Experimentally Validated Model Enables Debottlenecking of in Vitro

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Experimentally validated model enables debottlenecking of in vitro protein synthesis and identifies a control shift under in vivo conditions Alexander Nieß, Jurek Failmezger, Maike Kuschel, Martin Siemann-Herzberg, and Ralf Takors ACS Synth. Biol., Just Accepted Manuscript • Publication Date (Web): 19 Jun 2017 Downloaded from http://pubs.acs.org on June 20, 2017

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Title:

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Experimentally validated model enables debottlenecking of in

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vitro protein synthesis and identifies a control shift under in vivo

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conditions

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Authors:

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Alexander Nieß12; Jurek Failmezger1,2; Maike Kuschel1; Martin Siemann-Herzberg1; Ralf

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Takors1*

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1

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* For correspondence:

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[email protected]; Tel.: (+49) 711 685 64535; Fax: (+49) 711 685 65164

13

2

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Jurek Failmezger performed the experiments.

Affiliation: Institute of Biochemical Engineering, University of Stuttgart, Stuttgart

Authors contributed equally to this work. Alexander Nieß performed the modeling, and

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Keywords: Ribosomes, Translation Factors, Translation rate, cell-free synthetic biology

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1

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Cell-free (in vitro) protein systems (CFPS) provide a versatile tool that can be used to

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investigate different aspects of the transcription-translation machinery by reducing cells to the

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basic functions of protein formation. Recent improvements in reaction stability and lysate

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preparation offer the potential to expand the scope of in vitro biosynthesis from a research

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tool to a multifunctional and versatile platform for protein production and synthetic biology.

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To date, even the best-performing CFPS are drastically slower than in vivo references. Major

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limitations are imposed by ribosomal activities that progress in an order of magnitude slower

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on the mRNA template. Owing to the complex nature of the ribosomal machinery,

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conventional ‘trial and error’ experiments only provide little insights into how the desired

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performance could be improved. By applying a DNA-sequence-oriented mechanistic model,

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we analyzed the major differences between cell-free in vitro and in vivo protein synthesis. We

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successfully identified major limiting elements of in vitro translation, namely the supply of

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ternary complexes consisting of EFTu and tRNA. Additionally, we showed that diluted in

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vitro systems suffer from reduced ribosome numbers. Based on our model, we propose a new

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experimental design predicting 90% increased translation rates, which were well achieved in

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experiments. Furthermore, we identified a shifting control in the translation rate, which is

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characterized by availability of the ternary complex under in vitro conditions and the initiation

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of translation in a living cell. Accordingly, the model can successfully be applied to

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sensitivity analyses and experimental design.

ABSTRACT

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Cell-free protein synthesis (CFPS) is a powerful technique for the fast production of

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recombinant proteins. In contrast to traditional in vivo protein formation, CFPS offers

INTRODUCTION

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advantages such as expression of genes encoding growth-inhibiting proteins, high-throughput

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protein production and easy access for investigating translation conditions (1–3). Recent

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studies have demonstrated the potential of CFPS as platform technique for genetic circuit

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engineering (4).

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Whereas early CFPS batch reactions suffer from short activity periods of less than 1 hour, the

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implementation of sophisticated energy regeneration systems has allowed active protein

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formation up to 10 hours (5), reaching final product titers of several mg/mL. Nevertheless,

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CFPS systems achieve maximum synthesis rates of only 0.4-1 mg/mL/h (6–11), which lags

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behind in vivo protein production rates by a factor of several hundred (12). To compete with

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in vivo protein production, the duration of the in vitro reaction and the synthesis rates must

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both be improved, and key factors that limit the in vitro space-time yield must be identified.

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According to current opinion, in vivo protein synthesis is thought to be limited by translation

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initiation rate (13,14), but it is not clear whether this is also true for in vitro protein synthesis.

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Research groups have attempted to identify key steps that control in vitro conditions (15). For

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example, Freischmidt et al. (16) investigated the impact of adding translation factors,

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aminoacyl-tRNA synthetases and active ribosomes, on the total amount of protein produced.

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Surprisingly, this did not improve the final protein concentration, and the authors concluded

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that stoichiometry of the translation factors was optimal in their system. However, putative

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impacts on translation rate (i.e. molar volumetric protein synthesis rate) were not addressed.

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A detailed analysis of CFPS was performed by Underwood et al. (12). Combining polysome

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profile analysis with protein quantification allowed researchers to quantitatively analyze the

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cell-free system. Among others, Underwood et al. (12) clearly identified that a highly reduced

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ribosome concentration, in combination with a low specific elongation rate of around 1.5

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amino acids per ribosome per second, heavily influenced the overall in vitro translation rate.

