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Biology 624 - Developmental Genetics Lecture #6 – Modeling in Development
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Why Developmental Biology Needs Models 1.understand how mechanisms at one level of scale (ie cell-level) interact to produce higher level phenomena (ie tissue-level) 2.provides testable hypotheses for experimentation 3.this is the time to enhance the use of this approach in developmental biology 4. you don’t need to be a mathematician to do modeling
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Cell Behavior to Tissue Integration Robertson et al, 2007
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Provides Testable Hypotheses - Predictions Thorne et al, 2007
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What is a Computational Model? 1. Uses experimental data computers can understand and assumptions of scientists to predict outcomes 2. Concept of “simulations” – run data through time and/or space to produce outcomes 3. Toggle from simulation outcomes to experimental outcomes 4. Do NOT make bad data turn into good data – experiments important 5. Help scientists better understand processes by emphasis on modularity, randomness, non-randomness, feedback loops, etc.
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Modeling Diffusion in Fly Embryos Tomlin and Axelrod, 2007
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Diffusion of Morphogens in Fields with Receptors Lander et al, 2002
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Modeling Fly Stripes Tomlin and Axelrod, 2007 Von Dassow et al, 2000 Wg = green En = red
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Modeling Intercalation during Frog Gastrulation Longo et al, 2004 Stain = Fibronectin
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Cell Behavior is Governed by Rules in the Simulation Longo et al, 2004
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Time Sequence of BCR Thinning Longo et al, 2004
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Model Predicts Lateral Movement of Implanted Cells Longo et al, 2004
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Modeling Approaches: Top-Down --aims to reveal overarching control mechanisms --high-level attributes, ie “these cells die” --governing rule set are potential relationships loosely derived from qualitative experiments --GOAL: deduce a minimal rule set to reveal systems level controls
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Modeling Approaches: Bottom-Up --explicitly accounts for fine processes --assembles these processes to predict higher level processes --rules derived from quantitative empirical data --GOAL: deduce emergent phenomena at a higher level from interactions at level below
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Model Types - Continuum --based on kinetic parameters --uses partial differential equations a lot --models environmental changes precisely --does NOT model spatial heterogeneity well --not very intuitive
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Model Types – Agent Based Models --agents (ie cells) behave according to rules --allow for spatial heterogeneity --allow for random or stochastic response --does NOT account for precise concentrations,etc --intuitive
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Model Types – Combinations +
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How Models Work Thorne et al, 2007
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