TY - JOUR AU1 - Zhang,, Carolyn AU2 - Tsoi,, Ryan AU3 - You,, Lingchong AB - Abstract Synthetic biology has grown tremendously over the past fifteen years. It represents a new strategy to develop biological understanding and holds great promise for diverse practical applications. Engineering of a gene circuit typically involves computational design of the circuit, selection of circuit components, and test and optimization of circuit functions. A fundamental challenge in this process is the predictable control of circuit function due to multiple layers of biological uncertainties. These uncertainties can arise from different sources. We categorize these uncertainties into incomplete quantification of parts, interactions between heterologous components and the host, or stochastic dynamics of chemical reactions and outline potential design strategies to minimize or exploit them. Insight, innovation, integration We discuss different types of biological uncertainty that plague the predictable design of gene circuits. We classify these uncertainties into three categories: incomplete characterization of biological parts, unintended interactions between components and the host, and stochastic dynamics. We suggest different methods and review their effectiveness at minimizing each type of uncertainty. Our unique perspective on this topic can help guide novel circuit design. Contextualizing different problems that can cause circuit failure will expedite their efficient identification. Moreover, providing potential strategies can reduce time and resources used to optimize circuits, which could help speed up scientific discovery. Introduction Synthetic biology has shown great promise in contributing to our basic understanding of biology1 and creating novel systems with practical applications.2,3 While there are many facets to synthetic biology, we focus on the engineering of genetic circuits. From the development of gene networks as biosensors4 to the incorporation of complex regulatory modules in model organisms,5 synthetic circuits have the potential for applications in biological research.6–9 Despite past successes, the predictable design and implementation of these circuits remains a fundamental challenge. This limitation can be attributed to the many layers of uncertainty that emerge throughout the engineering process. Engineering genetic circuits has often been compared to programming,10 where the cell is the computer and the gene circuits are introduced software programs. From this perspective, building a gene circuit is like inserting a small script into an operating system without full understanding of the context. Despite knowing the programming language, an incomplete understanding of the operating system provides a layer of uncertainty similar to introducing a gene circuit. The program must be written without syntax errors, must not hinder underlying operations that maintain the system, and must have variables that do not overlap with those that already exist. Ideally, a gene circuit must use the correct parts, must not inhibit the growth of the host, and must be orthogonal to native processes. However, these conditions are difficult to realize due to multiple layers of uncertainties, which are often challenging to anticipate. Here, we discuss some common uncertainties that confound predictable engineering of gene circuits in living cells as well as strategies to alleviate or take advantage of the impact of such uncertainties. Sources of uncertainty 1. Incomplete characterization or quantification of biological components In typical engineering disciplines, the building blocks are often well defined. For example, in electrical engineering the basic parameters associated with various components are well-documented.11 In comparison, synthetic biology lacks the systematic quantification of parts fundamental to other engineering fields (Fig. 1A). Even for model organisms such as Escherichia coli, which has been a workhorse for microbiology, biotechnology, and gene circuit engineering, the kinetic properties of many biological components are poorly characterized (Fig. 1B). For example, when constructing OR gates, Tamsir et al. found that the unexpected transcriptional interference between two promoters caused one design to only respond to a single input.12 The challenge increases drastically in higher organisms where precise genetic control is constrained by their greater complexity and a lack of well-quantified biological components.13–15 Fig. 1 Open in new tabDownload slide Sources of uncertainty that can lead to circuit failure. (A) Unknown parts. Many components are not known for the construction of circuits. (B) Incorrect kinetic parameters. With few components characterized, incorrect kinetic parameters can result in circuit failure or unintended circuit function. (C) Crosstalk. The lack of physical separation results in interactions with the potential to disrupt circuit function through crosstalk. (D) Metabolic burden. Exogenous synthetic circuits rely on the limited pool of endogenous cellular machinery to function, which can result in metabolic burden.(E) Intrinsic noise. Intrinsic noise can be attributed to stochastic chemical kinetics and the small size of cells, resulting in fluctuating metabolite concentrations. (F) Extrinsic noise. Extrinsic noise can be due to external perturbations such as the cell signaling molecules, light, pH, nutrients, or heat. Fig. 1 Open in new tabDownload slide Sources of uncertainty that can lead to circuit failure. (A) Unknown parts. Many components are not known for the construction of circuits. (B) Incorrect kinetic parameters. With few components characterized, incorrect kinetic parameters can result in circuit failure or unintended circuit function. (C) Crosstalk. The lack of physical separation results in interactions with the potential to disrupt circuit function through crosstalk. (D) Metabolic burden. Exogenous synthetic circuits rely on the limited pool of endogenous cellular machinery to function, which can result in metabolic burden.