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Zhou, Q., Zheng, H., and Yuan, W. (2018). "Modeling butanol synthesis in xylose by Clostridium saccharoperbutylacetonicum," BioRes. 13(4), 7270-7280.

Abstract

To examine the effect of xylose concentration on butanol synthesis by Clostridium saccharoperbutylacetonicum, a kinetic model of acetone-butanol-ethanol fermentation in the media with various xylose concentrations (40 g/L to 60 g/L) was developed and implemented in COPASI. Batch fermentation experiments were conducted to feed and validate the model, and the highest butanol production was achieved in 45 g/L xylose medium. Strong correlations (R2 > 0.91) between model simulation and experimental results were obtained. The modeling results suggested that the reaction rates in R6 (from acetate to acetyl-CoA), R8 (from acetyl-CoA to acetoacetyl-CoA), R9 (from acetoacetyl-CoA to butyryl-CoA), R10 (from butyryl-CoA to butanol), R14 (from butyrate to butyryl-CoA), and R20 (xylose consumption) were higher in groups with an initial xylose of 45 g/L, 50 g/L, or 55 g/L than those in groups with 40 g/L or 60 g/L xylose. In contrast, the reaction rates in R13 (from butyryl-CoA to butyrate) and R16 (from biomass to inactive cells) were lower in groups with initial xylose of 45 g/L, 50 g/L, or 55 g/L than those in groups with 40 g/L or 60 g/L xylose, which indicated that when initial xylose concentration changed, those reactions were affected, which resulted in different butanol syntheses.


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Modeling Butanol Synthesis in Xylose by Clostridium saccharoperbutylacetonicum

Quan Zhou,a Huabao Zheng,b and Wenqiao Yuan a*

To examine the effect of xylose concentration on butanol synthesis by Clostridium saccharoperbutylacetonicum, a kinetic model of acetone-butanol-ethanol fermentation in the media with various xylose concentrations (40 g/L to 60 g/L) was developed and implemented in COPASI. Batch fermentation experiments were conducted to feed and validate the model, and the highest butanol production was achieved in 45 g/L xylose medium. Strong correlations (R2 > 0.91) between model simulation and experimental results were obtained. The modeling results suggested that the reaction rates in R6 (from acetate to acetyl-CoA), R8 (from acetyl-CoA to acetoacetyl-CoA), R9 (from acetoacetyl-CoA to butyryl-CoA), R10 (from butyryl-CoA to butanol), R14 (from butyrate to butyryl-CoA), and R20 (xylose consumption) were higher in groups with an initial xylose of 45 g/L, 50 g/L, or 55 g/L than those in groups with 40 g/L or 60 g/L xylose. In contrast, the reaction rates in R13 (from butyryl-CoA to butyrate) and R16 (from biomass to inactive cells) were lower in groups with initial xylose of 45 g/L, 50 g/L, or 55 g/L than those in groups with 40 g/L or 60 g/L xylose, which indicated that when initial xylose concentration changed, those reactions were affected, which resulted in different butanol syntheses.

Keywords: Butanol; Xylose; Kinetic modeling; Copasi; Clostridium saccharoperbutylacetonicum

Contact information: a: Department of Biological and Agricultural Engineering, North Carolina State University, Raleigh, NC, 27695 USA; b; School of Environmental and Resource Sciences, Zhejiang Agricultural and Forestry University, Hangzhou, Zhejiang 311300, China; *Corresponding author: wyuan2@ncsu.edu

INTRODUCTION

It has been reported that by 2035 global energy consumption will grow by 32%, and the demand for liquid fuels will increase by 18% (USEIA 2011). To meet the growing demand for energy and to minimize the negative effects of petroleum consumption on the environment, biofuels produced from lignocellulosic biomass are promising alternatives (Tantayotai et al.2017). Compared with bio-ethanol, which is widely used as the top biofuel in the U.S. market, bio-butanol yields more energy per volume or mass, and it can be blended with gasoline at higher concentrations than ethanol to fuel today’s unmodified internal combustion engines (Dürre 2007).