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In fact, the in vitro translation rate was estimated to be more than three orders of magnitude

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lower than the in vivo translation rate under fast growth conditions. The discrepancy between

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in vitro and in vivo elongation rates could partly be overcome by supplementing the cell-free

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system with additional elongation factors, which increased the elongation rate by 33%. It

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appeared that the limitation of protein growth shifted from initiation to elongation under in

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vivo and in vitro conditions, indicating that translation is limited by the elongation rate of

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ribosomes. There are two major mechanisms involved in elongation. The first is peptide chain

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elongation, which is controlled by ternary complexes consisting of charged tRNA, GTP, and

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elongation factor Tu (EFTu), and the second is translocation, which is catalyzed by elongation

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factor G (EFG).

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As depicted in Figure 1, the translation machinery comprises a highly complex, synergistic

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system that consists of a large number of components. As a result, its optimization requires

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sophisticated tools to properly investigate the parameter space. Arnold et al. (17) established a

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mathematical model that combines all steps of transcription and translation, such as mRNA

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synthesis and degradation, ribosomal translation, energy regeneration and inactivation kinetics

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of certain proteins, to simulate a CFPS system. A DNA sequence oriented approach enabled

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estimation of crucial parameters such as reaction rates, which are not readily accessible

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experimentally. Our approach builds on previous work by performing a thorough modeling

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and experimental study aimed at identifying key control elements of in vitro protein synthesis

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and defining ways in which the system can be improved.

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Figure 1: Overview of cell-free protein synthesis and reaction composition of S30 extract and added supplements. An additional schematic

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overview of the model mechanisms is shown, starting with T7 RNA polymerase and subsequent sequence oriented translation as

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well as regeneration of co-factors. Abbreviations: RNAP = RNA polymerase; IF = initiation factor; EFTu = elongation factor Tu;

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EFTs = elongation factor Ts; EFG = elongation factor G; RF = releasing factor; NTP = nucleotide triphosphate; GTP = guanosine

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triphosphate; GDP = guanosine diphosphate.

92 93

3

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3.1

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Routinely performed batch-CFPS reactions in 96-well microtiter plates always showed a three

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phase pattern, as depicted in Figure 2. First, the transcription-translation machinery was

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initiated and began producing mRNAs and proteins, and characteristic increases in translation

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rate were observed. Then, a pseudo steady-state was achieved, as defined by constant reaction

99

rates. The length of phase two is dependent on the supply of substrates. Finally, phase three

RESULTS AND DISCUSSION MODEL VALIDATION

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comprised a decrease in translation rate due to limiting components and decomposition of the

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original enzymes.

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10

4

8

6

4

2

Protein synthesis rate | nM sec-1

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eGFP concentration | µM

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2

0 0

25

50

125

0 150

time | min

102 103 104

Figure 2: Time courses of protein concentration (biological triplicates) and corresponding error bands. Protein synthesis rate, derived from eGFP concentration via central differences, is also shown.

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All three phases were considered for the translation analysis. An increase in GFP

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concentration in the observation intervals was calculated with central differences at each time

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point (shown in Equation 1). Maximum translation rates were determined for phase two and

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were compared to the simulation results.

 ( ) =

( ) − ( )  − 

1

109 110

With a complete set of parameters and the experimentally determined in vitro concentrations,

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it was possible to predict translation rates for the given cell-free reaction system (Table 1).

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Our in silico predictions were consistent with the experimental observations of Underwood et

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al. (12), although the latter studied the translation rate of chloramphenicol acetyltransferase

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(CAT), which has a molecular weight close to that of eGFP. On the other hand, only 61% of

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the predicted 90% increase in translation rate were measured experimentally, even though the

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simulations and experiments were focused on the same protein sequence.

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Despite the fact that eGFP has the advantage of being able to utilize online monitoring via

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fluorescence measurement, several studies identified a drawback in that only a fraction of the

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synthesized eGFP is correctly folded and fluorescently active. Examples are given by

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Caschera et al. (18) and Iskakova (19), who measured only 80% and 50% fluorescently active

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GFP, respectively. Further sophisticated efforts such as the analysis of

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incorporation could determine the degree of active eGFP. However likewise studies were not

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performed as key parameters affecting eGFP folding (such as the temperature (19)) remained

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constant. Consequently, a stable ratio of active to non-active eGFP was assumed for all

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expression rates, which most likely underestimated the measured translation rates.