(E) Intrinsic noise. Intrinsic noise can be attributed to stochastic chemical kinetics and the small size of cells, resulting in fluctuating metabolite concentrations. (F) Extrinsic noise. Extrinsic noise can be due to external perturbations such as the cell signaling molecules, light, pH, nutrients, or heat. 2. Unintended interactions between circuit components and the chassis A challenge in providing a comprehensive characterization of parts is their context dependence. In electronic circuit design, engineers achieve modularity of parts through the spatial segregation of components—for example, two transistors will never interact or share signals without direct connection by wires. In synthetic biology, however, a circuit component well characterized in one species or strain can behave unpredictably when introduced into another due to unintended interactions with native parts16 (Fig. 1C). For example, expression of an algal nucleotide transporter for the uptake of unnatural nucleotides caused growth inhibition of E. coli, which the authors attributed to toxic effects of expressing heterologous membrane proteins.17 Synthetic gene circuits rely on endogenous host machinery and resources such as ribosomes, polymerases, and other enzymes to carry out their designed function (Fig. 1D). Since the host relies on the same pool of resources to maintain native processes, synthetic networks draw from this limited pool. Often referred to as the metabolic burden, this titration of resources can interfere with both the cell and the circuit. Indeed, heterologous gene expression can drastically inhibit growth in bacteria depending on specific genes and their expression levels.18–20 Similarly, Karim et al. observed that growth of Saccharomyces cerevisiae decreased up to 25% when expressing different selection markers on plasmids depending on the origin of replication, the promoter, and the yeast strain.21 Moreover, cellular growth and gene expression are intertwined by resource allocation constraints resulting in growth reduction.22 Certain components or functions may be toxic to the host, which can occur when burden is too high or new genes are introduced from a different kingdom or species. For example, expression products of more than 15 000 genes from 393 microbial genomes inhibited growth of E. coli.23 Forming the basis of antimicrobial development, toxic compounds have been found in organisms from plants24 to fungi.25 While these compounds can display inhibitory effects in some species, they can have limited effects in other organisms. The restriction endoribonuclease RegB, which is highly toxic to E. coli, exhibits no detectable toxicity in S. cerevisiae.26 In some situations, gene mutations can have various host-dependent effects. The R436-S mutant form of the GyrB protein promotes temperature-sensitivity in Salmonella enterica but is lethal to E. coli.27 In other cases, insertion of a foreign gene into the chromosome can result in unexpected cellular toxicity.28 These interactions can impose selection pressure that causes genetic instability – the loss of circuit function after prolonged circuit activation.29–31 3. Stochastic dynamics Even with precise measurements of the component parameters, predictable engineering of circuit dynamics is confounded by the randomness (noise) associated with cellular processes.32 Ultimately, this noise results from the stochastic nature of reactions between small numbers of molecules (Fig. 1E). In a bacterial cell, for example, many proteins are present in tens or hundreds of molecules. Gene expression noise from transcriptional bursting in Bacillus subtilis resulted in 30–250 GFP molecules per cell depending on the strength of the promoters.33 At such small numbers, the relative magnitudes of fluctuations are large: it approximately scales with the inverse of the square root of the average molecular number.34 Thus, a protein with 100 copies per cell experiences at least a 10% fluctuation in protein concentration unless this fluctuation is suppressed by specific regulatory mechanisms. This is often referred to as “intrinsic” noise, as it reflects the baseline noise even if all the rate constants are unchanging. In addition, the rate constants themselves may fluctuate, as they are determined by available resources or other (often global) processes like transcription and translation (Fig. 1F). This is typically referred to as “extrinsic” noise35 and can be the dominant source of variability for highly expressed genes or in eukaryotes.36 Extrinsic and intrinsic noise can be distinguished through various mathematical and experimental methods.36–38 Regardless of its sources, cell-to-cell variability imposes a fundamental constraint on the performance of many gene circuits. For instance, a pioneering synthetic oscillator, the repressilator, exhibits highly variable oscillatory dynamics in growing cells: fewer than half of the cells exhibited oscillations, which were largely asynchronous between cell lineages.39 The authors hypothesized that the lack of coherent oscillations was in part due to stochastic gene expression. Indeed, a recent study shows that cell-size control can lead to slow fluctuations and even transient oscillations in gene expression, in the absence of additional feedback regulation.40 Overcoming this limitation has become a focus of subsequent oscillator designs. Addressing uncertainty in gene circuit engineering 1. Documenting and characterizing parts Circuit design relies on choosing optimal components to generate desired function. Part varieties has improved recently with the quantification of synthetic and natural terminators41 and synthetic libraries of promoters in different host contexts.42–48 Likewise, in mammalian cells, promoter libraries49 and RNAi libraries for gene knockouts50 have expanded the repertoire of potential components that can be incorporated into synthetic circuits. Ideally, a complete catalog for biological parts would minimize uncertainty by providing a quantitative understanding of circuit components in different host contexts.51 This would be a useful tool to design complex systems consisting of multiple gene circuits.16 For example, one can imagine using a consortium of microorganisms for sophisticated sensing and processing functionality. The ability to rapidly quantify the large number of biological parts is constrained by a dependence on living organisms as a chassis for gene circuits. This dependence has spurred research into engineering cell-free systems. Cell free systems utilize enzymes or metabolites isolated from microorganisms to simulate cellular reactions.52,53 They also serve as the foundation for efforts to develop minimal cells – encapsulated cell-free gene expression systems. In a minimal cell, the host contains the minimal number of genes necessary to survive, decreasing the opportunities for cross-interactions.54–56 The former has been used for paper-based biosensors,4 while the latter has been explored for their potential as bioreactors.57 Cell-free systems provide a more controlled environment and are easy to use,58 which can provide a foundation for rapid quantification of biological parts (Fig. 2A). Libraries of parts can be contained on DNA and characterized using simple inducible systems expressing a reporter. With a standardized protocol, this strategy could present a consistent, high-throughput technique for systematic quantification of circuit components. Still, we note that these measurements only provide initial guidance on circuit design, especially for those implemented in living cells. Fig. 2 Open in new tabDownload slide Strategies to address to biological uncertainty. (A) Comprehensive quantification of parts. The documentation of parts can alleviate the lack of components for circuit implementation. (B) Quantifying effects of parts on chassis. Understanding how different components impact the host can provide a method for reducing the genetic instability that results for parts that induce a high level of burden. (C) Optimization of parts. The use of orthogonal parts from different organisms can reduce the chances of cross-interactions with endogenous