Team:ETH Zurich/project/overview/summary

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== Mosaicoli : from simplicity to complexity with bio''logic'' gates ==
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== Mosai''coli'' : from simplicity to complexity with bio''logic'' gates ==
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=====Scientific abstract=====
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<html><h3 style='font-weight:800; text-align:center'> Abstract</h3></html>
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Emergence of complex patterns in nature is a fascinating and widely spread phenomenon, which is not fully understood yet. Mosai''coli'' aims to investigate emergence of complex patterns from a simple rule by engineering a cellular automaton into ''E. coli'' bacteria. This automaton comprises a grid of colonies on a 3D-printed millifluidic chip. Each colony is either in an ON or OFF state and updates its state by integrating signals from its neighbors according to a genetically pre-programmed logic rule. Complex patterns such as Sierpinski triangles are visualized by fluorescence after several steps of row-wise propagation. Sequential logic computation based on quorum sensing is challenged by leakiness and crosstalk present in biological systems. Mosai''coli'' overcomes these issues by exploiting multichannel orthogonal communication, riboregulators and integrase-based XOR logic gates. Engineering such a reliable system not only enables a better understanding of emergent patterns, but also provides novel building blocks for biological computers.
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Emergence of complex patterns in nature is a fascinating and widely spread phenomenon, which is not fully understood yet. Mosai''coli'' aims to investigate emergence of complex patterns from a simple rule by engineering a cellular automaton into ''E. coli'' bacteria. This automaton comprises a grid of colonies on a [[Team:ETH_Zurich/lab/chip|3D-printed millifluidic chip]]. Each colony is either in an ON or OFF state and updates its state by integrating signals from its neighbors according to a genetically [[Team:ETH_Zurich/project/background#Pattern|pre-programmed logic rule]]. Complex patterns such as Sierpinski triangles are visualized by fluorescence after [[Team:ETH_Zurich/expresults#Diffusion_On_Chip|several steps of row-wise propagation]]. Sequential logic computation based on quorum sensing is challenged by [[Team:ETH_Zurich/expresults#Quorum_Sensing|leakiness and crosstalk]] present in biological systems. Mosai''coli'' overcomes these issues by exploiting multichannel orthogonal communication, [[Team:ETH_Zurich/expresults#Riboregulators|riboregulators]] and integrase-based XOR logic gates. Engineering such a reliable system not only enables a better understanding of emergent patterns, but also provides novel building blocks for biological computers.
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Latest revision as of 02:49, 18 October 2014


Mosaicoli : from simplicity to complexity with biologic gates

Abstract



Emergence of complex patterns in nature is a fascinating and widely spread phenomenon, which is not fully understood yet. Mosaicoli aims to investigate emergence of complex patterns from a simple rule by engineering a cellular automaton into E. coli bacteria. This automaton comprises a grid of colonies on a 3D-printed millifluidic chip. Each colony is either in an ON or OFF state and updates its state by integrating signals from its neighbors according to a genetically pre-programmed logic rule. Complex patterns such as Sierpinski triangles are visualized by fluorescence after several steps of row-wise propagation. Sequential logic computation based on quorum sensing is challenged by leakiness and crosstalk present in biological systems. Mosaicoli overcomes these issues by exploiting multichannel orthogonal communication, riboregulators and integrase-based XOR logic gates. Engineering such a reliable system not only enables a better understanding of emergent patterns, but also provides novel building blocks for biological computers.