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Systems modeling is always a trade-off between the detailed reflection of reality and the

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availability of proper data sets for configuring the theoretical set-up. Because likewise

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parameters were not available, the regeneration of tRNA is treated equally for all tRNA

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species disregarding putative interactions with aminoacyl tRNA synthases. Moreover, the

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presented model describes the transcription and translation of only one single mRNA species

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per time. Another characteristic feature is its hybrid structure that is given by a black box

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model for transcription and a detailed structured model for translation. As such, structural

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limitations of translation are highlighted which enables the identification of key rate

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controlling elements of the total processing from transcription to translation. Accordingly, the

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modelling approach differed from published black box models by Stögbauer et al. (20) and

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Chizzolini et al. (21). Notably, the model offers the opportunity for simulating in vitro and in

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vivo conditions, for instance by including mechanisms like mRNA secondary structure.

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C-lysine

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Summarizing, we conclude that the presented model fairly represents the mechanisms of in

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vitro translation.

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Table 1: Comparison of experimentally determined parameters of in vivo and in vitro translation, and simulated in vitro reaction parameters.

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In vivo data taken from Bremer and Dennis (22)a and Underwood et al. (12)b.

in vivo Ribosome concentration (µM)

42a

Amount of actively translating ribosomes (%) Elongation rate (AA/sec)

a

Initiation rate (nM/sec) Bulk protein synthesis rate (mg/L/min)

80

18a

in vitro Underwood et al. 1.6 ± 0.1

in silico prediction

This study

1.7

1.7 ± 0.1

72 ± 4

82

n.d.

1.5 ± 0.2

1.12

n.d.

2.8·10

3b

8.2 ± 0.3

7.1

4.3 ± 1.07

3.3·10

3b

12.3 ± 0.5

10.6

6.5 ± 1.6

142 143

3.2

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To identify possible rate-limiting factors in in vitro translation systems, we altered several

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components of the translation machinery in silico and simulated the respective impact on

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translation dynamics (Figure 3). Specifically, different concentrations were tested for (i) all

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initiation factors (simultaneously) and selectively for (ii) EFTu, (iii) EFG, (iv) EFTs, (v)

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tRNA, (vi) ribosome releasing factor (RF), (vii) T7 RNA polymerase and (viii) ribosomes. All

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other input parameters and reaction conditions remained constant. For comparison, the

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calculated translation rates were normalized to the reference condition with unchanged

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parameter settings.

MODEL BASED IDENTIFICATION OF LIMITING FACTORS

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IF 1.25

Ribosomes

EFTu 1.00

0.75

0.50

T7

RF

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EFTs

EFG tRNA

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Figure 3: Sensitivity analysis of translation factors regarding translation rate. Values are derived from an in silico 50% increase in

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concentration of each translation factor. Resulting translation rate is normalized to the non-altered rate to allow easy comparison.

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Factors considered are initiation factors 1-3 (IF); elongation factors G (EFG), Ts (EFTs), and Tu (EFTu); ribosome releasing

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factor (RF); T7 RNA polymerase; and tRNA. A value of one indicates no influence of this factor on the translation rate

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Surprisingly, predicted translation rates persisted when the pool size of initiation factors,

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EFG, EFTs, and RF increased. These findings suggest that none of the factors limited

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translation rates under the conditions tested. In fact, increasing ribosome numbers can even

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decrease the translation rate, as shown in Figure 3. To be precise, raising the total number of

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ribosomes by 50% caused 53% increase of actively translating ribosomes which underlines

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that each ‘added’ ribosome is directly incorporated in the translation machinery. This finding

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is consistent with previous experimental observations by Freischmidt et al. (16), who detected

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a decline in translation rate with increasing ribosome density. The more the ribosomes are

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active, the more tRNA is bound, which decreases the amount of tRNA that can form novel

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ternary complexes. Ternary complex concentrations of tRNA species (according to the

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nomenclature of Dong et al. (24)) Ala2, Asp1, Phe, His, Lys, Asn, Pro2, Gln2, Ser3, Ser5 and

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Thr13 are decreased by 10-40% and their corresponding codons are required by more than

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50% of the GFP sequence. Our modeling results show that the majority of ribosomes slow

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down translation when repetitive codons occur (e.g. His tag). Under such conditions, each

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ribosome is bound to a specific tRNA that is also required in the next elongation step.

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Accordingly, the specific tRNA becomes limiting, which decreases the elongation rate. This

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slowdown will also lead to ribosomal stalling.

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Moreover, our simulation revealed a slight decrease in translation performance due to

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increased RNA polymerase levels. The explanation for this follows a similar rationale to that

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previously described for ribosomes. An increase in mRNA concentration leads to an increase

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in the number of actively translating ribosomes and a lower ribosome density on the mRNA,

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which causes a shortage of free tRNA. In this case, the amount of freely accessible ternary

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complexes for the species Ala2, Ser5 and His decrease by more than 20 % compared to

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reference levels.