host machinery. (D) Coping with and exploiting noise. Specific network motifs have been shown to decrease the impact of noise on circuits. (i) Negative feedback (ii) positive feedback (iii) incoherent feedforward loop. Fig. 2 Open in new tabDownload slide Strategies to address to biological uncertainty. (A) Comprehensive quantification of parts. The documentation of parts can alleviate the lack of components for circuit implementation. (B) Quantifying effects of parts on chassis. Understanding how different components impact the host can provide a method for reducing the genetic instability that results for parts that induce a high level of burden. (C) Optimization of parts. The use of orthogonal parts from different organisms can reduce the chances of cross-interactions with endogenous host machinery. (D) Coping with and exploiting noise. Specific network motifs have been shown to decrease the impact of noise on circuits. (i) Negative feedback (ii) positive feedback (iii) incoherent feedforward loop. 2. Quantifying effects of parts on the chassis 2.1 Computational models Modeling can evaluate the impact of uncertainty on circuit function and the robustness of a circuit against these uncertainties. Typically, synthetic gene circuits are modeled deterministically or stochastically59,60 to describe the temporal or spatial dynamics of circuit components or cells. Sensitivity or bifurcation analysis of models can allow one to estimate the parameter space that results in a desired function, such as varying input levels or promoter characteristics.44 A large parameter space indicates that a circuit is less sensitive to perturbations, resulting in predictable and reliable function. In such models, the impact of metabolic burden or potential crosstalk can be evaluated61 (Fig. 2B), which provides another test for circuit performance. Typical models can only describe metabolic burden or crosstalk in a lumped manner. In contrast, one can potentially gain insights into these uncertainties by using whole-cell models, which attempt to more comprehensively describe the known components and pathways. For example, Purcell et al. used a whole-cell model of Mycoplasma genitalium to examine the burden of introducing heterologous circuits like the Goodwin oscillator.62 However, increases in predictive power from whole-cell models come at the cost of being more computationally intensive. Moreover, it can introduce details that obscure the underlying mechanisms behind biological uncertainty, complicating further analysis. In such cases, minimal models that account for allocation of limited resources can be used to evaluate the impact of metabolic burden. This creates a trade-off, where a resource committed to one process reduces its availability for other processes.63–65 In one example, a model by Scott et al. accounted for resources allotted to ribosome synthesis, defined as the RNA/protein ratio.22 Empirical correlations between growth rates and RNA/protein ratio could predict the effect of cell proliferation on gene expression and vice versa.22 Another model, which treated overall promoter activity as a fixed resource, showed that gene expression and growth rate are inherently correlated due to resource constraints.66 While the previous models accounted for allocation of a single resource, these can be extended to include multiple trade-offs. For example, Weiße et al. constructed a model that comprised three-tradeoffs: limited levels of cellular energy, finite ribosome levels, and a maximum cell mass.63 Their model could predict trade-offs generated by introducing synthetic circuits among the circuit's function, its induction level, and the host's growth rates.63 These models provide the ability to link mechanistic changes to phenotypic alterations without the complexity of whole-cell models. 2.2 Real-time quantification of burden Real-time sensors that detect specific analytes would enable a more precise quantification of burden. To this end, Ceroni et al. evaluated strong titration effects by tracking the production capacity in E. coli using a ‘capacity monitor’.67 This real-time sensor measures the capacity for GFP expression, which is used to assay burden (decreased growth rate) caused by circuit activation. The authors analyzed a library of synthetic constructs using this sensor and determined that increasing strength of the ribosome binding site (RBS) increased burden and the rate of mutations.67 This is due to the titration of ribosomes, which can reduce available translational machinery for other processes like cell division. In contrast, circuits with weaker RBSs, which do not titrate ribosomes as strongly, maintained cell growth rates.67 Real-time sensors integrated with downstream regulatory mechanisms could potentially be used to dynamically modulate uncertainty. Dahl et al. designed such a system using stress-response promoters sensitive to accumulation of farnesyl pyrophosphate (FPP) and HMG-COA to control production of these intermediates in isoprenoid biosynthesis.68 This strategy improved product yields, reduced intermediate accumulation, and increased cell growth. 2.3 Exploiting effects due to uncertainty In some cases, interactions between hosts and gene circuits can result in unexpected phenotypes. In E. coli, growth inhibition by a simple positive feedback circuit using non-cooperative T7 polymerase resulted in bistable gene expression.20 Another example is the sharing of transcription factors among different promoter binding sites. While this may negatively affect native pathways, this biological uncertainty can be exploited to generate novel dynamics. For instance, titration of repressors by strongly competing binding sites generated an ultrasensitive response of a reporter (YFP) to increasing repressor concentrations.69 As the number of repressors exceeds the number of competitive binding sites, the repressor becomes available to regulate the reporter. This creates a Hill-like “threshold response” such that a sufficiently high concentration of the repressor is required to bind the promoter and inhibit transcription. This transition becomes sharper with increasing strengths of competing binding sites, analogous to increasing Hill cooperativity.69 This presents a potential strategy for controlling gene expression by tuning competitive binding sites to modulate transcriptional activity of heterologous circuits. 