François Fages ICLP December 2003
Symbolic model checking of biochemical systemsLogic programming steps towards formal biology
François Fages, INRIA Rocquencourt http://contraintes.inria.fr/
Joint work with andNathalie Chabrier-Rivier Sylvain Soliman
In collaboration with ARC CPBIO http://contraintes.inria.fr/cpbioAlexander Bockmayr, Vincent Danos, Vincent Schächter et al.
François Fages ICLP December 2003
Current revolution in Biology
• Elucidation of high-level biological processes
in terms of their biochemical basis at the molecular level.
• Mass production of genomic and post-genomic data:
ARN expression, protein synthesis, protein-protein interactions,…
• Need for a strong parallel effort on the formal representation of biological processes.
• Need for formal tools for modeling and reasoning about their global behavior.
François Fages ICLP December 2003
Formalisms for modeling biochemical systems
• Diagrammatic notation • Boolean networks [Thomas 73]
• Milner’s –calculus [Regev-Silverman-Shapiro 99-01, Nagasali et al. 00]
• Concurrent transition systems [Chabrier-Chiaverini-Danos-Fages-Schachter 03]
Biochemical abstract machine BIOCHAM [Chabrier-Fages-Soliman 03]
Pathway logic [Eker-Knapp-Laderoute-Lincoln-Meseguer-Sonmez 02]
• Bio-ambients [Regev-Panina-Silverman-Cardelli-Shapiro 03]
• Differential equations • Hybrid Petri nets [Hofestadt-Thelen 98, Matsuno et al. 00]
• Hybrid automata [Alur et al. 01, Ghosh-Tomlin 01]
• Hybrid concurrent constraint languages [Bockmayr-Courtois 01]
François Fages ICLP December 2003
Our goal
Beyond simulation, provide formal tools for querying, validating and completing biological models.
Our proposal:
• Use of temporal logic CTL as a query language for models of biological processes;
• Use of concurrent transition systems for their modeling;
• Use of symbolic and constraint-based model checkers for automatically evaluating CTL queries in qualitative and quantitative models.
• Use of inductive logic programming for learning models [EU APRIL 2]
In course, learn and teach bits of biology with logic programs.
François Fages ICLP December 2003
Plan of the talk
1. Introduction
2. A simple algebra of cell molecules
3. Concurrent transition systems of biochemical reactions• Example of the mammalian cell cycle control
4. Temporal logic CTL as a query language• Computational results with BIOCHAM
5. Learning models• An experiment with inductive logic programming
6. Quantitative models• Simulation with differential equations
• Constraint-based model checking
7. Conclusion
François Fages ICLP December 2003
References
A wonderful textbook:Molecular Cell Biology. 5th Edition, 1100 pages+CD, Freeman Publ.Lodish, Berk, Zipursky, Matsudaira, Baltimore, Darnell. Nov. 2003.
Genes and signals. Ptashne, Gann. CSHL Press. 2002.
Modeling dynamic phenomena in molecular and cellular biology. Segel. Cambridge Univ. Press. 1987.
Modeling and querying bio-molecular interaction networks. Chabrier, Chiaverini, Danos, Fages, Schächter. To appear in TCS. 2003.