In the traditional acetone-butanol-ethanol (ABE) fermentation process, glucose is widely used as the carbon source. Nevertheless, glucose is obtained mostly from cereal grains or sugarcane, which are food or feed sources. Compared with glucose, xylose is the second most abundant sugar in lignocellulosic biomass on earth, and it can be derived easily from agricultural residues (Li et al. 2015). Batch cultures using xylose have been reported successful in butanol production by Clostridium saccharoperbutylacetonicum (Shinto et al. 2008; Yaoet al. 2017); however, the influence of xylose concentration on butanol production and associated reaction kinetics has not been systematically elucidated.

Kinetic modeling is a successful scientific approach for improving the metabolic capabilities of microorganisms due to its ability to help researchers understand, predict, and evaluate effects of adding, removing, or modifying molecular components of a cell factory, and for supporting the design of the bioreactor or fermentation process (Bailey 1991; Stephanopoulos and Vallino 1991; Almquist et al. 2014). Most recent studies relevant to ABE fermentation revealed the importance of some key intermediates and the effect of product inhibition as well as substrate inhibition on butanol synthesis. Two kinetic models of ABE fermentation have been developed by Shinto et al. (2007; 2008) to describe the dynamic behaviors of metabolites in the ABE fermentation by C. saccharoperbutylacetonicum N1-4 using glucose and xylose as the carbon source, respectively. Sensitivity analysis has demonstrated that slow substrate utilization is beneficial for higher butanol production. Another kinetic model has been used to investigate the effect of various sugars on butanol synthesis by C. acetobutylicum DSM 792 (Raganati et al. 2015). Modeling results show that the uptake rate of pentose sugars is lower than that of hexose sugars. These kinetic models, however, provide no insights into the effects of xylose concentration on butanol synthesis.

The objective of this study was to understand the influence of initial xylose concentration on butanol synthesis by C. saccharoperbutylacetonicum N1-4. A kinetic model of ABE fermentation, using xylose as the substrate, was developed and implemented in the open-source software COPASI. The model was validated by experimental data and provided insights into the metabolic pathways of xylose to butanol influenced by substrate concentration.

EXPERIMENTAL

Materials

C. saccharoperbutylacetonicum N1-4 (ATCC 27021) was obtained from American Type Culture Collection (Manassas, VA, USA). The media and procedures used for seed culture and activation were the same as in a previous study (Zhou et al. 2018). Tryptone-yeast extract (TY) medium used as the pre-culture and main culture media, which consisted the following ingredients per L of distilled water: 20 g xylose (for pre-culture) or 40 g to 60 g xylose (for main culture), 2 g yeast, 6 g tryptone, 2.57 g (NH4)2SO4, 0.3 g MgSO4.7H2O, 0.5 g KH2PO4, and 10 mg FeSO4.7H2O. In all experiments, the initial pH was adjusted to 6.5 by 5 M NaOH prior to sterilization (at 121 °C for 15 min), and during fermentation pH was measured and adjusted every 12 h to be roughly 5.5.

Methods

Batch culture and analysis

Pyrex bottles (250 mL) containing 180 mL of medium and 20 mL of inoculum were used as fermenters. Batch cultures with three replicates were carried out in TY medium with varying xylose concentrations (40 g/L, 45 g/L, 50 g/L, 55 g/L, or 60 g/L) at 30 °C under anaerobic conditions. Samples were taken every 12 h to determine the concentration of xylose, acids (lactatic acid, acetic acid, and butyric acid), and solvents (acetone, butanol, ethanol) using a high performance liquid chromatograph (Prominence Series HPLC with a refractive index detector, model RID-10A, Shimadzu Corporation, Kyoto, Japan) as described in a previous study (Zhou et al. 2018). An OD value of 1.0 was equivalent to 0.301 g of dry cell weight per L, and the average molecular weight of C. saccharoperbutylacetonicum was assumed to be 172 g/mol (Shinto et al. 2007).

Butanol production was statistically analyzed with SAS 9.1.3 (SAS Institute Inc., Cary, NC, USA). Multiple one-way analysis of variance was conducted to evaluate the effect of initial xylose concentration on product formation (acetone, butanol, ethanol, lactic acid, acetic acid, butyric acid, and biomass) by C. saccharoperbutylacetonicum.

The concentration of xylose was used as the independent variable, while product (butanol) concentration was the dependent variable. Tukey’s adjustment was applied to the general linear model for determining the level of significance (P < 0.05) among various treatments.