3. Optimized engineered parts In some cases, the desired components have yet to be discovered, and those readily available cannot be used in a predictable manner. By tuning their parameters, one can engineer parts to exhibit desired functions. Strategies for this include using components from other organisms (Fig. 2C),70–73 directed evolution,74–77 rational design,78–81 and constructing de novo enzymes through computer-aided design.82–86 For example, multiple studies have designed genetic devices to maintain modularity in synthetic circuits utilizing the fast reaction rates of phosphotransfers.87,88 One such device increased the capability for dynamic responses of a transcriptional cascade to temporal inputs in the presence of a titration effect.87 In another example, Segall-Shapiro et al. minimize toxicity of phage RNA polymerases by dividing the enzyme into four fragments.89 These are co-expressed according to a resource allocator that sets the maximal transcriptional capacity available based on concentrations of a specific fragment.89 These techniques share the common goal of generating components with optimal parameters. Recent advances in genome editing techniques such as CRISPR facilitate the design and implementation of gene circuits.90–93 For example, CRISPR has been used for targeted DNA degradation to prevent transfer of engineered DNA.94 This function can be exploited to maintain genetic stability of gene circuits where plasmids with specific mutations are targeted for degradation.95 CRISPR has also been used to construct gene circuits including Boolean-logic gates. Using dCas9 and guide RNAs, Nielsen et al. designed a set of NOT gates with high on-target repression and minimal off-target interactions.96 The authors combined these gates into complex circuits and coupled them to a native E. coli regulatory network to control sugar utilization, chemotaxis, and phage resistance. Finally, CRISPR-mediated cleavage can provide reliable regulation of multi-gene operons.97 In this manner, promoters, RBSs, cis-regulatory elements, and riboregulators can also be combined into new operons with programmable gene expression.97 RNA processing via CRISPR presents an innovative strategy for both improvement of existing gene circuits and bottom-up construction of new circuits. 4. Designs to account for stochastic dynamics 4.1 Coping with noise Specific network motifs can resist effects of noise on circuit function (Fig. 2D). For example, negative feedback with minimal time delay has been shown to reduce noise in gene expression.98,99 Specifically, negative feedback shifts noise towards higher frequencies then acts as a low-pass filter to prevent this noise from generating an output.100 However, noise reduction is most effective for intermediate strengths of repression; above this, external noise from larger fluctuations in plasmid concentrations increases the variance of expression levels.101 In contrast, positive feedback can either intensify or diminish the impact of noise depending on circuit parameters. Specifically, noise near an ultrasensitive transition can result in an abrupt shift between states, intensifying effects of noise.102 In contrast, in a system with hysteresis, the output is buffered against noisy inputs, which could otherwise cause spurious transitions between states.103 Feedforward loops, which incorporate both positive and negative regulation, also have the capability to attenuate noise. Incoherent feedforward loops (IFFL) can filter out noise as a band-pass filter104 and output gene expression is robust against varying copy numbers of the plasmid encoding the circuit.105 Coherent feedforward loops (FFL) reject transient inputs and respond only to persistent stimuli.106 However, additional control loops show diminishing returns, and adding a particular regulatory mechanism does not guarantee noise reduction.107 Reaction rates constrain the ability for these motifs to attenuate noise, which at most decreases by a quartic root of the number of signal birth events.107 Modulating parameters of these networks like gene copy number can also minimize intrinsic noise. This has been shown in E. coli, where having a high transcription rate coupled with a low translation rate is more likely to reduce noise than having a low transcription rate coupled with a high translation rate.108 Noise-resistant oscillators appear prevalent in natural systems despite constant extrinsic and intrinsic fluctuations. Design principles learned from circadian oscillations109 and ultradian oscillations110 have been used to minimize the impact of noise in synthetic circuits. A critical requirement for generating oscillations is negative feedback with sufficient time delay. Intertwining negative with positive feedback can enhance the tenability and noise resistance of these oscillations. Since the repressilator, several new oscillators have been engineered to generate more robust oscillations at the single cell level by incorporating these design principles.111,112 Aside from intracellular regulatory motifs, cell–cell communication represents another mechanism for noise reduction113 or coordination of dynamics between single cells. In multicellular organisms, intercellular coupling can be used to maintain synchronized oscillations, such as in periodic somite segmentation in vertebrate embryos.114 Similarly, synthetic oscillators in bacteria using population-based strategies, such as quorum sensing, have exhibited robust, synchronous oscillations.31,115–117 4.2 Exploiting noise Despite the stochastic nature of noise, this uncertainty can be utilized in the development of circuits with complex functions.118 For example, noisy expression of transcription factors can be exploited to generate bistable gene expression without the need for cooperative binding.119 At the population level, noise can be utilized to produce heterogeneous expression with a single circuit design. While undesirable for predictable circuit functions, this stochasticity is crucial for adaptation to changing environments.120,121 In addition, noise can be used to generate a wide dynamic range of stimulation, allowing for high-throughput characterization of circuit dynamics.122 For example, noisy gene expression mediated by viral vectors revealed biphasic signaling dynamics of transcription factor E2F1 in mammalian cells.123 This large variability coupled with single-cell analysis provided high-throughput quantification of the impact of Myc, another transcription factor, on E2F1. In addition, stochastic fluctuations associated with a particular genetic circuit can be used to estimate its kinetic parameters.124 Population distributions from cell-to-cell variability can be used to distinguishing between different cancer types125 and generate fingerprints to identify various network parameters.126 Similarly, Slack et al. demonstrate a method to characterize cellular phenotypes using their heterogeneous responses to perturbations.127 Conclusion Synthetic biology aims to create tunable systems that display predictable functions through the use of genetic circuits. However, unexpected failures plague circuit design, as even the best-characterized organisms remain far from being fully characterized. These failures have been attributed to biological uncertainty, which broadly encompasses any cellular process that cannot be predicted nor controlled directly. While not all uncertainty can be removed, engineering strategies to confront potential pitfalls are desirable to advance the field. To this end, contextualizing different uncertainties is necessary towards establishing guiding principles for circuit design. Innovations in the field have provided design constraints and methods to limit the effect of uncertainty. We attempt to organize these strategies into different types and review