Title: Systems Biology of Ageing
1Systems Biology of Ageing
- Jennifer Hallinan
- Centre for Integrated Systems Biology of
- Ageing and Nutrition
- (CISBAN)
- Newcastle University, UK
2CISBAN
3Newcastle University Campus for Ageing and
Vitality
- NIHR Biomedical Research Centre
- Clinical Ageing Research Unit
- Wolfson Research Centre
- Wellcome Biogerontology Building
- Magnetic Resonance/PET Imaging Centre
- Centre for Systems Biology of Ageing and
Nutrition - MRC Centre for Brain Ageing and Vitality
- NHS Centre for the Health of the Elderly
- Assistive Technology
4Why do we age?
5Continuing increase in life expectancy
Life expectancy is increasing by 5 hours a day
6Scientific understanding of ageing
- Ageing is caused not by active gene programming
but by evolved limitations in somatic maintenance -
- Animals in nature die young
- No need or opportunity to evolve a program
- Programmed ageing, if it existed, would be
unstable - Immortal mutants do not arise
-
Protected
Survival
Wild
Age
7Scientific understanding of ageing
- Ageing is a results of a build-up of cellular
damage - Complex network of mechanisms contributing to
cellular ageing - Telomere erosion
- Oxidative stress
- Mitochondrial dysfunction
- Protein homeostasis
- Multiple, complex and inherently stochastic
8Scientific understanding of ageing
- To understand the cell and molecular basis of
ageing is to unravel the multiplicity of
mechanisms causing damage to accumulate and the
complex array of systems working to keep damage
at bay - Ageing is intrinsically malleable, with important
effects being mediated by nutrition - Kirkwood, Cell 2005
9Model systems for ageing research
- Homo sapiens Mechanisms contributing to cellular
ageing in vitro (fibroblasts) - Mus musculus How cell defects contribute to
ageing in vivo - Saccharomyces cerevisiae A model for high
throughput screening of genes involved in damage
responses, and their susceptibility to nutrition
10Telomere length homeostasis relevant to ageing
and conserved across species
Telomerase
Telomere binding
H. sapiens
S. cerevisiae
11In-vitro methodologies
expression arrays ITRAQ proteomics
live cell imaging
Passos et al., Science, submitted Nelson et al.
in prep
Passos et al. PLoS Biol 2007 Ahmed et al. J Cell
Sci 2008
12Intrinsic ageing of mammalian cells
- e.g. Human fibroblasts in vitro
- Pathways and networks
- Heterogeneity
- Genomic and proteomic analyses
- Functional assays and targeted interventions
- Contribution to in vivo ageing
13Senescent cell (human fibroblast)
- DNA damage foci
- Telomeres
- Overlap of damage foci with telomeres
- Mitochondria with high membrane potential (good)
- Mitochondria with low membrane potential (bad)
14In vivo program
- Ageing mice colony
- Enriched environments
- In-vivo program work
- Caloric restriction
- Proteomics
- Transcriptomics
15 Yeast studies on telomere length homeostasis
- Genome-wide transcriptomic response to telomere
uncapping in cdc13-1 mutants - Genome-wide screen for proteins that affect
growth of telomere capping mutants
- High-Throughput Robots
- Inoculate colony to liquid
- Grow to saturation
- Serially dilute
- Spot onto solid media
- Let colonies grow
- Photograph
- Identify and analyse interesting genetic
interactions
16Yeast studies on telomere length homeostasis
Image Captured
Lighting Corrected
Spots Located
Growth Quantified
ROD database
Epistasis Quantified
Growth Curves Generated
17CDC13 epistatic interactions
18Data integration and modelling is essential in
ageing research
- Multiple mechanisms a clear need for systems
integration - Multiple experimental models and human studies
- The big questions cannot be answered by a lot of
disconnected separate studies - The added-value of data co-ordination justifies
the effort required for data integration and
sharing
19Portal for Systems Biology of Ageinghttp//cisban
-silico.cs.ncl.ac.uk/index.html
20Towards a model of a virtual ageing cell
- Telomere loss and oxidative stress Proctor
