Mackey explained, adding that this switch has been taking place slowly over several decades. While physics has stagnated, waiting for new theoretical insights to make progress against fundamental problems such as quantum gravity, Mackey argued, theoreti- cal biology has emerged as a new source complexes; able to accou tle difference infection am ous approac growing use biological an capable of a the systems u of a protein, essence, inf geometry wi changing, co Other tech information tions betwee a huge ran The human continue to the extent that it might even become the main driving force behind innovation and development in mathematics