The biochemical abstract machine BIOCHAM. Chabrier, Fages, Soliman. http://contraintes.inria.fr/BIOCHAM
François Fages ICLP December 2003
2. A Simple Algebra of Cell Molecules
Small molecules: covalent bonds (outer electrons shared) 50-200 kcal/mol
• 70% water
• 1% ions
• 6% amino acids (20), nucleotides (5),
fats, sugars, ATP, ADP, …
Macromolecules: hydrogen bonds, ionic, hydrophobic, Waals 1-5 kcal/mol
Stability and bindings determined by the number of weak bonds: 3D shape
• 20% proteins (50-104 amino acids)
• RNA (102-104 nucleotides AGCU)
• DNA (102-106 nucleotides AGCT)
François Fages ICLP December 2003
Structure levels of proteins
1) Primary structure: word of n amino acids residues (20n possibilities)
linked with C-N bonds
ICLP
Isoleucine Cysteine Leucine Proline
2) Secondary: word of m helix, strands, random coils,… (3m-10m)
stabilized by hydrogen bonds H---O
3) Tertiary 3D structure: spatial folding
stabilized by
hydrophobic
interactions
François Fages ICLP December 2003
Formal proteins
Cyclin dependent kinase 1 Cdk1
(free, inactive)
Complex Cdk1-Cyclin A Cdk1–CycB
(low activity)
Phosphorylated Cdk1~{thr161}-CycB
at site threonine 161
(high activity)
(BIOCHAM syntax)
François Fages ICLP December 2003
Gene expression: DNA RNA protein
DNA: word over 4 nucleotides Adenine, Guanine, Cytosine, Thymine
double helix of pairs A--T and C---G
Replication: DNA synthesis
Genes: parts of DNA
Transcription: RNA copying from a gene
ERCC1-(PRB-JUN-CFOS)
François Fages ICLP December 2003
Genome Size
Species Genome size Chromosomes Coding DNA
E. Coli (bacteria) 5 Mb 1 circular 100 %
S. Cerevisae (yeast) 12 Mb 16 70 %
Mouse, Human 3 Gb 20, 23 15 %
… 15 Gb
… 140 Gb
3,200,000,000 pairs of nucleotides
single nucleotide polymorphism 1 / 2kb
François Fages ICLP December 2003
Genome Size
Species Genome size Chromosomes Coding DNA
E. Coli (bacteria) 4 Mb 1 100 %
S. Cerevisae (yeast) 12 Mb 16 70 %
Mouse, Human 3 Gb 20, 23 15 %
Onion 15 Gb 8 1 %
… 140 Gb
François Fages ICLP December 2003
Genome Size
Species Genome size Chromosomes Coding DNA
E. Coli (bacteria) 4 Mb 1 100 %
S. Cerevisae (yeast) 12 Mb 16 70 %
Mouse, Human 3 Gb 20, 23 15 %
Onion 15 Gb 8 1 %
Lungfish 140 Gb 0.7 %
François Fages ICLP December 2003
Algebra of Cell Molecules
E ::= Name|E-E|E~{E,…,E}|(E) S ::= _|E|S+S
Names: proteins, gene binding sites, molecules, abstract processes…
- : binding operator for protein complexes, gene binding sites, …
Non associative, non commutative (could be in most cases)
~{…}: modification operator for phosphorylated sites, …
Associative, Commutative, Idempotent.
+ : solution operator, “soup aspect”, Assoc. Comm. Idempotent, Neutral _
No membranes, no transport formalized. Bitonal calculi [Cardelli 03].
François Fages ICLP December 2003
Plan of the talk
1. Introduction
2. A simple algebra of cell molecules
3. Concurrent transition systems of biochemical reactions• Example of the mammalian cell cycle control
4. Temporal logic CTL as a query language• Computational results with BIOCHAM
5. Learning models• An experiment with inductive logic programming
6. Quantitative models• Simulation with differential equations
• Constraint-based model checking
7. Conclusion
François Fages ICLP December 2003
3. Concurrent Transition Syst. of Biochemical Reactions
Enzymatic reactions:
R ::= S=>S | S=[E]=>S | S=[R]=>S | S<=>S | S<=[E]=>S
(where A<=>B stands for A=>B B=>A and A=[C]=>B for A+C=>B+C, etc.)
define a concurrent transition system over integers denoting the multiplicity of the molecules (multiset rewriting).
One can associate a finite abstract CTS over boolean state variables denoting the presence/absence of molecules
which correctly over-approximates the set of all possible behaviors
If we translate a reaction A+B=>C+D by 4 rules for possible consumption:
A+BA+B+C+D A+BA+B +C+D
A+BA+B+C+D A+BA+B+C+D
François Fages ICLP December 2003
Four Rule Schemas
Complexation: A + B => A-B
Cdk1+CycB => Cdk1–CycB
Phosphorylation: A =[C]=> A~{p}
Cdk1–CycB =[Myt1]=> Cdk1~{thr161}-CycB
Cdk1~{thr14,tyr15}-CycB =[Cdc25~{Nterm}]=> Cdk1-CycB
Synthesis: _ =[C]=> A.
_ =[Ge2-E2f13-Dp12]=> CycA
Degradation: A =[C]=> _.
