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New methods to study motile phenomena

New methods to study motile phenomena. A progress report. Topics. The challenge of understanding cell migration Use of photoactivation & CALI to perturb cell migration CMAP, a systems biology tool. How do we approach a quantitative understanding of cell movement?. Top down modeling of

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New methods to study motile phenomena

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  1. New methods to study motile phenomena A progress report

  2. Topics • The challenge of understanding cell migration • Use of photoactivation & CALI to perturb cell migration • CMAP, a systems biology tool

  3. How do we approach a quantitative understanding of cell movement? Top down modeling of integration of collective molecular mechanisms e.g. protrusion, contraction etc. Build up from molecular mechanisms

  4. “Up close the paintings of Renoir & Monet look like ‘daubs of paint’, nothing more. Yet when we step back from the canvases, we see fields of flowers” From Davidson’s review of A Different Universe by Robert Laughlin-NYTimes 6/19/05

  5. Philosophy of quantitative modeling • Use model to simulate behavior & compare to experiment • Revise model until concrete insight gained into key factors determining migration • Test alternate models • Overarching goal: Quantitatively organize information & ideas on migration mechanisms

  6. Advantages of Simple-shaped Cells for Biophysical Studies • Amenable to modeling • Simple shape & migratory pattern: easy to see results of perturbation • Simple, symmetric net traction stress pattern

  7. Gliding Fish Keratocyte In the keratocyte, protrusion & retraction smoothly coordinated

  8. Keratocyte Doing the Limbo

  9. Magnitudes of cell forces

  10. Gliding Fish Keratocyte In the keratocyte, protrusion & retraction smoothly coordinated

  11. Rxn-diffusion sub-model (simplified) PF-ATPactin TB4-ATPactin cofilin PF-ADPactin polymn Dynamic Network Contraction depolyn MyosinII F-actin

  12. A virtual keratocyte--A. Mogilner et al, UC-Davis [Front-dendritic nucleation; rear-dynamic network contraction] Density of f-actin plotted Rubenstein et al SIAM J. 3:413 (2005)

  13. Test robustness of in silico models of migration i.e. do we have the rules of integration of protrusion, retraction and adhesion correct? Use light-directed methods to perturb molecular activities in single migrating cells in a spatially & temporally defined way--complement to genetic perturbations

  14. Photoactivate or laser inactivate different ABP Concentration of players as numerical input to Mogilner model G, F-actin, Tb4, profilin etc. PF-ATPactin polymn TB4-ATPactin capping protein 2 3 1 Release or inactivate at different points in cell Provide simultaneous traction & network dynamics maps with photoactivation/CALI operation

  15. Experimental Perturbation Local ACTIVATION of molecule: photoactivation Local INACTIVATION of molecule: CALI, photoactivation Thymosin -4 Cofilin FAK peptides -actinin Connexins Aurora B kinase Mena Capping protein

  16. CALI: Chromophore Assisted Laser Inactivation [Dan Jay]

  17. Chromophore Assisted Laser Inactivation (CALI) Light-mediated loss-of-function tool High spatial resolution • Subcellular inactivation • High selectivity High temporal resolution • Instantaneous inactivation • Eliminates genetic/molecular compensation

  18. Laser Reactive oxygen species Loss of function x- x- CALI Mechanism Protein damage Chr protein Cell • Chromophore excitation leads to production of free radicals • Free radicals are highly destructive, causing protein damage • - short half-life (nm destruction radius) • Potential for local, instantaneous inactivation of adjacent protein

  19. EGFP as a CALI Chromophore EGFP • Advantages • Genetically encoded • Covalent linkage to protein of interest insures specificity • Widely used • Disadvantages • Photostable Ineffective ROS generator • 200-1000X less efficient than other dyes Photostability may also be an advantage in that there are separate regimes for imaging and inactivation

  20. CALI of EGFP-Capping Protein Eric Vitriol, Andrea Utrecht & Jim Bear

  21. Mena, Capping Protein, and the Regulation of Actin Structure Mejillano et al. 2004

  22. CPß Knockdown exhibits more filopodia: can CALI reproduce this phenotype? Control CPß KD Mejillano et al. 2004

  23. 5.0 U6 Promoter 5’ LTR Promoter EGFP Capping Protein LENTIVIRUS KD / RESCUE CONSTRUCT TO REPLACE ENDOGENOUS CP WITH EGFP-CP -select clones for good KD& rescue to physiological levels Jim Bear + Andrea Utrecht

  24. DIC (left panels) and fluorescence of EGFP-CP (right panels) before (above) and after CALI (below)

  25. CALI of EGFP-CPß DIC-pre Pre-flour. Post-fluor Post-DIC <--Large CALI Region

  26. F-actin & barbed end increase after CALI-induced dissociation of EGFP-CP from barbed ends of actin filaments Phalloidin stain for f-actin Barbed end assay

  27. CMAP: The Causal Map Can the cell biologist’s scheme, which organizes elements, be transformed to a graphical model to check whether it semi-quantitatively predicts observed behavior? Gabriel Weinreb, Maryna Kapustina, Nancy Costigliola& Tim Elston

  28. Cell oscillations induced by depolymerizing MT during cell spreading depend on elevated Rho activity and cyclic Cai2+ Pletjushkina et al, Cell Mot. & Cytoskeleton, 48 (4): 235-244 (2001).

