SlideShare a Scribd company logo
1 of 59
Download to read offline
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Modelling chemical kinetics
Nicolas Le Novère, The Babraham Institute
n.lenovere@gmail.com
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Systems Biology models  ODE models
→ Reconstruction of state variable evolution
from process descriptions:
 Processes can be combined in ODEs (for deterministic simulations);
transformed in propensities (for stochastic simulations)
 Systems can be reconfiured quickly by addini or removini a process
A
B
P
Q
R
a
b
p
q
substances
A and B
are
consumed
by
reaction R that
produces
substances
P and Q
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
ATP is consumed by processes 1 and 3, and produced by processes 7 and 10
(for 1 reactions 1 and 3, there are 2 reactions 7 and 10)
1 2 3 4
5
6
7
8
9
10
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Chemical kinetics and fuxes
S1
S2
E
P
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Statistical physics and chemical reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Statistical physics and chemical reaction
Probability to find an
object in a container
within an interval of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Statistical physics and chemical reaction
Probability to find an
object in a container
within an interval of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Law of Mass Action
Waaie and Guldberi (1864)
rate-constant
velocity
stoichiometry
activity
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Law of Mass Action
Waaie and Guldberi (1864)
activity
rate-constant
velocity
stoichiometry
ias
solution
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Evolution of a reactant
 Velocity multiplied by stoichiometry
 neiative if consumption, positive if production
 Example of a unimolecular reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Evolution of a reactant
 Velocity multiplied by stoichiometry
 neiative if consumption, positive if production
 Example of a unimolecular reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Evolution of a reactant
 Velocity multiplied by stoichiometry
 neiative if consumption, positive if production
 Example of a unimolecular reaction
[x]0
[x]0
/e
t
k
1/
ln k
2/
[x]0
/2
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Reversible reaction
is equivalent to
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Reversible reaction
is equivalent to
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Conformational equilibrium
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Binding equilibrium
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
How does a ligand activate its target?
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
How does a ligand activate its target?
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
How does a ligand activate its target?
hint: K1
>1
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Add energies
Multiply constants
+1 quantum energy = constant divided by 10
Explore constants exponentially:
Parameter space
-2.3 -4.6 -6.9 -9.2 -11.5 -13.8 -16.1
...
10-1
10-2
10-3
10-4
10-5
10-6
10-7
0.1
0.2
0.3
0.4
0.5
0.6
0.7
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Example of an enzymatic reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Example of an enzymatic reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Example of an enzymatic reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
t
[x]
Not feasible in ieneral
Numerical inteiration
Example of an enzymatic reaction
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Euler method:
Numerical integration
t
[x]
Dt
t
[x]
[x]t+Dt
– [x]t
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Euler method:
Numerical integration
t
[x]
Dt
t
[x]
[x]t+Dt
– [x]t
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Euler method:
Numerical integration
t
[x]
Dt
t
[x]
[x]t+Dt
– [x]t
t
[x]
Dt
4th
order Runie-Kutta:
with
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Choose the right formalism
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Choose the right formalism
irreversible catalysis
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Choose the right formalism
irreversible catalysis
product escapes before rebindini
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Choose the right formalism
irreversible catalysis
product escapes before rebindini
quasi-steady-state
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Enzyme kinetics
Leonor Michaelis, Maud Menten (1913).
Die Kinetik der Invertinwirkuni,
Biochem. Z. 49:333-369
Victor Henri (1903)
Lois Générales de l'Action des Diastases.
Paris, Hermann.
Georie Edward Briiis, John Burdon Sanderson
Haldane (1925)
A note on the kinetics of enzyme action,
Biochem. J., 19: 338-339
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Briggs-Haldane on Henri-Michaelis-Menten
[E]=[E0
]-[ES]
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Briggs-Haldane on Henri-Michaelis-Menten
[E]=[E0
]-[ES]
steady-state!!!
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Generalisation: activators
x y
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Generalisation: activators
a
x y
x y
(NB: You can derive that as the fraction
of target bound to the activator)
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Phenomenological ultrasensitivity
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Hill (1910) J Physiol 40: iv-vii.
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Hill (1910) J Physiol 40: iv-vii.
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Generalisation: inhibitors
x y
i
x y
(NB: You can derive that as the fraction
of target not bound to the inhibitor)
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Mathematics are beautiful
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Generalisation: activators and inhibitors
log [a]
log [i]
x y
a
x y
i
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
absolute Vs relative activators
a
x y
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
absolute Vs relative activators
a
x y
a
x y
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
Ø Ø
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
Ø Ø
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
Ø Ø
[x]
time
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
Ø Ø
[x]
time
0
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
Ø Ø
[x]
time
0
1
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Homeostasis
How can-we maintain
a stable level with a
dynamic system?
[x]
time
0
1
Ø Ø
x
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
1 compartment
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments
A B
Per unit of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments … with diferent volumes
A
B
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments … with diferent volumes
A
B
Per unit of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments … with diferent volumes
A
B
Per unit of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments … with diferent volumes
A
B
Per unit of time
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
2 compartments … with diferent volumes
A
B
Per unit of time
Kinetic constants must
be scaled with volumes:
Bioinformatics for the neuroscientist, 28 September 2015
In Silico Systems Biology, EMBL-EBI, 03-08 June 2018
Questions?