Fig. 1. The metabolic pathway of C. acetobutylicum using xylose as the carbon source (Raganati et al. 2015). Enzymes are abbreviated as follows: TA, transaldolase; TK, transketolase; PTA, phosphotransacetylase; AK, acetate kinase; CoAT, CoA transferase; PTB, phosphotransbutyrylase; BK, butyrate kinase; BADH, butyraldehyde dehydrogenase; BDH, butanol dehydrogenase

Kinetic model development

Modeling was conducted using the biochemical network simulator software COPASI (Hoops et al. 2006). COPASI establishes biochemical models based on the reactions between each species, and then it locates each species on a compartment that is mapped directly to the reaction network. The most attractive feature of COPASI is that it automatically converts the reactions into differential equations. The developed model, which included substrate utilization, organic acids and solvents formation, and cell growth, was established based on the ABE fermentation pathway of xylose (Fig. 1). Table 1 reports the rate equations of the metabolic reactions in the xylose utilization pathway (R20 to R25). All the other reactions (R2 to R18) in the present model were the same as in the authors’ previous study (Zhou et al. 2018).

Table 1. The Reaction Steps of the Kinetic Model and Associated Parameters (Raganati et al. 2015)

Determination of model parameters and validation

Multiple sets of kinetic parameters for the ABE fermentation under varying xylose concentrations were assessed by fitting the experimental data into the developed model. The parameters included the Vmaxj and Kmj of each reaction, and the values of KisjKajKmsjKmjAKmjBBMAXj, AcetMAX, ButyrMAXAMAXEMAXnBJnAcetnButyrnA, and nE were estimated. The particle swarm method—an optimization algorithm of COPASI—was used for parameter estimation (Hoops et al. 2006). The models were validated according to the assessment of the average coefficients of determination (R2) between the simulation results and the experimental data.

Determination of model parameters and validation

Multiple sets of kinetic parameters for the ABE fermentation under varying xylose concentrations were assessed by fitting the experimental data into the developed model. The parameters included the Vmaxj and Kmj of each reaction, and the values of KisjKajKmsjKmjAKmjBBMAXj, AcetMAX, ButyrMAXAMAXEMAXnBJnAcetnButyrnA, and nE were estimated. The particle swarm method—an optimization algorithm of COPASI—was used for parameter estimation (Hoops et al. 2006). The models were validated according to the assessment of the average coefficients of determination (R2) between the simulation results and the experimental data.

Parameter scan

A parameter scan was carried out to reveal which parameter in the pathway had a recognizable impact on butanol synthesis. By giving a 5% increase in each estimated kinetic parameter in the developed model, the percentage change in butanol could be found through parameter scan in COPASI. The impact of parameter on butanol synthesis was defined as recognizable when the 5% change in each parameter caused butanol concentration to change by at least 5%. Moreover, the reaction rates for the reactions that had recognizable impacts on butanol synthesis were calculated by taking the estimated parameters into the corresponding equations and then comparing them under various culture conditions.

RESULTS AND DISCUSSION

Batch Fermentations

Table 2 shows that as the initial xylose concentration increased from 40 g/L to 45 g/L in the medium, butanol endpoint concentration increased from 12.78 g/L to 13.45 g/L; however, no significant differences in butanol concentrations were observed among the groups of 45X, 50X, and 55X (X denotes the initial concentration of xylose in the medium, with g/L as its unit). Moreover, butanol concentration dropped to 12.37 g/L in the 60X group. With higher xylose concentration in the medium, a longer time was needed for C. saccharoperbutylacetonicumN1-4 to reach the exponential phase of butanol production.

As shown in Fig. 2, the fermentation progressed rapidly after 24 h in the groups of 40X and 45X, but the consumption rate of xylose and generation of butanol were slow in the first 48 h in the groups of 50X, 55X, and 60X. Additionally, the amount of xylose that was utilized by C. saccharoperbutylacetonicum N1-4 was not significantly different among all tested groups, which resulted in a higher butanol yield in the groups of 45X, 50X, and 55X than in the 40X group. When xylose concentration exceeded 55 g/L, butanol production showed no significant difference compared to the 40X group, which indicated that substrate saturation occurred when xylose reached 60 g/L.

