Information processing by slime molds Frances Taschuk May 5, 2008.

19
Information processing by slime molds Frances Taschuk May 5, 2008

Transcript of Information processing by slime molds Frances Taschuk May 5, 2008.

Page 1: Information processing by slime molds Frances Taschuk May 5, 2008.

Information processing by slime molds

Frances Taschuk

May 5, 2008

Page 2: Information processing by slime molds Frances Taschuk May 5, 2008.

Slime molds!

“Dog Vomit”

“Pretzel Slime Mold” (Hemitrichia serpula)

Page 3: Information processing by slime molds Frances Taschuk May 5, 2008.

Eeeew! What is it?• Kingdom Protista

– True slime molds: Phylum Myxomycota

– Cellular slime molds: Phylum Acrasiomycota • True slime molds: nucleus replicates without dividing to

form multinucleated feeding mass

Page 4: Information processing by slime molds Frances Taschuk May 5, 2008.
Page 5: Information processing by slime molds Frances Taschuk May 5, 2008.

Why study them?

• Single, giant, multinucleated cell– Up to 20 meters in diameter!

• Biological information processing– Cell integrates sensory information and develops

response– Solve maze– Minimal risk path– Robot control

• Phototactic and chemotactic• Easily motivated by oats

Page 6: Information processing by slime molds Frances Taschuk May 5, 2008.

Information Processing

• “Intelligence” without a brain

• Constraints:– Absorb nutrients– Maintain intracellular communication (remain

connected)– Limit body mass

Page 7: Information processing by slime molds Frances Taschuk May 5, 2008.

Efficient Pathfinding?

1.Grow Physarum on agar (forms plasmodium)

2.Add food sources (oats) at specific points

3.Wait & take pictures

Page 8: Information processing by slime molds Frances Taschuk May 5, 2008.

SMT and CYC

• SMT = Steiner’s minimum tree:

graph with least sum of edge lengths (NP-complete problem)• CYC = plasmodium forms cyclical network• Minimum tube length vs robustness

SMT-like i) SMT-like

ii) combination

Page 9: Information processing by slime molds Frances Taschuk May 5, 2008.

Different restraint: risk presented by light– Produces reactive oxygen when exposed to light

extension velocity slows– Physarum demonstrates negative phototaxis

In pictures d,e,f: upper part of agar is illuminated

Page 11: Information processing by slime molds Frances Taschuk May 5, 2008.

Physical principles

• Mathematical model: feedback between thickness of tube and flux through it– More flux leads to wider tube

• Cytoplasmic streaming driven by rhythmic contractions of organism produces sheer stress to organize tubes

Page 12: Information processing by slime molds Frances Taschuk May 5, 2008.

Mathematical model• Cytosol is “shuttled” back and forth through the tubes--

most of the slime mold’s mass is at the food sources

• Network of tubes “evolves” - conductivity D changes depending on flux through tube

Pressure difference between ends of tube

Viscosity of sol Length of tube

Radius of tube

Flux

Page 13: Information processing by slime molds Frances Taschuk May 5, 2008.

Evolution of network

• Positive feedback:

• Leads to:– Dead end cutting– Selection of solution path from other

possibilities

conductivity

flux

Page 14: Information processing by slime molds Frances Taschuk May 5, 2008.

Response to stimuli

• Cellular control of robots

• Cells have a lot of computational power—inefficient to emulate biological processing using a computer– Plasticity of living cells: brownian motion

explores state space; conformational state change allows for signalling

Page 15: Information processing by slime molds Frances Taschuk May 5, 2008.
Page 16: Information processing by slime molds Frances Taschuk May 5, 2008.

Anticipation of events• Changes in growth rates at different

temperatures/humidities– Grow for a few hours, then periodically stimulate with

cooler and drier temperatures– Result: growth slows periodically even when not

stimulated

Page 17: Information processing by slime molds Frances Taschuk May 5, 2008.

Explanation: biological oscillators

• Locomotion depends on sum of oscillations

• “Memorizes” periodicity

• Elements of brain function: memory and anticipation

Page 18: Information processing by slime molds Frances Taschuk May 5, 2008.

What does all this mean?

• Parallel dynamics (movement of sol in different parts of protoplasm) lead to information processing - no central processing unit required– Biology takes advantage of this!

• Nonlinear dynamics (oscillators) could help explain how biological systems develop intelligent behavior for survival

• Information processing power of biological cells may make them more adaptable than conventionally programmed robots

Page 19: Information processing by slime molds Frances Taschuk May 5, 2008.

References• Nakagaki, T., Iima, M., Ueda, T., Nishiura, Y., Saigusa, T., Tero, A., Kobayashi, R., Showalter, K.

2007. Minimum-risk path finding by an adaptive amoebal network. Physical Review Letters 99.• Nakagaki, T., Kobayashi, R., Nishiura, Y., Ueda, T. 2004. Obtaining multiple separate food

sources: behavioural intelligence in the Physarum plasmodium. Proc. R. Soc. B. 271: 2305-2310.

• "Slime Molds," Microsoft® Encarta® Online Encyclopedia 2007• Tero, A., Kobayashi, R., Nakagaki, T. 2007. A mathematical model for adaptive transport

network in path finding by true slime mold. Journal of Theoretical Biology 244: 553-564.• Tero, A., Nakagaki, T. 2008. Amoebae anticipate periodic events. Physical Review Letters 100:

018101.• Tsuda, S., Zauner, K-P., Gunji, Y-P. 2006. Robot control with biological cells. Biosystems 87:

215-223.• Photos:

– http://www.biology.duke.edu/dnhs/pics/SlimeMold.JPG– http://waynesword.palomar.edu/images/slime2b.jpg– http://researchfrontiers.uark.edu/6321.php– http://faculty.clintoncc.suny.edu/faculty/Michael.Gregory/files/Bio%20102/Bio%20102%20Laboratory/Protists/Physarum.JPG– http://bio.fsu.edu/~stevet/pictures/TheBigTree.jpg– http://io.uwinnipeg.ca/~simmons/16cm05/1116/28-29-PlasmSlimeMoldLife-L.gif