More Related Content

Similar to Introduction to chemical kinetics - WT/EBI course systems biology 2018

All about Biosensors- A Review
All about Biosensors- A ReviewAll about Biosensors- A Review
All about Biosensors- A ReviewIRJET Journal
 
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...Development of Predictor for Sequence Derived Features From Amino Acid Sequen...
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...CSCJournals
 
systems biology- Representation of chemical reaction networks
 systems biology- Representation of chemical reaction networks systems biology- Representation of chemical reaction networks
systems biology- Representation of chemical reaction networksShubham Kaushik
 
A CNT-based artificial nose for food spoilage detection
A CNT-based artificial nose for food spoilage detectionA CNT-based artificial nose for food spoilage detection
A CNT-based artificial nose for food spoilage detectionIRJET Journal
 
Towards Non-invasive Labour Detection: A Free- Living Evaluation
Towards Non-invasive Labour Detection: A Free- Living EvaluationTowards Non-invasive Labour Detection: A Free- Living Evaluation
Towards Non-invasive Labour Detection: A Free- Living EvaluationMarco Altini
 
8 metabolism, cell respiration & photosynthesis syllabus statements
8 metabolism, cell respiration & photosynthesis syllabus statements8 metabolism, cell respiration & photosynthesis syllabus statements
8 metabolism, cell respiration & photosynthesis syllabus statementscartlidge
 
Group meeting in Manchester.
Group meeting in Manchester.Group meeting in Manchester.
Group meeting in Manchester.Martin Scharm
 
CINF 170: Regioselectivity: An application of expert systems and ontologies t...
CINF 170: Regioselectivity: An application of expert systems and ontologies t...CINF 170: Regioselectivity: An application of expert systems and ontologies t...
CINF 170: Regioselectivity: An application of expert systems and ontologies t...NextMove Software
 
Esfast services presentation
Esfast services presentationEsfast services presentation
Esfast services presentationEuroscreenFast
 
Protein identification and analysis on ExPASy server
Protein identification and analysis on ExPASy serverProtein identification and analysis on ExPASy server
Protein identification and analysis on ExPASy serverEkta Gupta
 
Cytell Cell Imaging System
Cytell Cell Imaging SystemCytell Cell Imaging System
Cytell Cell Imaging SystemGary Sarkis
 
IRJET - IoT based Steroid Measurement in Milk Products
IRJET - IoT based Steroid Measurement in Milk ProductsIRJET - IoT based Steroid Measurement in Milk Products
IRJET - IoT based Steroid Measurement in Milk ProductsIRJET Journal
 
Pairwise Learning for Synthetic Biology
Pairwise Learning for Synthetic BiologyPairwise Learning for Synthetic Biology
Pairwise Learning for Synthetic BiologyMichiel Stock
 
Training report on Industrial Biotechnology
Training report on Industrial BiotechnologyTraining report on Industrial Biotechnology
Training report on Industrial BiotechnologySHRADHEYA GUPTA
 
Systems biotechnology
Systems biotechnologySystems biotechnology
Systems biotechnologymiguel
 

Similar to Introduction to chemical kinetics - WT/EBI course systems biology 2018 (20)

All about Biosensors- A Review
All about Biosensors- A ReviewAll about Biosensors- A Review
All about Biosensors- A Review
 
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...Development of Predictor for Sequence Derived Features From Amino Acid Sequen...
Development of Predictor for Sequence Derived Features From Amino Acid Sequen...
 
systems biology- Representation of chemical reaction networks
 systems biology- Representation of chemical reaction networks systems biology- Representation of chemical reaction networks
systems biology- Representation of chemical reaction networks
 