CycE =[UbiPro]=> _ (not for CycE-Cdk2 which is stable)
François Fages ICLP December 2003
An Actin-Myosin Engine with ATP fuel
A two-stroke nano-engine: Myosin + ATP => Myosin-ATP
Myosin-ATP => Myosin + ADP
http://www.sci.sdsu.edu/movies http://www-rocq.inria.fr/sosso/icema2
François Fages ICLP December 2003
Cell Cycle: G1 DNA Synthesis G2 Mitosis
G1: CdK4-CycD
Cdk6-CycD
Cdk2-CycE
S: Cdk2-CycA
G2
M: Cdk1-CycA
Cdk1-CycB
François Fages ICLP December 2003
Mammalian Cell Cycle Control Map [Kohn 99]
François Fages ICLP December 2003
Kohn’s map detail for Cdk2
Complexation with CycA and CycE Phosphorylation sites PY15 and P
Concurrent Transition Rules:
cdk2+cycA => cdk2-cycA.
cdk2~{p2}+cycA => cdk2~{p2}-cycA.
cdk2~{p1}+cycA => cdk2~{p1}-cycA.
cdk2~{p1,p2}+cycA => cdk2~{p1,p2}-cycA.
cdk2+cycE => cdk2-cycE.
cdk2+cycE~{p1} => cdk2-cycE~{p1}.
cdk2~{p2}+cycE => cdk2~{p2}-cycE.
…
700 rules, 165 proteins and genes, 500 variables, 2500 states.
François Fages ICLP December 2003
Translation in Prolog
Encode states with a single predicate p(A,B,C,D,E)
A+BC+D. p(1,1,_,_,E):-p(_,_,1,1,E).
C A. p(_,B,1,D,E):- p(1,B,_,D,E).
Thm. [Delzanno-Podelski 99] Predecessor(S) = TP(S)
Backward analysis by computing lfp(TP{p(x):-s}).
CLP-based Deductive Model Checker DMC [Delzanno-Podelski 99]
More efficient implementation using state-of-the-art symbolic model-checker NuSMV [Cimatti Clarke Giunchiglia Giunchiglia Pistore 02].
François Fages ICLP December 2003
Plan of the talk
1. Introduction2. A simple algebra of cell molecules3. Concurrent transition systems of biochemical reactions
• Example of the mammalian cell cycle control4. Temporal logic CTL as a query language
• Computational results with BIOCHAM5. Learning models
• An experiment with inductive logic programming6. Quantitative models
• Simulation with differential equations• Constraint-based model checking
7. Conclusion
François Fages ICLP December 2003
4. Temporal Logic CTL as a Query Language
Computation Tree Logic
Time
Non-determinism E, A
F,G,U EF
EU
AG
Choice
Time
E
exists
A
always
X
next time
EX() AX()
F
finally
EF()
AG()
AF()
liveness
G
globally
EG()
AF( )
AG()
safety
U
untilE (U ) A (U )
François Fages ICLP December 2003
Kripke Structures
A Kripke structure K is a triple (S; R; L) where S is a set of states, and RSxS is a total relation.
s |= if is true in s,
s |= E if there is a path from s such that |= ,
s |= A if for every path from s, |= ,
|= if s |= where s is the starting state of ,
|= X if 1 |= ,
|= F if there exists k >0 such that k |= ,
|= G if for every k >0, k |= ,
|= U iff there exists k>0 such that k |= for all j < k j |= Following [Emerson 90] we identify a formula to the set of states which
satisfy it ~ {sS : s |= }.
François Fages ICLP December 2003
Symbolic Model Checking
Model Checking is an algorithm for computing, in a given finite Kripke structure the set of states satisfying a CTL formula: {sS : s |= }.
Basic algorithm: represent K as a graph and iteratively label the nodes with the subformulas of which are true in that node.
Add to the states satisfying Add EF (EX ) to the (immediate) predecessors of states labeled by Add E( U ) to the predecessor states of while they satisfy Add EG to the states for which there exists a path leading to a non
trivial strongly connected component of the subgraph of states satisfying
Symbolic model checking: use OBDDs to represent states and transitions as boolean formulas (S is finite).
François Fages ICLP December 2003
Biological Queries (1/3)
About reachability:
• Given an initial state init, can the cell produce some protein P? init EF(P)
• Which are the states from which a set of products P1,. . . , Pn can be produced simultaneously? EF(P1^…^Pn)
About pathways:
• Can the cell reach a state s while passing by another state s2? init EF(s2^EFs)
• Is state s2 a necessary checkpoint for reaching state s? EF(s2U s)
• Is it possible to produce P without using nor creating Q? EF(Q U s)• Can the cell reach a state s without violating some constraints c? init EF(cUs)
François Fages ICLP December 2003
Biological Queries (2/3)
About stability:
• Is a certain (partially described) state s a stable state? sAG(s) sAG(s) (s denotes both the state and the formula describing it).