Kirkwood Mech Ageing Dev 2001 - Mitochondrial mutation Kowald Kirkwood J Theor
Biol 2000 - Somatic mutation Kirkwood Proctor Mech Ageing
Dev 2003 - Telomere capping Proctor Kirkwood Aging Cell
- Extrachromosomal DNA circles Gillespie et al J
Theor Biol, in press - Genetic pathways eg Sir2 gene action (in
progress) - Protein turnover Chaperones, heat shock proteins
(in progress) - Network models
- Mitochondrial mutation, oxidative stress, protein
turnover (Kowald Kirkwood Mutation Res 1996) - Somatic mutation, telomere loss, mitochondrial
mutation, oxidative stress (Sozou Kirkwood
JTheor Biol 2001)
21Biology of Ageing e-Science Integration
Simulation (BASIS)
- Systems Biology Mark-up Language (SBML) for
network representation - Extend, share, merge models
- Internet-based (web services), database
- Stochastic simulation (compute cluster)
- Further development of SBML, MIRIAM, BioModels
www.basis.ncl.ac.uk, Kirkwood et al Nat Rev Mol
Cell Biol 2003
22BASIS architecture
Basis architecture (hardware)
23CaliBayes
- New statistical technology for Bayesian model
calibration - CaliBayes Java API
- CaliBayes Web Services
- R packages
- SBML models
Calibration Results
www.calibayes.ncl.ac.uk/
24Data handlingSystems/Molecular Biology Data
Archive
25SyMBA Overview
- Based on the Functional Genomics Experiment
Object Model / Markup Language (FuGE-OM,
FuGE-ML)? - http//fuge.sourceforge.net
- Implements FuGE to create a systems biology data
portal, archive, and data integration tool - Archive of raw, High-Throughput (HT) data and
associated metadata - Useful as input in research into integrative
bioinformatics within the CISBAN in silico group - Open source available via SourceForge
- http//sourceforge.net/projects/symba/
26Semantic data integration to support modelling
SAINT
- Model annotation though data integration
- Ontology based
27SAINT Example CDC13
Lister et al., Bioinformatics, submitted
28Lightweight data integration using Probabilistic
Functional Interaction Networks
?
Gene fusion
?
29What can you do with them?
- Integrate large omics data sets
- Identify interactions which havent made it to
the literature - Automatically update
- Inform low-level modelling
- Identify other players in pathways
- Assign putative function to unknown genes
- Identify functional modules (clustering)
- Identify candidate genes
- Investigate lists of genes of interest
- Microarray
- Genetic screens
30Key Downregulated Upregulated Knockout Both
31Key Downregulated Upregulated Knockout Both
32Protein RIF2 (RAP1-interacting factor 2).
DNA-binding protein RAP1 (SBF-E)
(Repressor/activator site-binding protein) (TUF).
Casein kinase II subunit beta' (CK II beta').
Casein kinase II subunit alpha' (EC 2.7.11.1) (CK
II).
33Protein RIF2 (RAP1-interacting factor 2).
DNA-binding protein RAP1 (SBF-E)
(Repressor/activator site-binding protein) (TUF).
Cocitation, DIP
Casein kinase II subunit beta' (CK II beta').
Casein kinase II subunit alpha' (EC 2.7.11.1) (CK
II).
34Ageing relevant networks
35Clustering a relevant network
36ONDEX for the analysis of epistatic interactions
37A cross species, ageing relevant interactome
database CID
38A cytoscape plugin for CID
39A single direct pathway linking p21 to p38 MAPK
and TGFb
Passos et al., Science (submitted)
40Conclusions
- Ageing is a complex, multi-factorial process
- Systems approach combines
- Detailed in vitro and in vivo studies
- Annotation and archiving of large amounts of data
- Integration of data generated internally and
externally - Statistical and computational analysis
- Dynamic modelling
- Iterative process
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42Acknowledgements
- Tom Kirkwood
- Daryl Shanley
- Carole Proctor
- Conor Lawless
- Anil Wipat
- Allyson Lister
- Katherine James
- David Lydall
- Steven Addinall
- Amanda Greenall
- Thomas von Zglinicki
- Joao Passos
- Doug Turnbull
- et al!
43Both
Knockout
Downregulated
Upregulated
44Saccharomyces cerevisiae
45Calculate probabilities
Data integration
Eventually