  29. Spreading mouse fibroblasts with depolymerized MTs Note blebbing-> See also Paluch et al, BJ 89: 724 (2005) &Salbreux et al, Phys Biol 4:268(2007)

  30. Quantitation of oscillatory behavior Inactivation of ROCK [arrow] by Y27632 blocks oscillations Control cell spreading

  31. Ca2+ also oscillates with similar period as morphological oscillations

  32. B. periodic increment due to [Ca2+]i variations increment due MT depolymerization contractility normal spreading time How Rho and Ca2+ may be involved in regulating oscillations

  33. External [Ca2+] Cai2+ ↑ MICROTUBULE DEPOLYMERIZATION MLCK↑ P MLC-phosphatase P MLC- ↑ Activate SAC GEF CICR Rho↑ [Ca2+]↓ by retrieval ROCK↑ Adhesion strength CaM Substrate stiffness CONTRACTILITY↑ MORPHOLOGICAL OSCILLATIONS Functional map for cell oscillations depicting necessary elements and connections between them.

  34. A systems biology test bed: Experimental readout: % Cells Oscillating, Amplitude, and Period of oscillations CMAP (semi-quantitative) Differential Equation model (quantitative)

  35. Complexity Complexity Cognitive networks Boolean networks Petri networks ● ● ● ● ● C M A P ODE, PDE & Stochastic Models Fine-grained models Coarse grained models

  36. Causal Mapping [CMAP] • Concepts (elements) are enclosed in boxes and embody chemicals and/or mechanics • Causal influences are edges and enable propagation of causality • Concepts & influences are given numerical or linguistic weights based on data and/or expert opinion

  37. W AB B A W BA • A,B are elements of the map, called ‘concepts’. • Wij are the weights (magnitudes) of causal influence of one concept on the other; • [weights are in terms of lingustic variables I.e. very strong….weak that are translated to numerical intervals between -1 to 1] • Positive weight leads to increase of the concept it is directed to (activation) • Negative weight leads to decrease of the concept it is directed to (inhibition). • Time evolution described by simple “transfer” functions that connect concepts & • incorporate weights from one or more input concepts

  38. Development of a CMAP for cell oscillations Microtubule depolymerization Biological background: RhoA pathway • Actomyosin based contractility • Volume oscillations • Ca2+ oscillates • Rho pathway involved. CMAP Weinreb, Elston, and Jacobson. 2006

  39. CMAP simulation results red=contractility blue=[Ca2+]i MT depolym MT depolym +ROCK inhibition

  40. Using the CMAP for hypothesis generation: how do we determine the most likely CMAPs for the phenomenon? Weinreb et al, in preparation What system configurations provide viable hypotheses?

  41. W >0 Configuration 1: AB B A activation inactivation W <0 BA W <0 Configuration 2: AB B A inactivation inactivation W <0 BA W =0 Configuration 3: AB B A no influence inactivation W <0 BA

  42. Membrane Membrane SAC SAC Cai2+ Cai2+ Ca-pump Ca-pump CONTRACTILITY* CONTRACTILITY* Ca-CaM Ca-CaM MLC-P-ase MLC-P-ase P P MLCK MLCK MLC- MLC- - feedback + feedback Two distinct configurations

  43. Algorithm for hypotheses generation • Define experimentally observable criteria that characterize the phenotype: • -oscillatory behavior in [Ca] and contractility • -increasing myosin light chain phosphatase damps oscillations • Determine all possible configurations of the network, i.e. all combinations of possible connections between the elements • For a each configuration, use all possible combinations of weights, Ntotal, [Monte Carlo] and count those that satisfy the criteria, Ni. • Calculate the fitness index as a ratio fi=Ni/Ntotal in order to rank hypotheses [a zero fitness configuation is not a viable hypothesis]

  44. Membrane Membrane SAC SAC Cai2+ Cai2+ Ca-pump Ca-pump CONTRACTILITY* CONTRACTILITY* Ca-CaM Ca-CaM MLC-P-ase MLC-P-ase P P MLCK MLCK MLC- MLC- HI FITNESS ZERO FITNESS

  45. How can the competing, high fitness hypotheses be experimentally distinguished?

  46. Protocol (under development) • Identify on the CMAP a causal influence (weight) which can be experimentally manipulated. e.g. titration of an inhibitor . • Vary the CMAP weight corresponding to the experimental manipulation keeping all other weights in the ensemble of hypotheses (Ni) unchanged. • Examine how system responds to varying the weight of interest. • Compare experimental outcome to prediction of CMAP for different hypotheses. Look for major qualitative differences.

  47. Membrane tension SAC MLC-phosphatase Cai2+ Ca-pump CONTRACTILITY Ca-CaM P MLCK MLC- A CMAP for cell oscillations

  48. Comparison of experiment & CMAP predictions Hypothesis 5 Experiment Hypothesis 4 Single cell behavior in both experiment & CMAP predictions can also be compared

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