• Is s a steady state (with possibility of escaping) ? sEG(s)
• Can the cell reach a stable state? initEF(AG(s))not a LTL formula.
• Must the cell reach a stable state? initAF(AG(s))
• What are the stable states? Not expressible in CTL [Chan 00].
• Can the system exhibit a cyclic behavior w.r.t. the presence of P ? init EG((P EF P) ^ (P EF P))
François Fages ICLP December 2003
Biological Queries (3/3)
About the correctness of the model:
• Can one see the inaccuracies of the model and correct them?
Exhibit a counterexample pathway or a witness. Suggest refinements of the model or biological experiments to validate/invalidate the property of the model.
About durations:
• How long does it take for a molecule to become activated?
• In a given time, how many Cyclins A can be accumulated?
• What is the duration of a given cell cycle’s phase?
CTL operators abstract from durations. Time intervals can be modeled in FO by adding numerical arguments for start times and durations.
François Fages ICLP December 2003
Cell to Cell Signaling by Hormones and Receptors
Receptor Tyrosine Kinase RTKRAF + RAFK -> RAF-RAFK
RAFp + RAFPH -> RAFp-RAFPH
MEKp + RAFp -> MEKp-RAFp
…
RAF-RAFK -> RAF + RAFK.
RAFp-RAFPH -> RAFp + RAFPH.
MEKp-RAFp -> MEKp + RAFp.
…
RAF-RAFK -> RAFK + RAFp.
RAFp-RAFPH -> RAF + RAFPH.
MEKp-RAFp -> MEKpp + RAFp.
…
François Fages ICLP December 2003
Cell to Cell Signaling by Hormones and Receptors
Receptor Tyrosine Kinase RTKRAF + RAFK -> RAF-RAFK
RAFp + RAFPH -> RAFp-RAFPH
MEKp + RAFp -> MEKp-RAFp
…
RAF-RAFK -> RAF + RAFK.
RAFp-RAFPH -> RAFp + RAFPH.
MEKp-RAFp -> MEKp + RAFp.
…
RAF-RAFK -> RAFK + RAFp.
RAFp-RAFPH -> RAF + RAFPH.
MEKp-RAFp -> MEKpp + RAFp.
…
MEKp is a checkpoint for the cascade (producing MAPKpp)
?- nusmv(!(E(!(MEKp) U MAPKpp))).
true
The PH complexes are only here to "slow down" the cascade
?- nusmv(E(!(MEKp-MEKPH) U MAPKpp)).
true
François Fages ICLP December 2003
Cell Cycle: G1 DNA Synthesis G2 Mitosis
G1: CdK4-CycD
Cdk6-CycD
Cdk2-CycE
S: Cdk2-CycA
G2
M: Cdk1-CycA
Cdk1-CycB
François Fages ICLP December 2003
Mammalian Cell Cycle Control Benchmark
700 rules, 165 proteins and genes, 500 variables, 2500 states.
BIOCHAM NuSMV model-checker time in seconds:
Initial state G2 Query: Time:
compiling 29
Reachability G1 EF CycE 2
Reachability G1 EF CycD 1.9
Reachability G1 EF PCNA-CycD 1.7
Checkpoint
for mitosis complex
EF ( Cdc25~{Nterm}
U Cdk1~{Thr161}-CycB)
2.2
Cycle EG ( (CycA EF CycA) ( CycA EF CycA))
31.8
François Fages ICLP December 2003
Plan of the talk
1. Introduction
2. A simple algebra of cell molecules
3. Concurrent transition systems of biochemical reactions
• Example of the mammalian cell cycle control4. Temporal logic CTL as a query language
• Computational results with BIOCHAM5. Learning models
• An experiment with inductive logic programming6. Quantitative models
• Simulation with differential equations• Constraint-based model checking
7. Conclusion
François Fages ICLP December 2003
5. Learning Models
Basic idea: learn reaction rules from temporal properties of the system.
Learning of yeast cell cycle rules from reachability properties and counterexamples with Progol [Muggleton 00].
reaction([m_CP,m_Y],[m_pM]).
reaction([m_CP],[m_C2]).