their effectiveness in improving circuit function. Our categorization of biological uncertainty and its solutions is a first step in developing a general methodology for minimizing uncertainty in gene circuits. Acknowledgements We thank Hannah Meredith, Tatyana Sysoeva, Zhuojun Dai, and Kui Zhu for critical reading of the draft manuscript. This work was partially supported by the National Science Foundation (LY, CBET-0953202), the National Institutes of Health (LY, R01GM098642, R01GM110494), the Army Research Office (#W911NF-14-1-0490), a David and Lucile Packard Fellowship (LY), and the National Science Foundation Graduate Research Fellowship (CZ). References 1 D. Sprinzak and M. B. Elowitz, Reconstruction of genetic circuits , Nature , 2005 , 438 ( 7067 ), 443 – 448 . Google Scholar Crossref Search ADS PubMed WorldCat 2 A. Bar-Even , et al. , Design and analysis of synthetic carbon fixation pathways , Proc. Natl. Acad. Sci. U. S. A. , 2010 , 107 ( 19 ), 8889 – 8894 . Google Scholar Crossref Search ADS PubMed WorldCat 3 J. M. Carothers , J. A. Goler and J. D. Keasling, Chemical synthesis using synthetic biology , Curr. Opin. Biotechnol. , 2009 , 20 ( 4 ), 498 – 503 . Google Scholar Crossref Search ADS PubMed WorldCat 4 K. Pardee , et al. , Paper-based synthetic gene networks , Cell , 2014 , 159 ( 4 ), 940 – 954 . Google Scholar Crossref Search ADS PubMed WorldCat 5 L. Wroblewska , et al. , Mammalian synthetic circuits with RNA binding proteins for RNA-only delivery , Nat. Biotechnol. , 2015 , 33 ( 8 ), 839 – 841 . Google Scholar Crossref Search ADS PubMed WorldCat 6 A. Y. Chen , C. Zhong and T. K. Lu, Engineering living functional materials , ACS Synth. Biol. , 2015 , 4 ( 1 ), 8 – 11 . Google Scholar Crossref Search ADS PubMed WorldCat 7 F. Farzadfard and T. K. Lu, Synthetic biology, Genomically encoded analog memory with precise in vivo DNA writing in living cell populations , Science , 2014 , 346 ( 6211 ), 1256272 Google Scholar Crossref Search ADS PubMed WorldCat 8 L. Yang , et al. , Permanent genetic memory with >1-byte capacity , Nat. Methods , 2014 , 11 ( 12 ), 1261 – 1266 . Google Scholar Crossref Search ADS PubMed WorldCat 9 S. Slomovic and J. J. Collins, DNA sense-and-respond protein modules for mammalian cells , Nat. Methods , 2015 , 12 ( 11 ), 1085 – 1090 . Google Scholar Crossref Search ADS PubMed WorldCat 10 E. Andrianantoandro , et al. , Synthetic biology: new engineering rules for an emerging discipline , Mol. Syst. Biol. , 2006 , 2 , 2006.0028 Google Scholar Crossref Search ADS PubMed WorldCat 11 Reliability Characterisation of Electrical and Electronic Systems , ed. J. Swingler, Woodhead Publishing , 2015 . Google Scholar Google Preview OpenURL Placeholder Text WorldCat COPAC 12 A. Tamsir , J. J. Tabor and C. A. Voigt, Robust multicellular computing using genetically encoded NOR gates and chemical ‘wires’ , Nature , 2011 , 469 ( 7329 ), 212 – 215 . Google Scholar Crossref Search ADS PubMed WorldCat 13 M. Fussenegger , et al. , Autoregulated multicistronic expression vectors provide one-step cloning of regulated product gene expression in mammalian cells , Biotechnol. Prog. , 1997 , 13 ( 6 ), 733 – 740 . Google Scholar Crossref Search ADS PubMed WorldCat 14 D. Greber and M. Fussenegger, Mammalian synthetic biology: engineering of sophisticated gene networks , J. Biotechnol. , 2007 , 130 ( 4 ), 329 – 345 . Google Scholar Crossref Search ADS PubMed WorldCat 15 V. Haellman and M. Fussenegger, Synthetic Biology-Toward Therapeutic Solutions , J. Mol. Biol. , 2015 , 10.1016/j.jmb.2015.08.020 OpenURL Placeholder Text WorldCat 16 T. S. Moon , et al. , Genetic programs constructed from layered logic gates in single cells , Nature , 2012 , 491 ( 7423 ), 249 – 253 . Google Scholar Crossref Search ADS PubMed WorldCat 17 D. A. Malyshev , et al. , A semi-synthetic organism with an expanded genetic alphabet , Nature , 2014 , 509 ( 7500 ), 385 – 388 . Google Scholar Crossref Search ADS PubMed WorldCat 18 J. F. Gorgens , et al. , The metabolic burden of the PGK1 and ADH2 promoter systems for heterologous xylanase production by Saccharomyces cerevisiae in defined medium , Biotechnol. Bioeng. , 2001 , 73 ( 3 ), 238 – 245 . Google Scholar Crossref Search ADS PubMed WorldCat 19 E. van Rensburg , et al. , The metabolic burden of cellulase expression by recombinant Saccharomyces cerevisiae Y294 in aerobic batch culture , Appl. Microbiol. Biotechnol. , 2012 , 96 ( 1 ), 197 – 209 . Google Scholar Crossref Search ADS PubMed WorldCat 20 C. Tan , P. Marguet and L. You, Emergent bistability by a growth-modulating positive feedback circuit , Nat. Chem. Biol. , 2009 , 5 ( 11 ), 842 – 848 . Google Scholar Crossref Search ADS PubMed WorldCat 21 A. S. Karim , K. A. Curran and H. S. Alper, Characterization of plasmid burden and copy number in Saccharomyces cerevisiae for optimization of metabolic engineering applications , FEMS Yeast Res. , 2013 , 13 ( 1 ), 107 – 116 . Google Scholar Crossref Search ADS PubMed WorldCat 22 M. Scott , et al. , Interdependence of cell growth and gene expression: origins and consequences , Science , 2010 , 330 ( 6007 ), 1099 – 1102 . Google Scholar Crossref Search ADS PubMed WorldCat 23 A. Kimelman , et al. , A vast collection of microbial genes that are toxic to bacteria , Genome Res. , 2012 , 22 ( 4 ), 802 – 809 . Google Scholar Crossref Search ADS PubMed WorldCat 24 B. P. Cammue , et al. , Gene-encoded antimicrobial peptides from plants , Ciba Found. Symp. , 1994 , 186 , 91 – 101 ; discussion 101–106. Google Scholar PubMed OpenURL Placeholder Text WorldCat 25 P. H. Mygind , et al. , Plectasin is a peptide antibiotic with therapeutic potential from a saprophytic fungus , Nature , 2005 , 437 ( 7061 ), 975 – 980 . Google Scholar Crossref Search ADS PubMed WorldCat 26 F. Saida , Overview on the expression of toxic gene products in Escherichia coli , Current Protocols in Protein Science , 2007 , ch. 5, Unit 5.19. Google Scholar Google Preview OpenURL Placeholder Text WorldCat COPAC 27 K. Champion and N. P. Higgins, Growth rate toxicity phenotypes and homeostatic supercoil control differentiate Escherichia coli from Salmonella enterica serovar Typhimurium , J. Bacteriol. , 2007 , 189 ( 16 ), 5839 – 5849 . Google Scholar Crossref Search ADS PubMed WorldCat 28 E. Montini , et al. , The genotoxic potential of retroviral vectors is strongly modulated by vector design and integration site selection in a mouse model of HSC gene therapy , J. Clin. Invest. , 2009 , 119 ( 4 ), 964 – 975 . Google Scholar Crossref Search ADS PubMed WorldCat 29 S. C. Sleight , et al. , Designing and engineering evolutionary robust genetic circuits , J. Biol. Eng. , 2010 , 4 , 12 Google Scholar Crossref Search ADS PubMed WorldCat 30 F. Wu , D. J. Menn and X. Wang, Quorum-sensing crosstalk-driven synthetic circuits: from unimodality to trimodality , Chem. Biol. , 2014 , 21 ( 12 ), 1629 – 1638 . Google Scholar Crossref Search ADS PubMed WorldCat 31 P. Marguet , et al. , Oscillations by minimal bacterial suicide circuits reveal hidden facets of host-circuit physiology , PLoS One , 2010 , 5 ( 7 ), e11909 Google Scholar Crossref Search ADS PubMed