A CNT-based artificial nose for food spoilage detection
A CNT-based artificial nose for food spoilage detectionA CNT-based artificial nose for food spoilage detection
A CNT-based artificial nose for food spoilage detection
 
Towards Non-invasive Labour Detection: A Free- Living Evaluation
Towards Non-invasive Labour Detection: A Free- Living EvaluationTowards Non-invasive Labour Detection: A Free- Living Evaluation
Towards Non-invasive Labour Detection: A Free- Living Evaluation
 
8 metabolism, cell respiration & photosynthesis syllabus statements
8 metabolism, cell respiration & photosynthesis syllabus statements8 metabolism, cell respiration & photosynthesis syllabus statements
8 metabolism, cell respiration & photosynthesis syllabus statements
 
culture cellular
culture cellularculture cellular
culture cellular
 
Group meeting in Manchester.
Group meeting in Manchester.Group meeting in Manchester.
Group meeting in Manchester.
 
CINF 170: Regioselectivity: An application of expert systems and ontologies t...
CINF 170: Regioselectivity: An application of expert systems and ontologies t...CINF 170: Regioselectivity: An application of expert systems and ontologies t...
CINF 170: Regioselectivity: An application of expert systems and ontologies t...
 
NSA2
NSA2NSA2
NSA2
 
Esfast services presentation
Esfast services presentationEsfast services presentation
Esfast services presentation
 
Protein identification and analysis on ExPASy server
Protein identification and analysis on ExPASy serverProtein identification and analysis on ExPASy server
Protein identification and analysis on ExPASy server
 
Cytell Cell Imaging System
Cytell Cell Imaging SystemCytell Cell Imaging System
Cytell Cell Imaging System
 
IRJET - IoT based Steroid Measurement in Milk Products
IRJET - IoT based Steroid Measurement in Milk ProductsIRJET - IoT based Steroid Measurement in Milk Products
IRJET - IoT based Steroid Measurement in Milk Products
 
Tesis Grl 2011
Tesis Grl 2011Tesis Grl 2011
Tesis Grl 2011
 
Pairwise Learning for Synthetic Biology
Pairwise Learning for Synthetic BiologyPairwise Learning for Synthetic Biology
Pairwise Learning for Synthetic Biology
 
Training report on Industrial Biotechnology
Training report on Industrial BiotechnologyTraining report on Industrial Biotechnology
Training report on Industrial Biotechnology
 
13197.full.pdf
13197.full.pdf13197.full.pdf
13197.full.pdf
 
Systems biotechnology
Systems biotechnologySystems biotechnology
Systems biotechnology
 
Càlcul i anàlisi de dades massiu per al disseny d'enzims amb aplicacions a la...
Càlcul i anàlisi de dades massiu per al disseny d'enzims amb aplicacions a la...Càlcul i anàlisi de dades massiu per al disseny d'enzims amb aplicacions a la...
Càlcul i anàlisi de dades massiu per al disseny d'enzims amb aplicacions a la...
 

More from Nicolas Le Novère

Lecture at Reading University 2015
Lecture at Reading University 2015Lecture at Reading University 2015
Lecture at Reading University 2015Nicolas Le Novère
 
Neuroinformatics conference 2012
Neuroinformatics conference 2012Neuroinformatics conference 2012
Neuroinformatics conference 2012Nicolas Le Novère
 
Science Europe Workshop - career pathways in multidisciplinary research
Science Europe Workshop - career pathways in multidisciplinary researchScience Europe Workshop - career pathways in multidisciplinary research
Science Europe Workshop - career pathways in multidisciplinary researchNicolas Le Novère
 
Gordon Conference on Drug Safety 2018
Gordon Conference on Drug Safety 2018Gordon Conference on Drug Safety 2018
Gordon Conference on Drug Safety 2018Nicolas Le Novère
 
AgedBrainSYSBIO symposium 2016
AgedBrainSYSBIO symposium 2016AgedBrainSYSBIO symposium 2016
AgedBrainSYSBIO symposium 2016Nicolas Le Novère
 

More from Nicolas Le Novère (10)

EBI industry program 2018
EBI industry program 2018EBI industry program 2018
EBI industry program 2018
 
Epigenetics ISP meeting 2018
Epigenetics ISP meeting 2018Epigenetics ISP meeting 2018
Epigenetics ISP meeting 2018
 
Lecture at Reading University 2015
Lecture at Reading University 2015Lecture at Reading University 2015
Lecture at Reading University 2015
 
