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Cancer can give you Maths

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Title: Cancer can give you Maths


1
Cancer can give you Maths
  • Philip K. Maini
  • Centre for Mathematical Biology
  • Mathematical Institute
  • and
  • Oxford Centre for Integrative Systems Biology,
  • Biochemistry
  • Oxford

2
  • Very brief overview of cancer growth
  • First, mutations lead to cells losing appropriate
    signalling responses for PROLIFERATION (cell
    division) and APOPTOSIS (cell suicide)
  • Result a growing mass of cells

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mutations

Approx 1mm in diameter
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  • Nutrient required
  • Hypoxic core TAF (tumour
    angiogenesis factors)
  • Avascular tumour Vascular tumour
  • Invasion
  • Tumour produces proteases digest ECM
  • Competition
  • Normal environment

Tumour
Normals
Add H
Gatenby Gawlinski Gap
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T-tumour density V-vascular density
Glycolytic pathway
Blood flow removal
Avascular Case
elsewhere
Nondimensionalise
Necrotic core
Proliferation zone, T const
Outside tumour
11
Assume necrosis arises when
constantUsing experimentally
determined parameter values
necrotic core arises at
r 0.1 cm avascular case
12
Tumour Growth No normal tissue
Avascular tumour always reaches a benign
steady stateVascular tumour is benign if
invasive if
(cf Greenspan 1972)
necrotic core
Proliferation
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Results
  • Three regimes of growth
  • If rate of acid removal is insufficient,
  • exponential growth followed by auto-toxicity
  • benign tumour
  • Occurs in avasculars and vasculars if
  • vascular tumour displays
    sustained growth and invades
  • Very small tumour no growth (insufficient acid
    production to include normal cell death)

15
Experimental results (Gatenby)
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  • PROBLEM THE GAP PREDICTED BY THIS MODEL IS TOO
    BIG!!!!!
  • Introduce quiescent cells (it is known that
    excess acid induces quiescence). These cells
    produce very little acid (Smallbone, Gatenby, PKM
    in prep)

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Metabolic changes during carcinogenesis
  • K. Smallbone, D.J. Gavaghan (Oxford)
  • R.A. Gatenby, R.J. Gillies (Radiology, Arizona)
  • J.Theor Biol, 244, 703-713, 2007

22
Introduction
  • Carcinogenesis
  • The generation of cancer from normal cells
  • An evolutionary process selective pressures
    promote proliferation of phenotypes best-suited
    to their microenvironment

Normal cellsAerobic respiration 36 ATP / glucose
Cancer cells Anaerobic respiration 2 ATP / glucose
23
Cell-environment Interactions
Model
DCIS
Nature Rev Cancer 4 891-899 (2004)
24
Model Development
  • Hybrid cellular automaton
  • Cells as discrete individuals
  • Proliferation, death, adaptation
  • Oxygen, glucose, H as continuous fields
  • Calculate steady-state metabolite fields after
    each generation
  • Heritable phenotypes
  • Hyperplastic growth away from basement membrane
  • Glycolytic increased glucose uptake and
    utilisation
  • Acid-resistant Lower extracellular pH to induce
    toxicity

25
Cellular Metabolism
  • Aerobic
  • Anaerobic
  • Assume
  • All glucose and oxygen used in these two
    processes
  • Normal cells under normal conditions rely on
    aerobic respiration alone

Two parameters n 1/18 1 lt k 500
26
Automaton Rules
  • At each generation, an individual cells
    development is governed by its rate of ATP
    production fa and extracellular acidity h
  • Cell death
  • Lack of ATP
  • High acidity
  • Proliferation
  • Adaptation

27
Somatic Evolution
  • P.C. Nowell, The clonal evolution of tumour cell
    populations, Science, 194 (4260), 23-28 (1976)

