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Computational Biology: 1. Beyond the spherical cow 2. Segmentation in silico Part 1 Computational Biology Beyond the spherical cow John Doyle Nature, 411, 151-152 (2001) For what? make sense of the huge amounts of data produced unravel how complex biochemical systems really work
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Computational Biology:1. Beyond the spherical cow2. Segmentation in silico
Part 1 Computational Biology Beyond the spherical cow John Doyle Nature, 411, 151-152 (2001)
For what? • make sense of the huge amounts of data produced • unravel how complex biochemical systems really work http://www.biology.arizona.edu/cell_bio/tutorials/cell_cycle/cells3.html
Enablers • Discovery science • Acceptance that biology is now a cross-disciplinary science • Maturation of the internet as a forum for collaborations
Enablers • Notion: Biology is an information-based rather than qualitative science • High-throughput platforms capable of capturing global sets of information quickly and affordably • Medical imaging systems
Goal “… the computational approaches discussed… were firmly focused on the dynamics and control of the networks of genes and proteins at work in cells.”
Developments • Gaining more access to technology • Mathematical modeling and computation • Design and implementation of synthetic gene networks
Considerations • Interaction between experiment and simulation • Fluctuations • Chemical dynamics • Mechanical dynamics • Interaction of chemical and mechanical dynamics
Applications • Cell division cycle • Virtual vs. Real mutated genes • Developmental principles http://www.biology.arizona.edu/cell_bio/tutorials/cell_cycle/cells2.html
Applications • More efficient route to drug discovery and development • integrated biological circuits • “wet” nano-robots • engineered oncolytic adenovirus
Example • Computer modeling of individual ion channels in cardiac cells • Pacemaker activity • Genetic defects underlying arrythmic heartbeats • Mechanical-electrical feedbacks • Regional patterns of expression
Example • Model for cell motility http://expmed.bwh.harvard.edu/projects/motility/motility.html
Example • Reaction-diffusion model http://www.math.vanderbilt.edu/~morton/cs395/roth/fig2.gif
Example • Dynamics of calcium ions http://www.compbiophysics.uni-hd.de/Signal_Transduction.html
Limitations • Biology needs more theory • Theory has a rather bad reputation among biologists
“It took Humpty Dumpty apart but left the challenge of putting him back together again” - John Doyle
References • Doyle, J. 2001. “Computational Biology: Beyond the spherical cow.” In Nature, 411:151-152. • Hasty, J., McMillen, D., and Collins, J. J. 2002. “Engineered gene circuits. “ In Nature, 420:224-230. • http://www.the-scientist.com/yr2003/feb/feature_030224.html • http://www.the-scientist.com/yr2003/feb/prof4_030224.html • http://www.the-scientist.com/yr2003/feb/feature2_030224.html • http://www.the-scientist.com/yr2003/feb/feature1_030224.html
Part 2:Segmentation in silico Peter Dearden and Michael Akam Nature 406, 131-132 (2000)
Protocol (Von Dassow,et.al.) Collection of data Key interactions Simplification Final model
Results frequency of ‘solutions’ allowed the model to generate correct pattern of segmentation
Conclusion “ It is the organization of the gene networks that provides stability, not the fine tuning of molecular interactions.”
Implications • Allows possibility to explore effects of variations in parameter values • Allows possibility of studying the effect of varying initial conditions • Allows possibility of making complex gene networks more understandable
Implications • Emergence of a new breed of biologist-mathematicians