Lecture at the C3BI 2018
Lecture at the C3BI 2018Lecture at the C3BI 2018
Lecture at the C3BI 2018
 
Lecture at the LCSB 2017
Lecture at the LCSB 2017Lecture at the LCSB 2017
Lecture at the LCSB 2017
 
Neuroinformatics conference 2012
Neuroinformatics conference 2012Neuroinformatics conference 2012
Neuroinformatics conference 2012
 
Science Europe Workshop - career pathways in multidisciplinary research
Science Europe Workshop - career pathways in multidisciplinary researchScience Europe Workshop - career pathways in multidisciplinary research
Science Europe Workshop - career pathways in multidisciplinary research
 
Keynote ICSB 2014
Keynote ICSB 2014Keynote ICSB 2014
Keynote ICSB 2014
 
Gordon Conference on Drug Safety 2018
Gordon Conference on Drug Safety 2018Gordon Conference on Drug Safety 2018
Gordon Conference on Drug Safety 2018
 
AgedBrainSYSBIO symposium 2016
AgedBrainSYSBIO symposium 2016AgedBrainSYSBIO symposium 2016
AgedBrainSYSBIO symposium 2016
 

Recently uploaded

FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryAlex Henderson
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptxSilpa
 
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptxClimate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptxDiariAli
 
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...Silpa
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxSuji236384
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsOrtegaSyrineMay
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfSumit Kumar yadav
 
Stages in the normal growth curve
Stages in the normal growth curveStages in the normal growth curve
Stages in the normal growth curveAreesha Ahmad
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and ClassificationsAreesha Ahmad
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bSérgio Sacani
 
Conjugation, transduction and transformation
Conjugation, transduction and transformationConjugation, transduction and transformation
Conjugation, transduction and transformationAreesha Ahmad
 
GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)Areesha Ahmad
 
GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)Areesha Ahmad
 
Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspectsmuralinath2
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY1301aanya
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Silpa
 
Use of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxUse of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxRenuJangid3
 
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...Scintica Instrumentation
 

Recently uploaded (20)

FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
 
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptxClimate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
Climate Change Impacts on Terrestrial and Aquatic Ecosystems.pptx
 
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...
Locating and isolating a gene, FISH, GISH, Chromosome walking and jumping, te...
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its Functions
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdf
 
Stages in the normal growth curve
Stages in the normal growth curveStages in the normal growth curve
Stages in the normal growth curve
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and Classifications
 
Clean In Place(CIP).pptx .
Clean In Place(CIP).pptx                 .Clean In Place(CIP).pptx                 .
Clean In Place(CIP).pptx .
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
 
Conjugation, transduction and transformation
Conjugation, transduction and transformationConjugation, transduction and transformation
Conjugation, transduction and transformation
 
GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)
 
GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)
 
Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspects
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.
 
Use of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxUse of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptx
 
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...
(May 9, 2024) Enhanced Ultrafast Vector Flow Imaging (VFI) Using Multi-Angle ...
 
Site Acceptance Test .
Site Acceptance Test                    .Site Acceptance Test                    .
Site Acceptance Test .
 