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Interestingly, translation rates only increased with rising levels of tRNA or EFTu. The critical

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role of EFTu is emphasized by the fact that EFTu is the most abundant protein in E. coli (23).

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In vivo EFTu concentrations correlate with the concentration of total aminoacyl-tRNA (24).

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GTP binding confers EFTu affinity to charged tRNA, the substrate for translation elongation.

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Accordingly, the stimulating effects of EFTu and tRNA on translation basically mirror the

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lack of substrate for protein formation.

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As a consequence of this, there are indications that the ternary complex consisting of EFTu,

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tRNA, and GTP is rate-limiting in cell-free translation. To investigate the synergistic impacts

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of tRNA and EFTu, we analyzed the combinatorial effect of tRNA and EFTu on translation

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rate. As depicted in Figure 4A, the combination of tRNA and EFTu considerably increased

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the simulated translation rate, compared to increasing either EFTu or tRNA alone. This result

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supports the hypothesis that availability of the ternary complex exerts a key level of control

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on translation speed. Figure 4D shows that the rise in translation rate slows down as the

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availability of ternary complexes increases. As the translation rate is a function of the amount

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of actively translating ribosomes and the elongation rate, it is likely that at least one of these

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will limit the process. Further studies into mean elongation rate (Fig. 4C) and amount of

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actively translating ribosomes (Fig. 4B) revealed a contradictory trend for the number of

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actively translating ribosomes. Whereas translation rate and specific elongation rate steadily

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increased with tRNA and EFTu concentration, the amount of translating ribosomes decreased,

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and as a consequence the translation rate leveled off. These findings suggest that as specific

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elongation rates increase, a threshold is reached where initiation becomes limited. In other

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words, as the supply of tRNA and EFTu improves, the more accurately in vitro translation

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reflects the in vivo conditions.

204 Translation rate vTL

B

3.0 1.0 1.5 2.0 2.5

2.5

2.0

1.5

normalized EFTu concentration

normalized EFTu concentration

A

1.0

active ribosomes 3.0 0.70 0.85 0.90 0.95

2.5

2.0

1.5

1.0 1.0

1.5

2.0

2.5

3.0

1.0

normalized tRNA concentration

C

2.0

2.5

3.0

D

mean elongation rate velo

2.5

2.0

1.5

value compared to reference

3.5 1.0 1.5 2.0 2.5

1.0

translation rate mean elongation rate active ribosomes

3.0 2.5 2.0 1.5 1.0 0.5

1.0

205

1.5

normalized tRNA concentration

3.0 normalized EFTu concentration

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2.0

2.5

normalized tRNA concentration

3.0

1.0

1.5

2.0

2.5

normalized ternary complex concentration

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Figure 4: Influence of EFTu and tRNA concentration (normalized to reference values) and resulting normalized translation rate (A),

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normalized amount of active ribosomes (B) (calculated as sum of actively translating ribosomes divided by overall number of 30S/50S

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subunits) and normalized elongation rate (C) (average value over all codons). All values were normalized to values at unaltered conditions.

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Part D shows the influence of coupled EFTu and tRNA multipliers and the resulting translation rate (solid line), mean elongation rate (dotted

210

line) and amount of active ribosomes (dashed line).

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3.3

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To verify that ternary complex concentration does in fact limit in vitro translation rates, we

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doubled the EFTu and tRNA concentration by supplementing with purified components.

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Because a ribosome concentration of 1.45 µM was detected in the samples, 8 µM EFTu and

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13 µM tRNA were added to double the respective concentrations. An equal volume of protein

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storage buffer was added to the reference samples. Maximum protein synthesis rates were

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measured under both conditions. For the given experimental setup, the model predicted an

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89% increase in the translation rate. The underlying translation system shows a 117% increase

219

in elongation rate, but the amount of actively translating ribosomes decreased by 12%.

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Experimental measurements revealed a 62 ± 9% rise in the maximum translation rate

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compared to the reference (see Appendix figure 1).

222

Considering the inherent drawbacks of experimental detection, we conclude that the

223

simulation results are a good prediction of the experimental readout. Thus, our hypothesis that

224

the ternary complex is a key rate-limiting target was confirmed.