28
Variation in Metabolite Concentrations
H
glucose
oxygen
29
Typical Automaton Evolution
t10, normal epithelium
t100, hyperplasia
O2 diffusion limit
basement membrane
t250, glycolysis
t300, acid-resistance
30
Cellular evolution was demonstrated. 1 of 3
spheroids in 15 days and 3 of 3 in 30 days
demonstrated proliferating clusters of GLUT1
positive clusters of cells in normoxic regions.
31
  • For further details, see Gatenby, Smallbone, PKM,
    Rose, Averill, Nagle, Worrall and Gillies,
    Cellular adaptations to hypoxia and acidosis
    during somatic evolution of breast cancer,
    British J. of Cancer, 97, 646-653 (2007)

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Cancer Growth
  • Tissue Level Signalling (Tumour Angiogenesis
    Factors)
  • Oxygen etc
  • Cells
  • Intracellular Cell cycle,
  • Molecular elements

Partial Differential Equations
Automaton Elements
Ordinary differential equations
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  • Vessels source of nutrient (oxygen) satisfy
    Pries-Secomb ??????
  • Viscosity Fahraeus-Linqvist effect
  • Cells to divide or not to divide?
    Thresholds/cell cycle
  • Competition acid etc

36
Structural adaptation in normal and cancerous
vasculature
  • (PKM, T. Alarcon, H.M. Byrne, M.R. Owen, J.
    Murphy)
  • Blood vessels are not static they respond to
    stimuli mechanical and metabolic. Other stimuli
    are
  • Conducted stimuli downstream (chemical
  • ATP? released under hypoxic stress)
  • upstream (along vessel wall changes in membrane
    potential through gap junctions?)

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  • Model includes the production of VEGF by cells in
    response to low levels of oxygen (hypoxia). VEGF
    is an angiogenesis factor it produces more
    blood vessels.

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Results
  • No VEGF production necrotic cores
  • VEGF production extensive hypoxic regions
    within the tumour but few necrotic regions
  • Downstream signalling tumours with smaller
    hypoxic regions, more homogeneous distribution of
    oxygen
  • Upstream signalling VEGF more concentrated
    around the hypoxic regions

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  • Model predicts that the inhomogeneous oxygen
    concentration leads to lower tumour load but
    symmetry is broken.

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References
  • Alarcon, Byrne, PKM, JTB, 225, 257-274 (2003) --
    inhomogeneous media
  • Alarcon, Byrne, PKM, Prog. Biophys. And Mol.
    Biol., 85, 451-472 (2004)
  • Alarcon, Byrne, PKM, JTB, 229, 395-411 (2004)
    cell cycle and hypoxia
  • Ribba, Alarcon, Marron, PKM, Agur, BMB, 67, 79-99
    (2005) doxorubicin
  • Alarcon, Byrne, PKM, SIAM J. Mult. Mod. Sim, 3,
    440-475 (2005)
  • Alarcon, Byrne, PKM, Microvascular Research, 69,
    156-172 (2005) design principles
  • Byrne, Alarcon, Owen, Webb, PKM, Phil Trans R Soc
    A, 364, 1563-1578 (2006) --review
  • Byrne, Owen, Alarcon, Murphy, PKM, Math Models
    and Methods, 16, 1219-1241 (2006) chemotherapy
  • Betteridge, Owen, Byrne, Alarcon, PKM, Networks
    and Hetero. Media, 1, 515-535 (2006) -- cell
    crowding
  • Alarcon, Owen, Byrne, PKM, Comp and Math Methods
    in Medicine, 7, 85-119 (2006) vessel
    normalisation

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Summary
  • Simple model for acid-mediated invasion
  • Hybrid model for somatic evolution
  • Multiscale model
  • effects of heterogeneity
  • structural adaptation in vessels
  • drug delivery (NOT COVERED TODAY)

50
Acknowledgements
  • Acid/somatic evolution Bob Gatenby, Kieran
    Smallbone, David Gavaghan, Mike Brady, Bob
    Gillies (Funded EPSRC DTC)
  • Multiscale modelling Tomas Alarcon, Helen Byrne,
    Markus Owen, James Murphy, Russel Betteridge
    (Funded EU RTN (5th and 6th frameworks) IB, NCI
    Virtual Tumour)
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