Table 2. Statistical Analysis of Fermentation Results under Various Concentrations of Xylose

Note: Mean values sharing the same superscript are not significantly different from each other.

Fig. 2. The effect of xylose concentration on ABE fermentation. (A) xylose consumption profile; (B) butanol production profile. X represents g/L xylose in the medium.

Previous studies have also revealed that substrate saturation is a widespread phenomenon in enzyme kinetics that plays critical regulatory roles in many metabolic pathways (Bisswanger 2017; Park et al. 2017; Kumar et al. 2018). To the best of the authors’ knowledge, this was the first study that demonstrated the threshold level of xylose concentration (55 g/L) on butanol synthesis by C. saccharoperbutylacetonicum N1-4.

Comparison between Simulation Results and Experimental Time-Course Data

The estimated kinetic parameters with the initial xylose concentration of 45 g/L (299.4 mM) in the developed model are presented in Table S1 as an example. Based on the estimated parameters, the simulation results were obtained from the model and compared to the experimental results in Fig. 3.

Fig. 3. The comparison between model simulation and experimental time-course data of target metabolites with 299.4 mM (45 g/L) of initial xylose concentrations: (A) time-resolved concentration of xylose and butanol; (B) time-resolved concentration of acetone and biomass

The dynamic behaviors of the important target metabolites qualitatively matched the corresponding experimental time-course data from the batch culture. The coefficient of determination (R2) of 0.91 was obtained between the simulation results and experimental data (Table 3), which confirmed the close agreement between simulation and experimental results.

Table 3. Average Coefficients of Determination (R2) between Simulation Results and Experimental Data

Parameter Scan

Kinetic models of biochemical networks elucidate how kinetic parameters affect the system/process (Hoops et al. 2006). In the present study, a parameter scan was used to assess the validity of the developed model and to reveal which pathway had the most significant impact on butanol synthesis. The percentage changes in predicted butanol production by giving a 5% increase in each parameter of 45X are summarized in Table 4. The reactions that had recognizable impact on endpoint butanol concentration were R6, R8, R9, R10, R13, R14, R16, and R20. The reactions R6, R8, R9, R10, R14 and R20 showed positive effects on butanol production. Specifically, in R20, the increase in Vmax20Kis20nB20, and Bmax20, as well as the decrease in Km20, caused increasing endpoint butanol concentration. Calculating from Table 1, the increase in Vmax20Kis20nB20, and Bmax20 with the decrease in Km20 would result in increased r20, which indicated that increased r20 could result in increased butanol production. Therefore, R20 was considered to have positive effects on butanol production when xylose was utilized as the sole carbon source in the medium. Besides, as shown in Fig. 1, R6, R8, R9, R10, and R14 were all involved in the pathway from acetate/butyrate to butanol. Therefore, the transition from acidogenesis phase to solventogenesis phase had favorable effects on butanol production.

R13 and R16 had negative effects on butanol production. Taking R13 as an example, the increase in Vmax13 and decrease in Km13 caused increasing endpoint butanol concentration. Observed from Table 1, the increase in Vmax13 and the decrease in Km13 would result in a lower value of r13, which suggested that increasing the value of r13 might result in lower butanol production, which suggested that R13 had negative effects on butanol production.

Compared with the sensitivity analysis results in the model by Shinto et al. (2008), the present study revealed similar effects of R6, R8, R9, R10, R13, and R14 on butanol synthesis; however, the effect of xylose utilization was positive in the current study but negative in the model by Shinto et al. (2008). Moreover, the effects of R12 and R15 in Shinto’s model were negative, but they were found not noticeable in the present study.

Table 4. Percentage Change in Endpoint Butanol Concentration in Response to a 5% Increase in Each Parameter (Only the Reactions that had Recognizable Effects are Listed)

* Reactions that had negative effects on butanol production

# Reactions that had positive effects on butanol production

Fig. 4. The comparison between calculated reaction rates (r6r8r9r10r13r14r16, and r20) and the experimental butanol concentration.