WorldCat 32 J. Paulsson , Summing up the noise in gene networks , Nature , 2004 , 427 ( 6973 ), 415 – 418 . Google Scholar Crossref Search ADS PubMed WorldCat 33 M. L. Ferguson , et al. , Reconciling molecular regulatory mechanisms with noise patterns of bacterial metabolic promoters in induced and repressed states , Proc. Natl. Acad. Sci. U. S. A. , 2012 , 109 ( 1 ), 155 – 160 . Google Scholar Crossref Search ADS PubMed WorldCat 34 L. S. Tsimring , Noise in biology , Rep. Prog. Phys. , 2014 , 77 ( 2 ), 026601 Google Scholar Crossref Search ADS PubMed WorldCat 35 P. S. Swain , M. B. Elowitz and E. D. Siggia, Intrinsic and extrinsic contributions to stochasticity in gene expression , Proc. Natl. Acad. Sci. U. S. A. , 2002 , 99 ( 20 ), 12795 – 12800 . Google Scholar Crossref Search ADS PubMed WorldCat 36 J. M. Raser and E. K. O'Shea, Control of stochasticity in eukaryotic gene expression , Science , 2004 , 304 ( 5678 ), 1811 – 1814 . Google Scholar Crossref Search ADS PubMed WorldCat 37 A. Hilfinger , M. Chen and J. Paulsson, Using temporal correlations and full distributions to separate intrinsic and extrinsic fluctuations in biological systems , Phys. Rev. Lett. , 2012 , 109 ( 24 ), 248104 Google Scholar Crossref Search ADS PubMed WorldCat 38 M. B. Elowitz , et al. , Stochastic gene expression in a single cell , Science , 2002 , 297 ( 5584 ), 1183 – 1186 . Google Scholar Crossref Search ADS PubMed WorldCat 39 M. B. Elowitz and S. Leibler, A synthetic oscillatory network of transcriptional regulators , Nature , 2000 , 403 ( 6767 ), 335 – 338 . Google Scholar Crossref Search ADS PubMed WorldCat 40 Y. Tanouchi , et al. , A noisy linear map underlies oscillations in cell size and gene expression in bacteria , Nature , 2015 , 523 ( 7560 ), 357 – 360 . Google Scholar Crossref Search ADS PubMed WorldCat 41 Y. J. Chen , et al. , Characterization of 582 natural and synthetic terminators and quantification of their design constraints , Nat. Methods , 2013 , 10 ( 7 ), 659 – 664 . Google Scholar Crossref Search ADS PubMed WorldCat 42 H. Redden and H. S. Alper, The development and characterization of synthetic minimal yeast promoters , Nat. Commun. , 2015 , 6 , 7810 Google Scholar Crossref Search ADS PubMed WorldCat 43 P. R. Jensen and K. Hammer, Artificial promoters for metabolic optimization , Biotechnol. Bioeng. , 1998 , 58 ( 2–3 ), 191 – 195 . Google Scholar Crossref Search ADS PubMed WorldCat 44 T. Ellis , X. Wang and J. J. Collins, Diversity-based, model-guided construction of synthetic gene networks with predicted functions , Nat. Biotechnol. , 2009 , 27 ( 5 ), 465 – 471 . Google Scholar Crossref Search ADS PubMed WorldCat 45 H. Alper , et al. , Tuning genetic control through promoter engineering , Proc. Natl. Acad. Sci. U. S. A. , 2005 , 102 ( 36 ), 12678 – 12683 . Google Scholar Crossref Search ADS PubMed WorldCat 46 J. H. Davis , A. J. Rubin and R. T. Sauer, Design, construction and characterization of a set of insulated bacterial promoters , Nucleic Acids Res. , 2011 , 39 ( 3 ), 1131 – 1141 . Google Scholar Crossref Search ADS PubMed WorldCat 47 T. J. Rudge , et al. , Characterization of intrinsic properties of promoters , ACS Synth. Biol. , 2015 , 10.1021/acssynbio.5b00116 OpenURL Placeholder Text WorldCat 48 V. A. Rhodius , et al. , Design of orthogonal genetic switches based on a crosstalk map of sigmas, anti-sigmas, and promoters , Mol. Syst. Biol. , 2013 , 9 , 702 Google Scholar Crossref Search ADS PubMed WorldCat 49 J. Tornoe , et al. , Generation of a synthetic mammalian promoter library by modification of sequences spacing transcription factor binding sites , Gene , 2002 , 297 ( 1–2 ), 21 – 32 . Google Scholar Crossref Search ADS PubMed WorldCat 50 J. M. Silva , et al. , Second-generation shRNA libraries covering the mouse and human genomes , Nat. Genet. , 2005 , 37 ( 11 ), 1281 – 1288 . Google Scholar Crossref Search ADS PubMed WorldCat 51 A. Greener , S. M. Lehman and D. R. Helinski, Promoters of the broad host range plasmid RK2: analysis of transcription (initiation) in five species of gram-negative bacteria , Genetics , 1992 , 130 ( 1 ), 27 – 36 . Google Scholar PubMed OpenURL Placeholder Text WorldCat 52 M. Stech , et al. , A continuous-exchange cell-free protein synthesis system based on extracts from cultured insect cells , PLoS One , 2014 , 9 ( 5 ), e96635 Google Scholar Crossref Search ADS PubMed WorldCat 53 S. Y. Jun , S. H. Kang and K. H. Lee, Continuous-exchange cell-free protein synthesis using PCR-generated DNA and an RNase E-deficient extract , Biotechniques , 2008 , 44 ( 3 ), 387 – 391 . Google Scholar Crossref Search ADS PubMed WorldCat 54 G. Murtas , et al. , Protein synthesis in liposomes with a minimal set of enzymes , Biochem. Biophys. Res. Commun. , 2007 , 363 ( 1 ), 12 – 17 . Google Scholar Crossref Search ADS PubMed WorldCat 55 Y. Kuruma , et al. , A synthetic biology approach to the construction of membrane proteins in semi-synthetic minimal cells , Biochim. Biophys. Acta , 2009 , 1788 ( 2 ), 567 – 574 . Google Scholar Crossref Search ADS PubMed WorldCat 56 A. C. Forster and G. M. Church, Towards synthesis of a minimal cell , Mol. Syst. Biol. , 2006 , 2 , 45 Google Scholar Crossref Search ADS PubMed WorldCat 57 V. Noireaux and A. Libchaber, A vesicle bioreactor as a step toward an artificial cell assembly , Proc. Natl. Acad. Sci. U. S. A. , 2004 , 101 ( 51 ), 17669 – 17674 . Google Scholar Crossref Search ADS PubMed WorldCat 58 A. J. Lopatkin and L. You, Synthetic biology looks good on paper , Cell , 2014 , 159 ( 4 ), 718 – 720 . Google Scholar Crossref Search ADS PubMed WorldCat 59 D. T. Gillespie , Exact stochastic simulation of coupled chemical reactions , J. Phys. Chem. , 1977 , 81 ( 25 ), 2340 – 2361 . Google Scholar Crossref Search ADS WorldCat 60 D. T. Gillespie , Stochastic simulation of chemical kinetics , Annu. Rev. Phys. Chem. , 2007 , 58 , 35 – 55 . Google Scholar Crossref Search ADS PubMed WorldCat 61 P. Neubauer , H. Y. Lin and B. Mathiszik, Metabolic load of recombinant protein production: inhibition of cellular capacities for glucose uptake and respiration after induction of a heterologous gene in Escherichia coli , Biotechnol. Bioeng. , 2003 , 83 ( 1 ), 53 – 64 . Google Scholar Crossref Search ADS PubMed WorldCat 62 O. Purcell , et al. , Towards a whole-cell modeling approach for synthetic biology , Chaos , 2013 , 23 ( 2 ), 025112 Google Scholar Crossref Search ADS PubMed WorldCat 63 A. Y. Weisse , et al. , Mechanistic links between cellular trade-offs, gene expression, and growth , Proc. Natl. Acad. Sci. U. S. A. , 2015 , 112 ( 9 ), E1038 – E1047 . Google Scholar Crossref Search ADS PubMed WorldCat 64 M. Scott , et al. , Emergence of robust growth laws from optimal regulation of ribosome synthesis , Mol. Syst. Biol. , 2014 , 10 , 747 Google Scholar Crossref Search ADS PubMed WorldCat 65 A. Maitra and K. A. Dill, Bacterial growth laws reflect the evolutionary importance of energy efficiency , Proc. Natl. Acad. Sci. U. S. A. , 2015 , 112 ( 2 ), 406 – 411 . Google Scholar Crossref Search ADS PubMed WorldCat 66 L. Keren , et al. , Promoters maintain their relative activity