Introduction to chemical kinetics - WT/EBI course systems biology 2018

  • 1. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Modelling chemical kinetics Nicolas Le Novère, The Babraham Institute n.lenovere@gmail.com
  • 2. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Systems Biology models  ODE models → Reconstruction of state variable evolution from process descriptions:  Processes can be combined in ODEs (for deterministic simulations); transformed in propensities (for stochastic simulations)  Systems can be reconfiured quickly by addini or removini a process A B P Q R a b p q substances A and B are consumed by reaction R that produces substances P and Q
  • 3. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 ATP is consumed by processes 1 and 3, and produced by processes 7 and 10 (for 1 reactions 1 and 3, there are 2 reactions 7 and 10) 1 2 3 4 5 6 7 8 9 10
  • 4. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Chemical kinetics and fuxes S1 S2 E P
  • 5. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Statistical physics and chemical reaction
  • 6. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Statistical physics and chemical reaction Probability to find an object in a container within an interval of time
  • 7. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Statistical physics and chemical reaction Probability to find an object in a container within an interval of time
  • 8. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Law of Mass Action Waaie and Guldberi (1864) rate-constant velocity stoichiometry activity
  • 9. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Law of Mass Action Waaie and Guldberi (1864) activity rate-constant velocity stoichiometry ias solution
  • 10. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Evolution of a reactant  Velocity multiplied by stoichiometry  neiative if consumption, positive if production  Example of a unimolecular reaction
  • 11. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Evolution of a reactant  Velocity multiplied by stoichiometry  neiative if consumption, positive if production  Example of a unimolecular reaction
  • 12. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Evolution of a reactant  Velocity multiplied by stoichiometry  neiative if consumption, positive if production  Example of a unimolecular reaction [x]0 [x]0 /e t k 1/ ln k 2/ [x]0 /2
  • 13. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Reversible reaction is equivalent to
  • 14. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Reversible reaction is equivalent to
  • 15. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Conformational equilibrium
  • 16. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Binding equilibrium
  • 17. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 How does a ligand activate its target?
  • 18. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 How does a ligand activate its target?
  • 19. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 How does a ligand activate its target? hint: K1 >1
  • 20. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Add energies Multiply constants +1 quantum energy = constant divided by 10 Explore constants exponentially: Parameter space -2.3 -4.6 -6.9 -9.2 -11.5 -13.8 -16.1 ... 10-1 10-2 10-3 10-4 10-5 10-6 10-7 0.1 0.2 0.3 0.4 0.5 0.6 0.7
  • 21. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Example of an enzymatic reaction
  • 22. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Example of an enzymatic reaction
  • 23. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Example of an enzymatic reaction
  • 24. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 t [x] Not feasible in ieneral Numerical inteiration Example of an enzymatic reaction
  • 25. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Euler method: Numerical integration t [x] Dt t [x] [x]t+Dt – [x]t
  • 26. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Euler method: Numerical integration t [x] Dt t [x] [x]t+Dt – [x]t
  • 27. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Euler method: Numerical integration t [x] Dt t [x] [x]t+Dt – [x]t t [x] Dt 4th order Runie-Kutta: with
  • 28. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Choose the right formalism
  • 29. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Choose the right formalism irreversible catalysis
  • 30. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Choose the right formalism irreversible catalysis product escapes before rebindini
  • 31. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Choose the right formalism irreversible catalysis product escapes before rebindini quasi-steady-state
  • 32. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Enzyme kinetics Leonor Michaelis, Maud Menten (1913). Die Kinetik der Invertinwirkuni, Biochem. Z. 49:333-369 Victor Henri (1903) Lois Générales de l'Action des Diastases. Paris, Hermann. Georie Edward Briiis, John Burdon Sanderson Haldane (1925) A note on the kinetics of enzyme action, Biochem. J., 19: 338-339
  • 33. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Briggs-Haldane on Henri-Michaelis-Menten [E]=[E0 ]-[ES]
  • 34. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Briggs-Haldane on Henri-Michaelis-Menten [E]=[E0 ]-[ES] steady-state!!!
  • 35. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Generalisation: activators x y
  • 36. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Generalisation: activators a x y x y (NB: You can derive that as the fraction of target bound to the activator)
  • 37. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Phenomenological ultrasensitivity
  • 38. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Hill (1910) J Physiol 40: iv-vii.
  • 39. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Hill (1910) J Physiol 40: iv-vii.
  • 40. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Generalisation: inhibitors x y i x y (NB: You can derive that as the fraction of target not bound to the inhibitor)
  • 41. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Mathematics are beautiful
  • 42. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Generalisation: activators and inhibitors log [a] log [i] x y a x y i
  • 43. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 absolute Vs relative activators a x y
  • 44. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 absolute Vs relative activators a x y a x y
  • 45. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? Ø Ø x
  • 46. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? Ø Ø x
  • 47. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? Ø Ø [x] time x
  • 48. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? Ø Ø [x] time 0 x
  • 49. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? Ø Ø [x] time 0 1 x
  • 50. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Homeostasis How can-we maintain a stable level with a dynamic system? [x] time 0 1 Ø Ø x
  • 51. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 1 compartment
  • 52. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments
  • 53. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments A B Per unit of time
  • 54. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments … with diferent volumes A B
  • 55. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments … with diferent volumes A B Per unit of time
  • 56. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments … with diferent volumes A B Per unit of time
  • 57. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments … with diferent volumes A B Per unit of time
  • 58. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 2 compartments … with diferent volumes A B Per unit of time Kinetic constants must be scaled with volumes:
  • 59. Bioinformatics for the neuroscientist, 28 September 2015 In Silico Systems Biology, EMBL-EBI, 03-08 June 2018 Questions?