225

3.4

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Figure 4D shows that an increase in ternary complex concentration causes a proportional rise

227

in elongation rate, but reduces the rise in translation rate. Furthermore, falling fractions of

228

actively translating ribosomes were observed, which indicates the increasing impact of

229

limiting initiation. Furthermore, the influence of involved reactants was investigated using

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metabolic control analysis. Because details of tRNA recharging via amino acylation could not

INCREASING TERNARY COMPLEX CONCENTRATIONS IN CFPS REACTIONS

TRANSLATIONAL CONTROL

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be properly parameterized in the model, tRNA regeneration was finally regarded as not rate

232

limiting.

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We evaluated (i)   , (ii)  and (iii)  , which represent sensitivities with respect to

234

varying ternary complex (i), initiation factors (ii) and ribosome concentrations (iii) on the

235

translation rate at a given CT3, respectively. Variations in these impact factors were calculated

236

by estimating the partial differentials with central differences (Fig. 5). Under standard in vitro

237

conditions (normalized concentration  =1), the influence of ribosomes and initiation factors

238

turned out to be negligible ( =  = 0). Neither changes in ribosomes nor variations in

239

the initiation factors could improve the given translation rate. However, the translation rate

240

could be increased significantly by increasing  , which is indicated by an elasticity   of

241

1.

242

The stimulating impact of  on translation rate diminished with increasing  levels. As

243

indicated in Figure 5, control of the translation process is taken over by the amount of actively

244

translating ribosomes, and this number can be increased by two means: raising either the

245

concentration of ribosomes ( ) or the concentration of all initiation factors ( ). When

246

neither ribosomes nor initiation factors are increased, the number of actively translating

247

ribosomes becomes reduced as the ternary complex concentration increases, as depicted in

248

Figure 4D.

249

Figure 5 outlines the differences between in vitro and in vivo protein production. The first is

250

given by the standard conditions, which may benefit from the addition of ternary complexes.

251

The second, in vivo conditions, is not affected by a limiting ternary complex supply, which

252

identifies availability of initiation factors and ribosome number as key control elements of

253

translation rate.

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Compared to the previous model (17) our hybrid approach reduced model complexity and in

255

turn accelerated computational speed. Accordingly, the investigation of elasticities as a key

256

issue of metabolic control analysis was enabled.

FCC

1.0

εIF

0.8

0.6

0.4

εT3

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0.2

0.0 1.0

1.5

2.0

2.5

3.0

CT3

257 258

Figure 5: Calculated elasticities  and  and flux control coefficient (FCC) as a function of increasing normalized ternary complex

259

concentrations. Elasticities  and  and FCC represent the sensitivity of translation rate with respect to varying total ternary

260

complex, initiation factor and total ribosome concentration

261

3.5

262

Owing to the fact that the translation machinery is derived from viable E. coli cells, in vivo

263

measurements of translation rates show strong potential for CFPS applications. Using the

264

dataset published by Bremer and Dennis (22), a translation rate for eGFP of almost 150 µM

265

per minute was estimated as theoretical upper limit for undiluted CFPS extracts (Equation 2).

266

However, the in vivo translation rate comprises the parallel processing of multiple different

267

mRNA species, which implies the concomitant use of a variety of codon sequences, whereas

268

CFPS process only one mRNA sequence. This effect leads to one-sided use of tRNA species

ESTIMATION OF CFPS POTENTIAL

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in CFPS, causing limited availability of distinct ternary complexes. Accordingly, the observed

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elongation rates in CFPS are inherently limited compared to in vivo conditions.   =  ̅ ! "##,

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2

with:  = 33.85 )* (25)

272

̅ ! = 18 ,, -./01023  1  (22)

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"##, = 245 ,, 367 

274 275

Neglecting CFPS dilution (8 = 1), i.e. assuming in vivo-like conditions, and assuming the

276

translation rate of a single mRNA only, we found that the measured translation rates of

277

Bremer and Dennis (22) could not be reached. Instead, we found either a low number of

278

active ribosomes with a high elongation rate (Table 2, low TC), or a high number of active

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ribosomes with a low elongation rate (Table 2, high TC). Apparently, the ‘implementation’ of

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in vivo concentrations had increased the active ribosome levels so extensively that the

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availability of ternary complexes becomes limiting and therefore the elongation rate decreases

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(see chapter 3.2, increased T7 concentrations). This emphasizes the close interaction between

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the supply of active ribosomes and ternary complexes, which creates shifting control of

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translation under different conditions. The finding is also supported by previous studies (17)

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who estimated the ratio of actively translating to total ribosomes to be below 5% which

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imposed an artificial control on initiation and not on tRNA supply as it is the case in this

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study.

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Page 16 of 30

Table 2: Translation rates under in vivo conditions. Optimal conditions show values from the literature (22). Simulations of in vivo conditions

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ignore dilution and investigate the impacts of ternary complexes (TC) as indicted.

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