levels under different growth conditions , Mol. Syst. Biol. , 2013 , 9 , 701 Google Scholar Crossref Search ADS PubMed WorldCat 67 F. Ceroni , et al. , Quantifying cellular capacity identifies gene expression designs with reduced burden , Nat. Methods , 2015 , 12 ( 5 ), 415 – 418 . Google Scholar Crossref Search ADS PubMed WorldCat 68 R. H. Dahl , et al. , Engineering dynamic pathway regulation using stress-response promoters , Nat. Biotechnol. , 2013 , 31 ( 11 ), 1039 – 1046 . Google Scholar Crossref Search ADS PubMed WorldCat 69 R. C. Brewster , et al. , The transcription factor titration effect dictates level of gene expression , Cell , 2014 , 156 ( 6 ), 1312 – 1323 . Google Scholar Crossref Search ADS PubMed WorldCat 70 D. E. Cameron and J. J. Collins, Tunable protein degradation in bacteria , Nat. Biotechnol. , 2014 , 32 ( 12 ), 1276 – 1281 . Google Scholar Crossref Search ADS PubMed WorldCat 71 C. Grilly , et al. , A synthetic gene network for tuning protein degradation in Saccharomyces cerevisiae , Mol. Syst. Biol. , 2007 , 3 , 127 Google Scholar Crossref Search ADS PubMed WorldCat 72 A. J. Holland , et al. , Inducible, reversible system for the rapid and complete degradation of proteins in mammalian cells , Proc. Natl. Acad. Sci. U. S. A. , 2012 , 109 ( 49 ), E3350 – E3357 . Google Scholar Crossref Search ADS PubMed WorldCat 73 B. C. Stanton , et al. , Systematic transfer of prokaryotic sensors and circuits to mammalian cells , ACS Synth. Biol. , 2014 , 3 ( 12 ), 880 – 891 . Google Scholar Crossref Search ADS PubMed WorldCat 74 S. Y. Tang , H. Fazelinia and P. C. Cirino, AraC regulatory protein mutants with altered effector specificity , J. Am. Chem. Soc. , 2008 , 130 ( 15 ), 5267 – 5271 . Google Scholar Crossref Search ADS PubMed WorldCat 75 S. K. Lee , et al. , Directed evolution of AraC for improved compatibility of arabinose- and lactose-inducible promoters , Appl. Environ. Microbiol. , 2007 , 73 ( 18 ), 5711 – 5715 . Google Scholar Crossref Search ADS PubMed WorldCat 76 R. E. Cobb , N. Sun and H. Zhao, Directed Evolution as a Powerful Synthetic Biology Tool , Methods , 2013 , 60 ( 1 ), 81 – 90 . Google Scholar Crossref Search ADS PubMed WorldCat 77 M. S. Packer and D. R. Liu, Methods for the directed evolution of proteins , Nat. Rev. Genet. , 2015 , 16 ( 7 ), 379 – 394 . Google Scholar Crossref Search ADS PubMed WorldCat 78 S. Lutz , Beyond directed evolution–semi-rational protein engineering and design , Curr. Opin. Biotechnol. , 2010 , 21 ( 6 ), 734 – 743 . Google Scholar Crossref Search ADS PubMed WorldCat 79 A. Pavelka , E. Chovancova and J. Damborsky, HotSpot Wizard: a web server for identification of hot spots in protein engineering , Nucleic Acids Res. , 2009 , 37 ( Web Server issue ), W376 – W383 . Google Scholar Crossref Search ADS PubMed WorldCat 80 R. K. Kuipers , et al. , 3DM: systematic analysis of heterogeneous superfamily data to discover protein functionalities , Proteins , 2010 , 78 ( 9 ), 2101 – 2113 . Google Scholar PubMed OpenURL Placeholder Text WorldCat 81 Y. Li , et al. , A diverse family of thermostable cytochrome P450s created by recombination of stabilizing fragments , Nat. Biotechnol. , 2007 , 25 ( 9 ), 1051 – 1056 . Google Scholar Crossref Search ADS PubMed WorldCat 82 D. J. Mandell and T. Kortemme, Computer-aided design of functional protein interactions , Nat. Chem. Biol. , 2009 , 5 ( 11 ), 797 – 807 . Google Scholar Crossref Search ADS PubMed WorldCat 83 B. S. Chevalier , et al. , Design, activity, and structure of a highly specific artificial endonuclease , Mol. Cell , 2002 , 10 ( 4 ), 895 – 905 . Google Scholar Crossref Search ADS PubMed WorldCat 84 J. Karanicolas , et al. , A de novo protein binding pair by computational design and directed evolution , Mol. Cell , 2011 , 42 ( 2 ), 250 – 260 . Google Scholar Crossref Search ADS PubMed WorldCat 85 T. Kortemme , et al. , Computational redesign of protein–protein interaction specificity , Nat. Struct. Mol. Biol. , 2004 , 11 ( 4 ), 371 – 379 . Google Scholar Crossref Search ADS PubMed WorldCat 86 J. B. Siegel , et al. , Computational design of an enzyme catalyst for a stereoselective bimolecular Diels–Alder reaction , Science , 2010 , 329 ( 5989 ), 309 – 313 . Google Scholar Crossref Search ADS PubMed WorldCat 87 D. Mishra , et al. , A load driver device for engineering modularity in biological networks , Nat. Biotechnol. , 2014 , 32 ( 12 ), 1268 – 1275 . Google Scholar Crossref Search ADS PubMed WorldCat 88 D. Del Vecchio , A. J. Ninfa and E. D. Sontag, Modular cell biology: retroactivity and insulation , Mol. Syst. Biol. , 2008 , 4 , 161 Google Scholar Crossref Search ADS PubMed WorldCat 89 T. H. Segall-Shapiro , et al. , A ‘resource allocator’ for transcription based on a highly fragmented T7 RNA polymerase , Mol. Syst. Biol. , 2014 , 10 , 742 Google Scholar Crossref Search ADS PubMed WorldCat 90 J. E. Dahlman , et al. , Orthogonal gene knockout and activation with a catalytically active Cas9 nuclease , Nat. Biotechnol. , 2015 , 33 ( 11 ), 1159 – 1161 . Google Scholar Crossref Search ADS PubMed WorldCat 91 L. Nissim , et al. , Multiplexed and programmable regulation of gene networks with an integrated RNA and CRISPR/Cas toolkit in human cells , Mol. Cell , 2014 , 54 ( 4 ), 698 – 710 . Google Scholar Crossref Search ADS PubMed WorldCat 92 L. R. Polstein and C. A. Gersbach, A light-inducible CRISPR-Cas9 system for control of endogenous gene activation , Nat. Chem. Biol. , 2015 , 11 ( 3 ), 198 – 200 . Google Scholar Crossref Search ADS PubMed WorldCat 93 A. V. Wright , et al. , Rational design of a split-Cas9 enzyme complex , Proc. Natl. Acad. Sci. U. S. A. , 2015 , 112 ( 10 ), 2984 – 2989 . Google Scholar Crossref Search ADS PubMed WorldCat 94 B. J. Caliando and C. A. Voigt, Targeted DNA degradation using a CRISPR device stably carried in the host genome , Nat. Commun. , 2015 , 6 , 6989 Google Scholar Crossref Search ADS PubMed WorldCat 95 R. Moore , et al. , CRISPR-based self-cleaving mechanism for controllable gene delivery in human cells , Nucleic Acids Res. , 2015 , 43 ( 2 ), 1297 – 1303 . Google Scholar Crossref Search ADS PubMed WorldCat 96 A. A. Nielsen and C. A. Voigt, Multi-input CRISPR/Cas genetic circuits that interface host regulatory networks , Mol. Syst. Biol. , 2014 , 10 , 763 Google Scholar Crossref Search ADS PubMed WorldCat 97 L. Qi , et al. , RNA processing enables predictable programming of gene expression , Nat. Biotechnol. , 2012 , 30 ( 10 ), 1002 – 1006 . Google Scholar Crossref Search ADS PubMed WorldCat 98 A. Becskei and L. Serrano, Engineering stability in gene networks by autoregulation , Nature , 2000 , 405 ( 6786 ), 590 – 593 . Google Scholar Crossref Search ADS PubMed WorldCat 99 V. Shimoga , et al. , Synthetic mammalian transgene negative autoregulation , Mol. Syst. Biol. , 2013 , 9 , 670 Google Scholar Crossref Search ADS PubMed WorldCat 100 D. W. Austin , et al. , Gene network shaping of inherent noise spectra , Nature , 2006 , 439 ( 7076 ), 608 – 611 . Google Scholar Crossref Search ADS PubMed WorldCat 101 Y. Dublanche , et al. , Noise in transcription negative feedback loops: simulation and