% reaction([m_pM],[m_M]).
reaction([m_M],[m_C2,m_YP]).
reaction([m_C2],[m_CP]).
reaction([m_YP],[]).
reaction([],[m_Y]).
pathway(S1,S2) :- same(S1,S2).
pathway(S1,S2) :- reaction(L1,L2), transition(S1,L1,S3,L2), pathway(S3,S2).
François Fages ICLP December 2003
Inductive Logic Programming
reaction([m_pM],[m_M]) learned…
6th PCRD APRIL 2 “Applications of Probabilistic Inductive Logic Progr.” Luc de Raedt, Univ. Freiburg, Stephen Muggleton, Univ. London.
pathway([m_CP,m_Y],[m_M]).
pathway([m_CP,m_Y],[m_M,m_pM]).
pathway([m_CP,m_Y],[m_M,m_Y]).
pathway([m_CP,m_Y],[m_M,m_Y,m_pM]).
pathway([m_CP,m_Y],[m_M,m_CP]).
pathway([m_CP,m_Y],[m_M,m_CP,m_Y]).
pathway([m_CP,m_Y],[m_M,m_CP,m_pM]).
pathway([m_CP,m_Y],[m_M,m_CP,m_Y,m_pM]).
pathway([m_pM],[m_C2,m_YP]).
pathway([m_pM],[m_M,m_C2,m_YP]).
pathway([m_pM],[m_pM,m_C2,m_YP]).
pathway([m_pM],[m_M,m_pM,m_C2,m_YP]).
:-pathway([],[m_C2]).
:-pathway([],[m_CP]).
:-pathway([],[m_C2,m_CP]).
:-pathway([],[m_M]).
:-pathway([],[m_YP]).
:-pathway([],[m_YP, m_Y]).
:-pathway([],[m_Y,m_pM]).
:-pathway([],[m_CP,m_pM]).
:-pathway([],[m_Y,m_M]).
:-pathway([m_CP, m_C2],[m_YP]).
:-pathway([m_CP],[m_YP]).
:-pathway([m_C2],[m_YP]).
:-pathway([m_Y],[]).
François Fages ICLP December 2003
Plan of the talk
1. Introduction
2. A simple algebra of cell molecules
3. Concurrent transition systems of biochemical reactions
• Example of the mammalian cell cycle control4. Temporal logic CTL as a query language
• Computational results with BIOCHAM5. Learning models
• An experiment with inductive logic programming6. Quantitative models
• Simulation with differential equations• Constraint-based model checking
7. Conclusion
François Fages ICLP December 2003
6. Quantitative Models
Enzymatic reactions with rates k1 k2 k3
E+S k1 C k2 E+P
E+S k3 C
can be compiled by the law of mass action into a system of
Ordinary Differential Equations
dE/dt = -k1ES+(k2+k3)C
dS/dt = -k1ES+k3C
dC/dt = k1ES-(k2+k3)C
dP/dt = k2C
François Fages ICLP December 2003
Circadian Cycle Model
C' = -(k1*C)-k4*C-kdC*C +k2*CN+k3*P2*T2
CN' = k1*C-k2*CN-kdN*CN
MP' = (KIP^n*nusP)/(KIP^n+CN^n)
-kd* MP-(numP*MP)/(KmP+MP)
MT' = (KIT^n*nusT)/(KIT^n+CN^n)
-MT[ t]*(kd+numT/(KmT+MT))
P0' = ksP*MP-kd*P0-(V1P*P0)/( K1P+P0)
+(V2P*P1)/(K2P+P1)
P1' = (V1P*P0)/(K1P+P0)-kd*P1 -(V2P*P1)/(K2P+P1)
-(V3P*P1)/( K3P+P1)+(V4P*P2)/(K4P+P2)
P2' = k4*C+(V3P*P1)/(K3P+P1) -kd*P2-(V4P*P2)/(K4P+P2)
-(nudP*P2)/(KdP+P2)-k3*P2*T2
T0' = ksT*MT-kd*T0-(V1T*T0)/( K1T+T0)+(V2T*T1)/(K2T+T1)
T1' = (V1T*T0)/(K1T+T0)-kd*T1 -(V2T*T1)/(K2T+T1)-(V3T*T1)/( K3T+T1)+(V4T*T2)/(K4T+T2)
T2' = k4*C+(V3T*T1)/(K3T+T1) -k3*P2*T2-(V4T*T2)/(K4T+T2) -T2*(kd+nudT/(KdT+T2))
François Fages ICLP December 2003
Gene Interaction Networks
Gene interaction example [Bockmayr-Courtois 01]
Hybrid Concurrent Constraint Programming HCC [Saraswat et al.]
