Computer Logic in Microbial Systems

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Introduction

Figure 1. An example of applied genetic programming is the designof Yersinia pseudotuberculosis that specifically target cancer cells[1].

By Jeremy Moore

Synthetic biology is a quickly evolving field that combines the sciences of molecular biology and biochemistry with engineering. One major task for synthetic biologists is harnessing cell’s innate ability to perform tightly concerted metabolic processes in order to produce molecules of industrial and medical relevance. In other words, one goal of synthetic biology is to create a programming language for cellular processes that can be altered with great precision to generate microbes with specific functions. Applying computer logic to living systems is challenging, as gene regulation is highly sensitive to the environment and requires a tightly controlled balance of regulatory factors[2]. Nonetheless, several methods have been developed to translate logical operators into genetic circuits.


Programmable cells have myriad applications to industry and medicine. As an example, a strain of Yersinia pseudotuberculosis was modified to invade cancerous cells in response to environmental conditions[1]. In this study, Y. pseudotuberculosis was equipped with synthetic genetic circuits that allowed it to detect changes in several environmental factors. In the presence of certain environmental conditions (such as high cell density and hypoxia), the strain expressed a protein that allowed it to invade mammalian cells (Figure 1). Applications like this could be used to create synthetic organisms capable of accomplishing highly specific tasks such as targeting specific tissues or compounds. Here, we will discuss several advancements in synthetic biology techniques used to program cells. By translating logical operations to genetic circuits, it is theoretically possible to design a cell to target a specific tissue or pathogen for drug delivery[2].


Logic Gates in Biological Context

Figure 2. Examples of logic gates constructed in bacteria[2].
Figure 3.. [3]


The central principle to logic gate construction in living systems, is linking an output, such as expression of a fluorophore, to the expression of other genes in a regulatory genetic circuit[2]. For example, to get an OR logic gate (where one or both of two stimuli can activate the outpus), one could construct a system where two different promoters both activate a gene. Similarly, a NOR gate (where either response prevents a response) could be constructed as in Figure 2a, where expression of a repressor is controlled by two adjacent promoters. This repressor then prevents an output[2]. Gates that use AND logic can also be constructed. One method of AND gate construction is to have an output activated by a protein that requires a chaperone[2]. Thus, both the activator and chaperone, which must each have their own unique inducible promoter, are required to induce expression of the output.

The left side of Figure 2 shows several examples of possible logic gate designs[2]. In these examples, the output is some fluorophore, the expression of which is dependent on some interaction between two other promoters and the genes they serve. The right side of Figure 2 displays predicted expression of the fluorophore given expression of the two promoters that build the logical operation. Every logical operator can be constructed in several ways. A NOR gate, for example, can be built by placing two different promoters in front of a repressor gene. However, this gate, as shown in Figure 2b, can also be constructed by the use of invertible DNA elements containing an invertase gene. Invertases change the orientation of a particular DNA sequence from facing down to upstream of the gene it belongs to[4]. A NOR gate can be constructed with invertases if activation of either invertase flips a section of the promoter that activates an output. An AND gate can also be constructed using invertases; in this scenario, two invertases are designed to actually correct inversions in a promoter region. Activation of both promoters corrects both inversions, leading to transcription of the output gene.

The logic gate designs described above are not the only possible methods for achieving controlled expression of a gene. Throughout this article, several strategies for achieving programmable cells will be discussed. The major challenge with designing logic gates in bacteria is managing the noise of any particular signal. While any logical operation is theoretically possible in bacteria, certain logic gates are more efficient than others. For example, in Figure 3, an OR and NOR gate are compared. For each heat map, different pairs of promoters were used to demonstrate that not every pair behaves quite the same. Additionally, it was shown that OR gates are more susceptible to leaking (some intermediate states between on and off) than NOR gates which have nearly digital signals (few if any intermediate states between on and off) [3]. Because logical operators in bacteria rely on inherently stochastic interactions between regulator proteins and the promoters they bind, the strength of the promoter and its respective regulators determines how cleanly each gate performs.

Counting and Memory Function Using Invertases

Figure 4. Synthetic gene network that counts pulses of arabinose exposure before expressing a fluorescent protein. Panels A and C display the genetic construct generated, while panels B and D display the fluorescence detected after each pulse of arabinose[4].


Construction of Complex Logic

Figure 5.. [3]
Figure6.. [3]

Oscillating Synthetic Gene Networks

Figure 7.. [5]
Figure 8.. [6]

Circuit Interactions with the Host Cell

Conclusion

Figure9.. [2]

References

  1. 1.0 1.1 JC, Clarke EJ, Arkin AP, Voigt CA. Environmentally Controlled Invasion of Cancer Cells by Engineered Bacteria. (2006). JMB 355: 619 – 627. doi:10.1016/j.jmp.2005.10.076.
  2. 2.0 2.1 2.2 2.3 2.4 2.5 2.6 2.7 Brophy JAN, Voigt CA. Principles of Genetic Circuit Design. (2014). Nature Methods 11(5): 508 – 520. DOI:10.1038/NMETH.2926.
  3. 3.0 3.1 3.2 3.3 http://www.nature.com/nature/journal/v469/n7329/abs/nature09565.html Tamsir A, Tabor JJ, Voigt CA. Robust multicellular computing using genetically encoded NOR gates and chemical ‘wires’. (2011) Nature 469: 212 – 215. doi:10.1038/nature09565.
  4. 4.0 4.1 . Friedland AE, Lu TK, Wang X, Shi D, Church G, Collins JJ. Synthetic Gene Networks that Count. (2009). Science 324(5931): 1199 – 1202.
  5. https://journals.aps.org/prl/abstract/10.1103/PhysRevLett.88.148101 Hasty J, Dolnik M, Rottschafer V, Collins JJ. Synthetic Gene Network for Entraining and Amplifying Cellular Oscillations. 2002. Physical Review Letters 88(14) 148101.
  6. http://www.nature.com/nature/journal/v456/n7221/full/nature07389.html Stricker J, Cookson S, Bennett MR, Mather WH, Tsimring LS, Hasty J. A fast, robust and tunable synthetic gene oscillator. 2008. Nature 456(27) 07389.



Authored for BIOL 238 Microbiology, taught by Joan Slonczewski, 2017, Kenyon College.