One of the possible explanations was that the formation of products from the corresponding branch metabolites in Shinto’s model was all represented by single conversion, and that no regulatory effects of butyrate or butanol on butyrate re-assimilation and butanol formation were considered in Shinto’s version. In the present model, a critical butanol concentration (Bmax) that constrained butanol-inhibited substrate uptake, cell growth, and self-inhibitory butanol generation, was introduced. Critical concentrations were also introduced for acetate, butyrate, acetone, and ethanol in the biomass equation, leading the present model to be an improved dynamic model that considered inhibitory effects of all liquid fermentation products (Millat and Winzer 2017).

To verify their effects on butanol production, the reaction rates of R6, R8, R9, R10, R13, R14, R16, and R20 were calculated by taking the estimated parameters into the corresponding equations (Table 1) under various initial xylose concentrations. Comparison between the calculated reaction rates and the experimental results of endpoint butanol concentration revealed that the changing tendency of r6r8r9r10r13r14r16, and r20 was qualitatively consistent with the changing trend of experimental butanol endpoint concentration under various substrate conditions.

Specifically, as shown in Fig. 4, reaction rates of R6, R8, R9, R10, R14, and R20 (with positive effects on butanol production) varied depending on the xylose concentration, and the preference scale to achieve higher reaction rates (r6r8r9r10r14, and r20) was 45X/50X/55X > 40X/60X, which was in agreement with the experimental results. In contrast, the preference scale of xylose concentration for lower r13 and r16 (with negative effects on butanol production) was 45X/50X/55X > 40X/60X, which was also consistent with the experimental results.

The model could be used to elucidate the metabolic networks of butanol fermentation by C. saccharoperbutylacetonicum, and consequently to identify genetic manipulation strategies for higher bio-butanol production. When xylose is to be utilized as the sole carbon source in the medium, such strategies might include increasing the rate of xylose consumption or the conversion rates from acidogenesis phase to solventogenesis phase, or reducing the rates of biomass inactivation or conversion rate from BCoA to butyrate. For instance, xylose consumption has been successfully increased in recombinant Saccharomyces cerevisiae by expressing two heterologous transporters from Arabidopsis thaliana or by harboring the Pichia stipitis genes XYL1 and XYL2 (xylose reductase and xylitol dehydrogenase, respectively) and the endogenous XKS1 (xylulokinase) (Jeppsson et al. 2003; Hector et al. 2008). Thus, with similar genetic engineering techniques, C. saccharoperbutylacetonicum might also be mutated to enhance xylose utilization rate, and butanol production could be increased consequently. In addition, some metabolic engineering strategies for ACoA and BCoA metabolism such as modulation of ACoA and BCoA generation enzymes and construction of synthetic ACoA and BCoA consuming pathways are expected to be beneficial (Zhang et al. 2013; Krivoruchko et al. 2015). Moreover, the genes that were responsible for conversion from butyrate to BCoA could be upregulated in future studies to achieve higher butanol production.

CONCLUSIONS

  1. A kinetic model based on xylose metabolic pathways and COPASI was developed to simulate xylose fermentation to butanol by C. saccharoperbutylacetonicum. An average coefficient of determination of 0.91 was obtained between the experimental and simulation results, indicating the accuracy of the model in predicting butanol synthesis.
  2. The effects of xylose concentration on butanol synthesis were elucidated by assessing the model under varying initial xylose concentrations. When xylose concentration changed, the reaction rates of R6 (acetate to acetyl-CoA), R8 (acetyl-CoA to acetoacetyl-CoA), R9 (acetoacetyl-CoA to butyryl-CoA), R10 (butyryl-CoA to butanol), R14 (butyrate to butyryl-CoA), and R20 (xylose consumption) also changed, which consequently resulted in different butanol syntheses.
  3. This model could be used to identify genetic manipulation strategies for improving bio-butanol production by C. saccharoperbutylacetonicum when xylose is present in the medium as the sole carbon source. The strategies might include increasing the rate of xylose consumption or the conversion rates from acidogenesis phase to solventogenesis phase, or reducing the rates of biomass inactivation or conversion rate from BCoA to butyrate.

ACKNOWLEDGEMENTS

This work was financially supported by the USDA National Institute of Food and Agriculture, Hatch Project NC02613.

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Article submitted: March 27, 2018; Peer review completed: June 14, 2018; Revised version received: August 4, 2018; Accepted: August 6, 2018; Published: August 8, 2018.

DOI: 10.15376/biores.13.4.7270-7280