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Mathematical Modeling to Resolve the Photopolarization Mechanism in Fucoid Algae

Mathematical Modeling to Resolve the Photopolarization Mechanism in Fucoid Algae. BE.400 December 12, 2002 Wilson Mok Marie-Eve Aubin. Outline. Biological background Model 1 : Diffusion – trapping of channels Model 2 : Static channels Model results Experimental setup

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Mathematical Modeling to Resolve the Photopolarization Mechanism in Fucoid Algae

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  1. Mathematical Modeling to Resolve the Photopolarization Mechanism in Fucoid Algae BE.400 December 12, 2002 Wilson Mok Marie-Eve Aubin

  2. Outline • Biological background • Model 1 : Diffusion – trapping of channels • Model 2 : Static channels • Model results • Experimental setup • Study on adaptation

  3. Photopolarization in Fucoid Algae (Kropf et al. 1999)

  4. Signal Transduction • Light • Photoreceptor: rhodopsin-like protein • cGMP • Ca++ • Calcium channels • F-actin • Signal transduction pathway unknown • The mechanism of calcium gradient formation is still unresolved

  5. Distribution of calcium (Pu et al. 1998)

  6. Blue light N N N Model 1 : Diffusion - trapping of channels Ca2+ channels Actin patch Actin patch: Involvement of microfilaments in cell polarization as been shown Model of Ca++ channel diffusion suggested (Brawley & Robinson 1985) (Kropf et al. 1999)

  7. Model 1 : Bound & Unbound Channels light • We model one slice of the cell • Reduce the system to 1D • Divide the channels in two subpopulations: • unbound : free to move • bound : static 1) Rate of binding Rate of unbinding 2)

  8. Model 1 : Calcium Diffusion We assume that the cell is a cylinder. where: Channel concentration Flux on the illuminated side: Flux on the shaded side:

  9. Model 2 : Static Channels The players involved are similar to the ones in rod cells. In rod cells: activate activate Cyclic nucleotide phosphodiesterase G protein Activated rhodopsin Reduce the probability of opening of Ca++ channels Electrical response of the cell [cGMP]  => similar process in Fucoid Algae ?

  10. Model 2 : Static Channels where: • Channels are immobile • Permeability decreases with closing of channels

  11. # 10 hrs time position Model 1 - results linear distribution of light Unbound channels distribution Bound channels distribution # # 10 hrs 10 hrs time time position position Total channels distribution Calcium distribution # 10 hrs time position

  12. Model 1 - results logarithmic distribution of light Unbound channels distribution Bound channels distribution Total channels distribution Calcium distribution

  13. Distribution of calcium linear distribution of light logarithmic distribution of light Model 1 linear distribution of light logarithmic distribution of light Model 2

  14. Flux of calcium linear distribution of light logarithmic distribution of light shaded side Model 1 illuminated side time time linear distribution of light logarithmic distribution of light shaded side Model 2 illuminated side time time

  15. [Ca++] [Ca++] [Ca++] [Ca++] [Ca++] Model 1 :Rate of unbinding sensitivity analysis (linear distribution of light) Maximum Kunbind : 10-1 s-1 10-2 s-1 10-3 s-1 position 10-4 s-1 10-5 s-1

  16. Light vector Light distribution measurements • Isolate 1 cell • Attach it to a surface • Use a high sensitive photodiode (e.g. Nano Photodetector from EGK holdings) with pixels on both sides what is coated with a previously deposited thin transparent layer of insulating polymer (e.g. parylene) • Rotate the light vector • Identify best light distribution to improve this 1D model

  17. Previous experimental data Calcium indicator (Calcium Crimson) Ca2+-dependent fluorescence emission spectra of the Calcium Crimson indicator

  18. Experimental Setupto verify models accuracy Calcium-specific vibrating probe : Flux measurement

  19. Concluding remarks • 2 mathematical models which predict a successful photopolarization were proposed: • Diffusion-Trapping Channels Model • Static Channels Model  Generate more than quantitative predictions: give insights on an unresolved mechanism The experimental setup proposed would also elucidate the adaptation of this sensory mechanism

  20. Necessity for Adaptation Sensitivity = increase of response per unit of intensity of the stimulus(S = dr/dI) Adaptation : change of sensitivity depending on the level of stimulation Dynamic range of photoresponse: sunlight: 150 watts / m2 moonlight: 0.5 x 10-3 watts / m2

  21. Adaptation I ÷ IB = Weber fraction Quantal effects

  22. Acknowledgements Professor Ken Robinson Ali Khademhosseini Professor Douglas Lauffenburger Professor Paul Matsudaira

  23. References Pu, R., Wozniak, M., Robinson, K. R. (2000). Developmental Biology222, 440-449 Robinson, K. R., Miller, B. J. (1997). Developmental Biology187, 125-130 Berger, F., Brownlee, C. (1994). Plant Physiol.105, 519-527 Robinson, K. R., Gualtieri, P. (2002). Photochemistry and Photobiology 75(1), 76-78 Love, J., Brownlee, C., Trewavas, A. J. (1997). Plant Physiol.115, 249-261 Braun, M., Richter, P. (1999). Planta209, 414-423 Shaw, S. L., Quatrano, R. S. (1996). J. Cell Science109, 335-342 Alessa, L., Kropf, D. L. (1999). Development126, 201-209 Robinson, K. R., Wozniak, M., Pu, R., Messerli, M. (1999). “Current Topics in Developmental Biology” 44, 101-126 Kropf, D. L., Bisgrove, S. R., Hable, W. E. (1999). Trends in Plant Science4(12), 490-494 Kuhtreiber, W. M., Jaffe, L. F. (1990). J. Cell Biology110, 1565-1573 Fain, G. L., Matthews, H. R., Cornwall, M. C., Routalos, Y. (2001). Physiological Reviews81(1), 117-151 Hofer, T., Politi, A., Heinrich, R. (2001). Biophysical Journal(80), 75-87 Brownlee, C., Bouget, F. (1998). Cell & Developmental Biology(9), 179-185 Brownlee, C., Bouget, F., Corellou, F. (2001). Cell & Developmental Biology(12), 345-351 Goddard, H., Manison, N.F.H. Tomos, D., Brownlee, C. (2000). Proceedings of the National Academy of Sciences USA97, 1932-1937 Torre, V., Ashmore, J. F., Lamb, T. D., Menini, A. (1995). Journal of Neuroscience15, 7757-7768 Brawley, S. H., Robinson, K. R. (1985). J. Cell Biology100, 1173-1184 Kropf, D. L. (1994). Developmental Biology165 , 361-371 Malho R. et al.1995, Calcium channel activity during pollen tube growth. Plant J 5:331-341 Meske V et al. 1996 Protoplasma 192:189-198

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