experimental analysis , Mol. Syst. Biol. , 2006 , 2 , 41 Google Scholar Crossref Search ADS PubMed WorldCat 102 J. Hasty , et al. , Noise-based switches and amplifiers for gene expression , Proc. Natl. Acad. Sci. U. S. A. , 2000 , 97 ( 5 ), 2075 – 2080 . Google Scholar Crossref Search ADS PubMed WorldCat 103 A. Becskei , B. Seraphin and L. Serrano, Positive feedback in eukaryotic gene networks: cell differentiation by graded to binary response conversion , EMBO J. , 2001 , 20 ( 10 ), 2528 – 2535 . Google Scholar Crossref Search ADS PubMed WorldCat 104 R. Guantes , J. Estrada and J. F. Poyatos, Trade-offs and noise tolerance in signal detection by genetic circuits , PLoS One , 2010 , 5 ( 8 ), e12314 Google Scholar Crossref Search ADS PubMed WorldCat 105 L. Bleris , et al. , Synthetic incoherent feedforward circuits show adaptation to the amount of their genetic template , Mol. Syst. Biol. , 2011 , 7 , 519 Google Scholar Crossref Search ADS PubMed WorldCat 106 B. Ghosh , R. Karmakar and I. Bose, Noise characteristics of feed forward loops , Phys. Biol. , 2005 , 2 ( 1 ), 36 – 45 . Google Scholar Crossref Search ADS PubMed WorldCat 107 I. Lestas , G. Vinnicombe and J. Paulsson, Fundamental limits on the suppression of molecular fluctuations , Nature , 2010 , 467 ( 7312 ), 174 – 178 . Google Scholar Crossref Search ADS PubMed WorldCat 108 E. M. Ozbudak , et al. , Regulation of noise in the expression of a single gene , Nat. Genet. , 2002 , 31 ( 1 ), 69 – 73 . Google Scholar Crossref Search ADS PubMed WorldCat 109 I. Mihalcescu , W. Hsing and S. Leibler, Resilient circadian oscillator revealed in individual cyanobacteria , Nature , 2004 , 430 ( 6995 ), 81 – 85 . Google Scholar Crossref Search ADS PubMed WorldCat 110 A. Isomura and R. Kageyama, Ultradian oscillations and pulses: coordinating cellular responses and cell fate decisions , Development , 2014 , 141 ( 19 ), 3627 – 3636 . Google Scholar Crossref Search ADS PubMed WorldCat 111 J. Stricker , et al. , A fast, robust and tunable synthetic gene oscillator , Nature , 2008 , 456 ( 7221 ), 516 – 519 . Google Scholar Crossref Search ADS PubMed WorldCat 112 M. Tigges , et al. , A tunable synthetic mammalian oscillator , Nature , 2009 , 457 ( 7227 ), 309 – 312 . Google Scholar Crossref Search ADS PubMed WorldCat 113 Y. Tanouchi , et al. , Noise reduction by diffusional dissipation in a minimal quorum sensing motif , PLoS Comput. Biol. , 2008 , 4 ( 8 ), e1000167 Google Scholar Crossref Search ADS PubMed WorldCat 114 K. Horikawa , et al. , Noise-resistant and synchronized oscillation of the segmentation clock , Nature , 2006 , 441 ( 7094 ), 719 – 723 . Google Scholar Crossref Search ADS PubMed WorldCat 115 F. K. Balagadde , et al. , Long-term monitoring of bacteria undergoing programmed population control in a microchemostat , Science , 2005 , 309 ( 5731 ), 137 – 140 . Google Scholar Crossref Search ADS PubMed WorldCat 116 Y. Chen , et al. , SYNTHETIC BIOLOGY. Emergent genetic oscillations in a synthetic microbial consortium , Science , 2015 , 349 ( 6251 ), 986 – 989 . Google Scholar Crossref Search ADS PubMed WorldCat 117 T. Danino , et al. , A synchronized quorum of genetic clocks , Nature , 2010 , 463 ( 7279 ), 326 – 330 . Google Scholar Crossref Search ADS PubMed WorldCat 118 A. Eldar and M. B. Elowitz, Functional roles for noise in genetic circuits , Nature , 2010 , 467 ( 7312 ), 167 – 173 . Google Scholar Crossref Search ADS PubMed WorldCat 119 T. L. To and N. Maheshri, Noise can induce bimodality in positive transcriptional feedback loops without bistability , Science , 2010 , 327 ( 5969 ), 1142 – 1145 . Google Scholar Crossref Search ADS PubMed WorldCat 120 G. Balazsi , A. van Oudenaarden and J. J. Collins, Cellular decision making and biological noise: from microbes to mammals , Cell , 2011 , 144 ( 6 ), 910 – 925 . Google Scholar Crossref Search ADS PubMed WorldCat 121 M. Wu , et al. , Engineering of regulated stochastic cell fate determination , Proc. Natl. Acad. Sci. U. S. A. , 2013 , 110 ( 26 ), 10610 – 10615 . Google Scholar Crossref Search ADS PubMed WorldCat 122 B. Li and L. You, Predictive power of cell-to-cell variability , Quant. Biol. , 2013 , 1 ( 2 ), 131 – 139 . Google Scholar Crossref Search ADS WorldCat 123 J. V. Wong , et al. , Viral-mediated noisy gene expression reveals biphasic E2f1 response to MYC , Mol. Cell , 2011 , 41 ( 3 ), 275 – 285 . Google Scholar Crossref Search ADS PubMed WorldCat 124 C. D. Cox , et al. , Using noise to probe and characterize gene circuits , Proc. Natl. Acad. Sci. U. S. A. , 2008 , 105 ( 31 ), 10809 – 10814 . Google Scholar Crossref Search ADS PubMed WorldCat 125 B. Li and L. You, Stochastic sensitivity analysis and kernel inference via distributional data , Biophys. J. , 2014 , 107 ( 5 ), 1247 – 1255 . Google Scholar Crossref Search ADS PubMed WorldCat 126 B. Munsky , B. Trinh and M. Khammash, Listening to the noise: random fluctuations reveal gene network parameters , Mol. Syst. Biol. , 2009 , 5 , 318 Google Scholar Crossref Search ADS PubMed WorldCat 127 M. D. Slack , et al. , Characterizing heterogeneous cellular responses to perturbations , Proc. Natl. Acad. Sci. U. S. A. , 2008 , 105 ( 49 ), 19306 – 19311 . Google Scholar Crossref Search ADS PubMed WorldCat Open in new tabDownload slide Carolyn Zhang Open in new tabDownload slide Carolyn Zhang Carolyn Zhang is a graduate student and NSF Graduate Research Fellow at Duke University. She obtained her BS in Biochemistry at the University of California at San Diego in 2010. Her research interests focus on determining the underlying mechanisms regarding cell cycle decisions. Open in new tabDownload slide Ryan Tsoi Open in new tabDownload slide Ryan Tsoi Ryan Tsoi is a graduate student at Duke University. He obtained his BS in Chemical Engineering at the University of California at Berkeley in 2010. His research interests focus on integrating computation modeling with experimental techniques to tease out the fundamental mechanisms governing microbial consortia. Open in new tabDownload slide Lingchong You Open in new tabDownload slide Lingchong You Lingchong You is the Paul Ruffin Scarborough Associate Professor of Engineering at Duke University. He received his PhD from the University of Wisconsin at Madison in Chemical Engineering in 2002. He then did postdoctoral research at California Institute of Technology before joining Duke in 2004. His laboratory explores design principles of biological networks and uses synthetic gene circuits for applications in computation, engineering and medicine. Author notes " These authors contributed equally. " Department of Biomedical Engineering, Duke University, CIEMAS 2355, 101 Science Drive, Box 3382, Durham, North Carolina, 27708, USA. Fax: +1-(919)668-0795; Tel: +1-(919)660-8408. This journal is © The Royal Society of Chemistry 2016 TI - Addressing biological uncertainties in engineering gene circuits JF - Integrative Biology DO - 10.1039/c5ib00275c DA - 2016-04-18 UR - https://www.deepdyve.com/lp/oxford-university-press/addressing-biological-uncertainties-in-engineering-gene-circuits-CuYJq7B0FN SP - 456 VL - 8 IS - 4 DP - DeepDyve ER -