2 genes x and y.
dx/dt = 0.01 – 0.02*x if y < 0.8
dx/dt = – 0.02*x if y ≥ 0.8
dy/dt = 0.01*x
François Fages ICLP December 2003
Concurrent Transition System
Time discretized using Euler’s method (Runge-Kutta method in HCC):
y < 0.8 x’ = x + dt*(0.01-0.02*x) , y’ = y + dt*0.01*x
y ≥ 0.8 x’ = x + dt*(0.01-0.02*x) , y’ = y + dt*0.01*x
Initial condition: x=0, y=0.
CLP(R) programInit :- X=0, Y=0, p(X,Y).
p(X,Y):-X>=0, Y>=0, Y<0.8,
X1=X-0.02*X+0.01, Y1=Y+0.01*X, p(X1,Y1).
p(X,Y):-X>=0, Y>=0, Y>=0.8,
X1=X-0.02*X, Y1=Y+0.01*X, p(X1,Y1).
François Fages ICLP December 2003
Proving CTL properties by computing fixpoints of CLP programs
Theorem [Delzanno Podelski 99]
EF()=lfp(TP{p(x):-),
EG()=gfp(TP).
Safety property AG() iff EF() iff initlfp(TP{)
Liveness property AG(1AF(2)) iff initlfp(TPgfp(TP{)
Prolog-based implementation in CLP(R,B) [Delzanno 00]
Applications to life in silico:
Proof of protocols, cache consistency, etc. [Delzanno 01]
François Fages ICLP December 2003
Deductive Model Checker DMC: Gene Interaction
r(init, p(s_s,A,B), {A=0,B=0}).r(p(s_s,A,B), p(s_s,C,D), {A>=0,B>=0.8,C=A-
0.02*A,D=B+0.01*A}).r(p(s_s,A,B), p(s_s,C,D), {A>=0,B>=0,B<0.8, C=A-0.02*A+0.01,D=B+0.01*A}).| ?- prop(P,S).P = unsafe, S = p:s*(x>=0.6) | ?- ti.Property satisfied. Execution time 0.0 | ?- ls.s(0, p(s_s,A,_), {A>=0.6}, 1, (0,0)).
François Fages ICLP December 2003
Demonstration DMC (continued)
| ?- prop(P,S).P = unsafe, S = p:s*(x>=0.2) ?| ?- ti. Property NOT satisfied. Execution time 1.5| ?- ls.s(0, p(s_s,A,_), {A>=0.2}, 1, (0,0)).s(1, p(s_s,A,B), {B<0.8,B>=-0.0,A>=0.19387755102040816}, 2,
(2,1)).…s(26, p(s_s,A,B), {B>=0.0,A>=0.0, B+0.1982676351105516*A<0.7741338175552753}, 27,
(2,26)). s(27, init, {}, 28, (1,27)).
François Fages ICLP December 2003
7. Conclusion
The great ambition of logic programming is to make of programming a modeling task in the first place, with equations, constraints and logical formulae.
In this respect, computational molecular biology offers numerous challenges to the logic programming community at large.
Besides combinatorial search and optimization problems coming from molecular biology (DNA and protein sequence comparison, protein structure prediction,…) there is a need to model globally the system at hand and automate reasoning on all its possible behaviors.
François Fages ICLP December 2003
Conclusion
The biochemical abstract machine BIOCHAM project aims at developing:
Qualitative models of complex biochemical processes:• Intracellular and extracellular signaling, cell-cycle control,…
[http://contraintes.inria.fr/CMBSlib]
• Prolog-based implementation + BDD symbolic model-checking • ILP-based learning of models from temporal properties [6thPCRD APRIL 2]
Membranes and transportation not modeledBitonal algebras [Cardelli et al. 03] BioAmbients, Brane calculi [Cardelli et al. 03]
François Fages ICLP December 2003
Perspectives for LP
Quantitative models:
• Differential equations
• Hybrid discrete-continuous time models• Hybrid concurrent constraint programming [Bockmayr-Courtois-Eveillard 03]
• CLP-based model-checking [Delzanno-Podelski 99] [Chabrier-Fages 03]
Multi-scale molecular-electro-physiological models [Sorine et al. 03]
http://www-rocq.inria.fr/sosso/icema2
http://www.sci.sdsu.edu/movies